• <tr id="yyy80"></tr>
  • <sup id="yyy80"></sup>
  • <tfoot id="yyy80"><noscript id="yyy80"></noscript></tfoot>
  • 99热精品在线国产_美女午夜性视频免费_国产精品国产高清国产av_av欧美777_自拍偷自拍亚洲精品老妇_亚洲熟女精品中文字幕_www日本黄色视频网_国产精品野战在线观看 ?

    Cloud Data Center Selection Using a Modified Differential Evolution

    2021-12-15 07:07:36YousefSanjalaweMohammedAnbarSalamAlmariRosniAbdullahIznanHasbullahandMohammedAladaileh
    Computers Materials&Continua 2021年12期

    Yousef Sanjalawe,Mohammed Anbar,Salam Al-E’mari,Rosni Abdullah,Iznan Hasbullah and Mohammed Aladaileh

    1National Advanced IPv6 Center(NAv6),Universiti Sains Malaysia,11800 USM,Penang,Malaysia

    2Computer Science Department,PY Collage,Northern Border University(NBU),9280 NBU,Ar’ar,Kingdom of Saudi Arabia

    Abstract: The interest in selecting an appropriate cloud data center is exponentially increasing due to the popularity and continuous growth of the cloud computing sector.Cloud data center selection challenges are compounded by ever-increasing users’requests and the number of data centers required to execute these requests.Cloud service broker policy defines cloud data center’s selection,which is a case of an NP-hard problem that needs a precise solution for an efficient and superior solution.Differential evolution algorithm is a metaheuristic algorithm characterized by its speed and robustness, and it is well suited for selecting an appropriate cloud data center.This paper presents a modified differential evolution algorithm-based cloud service broker policy for the most appropriate data center selection in the cloud computing environment.The differential evolution algorithm is modified using the proposed new mutation technique ensuring enhanced performance and providing an appropriate selection of data centers.The proposed policy’s superiority in selecting the most suitable data center is evaluated using the CloudAnalyst simulator.The results are compared with the state-of-arts cloud service broker policies.

    Keywords: Cloud computing; data center; data center selection; cloud service broker; differential evolution; user request

    1 Introduction

    A data center (DC) is a set of essential shared resources, including but not limited to servers, network devices, power systems, data storage, and cooling systems [1].A traditional DC is a physical site where all servers are located, but a cloud DC is a set of shared computing resources with higher Quality-of-Service (QoS) at a lower total cost of ownership [2].However, the main difference between traditional DC and cloud DC is virtualization that provides enormous scalability, virtualized computing resources, and on-demand utility computing.

    DC virtualization is a precious opportunity for IT.It saves the cost to a remarkable extent by efficiently sharing the available resources, such as servers, storage, and network capabilities,translating into lower purchasing and operating costs.The DC virtualization provides compatibility with more applications and services and fast implementation at a higher QoS level.Cloud Computing (CC) technology advancement utilizes DC virtualization as a springboard to access cloud services provided by third-party Cloud Service Providers (CSPs) to build private CC platforms with many of the same economies and efficiencies as by third-party CSPs.

    Nowadays, cloud DC demand is increasing due to the importance of speed in IT service delivery.Cloud DC speeds up service delivery by providing processing and storage capabilities and networking close to the users from different locations worldwide.Besides, increased demand for business agility and cost-saving with a high QoS level has led to the rapid growth of cloud DCs over traditional DCs.Also, the CC services have increased rapidly in number and scale across different application areas.Fig.1 below is from Cisco’s report in 2018, showing the total amount of cloud DC traffic in 2017 reaching 7.7 Zettabyte and 9.8 Zettabyte in 2018.It is projected to reach 11.9 Zettabyte and 14.1 in 2019 and 2020, respectively [3].

    Figure 1:Total annual data center traffic from 2015–2020 [3]

    With an increased volume of cloud services generated and data volume stored across geodistributed DCs, the question of how to route users’requests in a manner that ensures efficient resource utilization and a high level of QoS has become an emerging topic.Also, the target DC location has a direct influence on the CC environment’s QoS level.An appropriately selected cloud DC will enhance a large-scale CC environment’s overall performance for user requests’execution by providing efficient resource usage, reduces processing and response time, provides scalability,and averts deadlock [4].Also, the increased demand for CC’s services makes cloud users more aware of higher-level QoS.This awareness raises a new challenge on efficient and optimal cloud DC selection to cater to different user’s needs from a large set of cloud DCs distributed among different regions worldwide.

    1.1 Problem Formulation of Cloud Data Center Selection

    cloud DCs communicate with each other in an ad-hoc manner within the CC environment[5–7] to execute users’requests.Therefore, similar to selecting a physical DC, the cloud DC must be chosen appropriately for efficient user requests’execution with minimum computational time and the lowest cost, which remains challenging in the CC field.The following example clarifies the main problem of cloud DC selection.

    Assume there are N user requests UR= {UR1, UR2,...,URn}, which are routed to N available cloud DCs:DC = {DC1, DC2,...,DCn} such that the fitness of x (DC × UR →x)given objectives O = {O1, O2,...,On} are optimized within a specific time frame.The problem of cloud DC selection can be depicted below in Fig.2, where, for instance, two or more users’requests may be executed by one cloud DC.The main objective often comprises users’QoS requirements and CSPs’interests such as processing time, response time, availability, total cost,power consumption, and profit.

    Figure 2:Cloud DC selection problem:routing n users’requests to n DCs

    An improper cloud DC selection overloads the cloud DC.It degrades the CC environment’s performance, especially when there is an expanding number of users’requests, resulting in the perceived QoS and user satisfaction deteriorating.Consequently, the cloud DCs will drop and refuse any new user request because they are overloaded [8,9].

    Several prior works attempted to address the cloud DC selection problem by proposing CSB policies in the CC environment.However, the primary challenge of achieving the maximum performance with the minimum cost remains [10,11].Several related works such as [12,13] considered the cloud’s DC selection and resource allocation an NP-hard problem; therefore, this paper pertains to adopt a metaheuristic based CSB policy to overcome the improper cloud DC selection due to the following reasons:

    ? Processing time and response time and/or a high total cost still require more enhancements during the execution of user requests.

    ? To ensure adaptive user request execution, the DC selection assumptions should consider incoming user requests’size, which will avoid inaccurate estimation of the processing time.

    ? The efficient selection of the most appropriate DC requires consideration of more important DCs parameters.

    ? There is a lack of multi-objective optimization usage in terms of cloud users’QoS needs;few CSB policies only use a single (simple or complex) optimization objective.

    This paper contributes to the literature on service provisioning and CSB policies by highlighting the significance of using multi-objective optimization in selecting the cloud DC to execute users’requests.This paper’s unique contribution is that it incorporates more than one QoS (i.e.,users’interest) simultaneously when executing users’requests.

    2 Related Works

    Improper selection of cloud DCs is time and resource-consuming because the same cloud DC executes many users’requests while others remain idle.Improper cloud DC selection negatively impacts the QoS, especially when user requests executions require a high QoS level.As a result, the DC will drop any new users’requests because the DCs are busy responding to users’requests [8,9].To address the problem mentioned above, any new users’requests must be routed to the most appropriate cloud DC, which is the responsibility of the CSB to ensure high performance of the CC environment and to execute these users’requests efficiently with a high level of QoS.

    Indeed, proposing an efficient CSB policy grabs the researchers’attention to address the issues related to selecting the proper cloud DC in the CC environment.The existing CSB policies might be commonly categorized based on users’QoS needs into (i) CSB policy based on enhancing response and processing time, (ii) CSB policy based on enhancing DC availability, and (iii) CSB policy based on enhancing the total cost.

    The CSB policy based on enhancing processing and response time, such as [4,5], suffers from several setbacks because most of them ignore the DC availability and efficiency parameters.Also, the DC selection assumptions do not take the size of the subsequent user request into consideration (i.e., the DC selection assumption is built based on the previously executed users’requests); thus, inaccurate DC selection has occurred.Therefore, there are still gaps in these considerations because the CC environment’s overall performance might be impacted negatively.

    Meanwhile, the proposed CSB based on enhanced availability, such as [6] and [14], increases the cloud DC availability and slightly enhances computation time.Despite its advantages, those policies ignore the dynamic nature of user requests’size (i.e., different users’requests may have different sizes).Besides, the DC selection assumption does not take the size of the subsequent users’requests into consideration, and the total cost is not as reduced as needed.

    Moreover, many researchers proposed several CSB policies to decrease the total cost consumed by the cloud DCs to execute users’requests [15,16], which successfully acheive significant results in reducing the total cost.However, the processing and response time requires more improvements, and the number of executed users’requests is not always as expected (i.e., throughput is relatively low).Furthermore, these CSB policies are only concentrating on enhancing the performance in terms of the total cost, but also still gaps exist in these CSB policies in terms of ignoring important parameters when selecting DCs, which is one of the considerations in this paper.

    Also, all CSB policies in the literature are based on a single (i.e., simple or complex) optimization objective.At the same time, none uses multi-objectives in the cloud DC selection process.Therefore, a multi-objective might enhance DCs selection, as the multi-objective includes more than one parameter (i.e., objective), which will not focus on one parameter.For instance, some users look for services with the lowest cost, while others require high QoS level services, which is acceptable.However, it would not be efficient in the future, especially with an expanding number of users’requests and connected cloud DCs.Therefore, implementing a multi-objective problembased cloud DCs selection technique might be highly required.The use of CSB policies based on metaheuristic to provide an efficient cloud DCs selection is also needed, as considered in this paper.

    The Differential Evolution (DE) algorithm is arguably one of the most robust stochastic optimization algorithms applied on real-parameter.It is still adapted or modified by researchers for solving optimization problems [17–19].For instance, a modification on the DE algorithms was proposed in [17] to overcome constrained optimization problems by adaptively adjusting the scale factor and crossover rate based on uniform distribution.Thus, both global and local searches are balanced, which allows efficient exploration of the solution space.

    3 Differential Evolution Algorithm

    The DE algorithm was developed by Price and Storn in 1997 [20] to solve optimization problems for continuous domains.The DE is considered one of the best optimization algorithms due to its simplicity, easiness, quickness, and robustness [21].Many different scientific applications use the DE algorithm to obtain the most effective solution without using complicated algorithms or experts’knowledge [20,21].The DE uses the mutation phase as a search and selection technique to search for feasible solution regions (i.e., possible solution regions).It is a search mechanism based on the population with vector parameters for every generation.The DE algorithm consists of the following four main phases, namely:(i) initialization, (ii) mutation, (iii) recombination, and(iv) selection.The following sub-sections discuss these phases in detail.

    3.1 Initialization

    DE is a population-based search algorithm that uses NP variables as the D dimensional parameters population (i.e., vectors) for each search generation.Initially, if there is no information about the problem, the initial population is selected randomly; otherwise, the initial population using DE is usually generated by adding random deviations that are normally distributed to the preliminary solution.The core idea behind the differential evolution is a new technique for generating trial parameter vectors [21].In our optimization problem, the DCs in each simulation scenario is considered the NP variables.The proposed DCs’parameters are considered D dimensional vectors (i.e., 4-dimensional vectors:DCAV, DCEff, TotC, ExptPT).The dimensional vector for each generation is computed for each variable that belongs to solution space, as illustrated in the following formula:

    whereVG(i) denotes the vectorifor generation G, NP denotes the population size.

    3.2 Mutation

    The mutation phase is the second phase of the DE algorithm.In this phase, a noisy random vector is generated for each generation using Eq.(2) [22]:

    where Vi,G+1denotes the vector for the next generation,Xn1,Gis the first vector, Z is a userdefined value ∈[0.5, 1] used to control the amplification of (Xn2,G– Xn3,G), and (Xn2,G– Xn3,G)denotes the difference between two selected vectors which they are different from the first vector(i.e.,Xn1,G)for the generation (G).For example, assume that we have four DCs (DC1, DC2, DC3,and DC4).DC1is selected as a target vector, DC2is the first vector (Xn1,G), and the difference between DC3and DC4indicates the value of Xn2,G– Xn3,G.

    The variable resulted from this stage (i.e., Vi,G+1) is called a noisy random vector is used in the next stage to be compared with the target vector based on a crossover rate.

    3.3 Recombination

    This phase is crucial because it is responsible for increasing the diversity of vectors.In this stage, the noisy random vector resulting from the previous stage (i.e., Vi,G+1) is compared with the target vector (i.e., DC1) to generate a trial vector.Eq.(3) is used to generate a trial vector.

    where Yi,G+1denotes the trial vector for generation Gl; Vi,G+1denotes the noisy random vector resulting from the previous stage using Eq.(2); Vi,Gis the target vector (i.e., DC1); rndb(n)denotes a random number ∈[0, 1] generated for the target vector and noisy random vector; and CR denotes crossover ratio ∈[0, 1].

    For instance, assume the value of CR is 0.50, and the rndb(n) values for the four-dimensional parameters are as follows:0.7, 0.2, 0.3, 0.5 for DCAV, TotC, ExpPT, and DCEff, respectively.Since 0.7 >0.5 =>yes, the value of the DCAV dimensional parameter associated with the target vector is copied.Besides, 0.2 >0.5 =>no, the value of the TotC dimensional parameter associated with the noisy random vector is copied.While 0.3 >0.5 =>no, the value of the ExptPT dimensional parameter associated with the noisy random vector is copied.Last, since 0.9 >0.5 =>yes, the value of the ExptPT dimensional parameter associated with the target vector is copied.However,this phase’s output is a trial vector (Yi,G+1) with dimensional parameter values.

    3.4 Selection

    The last phase of the DE is the selection phase.In this phase, a greedy criterion is used to determine whether the trail vector’s fitness function (Yi,G+1) is less than the target vector’s fitness function (i.e., Xi,G) or not.Since the problem is a maximization optimization problem, the vector among trial and target vectors with the optimal fitness function value is selected as a target vector for the next generation (i.e., G2).The following rule-base summarizes this process [22,23]:

    4 Proposed Policy

    This section describes the proposed policy phases, called High-Performance Lowest Cost CSB(HPLCCSB) policy.In a real cloud environment, the proposed CSB policy operates in an online mode since the users’requests arrive through the Internet.However, for experimental purposes,the proposed CSB policy is evaluated in offline mode since conducting repeatable experiments in large-scale environments such as a real cloud environment is very complex and time-consuming [6]and [24].

    Fig.3 depicts the main phases of this policy.Upon receiving a new user’s request, the fitness function of each DC is computed based on the proposed DC’s parameters.Then the modified DE is adapted to find the most optimal DC among the available DCs (in terms of the value of fitness function).After that, the arriving user’s request is routed to this DC to execute it and return it to its originator (i.e., user base).

    4.1 Data Centers’Parameters Computation

    In this phase, four main parameters are computed in order to be contributed to formulating the fitness function (i.e., multi-objective function).These parameters are considered the most important parameters that might characterize the DCs [25,26].Therefore, considering these parameters during the selection phase could allow optimal DC selection with the best computational capabilities with the lowest cost.As aforementioned, most existing studies focus only on one and only one parameter without considering others.Thus, part of QoS might be improved and others not.Therefore, it is necessary to incorporate these crucial parameters to formulate a multi-objective function that ensures optimal value.

    However, the data center availability parameter is one of the most important DC parameters that describes the ratio between throughput and available bandwidth for each cloud DC is computed based on Eq.(4).

    where DCAV denotes the DC availability parameter, TH[x,y] denotes cloud DC throughput,obtained from the InternetCharacteristics component in the CloudAnalyst, and BN[Nx, My]denotes bandwidth matrix for cloud DC(y), located in a region(x).

    Figure 3:Proposed policy

    Each cloud DC’s expected processing time parameter describes the estimated processing time required to execute the incoming users’requests.This parameter is computed based on Eq.(5).

    where ExpPT denotes the expected processing time for the subsequent user request, NxURS denotes the subsequent user request’s size determined from the InternetCloudlet component in the CloudAnalyst simulator, AVGPR denotes the average processing ratio for DC, computed using Eq.(6).

    where AEUR denotes the average size of previously executed users’requests determined from the DatacenterController component in the CloudAnalyst simulator, AVGPT denotes the average processing time for the previously completed users’requests, which is also obtained from the DatacenterController component by dividing the total processing time on the total number of executed users’requests by a given cloud DC.

    Third, the total cost parameter describes the consumed cost (in US dollars) to execute and deliver the user requests to the user.This parameter is computed based on Eq.(7).

    where TotC denotes total cost, DTC denotes data transfer cost, and VMC denotes virtual machine(VM) cost.

    Last, the DC efficiency parameter describes how efficient a DC is in executing the users’requests.This parameter is computed based on Eq.(8).

    where DCEff denotes the DC efficiency, ART denotes average response time obtained from the VMLoadBalancer component in the CloudAnalyst simulator, APT denotes average processing time obtained from DatacenterController in the CloudAnalyst simulator.AWT denotes the average waiting time obtained from VMLoadBalancer in the CloudAnalyst simulator.Thr denotes throughput for each DC obtained from the InternetCharacteristics component in the CloudAnalyst simulator.UsT denotes total useful time for each processor obtained from the DatacenterController component in the CloudAnalyst simulator.IdT denotes a total idle time for each processor obtained from the DatacenterController component in the CloudAnalyst simulator.NoVM denotes the number of the virtual machines located in each cloud DC, which is also obtained from the DatacenterController component in the CloudAnalyst simulator.

    4.2 Fitness Function Computation

    This phase proposes the fitness function derived from the values of the previously proposed parameters (i.e., DCAV, ExpPT, TotC, and DCEff).The proposed fitness function uses the scalarization method based on rank-sum weights [27,28], where all objectives functions are incorporated altogether into the scalar fitness function.Eq.(9) computes the value of DCPP parameter value.

    where DCPP denotes the DC processing power, ExpPT denotes the expected processing time for the subsequent user’s request determined from Eq.(5), DCAV denotes DC availability value determined from Eq.(4), DEff denotes DC efficiency determined from Eq.(8), and TotC denotes total cost determined from Eq.(7).w1, w2, w3, and w4 are the weights of TotC, DCEff, DCAV,and ExpPT, respectively.These weights are determined using Eq.(10) [27–29]:

    The TotC and ExptPT are negatively signed since they are minimization objective functions,whereas maximization objective functions (i.e., DCAV and DCEff) are positively signed.These weights are not assigned arbitrarily.Instead, they are set based on extensive experiments to identify each DC parameter’s optimal weight value.In sum, the following weight values are assigned for each proposed DC parameter as illustrated in Tab.1.

    Table 1:Weight for each proposed DC’s parameter

    Finally, the root mean square method normalizes the objective functions’values to ensure a sense of fairness between them.As a result, the final formula of the proposed fitness function is as shown below in Eq.(11):

    4.3 Optimization Using a Modified Differential Evolution

    This phase finds the optimal solution (i.e., optimal cloud DC) to maximize the fitness function.The optimization process follows the following steps:

    4.3.1 Initialization

    The initialization stage presents the cloud DC selection description with the optimal fitness value (i.e., the maximum value of MOF).

    Max MOF(i)

    i subject to 0<=i<=5

    where DCAV denotes the cloud DC availability parameter for DCi, DEffidenotes the cloud DC efficiency parameter for DCi, TotCidenotes the cloud DC total cost for DCi, and ExpPTidenotes the expected processing time of DCirequired to execute subsequent user’s request.

    4.3.2 Mutation

    Herein, the modification on the DE is presented.The perturb of existing solutions to generate the new solution is the basis of any computational method.Prior works contain plenty of such techniques in different algorithms, focusing on enhancement towards optimal solution region.This paper proposes a new mutation mechanism to utilize the neighbors to perturb the current solution with control on the solution’s randomness.The proposed mechanism is performed as follows and summarized in Fig.4:

    Figure 4:Flowchart of the proposed mutation mechanism

    a) Randomly choose a set of mutation vectors “X” from the available solution vectors, then from that random set, select a candidate “Y”and perturb the solution to find the F-number of neighbors.A ring-shaped neighborhood topology proposed in [30] is used to derive neighbors from the vectors’index graph.

    b) Select all the neighbors and perform a fitness comparison with the “Y.”

    c) Locally improve using a direct search technique to all those which are better than “Y.”The direct search technique uses the greedy criterion to make this process.Using the greedy criterion, a new vector is accepted if and only if it minimizes the value of the proposed multi-objective function.

    d) The new value of “Y” sets to the best solution obtained amongst all in the above points(i.e., in terms of fitness function’s value).

    e) Repeat this process till involving all mutation vectors in this mutation mechanism.

    4.3.3 Recombination

    As aforementioned, this stage increases the vectors’diversity by comparing the noisy random vector with the target vector to generate a trial vector.Eq.(3) is used to generate a trial vector with settings of rndb (n) and crossover ratio.

    4.3.4 Selection

    This stage achieves optimal DC selection by applying the rule mentioned in Section 3.4.The vector among trial and target vectors with the lowest fitness function value is selected as the next generation’s target vector.

    Since real-world problems commonly contain computationally expensive objectives, the optimization iteration should finish as soon as the optimum solution is obtained.Several techniques are available to determine the best stopping criterion for evolutionary algorithms [31–33].However,determining this stopping condition is not a simple task.While the global optimum is generally unknown, distance measures are not usable to achieve this goal.Stopping after a specific number of generations is limited to trial-and-error techniques that are used to determine the appropriate number of objective runs.Also, the number of objectives runs at which convergence happens is subject to large fluctuations because of the randomness in evolutionary algorithms.Subsequently,efficient stopping criteria must be applied to comply adaptively with the state of the optimization run.In this paper, a distribution-based criterion [33] called Diff, that depends on the difference between the value of the best objective function and the value of the worst objective function in a generation.The following rule is the termination condition used in this paper.

    If (Diff<Thr)

    Terminate;

    else

    Proceed;

    WhereThrdenotes a value with many orders of magnitude less than the required accuracy of the optimum [34].

    An experimental analysis proves that the convergence rate of 100% has been achieved when the difference threshold is set to one order of magnitude smaller than the demanded accuracy [33].

    One hundred numerical experiments were conducted using two optimization methods to demonstrate the superiority of the modified DE over conventional DE.Fig.5 illustrates the number of cases that each method can find the global maximum solution and how predominantly it ended up in the local maximum of the multi-objective function.

    Figure 5:Experiments carried out using a modified and conventional DE

    The modified DE algorithm is an extremely high global optimizer since it achieves an 89%hitting rate for the global maximum.Thus, it ensures getting asymptotic convergence to the global maximum.

    5 Experiments and Findings

    This section provides details of the simulation environment and scenarios used in this paper and discusses the experiments and findings.

    5.1 Simulation Environment

    This section provides details of the simulator used in this paper and simulation scenarios as well.

    5.1.1 Simulator

    The CloudAnalyst simulator is used to implement the proposed CSB policy and to simulate the experiments.It is easy to use due to its interactive graphical user interface, ability to configure simulation environment with a high degree of flexibility, and ability to provide visual and numerical outputs [35].

    5.1.2 Simulation Scenarios

    Six simulation scenarios are used to evaluate the proposed policy.Each scenario describes different situations regarding the number of cloud DC(s) and user bases that initiate jobs.Tab.2 presents these simulation scenarios in detail.

    Table 2:Simulation scenarios

    5.2 Experimental Results

    The proposed HPLCCSB policy is evaluated with other existing CSB policies, including[25,35]:(i) closest DC policy, (ii) optimized response time policy (iii) reconfigure dynamically with load balancing policy, and (iv) OSBRP policy in terms of processing time, response time and total cost.

    The experiments are performed five times for each scenario described earlier in Tab.1.Each load balancing policy includes round-robin, equally spread load execution, and throttled load balancing policy to verify results and ensure more reliable and accurate findings to reflect the real world.The following sections report the overall findings and the proposed CSB policy’s evaluation against the existing CSB policy in terms of processing time, response time, and the total cost.

    5.2.1 Evaluation of HPLCCSB Using Testing Scenarios

    The following testing scenarios aim to assess the proposed HPLCCSB policy’s ability to select the most appropriate cloud DC to execute incoming users’requests in the CC environment.Mainly, the evaluation focuses on calculating the processing and response time and the total cost of the proposed policy.Herein, the evaluation process is divided into six sub-scenarios to evaluate the HPLCCSB policy using the CloudAnalyst simulator.

    All simulation scenarios were executed using the same configurations to get the most accurate results by covering both peak and off-peak hours to analyze the proposed HPLCCSB policy’s efficiency.Since the proper allocation of the CC resources is guaranteed during user request execution, an appropriate selection of CSB policy and load balancing policy should positively influence the overall CC environment’s QoS [24] and [35].Each simulation scenario was executed five times for each load balancing policy (a total of 15 times) to ensure consistent CloudAnalyst simulator results and average performance metrics (i.e., response time, processing time, and total cost).The detailed results for the six simulation scenarios are in the following subsections.

    Evaluation Using Simulation Scenario 1The first scenario aims to determine the influence of low load on the performance metrics.Herein, the proposed HPLCCSB policy is evaluated by executing the first simulation scenario using round-robin, equally spread execution load, and throttled load balancing policies.Tab.3 shows the obtained results.

    Table 3:Evaluation of HPLCCSB policy using the first scenario

    In this experiment, it is noticeable that the proposed HPLCCSB policy has improved performance since it always routes the different users’requests to the cloud DCs with the best processing power.Therefore, it reduces congestion to the lowest level, unlike most existing CSB policies that might repeatedly select the same cloud DC to execute different user requests.The proposed HPLCCSB policy performs better with throttled load balancing policy because it assigns only one user’s request to each virtual machine at a time, and the other users’requests can be routed to other virtual machines.Thus the proposed policy assures efficient execution of the users’requests using different cloud DCs with minimal response, processing time, and total cost.

    Evaluation Using Simulation Scenario 2The second scenario aims to assess the influence of heavy load on the CC environment’s performance metrics.In a similar evaluation manner in scenario 1, the proposed policy is evaluated by executing the second simulation scenario using the three selected load balancing policies.Tab.4 shows the findings resulted from the HPLCCSB policy using the second scenario.

    Table 4:Evaluation of HPLCCSB policy using the second scenario

    The results show a trivial decrease in the response time because of the slight reduction in the processing time compared to results when executing simulation scenario 1.Indeed, this trivial decrease is due to the large load rate on the available network and the cloud DCs.But the proposed policy still has improved performance because it ensures selecting the cloud DCs with the best processing power each time.

    Evaluation Using Simulation Scenario 3Simulation Scenario 3 aims to assess the influence of an increasing number of users’requests per unit of time on the CC environment’s performance metrics.The proposed policy is evaluated using a similar evaluation mechanism followed previously by executing simulation scenario 3, and the results are in Tab.5.The average total cost increases in this simulation scenario compared to scenario number 2 due to the number of users’requests and the data transfer cost.But the response time and the processing time are not considerably impacted.

    Table 5:Evaluation of HPLCCSB policy using the third scenario

    The experiment results demonstrate that out of the selected load balancing policies, the cloud DC response and processing time are the lowest when using the throttled policy.The response and processing time are low because the HPLCCSB policy ensures an efficient allocation of the users’requests to all cloud DCs with the optimal processing power and ready to execute user requests.The throttled policy guarantees that each virtual machine has single user’s request to execute.This equitable allocation enhances the performance of the proposed HPLCCSB policy significantly.

    Evaluation Using Simulation Scenario 4Simulation Scenario 4 aims to assess the influence of peak and off-peak users’parameters on the CC environment’s performance metrics.In this regard,the experimental results, shown in Tab.6, ensure that the parameters that relate to the peak and off-peak users are important to bypass any influence on the response time or the processing time due to cloud changes DCs’load.

    Table 6:Evaluation of HPLCCSB policy using the fourth scenario

    The proposed policy performs much better when executed with throttled load balancing policy.Hence, considering the DCPP parameter (i.e., the proposed fitness function) with throttled load balancing policy enhances the QoS requirements for the simultaneous online users during peak or off-peak hours.Therefore, the average number of dropped user requests is noticeably decreased,the average number of executed users’requests is increased, and the average number of rejected users’requests is also decreased (i.e., the DC efficiency is increased) with a reduced cost of VM usage.

    Evaluation Using Simulation Scenario 5The fifth scenario aims to assess the influence of the cloud DCs’location from the user base on the CC environment’s performance metrics.This simulation scenario illustrates the worst-case scenario that the HPLCCSB policy might encounter due to the user bases’ geographical location and the cloud DCs.Despite that challenge, the proposed policy still achieves improved performance metrics (i.e., response and processing time and total cost).Tab.7 presents the findings resulted from the HPLCCSB policy using the fifth scenario.

    Table 7:Evaluation of HPLCCSB policy using the fifth scenario

    Also, the HPLCCSB policy performs much better when used with the throttled load balancing policy.The distribution of the cloud DC among different regions might negatively affect the data transfer cost (i.e., total cost).However, using the proposed CSB policy with the throttled load balancing policy might reduce the required data transfer cost by utilizing the most efficient cloud DC and VM among the available resources.

    Evaluation Using Simulation Scenario 6Finally, similar to simulation scenario 5, the aim of simulation scenario 6 is to assess the influence of the geographical location of the cloud DCs and user bases on the performance metrics in the CC environment.This simulation scenario proves the urgent need for such a policy that accommodates different situations by routing users’requests to different cloud DCs only when required.Since many distributions of users’requests among DCs will not always be the optimal solution, the proposed HPLCCSB policy selects a smaller number of cloud DCs for user request execution.It selects a new cloud DC only if needed.Therefore, the response time decreased noticeably.Tab.8 presents the results from the HPLCCSB policy using the sixth scenario.

    Table 8:Evaluation of HPLCCSB policy using the sixth scenario

    The results in Tab.8 show a considerable reduction in the cloud DCs’response time when using simulation scenario number 6.It requires less processing time obtained from executing the previous simulation scenario compared to this simulation scenario.Indeed, it is deduced that the processing time in every cloud DC is minimized once the user base is situated in a totally different region from the cloud DC.

    5.2.2 Comparative Analysis with Existing CSB Policies

    The performance of the proposed HPLCCSB policy is compared with some of the well-known CSB policies based on the evaluation metrics that are obtained from the previous simulation scenarios.The comparative test is used to estimate the computation time and total cost of the proposed HPLCCSB policy against related CSB policies for selecting the cloud DCs in the CC computing environment (refer to Fig.8).The proposed HPLCCSB policy is compared with the closest DCs, the optimized response time, the reconfigure dynamically with load balancing, and the OSBRP policies for the following reasons:(i) The closest DC policy is one of the simplest DC selection technique in the CC environment, (ii) The optimized response time policy achieves superb response time, (iii) The reconfigure dynamically with load balancing policy has a varied behavior according to simulation scenario, which might perform more suitable in specific scenarios, (iv) The OSBRP policy is based on a metaheuristic optimization algorithm similar to the proposed policy.Tab.9 shows the average of evaluation metrics of HPLCCSB Policyvs.existing CSB policies.

    In specific, the findings demonstrated in Tab.9 reveal that out of the three selected virtual machine load balancing policies, the average response time, the average processing time, and the average total cost are the lowest when using Throttled policy with the proposed HPLCCSB policy.As aforementioned, this fact is due to the HPLCCSB policy guarantees an efficient allocation of users’requests to all the cloud DCs that have the best processing power and available for executing the users’requests.In comparison, the throttled load balancing policy guarantees that each virtual machine has only one user request for execution.This balanced and efficient distribution of users’requests enhances response and processing time substantially.

    Table 9:Average performance metrics of HPLCCSB policy vs. existing CSB policies

    5.2.3 Significance of Enhancement

    This section is to measure whether the enhancement produced by HPLCCSB is significant or not using the T-test.A T-test is one of the most commonly used statistical tests to compare means [36].It is a parametric technique where the probability distribution of variables is defined,and inferences about the distribution parameters are made.The T-test is usually used when two independent groups describe the experimental subjects.It is also known as a student’s T-test,which can be used as a statistical analysis method to test whether there is a difference between two independent means or not.

    However, statistical significance is measured by calculating the probability of error (i.e., the p-value).If p is less than 0.05, the difference between the two means is statistically significant;else, the difference is not significant.Therefore, in this paper, the hypothesis of significance can be formulated as follows:

    H0:HPLCCSB does not significantly enhance the other CSB policies with respect to evaluation metrics.

    H1:HPLCCSB does significantly enhance the other CSB policies with respect to evaluation metrics.

    Tab.10 summarizes the T-test results, while Figs.6 and 7 presents the enhancement percentages of HPLCCSB with CDCP, ORTP, DRCSB, and OSBRP in average processing time, average response time, and average total cost, respectively.However, the results show that the proposed HPLCCSB policy has significantly improved the other existing CSB policies in terms of average processing time, average response time, and average total cost.

    Table 10:T-test results

    In sum, HPLCCSB enhances the average processing time of CDCP, ORTP, DRCSB, and OSBRP by 48.12%, 47.2%, 84.8%, and 37%, respectively, when using a round-robin load balancing policy.When using the equally spread execution-load load balancing policy, the HPLCCSB enhances the CDCP, ORTP, DRCSB, and OSBRP by 48.1%, 47.2%, 78%, and 37%, respectively.Using the throttled load balancing policy enhances CDCP, ORTP, DRCSB, and OSBRP by 49.7%,48.9%, 78.7%, and 34.2%, respectively.While, in terms of the average response time, HPLCCSB also enhances CDCP, ORTP, DRCSB, and OSBRP by 50.5%, 50.4%, 54.1%, and 40%, respectively when using the round-robin load balancing policy.Besides, it enhances CDCP, ORTP, DRCSB,and OSBRP by 50.5%, 50.4%, 50.6%, and 40%, respectively, when using the equally spread execution-load load balancing policy.Moreover, HPLCCSB also enhances CDCP, ORTP, DRCSB,and OSBRP by 50.8%, 50.8%, 51%, and 39.5%, respectively, when using throttled load balancing policy.Also, in terms of the average total cost, the HPLCCSB enhances CDCP, ORTP, DRCSB,and OSBRP by 63.4%, 63.4%, 91.7%, and 56.1%, respectively when using a round-robin load balancing policy.Also, it enhances the CDCP, ORTP, DRCSB, and OSBRP by 63.3%, 63.3%,91.7%, and 56.1%, respectively, when using the equally spread execution-load load balancing policy.Furthermore, when using the throttled load balancing policy, the HPLCCSB enhances CDCP, ORTP, DRCSB, and OSBRP by 63.3%, 63.3%, 91.7%, and 56.1%, respectively.

    Figure 6:Enhancement percentages of HPLCCSB with other CSB policies using round-robin load balancing policy in terms of average processing time and average response time

    Figure 7:Enhancement percentages of HPLCCSB with other CSB policies using round-robin load balancing policy in terms of the average total cost

    5.2.4 Discussion

    The effectiveness of the HPLCCSB has been demonstrated with three different load balancing policies:(i) round-robin, (ii) equally spread execution-load, and (iii) throttled.The HPLCCSB was evaluated using three main metrics:(i) average response time, (ii) average processing time, and (iii)average total cost.The following subsections discuss the results.

    Average Processing Time and Average Response TimeThe previous section analysis reveals that the proposed HPLCCSB policy significantly improves the existing CSB policies’performance in response and processing time.Since the HPLCCSB policy always routes the incoming user request to the least congested DC with maximum availability and efficiency and with the lowest average processing time and average response time, this might be guaranteed by maximizing the value of the proposed multi-objective function.Tab.9 shows the comparison results, which reveal that the HPLCCSB has an average processing time of 0.212688 milliseconds, 0.212688 milliseconds, and 0.206066 milliseconds when using round-robin, equally spread execution-load, and throttled load balancing policies, respectively.In user requests executions, the average response time is 83.2576 milliseconds, 83.2576 milliseconds, and 82.069 milliseconds when using the round-robin, equally spread execution-load, and throttled load balancing policies, respectively.HPLCCSB has a lower average processing time because it routes user requests to the most efficient DC based on the processing power (i.e., the proposed multi-objective function).Consequently, this causes the users’requests to be distributed to multiple DCs with the highest DCPP value, resulting in a significant reduction in response time and processing time.

    By contrast, the existing CSB policies rely only on the previous DC load or processing time for the last executed user request, regardless of the expected processing time that might reflect the actual processing time to some extent.Besides, the HPLCCSB policy ensures efficient resource utilization by selecting the most suitable DC without overloading one DC over others.It always invokes more VMs on different DCs compared to other existing policies.The existing policies select the same DCs frequently, which overload them and increase the response and processing time.Therefore, giving high weight to DCEff (i.e., maximization-positive weight) ensures the selection of DC with minimal processing time and response time.

    Due to the proposed MOF’s nature, HPLCCSB must achieve the minimum value of response time and processing for user request execution since it is one of the proposed MOF’s core objectives.Therefore, average processing time and average response time are compared with a minimum value of processing time and minimum value of response time, respectively, achieved by HPLCCSB using simulation scenarios.Figs.8 and 9 depict comparison results of HPLCCSB with CDCP, ORTP, DRCSB, and OSBRP, respectively, by presenting the difference between minimum values and average values resulting from each CSB policy in terms of processing time and response time.

    Figure 8:Difference between the minimum and average values for each CSB policy in terms of processing time using Round-Robin load balancing policy

    Figs.8 and 9 show the differences between the average values and minimum values of processing time and response time for each CSB policy.Since the HPLCCSB has the minimum difference between the value of average processing time and obtained value of minimum processing time and between the value of average response time and obtained value of minimum response time,thereby suggesting the HPLCCSB policy obtains the minimum processing time and response time values in the majority of the simulation experiments.By contrast, the difference between the average processing time and processing time’s minimum values, and the average response time and response time’s minimum values of the CDCP, ORTP, DRCSB, and OSBRP policies are mostly large.This large difference in the values indicate that these policies have higher processing time and response time in most of the experiments than the HPLCCSB policy.In sum, the HPLCCSB policy demonstrates optimal QoS requirements in terms of average processing time and average response time amongst these CSB policies.

    Figure 9:Difference between the minimum and average values comparison for each CSB policy in terms of response time using Round-Robin load balancing policy

    Average Total CostUnlike other existing CSB policies, the increase in the number of user requests or their sizes does not negatively impact HPLCCSB policy since it considers the incoming user requests sizes during DC selection (i.e., by considering the expected processing time in MOF).Additionally, it always execute user requests using the most efficient and available DC (i.e., DC with the highest value of DCEff and DCAV) among the existing DCs.Generally, executing largesized user requests costs more than the small ones since it involves more data transfer between the DC and user base.Despite that, the HPLCCSB policy does not always increase the total cost significantly since it gives the highest weight (i.e., minimization-negative weight) to the total cost in the proposed MOF (refer to Tab.9); thus, it ensures the lowest cost even when executing incoming user requests constantly.Meanwhile, the comparison results shown earlier in Tab.9 reveal that HPLCCSB consumes less average total cost (1.000562 US Dollar, 1.000562 US Dollar,and 1.000562 US Dollar when using round-robin, equally spread execution-load, and throttled load balancing policies, respectively).Due to the proposed MOF’s nature, HPLCCSB must achieve the minimum value of total cost when executing user requests since it is one of the proposed MOF’s core objectives.Therefore, the average total cost is compared with the minimum value of total cost achieved by HPLCCSB using simulation scenarios.Fig.10 shows the comparison of HPLCCSB with CDCP, ORTP, DRCSB, and OSBRP, respectively, by presenting the difference between minimum values and average values resulting from each CSB policy in terms of the total cost using a round-robin load balancing policy.

    Figure 10:Difference between the minimum and average values for each CSB policy in terms of the total cost using Round-Robin load balancing policy

    As noticed from the previous Fig., HPLCCSB has the minimum difference between average total cost and minimum obtained value of total cost, thereby suggesting that the HPLCCSB policy achieved the minimum total cost value in most simulation experiments.By contrast, the difference between values of average total cost and minimum values resulting from CDCP, ORTP, DRCSB,and OSBRP are mostly higher than the difference resulting from HPLCCSB, indicating that these policies have higher total cost values in most of the experiments.Therefore, the HPLCCSB policy demonstrates optimal QoS requirements in terms of average total cost amongst these CSB policies.

    Due to the nature of the CC environment, based on a pay-as-you-go or pay-per-use basis,achieving minimum total cost is a major QoS requirement for cloud users.Therefore, from a cloud user’s perspective, HPLCCSB ensures executing their requests efficiently with minimum cost.From a security perspective, HPLCCSB minimizes the Economic Denial of Sustainability attack(EDoS) impact.Indubitably, understanding the reasoning behind scheduling decisions is quite important property in practical scenarios.In this regard, simple heuristics such as CDCP and ORTP are appealing approaches since the reason behind their scheduling decisions (the assignment of cloud applications to data centers) is straightforward.Any alternative scheduling decisions approach must have significant performance improvements to be appealing.In this context, results of enhancement significance justify the need for the deployment of the proposed policy since it performs better when compared to simple heuristics.

    In conclusion, the HPLCCSB policy is usable to select the most appropriate DC in the cloud environment to execute the users’requests efficiently without degrading the level of QoS.Implementing the proposed CSB policy in a real-cloud environment might ensure efficient selection of the DCs without being overloaded; thereby, improving the overall performance and reducing the total cost.Therefore, efficient utilization of the DCs enhances the cloud environment by allowing user request execution with a high QoS level.Indeed, the HPLCCSB policy achieves the major QoS requirements, including the lowest processing time, lowest response time, and minimum total cost.This policy also provides a better QoS than CDCP, ORTP, DRCSB, and OSBRP in terms of average processing time, average response time, and average total cost.

    6 Conclusion and Future Work

    This paper proposed a modified DE algorithm-based CSB policy used to select the cloud DC.The attention to finding an efficient CSB policy to select the cloud data center is always a topic of interest due to the continuous growth of users’requests.As reviewed from prior works, traditional and existing proposed CSB policy still suffer from different challenges due to the dynamic and incremental nature of users’requests.Compared to the existing policies, the proposed policy using a modified DE algorithm seems a practicable policy to route users’requests to the most efficient DC.The findings demonstrate that the proposed policy is superior to other existing policies.

    As future work, the cloud users’QoS requirements should be considered to determine how good the solution is with respect to the optimal solution.Besides, deploying the proposed solution in an online mode (i.e., real cloud’s environment) should take place in the future to determine the ability of the proposed solution in dealing with varying arrival rates of real users’requests.

    Acknowledgement:I express my gratitude to Universiti Sains Malaysia, Malaysia and Northern Border University, Saudi Arabia, for administrative and technical support.

    Funding Statement:This work was supported by Universiti Sains Malaysia under external grant(Grant Number 304/PNAV/650958/U154).

    Conflict of Interest:The authors declare that they have no conflicts of interest to report regarding the present study.

    成人特级av手机在线观看| 成熟少妇高潮喷水视频| 日本三级黄在线观看| 久久久精品大字幕| 国产毛片a区久久久久| 亚洲专区中文字幕在线| 丰满人妻一区二区三区视频av | 51午夜福利影视在线观看| 99在线视频只有这里精品首页| 校园春色视频在线观看| 日韩欧美在线乱码| 每晚都被弄得嗷嗷叫到高潮| 一进一出好大好爽视频| 亚洲国产欧美一区二区综合| 成熟少妇高潮喷水视频| www日本在线高清视频| 18禁观看日本| 天堂√8在线中文| 日本 欧美在线| 欧美黄色淫秽网站| 91九色精品人成在线观看| 国产亚洲精品久久久久久毛片| 91av网一区二区| 国产一区二区在线av高清观看| 国产精品 国内视频| 两人在一起打扑克的视频| 天堂网av新在线| 手机成人av网站| 国产男靠女视频免费网站| 国产精品一及| 啪啪无遮挡十八禁网站| 色综合欧美亚洲国产小说| 日日夜夜操网爽| 手机成人av网站| 午夜福利18| 女生性感内裤真人,穿戴方法视频| 一边摸一边抽搐一进一小说| 精品久久久久久久久久久久久| 两性午夜刺激爽爽歪歪视频在线观看| 亚洲美女黄片视频| 叶爱在线成人免费视频播放| 欧美丝袜亚洲另类 | 亚洲黑人精品在线| 午夜福利成人在线免费观看| 亚洲最大成人中文| 欧美在线黄色| 久久久久久久精品吃奶| 99热这里只有精品一区 | 国产精品九九99| 欧美黑人巨大hd| xxxwww97欧美| 午夜日韩欧美国产| 成人av一区二区三区在线看| 变态另类丝袜制服| 可以在线观看的亚洲视频| 九色国产91popny在线| 亚洲午夜精品一区,二区,三区| 免费看a级黄色片| 19禁男女啪啪无遮挡网站| 高清毛片免费观看视频网站| 欧美大码av| 国语自产精品视频在线第100页| 亚洲自拍偷在线| 成人特级av手机在线观看| 久久久国产成人免费| av黄色大香蕉| 国产精品久久久久久久电影 | 18美女黄网站色大片免费观看| 99久国产av精品| 国产午夜精品论理片| ponron亚洲| 亚洲精品色激情综合| 日本 欧美在线| 欧美另类亚洲清纯唯美| 黄色日韩在线| 在线永久观看黄色视频| 男插女下体视频免费在线播放| 国产精品久久电影中文字幕| 国产精品98久久久久久宅男小说| 国产蜜桃级精品一区二区三区| а√天堂www在线а√下载| 国产日本99.免费观看| 99久久精品一区二区三区| 色哟哟哟哟哟哟| 宅男免费午夜| 欧美成人一区二区免费高清观看 | 波多野结衣高清作品| 嫁个100分男人电影在线观看| 国产精品 欧美亚洲| 婷婷亚洲欧美| 午夜免费观看网址| 亚洲五月婷婷丁香| 国产探花在线观看一区二区| 嫩草影视91久久| 亚洲精品粉嫩美女一区| 久久久久性生活片| 老司机深夜福利视频在线观看| 人人妻人人澡欧美一区二区| 我要搜黄色片| 久久草成人影院| 又黄又粗又硬又大视频| 色噜噜av男人的天堂激情| svipshipincom国产片| 欧美日韩国产亚洲二区| 18禁黄网站禁片免费观看直播| 午夜亚洲福利在线播放| 又爽又黄无遮挡网站| 香蕉久久夜色| 国产又色又爽无遮挡免费看| 老鸭窝网址在线观看| 精品日产1卡2卡| 又黄又爽又免费观看的视频| 少妇人妻一区二区三区视频| 天天添夜夜摸| 久久久国产成人精品二区| 国产午夜精品论理片| 国产野战对白在线观看| 国产成人精品久久二区二区91| 特大巨黑吊av在线直播| 黑人巨大精品欧美一区二区mp4| 日本 av在线| 夜夜爽天天搞| 中文字幕最新亚洲高清| 国产极品精品免费视频能看的| 精品乱码久久久久久99久播| 久9热在线精品视频| 天堂网av新在线| 两个人的视频大全免费| 欧美性猛交╳xxx乱大交人| 免费在线观看亚洲国产| 天天一区二区日本电影三级| 久久精品国产亚洲av香蕉五月| a级毛片在线看网站| 国内久久婷婷六月综合欲色啪| av福利片在线观看| 国产av不卡久久| 久9热在线精品视频| 99精品在免费线老司机午夜| 12—13女人毛片做爰片一| 国产午夜精品久久久久久| 国产真实乱freesex| 一级毛片精品| 日韩欧美精品v在线| 我要搜黄色片| 法律面前人人平等表现在哪些方面| 免费无遮挡裸体视频| 草草在线视频免费看| 国产精品久久视频播放| 国产探花在线观看一区二区| 久久欧美精品欧美久久欧美| cao死你这个sao货| 精品久久久久久久久久久久久| 夜夜看夜夜爽夜夜摸| 久久久久久久久久黄片| 在线免费观看不下载黄p国产 | 亚洲精品中文字幕一二三四区| 久久这里只有精品19| 亚洲无线观看免费| 国产免费av片在线观看野外av| 麻豆av在线久日| 两个人看的免费小视频| 伊人久久大香线蕉亚洲五| 久久久久久大精品| 美女扒开内裤让男人捅视频| 身体一侧抽搐| 亚洲九九香蕉| 天堂影院成人在线观看| 大型黄色视频在线免费观看| 成人午夜高清在线视频| 久久久精品大字幕| 欧美av亚洲av综合av国产av| 桃红色精品国产亚洲av| 亚洲成av人片在线播放无| 无遮挡黄片免费观看| 51午夜福利影视在线观看| 精品久久久久久成人av| 成人av一区二区三区在线看| 91在线精品国自产拍蜜月 | 亚洲精品一卡2卡三卡4卡5卡| 免费av毛片视频| 男人和女人高潮做爰伦理| 国产伦精品一区二区三区四那| 99国产极品粉嫩在线观看| 国产伦人伦偷精品视频| 级片在线观看| 欧美+亚洲+日韩+国产| 91av网站免费观看| 真实男女啪啪啪动态图| 日本五十路高清| 精品免费久久久久久久清纯| 99热这里只有是精品50| 国产乱人视频| 亚洲国产欧美一区二区综合| 99久久精品一区二区三区| 人人妻人人澡欧美一区二区| 一本久久中文字幕| 亚洲成av人片在线播放无| 中文字幕人成人乱码亚洲影| 国产欧美日韩一区二区精品| 免费看光身美女| 国产高清激情床上av| 男插女下体视频免费在线播放| 日日摸夜夜添夜夜添小说| 欧美日本亚洲视频在线播放| 高清毛片免费观看视频网站| 亚洲午夜理论影院| 久久精品aⅴ一区二区三区四区| 香蕉国产在线看| 亚洲av中文字字幕乱码综合| 日本 av在线| 男人和女人高潮做爰伦理| 亚洲av成人一区二区三| 国产精品久久久人人做人人爽| 亚洲色图 男人天堂 中文字幕| 中文字幕av在线有码专区| 97人妻精品一区二区三区麻豆| 在线观看午夜福利视频| 亚洲国产日韩欧美精品在线观看 | 51午夜福利影视在线观看| 精品久久蜜臀av无| 麻豆久久精品国产亚洲av| 19禁男女啪啪无遮挡网站| 亚洲欧美日韩高清专用| 国产精品乱码一区二三区的特点| 亚洲18禁久久av| 免费在线观看成人毛片| 国产乱人伦免费视频| 国产免费av片在线观看野外av| 母亲3免费完整高清在线观看| 九色国产91popny在线| 国产精品久久久久久亚洲av鲁大| 亚洲av熟女| 久久人妻av系列| 999精品在线视频| 国产精品自产拍在线观看55亚洲| 最新美女视频免费是黄的| 久久欧美精品欧美久久欧美| 黄片大片在线免费观看| 搞女人的毛片| 亚洲,欧美精品.| 精品无人区乱码1区二区| 国产精品国产高清国产av| 中文字幕人妻丝袜一区二区| 男女视频在线观看网站免费| 日韩欧美在线二视频| 亚洲成人久久性| 一个人免费在线观看电影 | 91麻豆精品激情在线观看国产| 嫩草影院入口| 岛国在线免费视频观看| 国内精品久久久久久久电影| 亚洲精品456在线播放app | 久久国产精品影院| 色在线成人网| 99国产精品一区二区蜜桃av| 日本在线视频免费播放| 免费无遮挡裸体视频| 日本黄大片高清| 他把我摸到了高潮在线观看| 最近最新免费中文字幕在线| 精品99又大又爽又粗少妇毛片 | 亚洲美女视频黄频| 国产精品 国内视频| aaaaa片日本免费| 一区二区三区国产精品乱码| 日韩人妻高清精品专区| 久久中文字幕一级| xxxwww97欧美| 欧美最黄视频在线播放免费| 91字幕亚洲| 天天添夜夜摸| 亚洲成a人片在线一区二区| 亚洲 欧美一区二区三区| 夜夜看夜夜爽夜夜摸| 国产伦精品一区二区三区视频9 | 久久久久亚洲av毛片大全| avwww免费| 国产精品久久久久久人妻精品电影| 成人亚洲精品av一区二区| 婷婷精品国产亚洲av| 亚洲精品在线观看二区| 日本免费a在线| 在线看三级毛片| 熟妇人妻久久中文字幕3abv| 精品久久久久久,| 在线免费观看的www视频| 黄频高清免费视频| 亚洲人与动物交配视频| 熟女少妇亚洲综合色aaa.| 日韩欧美在线乱码| 成年女人看的毛片在线观看| 天堂√8在线中文| 欧美中文日本在线观看视频| 色综合婷婷激情| 欧美+亚洲+日韩+国产| 国产伦人伦偷精品视频| 国产综合懂色| 黄色成人免费大全| 老熟妇仑乱视频hdxx| 午夜a级毛片| 国产精品精品国产色婷婷| x7x7x7水蜜桃| 看黄色毛片网站| 国产高潮美女av| 亚洲精品美女久久久久99蜜臀| 国产亚洲精品久久久com| 99久国产av精品| 一区二区三区国产精品乱码| 日本黄色视频三级网站网址| 男女做爰动态图高潮gif福利片| 亚洲av第一区精品v没综合| 一级a爱片免费观看的视频| 国产精品爽爽va在线观看网站| 亚洲人成伊人成综合网2020| 日韩欧美在线乱码| 日韩 欧美 亚洲 中文字幕| 亚洲国产欧美一区二区综合| 一卡2卡三卡四卡精品乱码亚洲| 国产亚洲精品久久久久久毛片| 久久中文字幕一级| 日本一本二区三区精品| 久久精品夜夜夜夜夜久久蜜豆| 国产美女午夜福利| 999精品在线视频| 老鸭窝网址在线观看| 韩国av一区二区三区四区| 热99在线观看视频| 99在线视频只有这里精品首页| 色老头精品视频在线观看| 亚洲美女视频黄频| 中文字幕精品亚洲无线码一区| 网址你懂的国产日韩在线| 听说在线观看完整版免费高清| 夜夜躁狠狠躁天天躁| 啦啦啦免费观看视频1| 成年人黄色毛片网站| 免费无遮挡裸体视频| 久久中文字幕人妻熟女| 国产精品野战在线观看| 天堂√8在线中文| 99久久成人亚洲精品观看| 久久精品人妻少妇| 男人和女人高潮做爰伦理| 婷婷精品国产亚洲av| 我要搜黄色片| 中文资源天堂在线| 淫秽高清视频在线观看| 一级毛片精品| 亚洲熟妇熟女久久| 午夜精品一区二区三区免费看| 日韩成人在线观看一区二区三区| 长腿黑丝高跟| 一二三四在线观看免费中文在| 麻豆成人av在线观看| 最新中文字幕久久久久 | 99热6这里只有精品| 国产精品亚洲美女久久久| 国产又色又爽无遮挡免费看| 亚洲精华国产精华精| 一级毛片女人18水好多| 国产精品综合久久久久久久免费| 露出奶头的视频| 一卡2卡三卡四卡精品乱码亚洲| 麻豆成人av在线观看| 国产午夜精品久久久久久| 欧美丝袜亚洲另类 | 国产主播在线观看一区二区| 男插女下体视频免费在线播放| 亚洲国产欧美网| 99在线人妻在线中文字幕| 久久人妻av系列| 精品国产三级普通话版| 国产成人欧美在线观看| 90打野战视频偷拍视频| 啦啦啦观看免费观看视频高清| 国产精品一及| 国产av一区在线观看免费| 国产精品久久久av美女十八| 欧美色欧美亚洲另类二区| 国产高潮美女av| 久久精品91无色码中文字幕| 欧美绝顶高潮抽搐喷水| 19禁男女啪啪无遮挡网站| 亚洲第一电影网av| 国产蜜桃级精品一区二区三区| 午夜福利成人在线免费观看| 日韩 欧美 亚洲 中文字幕| 无人区码免费观看不卡| 91字幕亚洲| 成人av在线播放网站| 国产99白浆流出| 18禁裸乳无遮挡免费网站照片| 天天一区二区日本电影三级| 午夜亚洲福利在线播放| 日韩国内少妇激情av| 国产精品av久久久久免费| 看黄色毛片网站| 亚洲国产欧美人成| 亚洲中文日韩欧美视频| 噜噜噜噜噜久久久久久91| 麻豆一二三区av精品| 99在线人妻在线中文字幕| 国内精品久久久久精免费| 久久久久久久久久黄片| 精品一区二区三区av网在线观看| 97超视频在线观看视频| 欧美一级a爱片免费观看看| 岛国视频午夜一区免费看| 中文字幕最新亚洲高清| 国产精品久久久人人做人人爽| 非洲黑人性xxxx精品又粗又长| 国产精品1区2区在线观看.| 在线看三级毛片| 国内精品久久久久精免费| 在线视频色国产色| 青草久久国产| 国产精品99久久久久久久久| 美女高潮喷水抽搐中文字幕| 真人一进一出gif抽搐免费| 国产熟女xx| 在线观看免费视频日本深夜| 99久久久亚洲精品蜜臀av| 嫩草影院入口| 99久久99久久久精品蜜桃| 香蕉av资源在线| 国产美女午夜福利| 精品福利观看| a级毛片a级免费在线| 午夜久久久久精精品| 一区二区三区高清视频在线| 亚洲av免费在线观看| 美女cb高潮喷水在线观看 | 国产野战对白在线观看| 免费看美女性在线毛片视频| 观看免费一级毛片| 欧美av亚洲av综合av国产av| 久久久国产成人免费| 国产精品一区二区三区四区免费观看 | 免费观看的影片在线观看| 中文资源天堂在线| 香蕉av资源在线| 性欧美人与动物交配| 一区二区三区激情视频| 综合色av麻豆| 午夜成年电影在线免费观看| 无遮挡黄片免费观看| 亚洲欧美日韩高清专用| 99视频精品全部免费 在线 | 我的老师免费观看完整版| 波多野结衣高清作品| 国产精品 欧美亚洲| 国产精品久久久久久精品电影| 亚洲欧洲精品一区二区精品久久久| 国产私拍福利视频在线观看| 国产在线精品亚洲第一网站| 哪里可以看免费的av片| 国产成人精品久久二区二区免费| 免费大片18禁| 国产亚洲精品av在线| 99国产综合亚洲精品| 小蜜桃在线观看免费完整版高清| 宅男免费午夜| 国产v大片淫在线免费观看| 国产高潮美女av| 老鸭窝网址在线观看| 国产精品99久久久久久久久| or卡值多少钱| 日日夜夜操网爽| 亚洲18禁久久av| 国产av一区在线观看免费| 搡老岳熟女国产| 国产69精品久久久久777片 | 黄片大片在线免费观看| 国产精品亚洲美女久久久| www.999成人在线观看| 国产久久久一区二区三区| 婷婷精品国产亚洲av在线| www.www免费av| 国产成+人综合+亚洲专区| 五月玫瑰六月丁香| 欧美中文综合在线视频| 久久久久亚洲av毛片大全| 男人和女人高潮做爰伦理| 亚洲欧美精品综合一区二区三区| 我要搜黄色片| 丁香六月欧美| 在线免费观看的www视频| 99热这里只有精品一区 | 久久久久久久精品吃奶| 日日夜夜操网爽| 99热只有精品国产| 欧美中文综合在线视频| 久久国产乱子伦精品免费另类| 噜噜噜噜噜久久久久久91| 最近最新中文字幕大全免费视频| 免费观看精品视频网站| 97超视频在线观看视频| 成人18禁在线播放| 村上凉子中文字幕在线| bbb黄色大片| 日韩人妻高清精品专区| 男人和女人高潮做爰伦理| 久久久久免费精品人妻一区二区| 日韩欧美三级三区| 日本在线视频免费播放| 天天躁狠狠躁夜夜躁狠狠躁| 久久久国产成人精品二区| avwww免费| 久久热在线av| 久久香蕉国产精品| 一个人看视频在线观看www免费 | 精品一区二区三区四区五区乱码| 99re在线观看精品视频| 日韩欧美国产在线观看| 女生性感内裤真人,穿戴方法视频| 欧美乱码精品一区二区三区| 91在线精品国自产拍蜜月 | 黄片小视频在线播放| 99久久精品一区二区三区| 国产精品av久久久久免费| 欧美不卡视频在线免费观看| 久久久久九九精品影院| 欧美一区二区精品小视频在线| 成年免费大片在线观看| 久久婷婷人人爽人人干人人爱| 亚洲av成人精品一区久久| 午夜福利免费观看在线| 最新中文字幕久久久久 | 久久精品夜夜夜夜夜久久蜜豆| 最新美女视频免费是黄的| 亚洲中文av在线| 国产精品99久久久久久久久| 一边摸一边抽搐一进一小说| 国内少妇人妻偷人精品xxx网站 | 久久中文看片网| 精品一区二区三区av网在线观看| 嫩草影院精品99| 老熟妇乱子伦视频在线观看| 欧美成狂野欧美在线观看| www.自偷自拍.com| 精品久久久久久成人av| 亚洲熟妇中文字幕五十中出| 一本综合久久免费| 在线观看午夜福利视频| 亚洲 国产 在线| 91麻豆av在线| 亚洲av免费在线观看| 9191精品国产免费久久| 日本 欧美在线| 亚洲精品在线美女| 美女 人体艺术 gogo| 日韩 欧美 亚洲 中文字幕| 国产在线精品亚洲第一网站| 亚洲性夜色夜夜综合| 婷婷精品国产亚洲av| 成人性生交大片免费视频hd| 国产成人系列免费观看| 黑人欧美特级aaaaaa片| 亚洲九九香蕉| 九九在线视频观看精品| 午夜激情福利司机影院| 91av网一区二区| 久久国产精品人妻蜜桃| 露出奶头的视频| 国产精品99久久99久久久不卡| 在线观看日韩欧美| 99re在线观看精品视频| 一级毛片女人18水好多| 亚洲欧美一区二区三区黑人| 亚洲国产高清在线一区二区三| 狂野欧美白嫩少妇大欣赏| 最新中文字幕久久久久 | 久久中文看片网| 黑人操中国人逼视频| 嫩草影院入口| 男人舔女人的私密视频| 欧洲精品卡2卡3卡4卡5卡区| 麻豆国产97在线/欧美| 免费看光身美女| 香蕉国产在线看| 亚洲国产精品sss在线观看| 观看免费一级毛片| 偷拍熟女少妇极品色| 全区人妻精品视频| 97超级碰碰碰精品色视频在线观看| 国产伦精品一区二区三区视频9 | 国产乱人伦免费视频| 可以在线观看的亚洲视频| 国内揄拍国产精品人妻在线| 日日摸夜夜添夜夜添小说| 色播亚洲综合网| 18禁观看日本| 日本三级黄在线观看| 欧美性猛交黑人性爽| 婷婷精品国产亚洲av| 三级毛片av免费| 国产免费av片在线观看野外av| 久久久久久久久中文| 欧美成人一区二区免费高清观看 | 国产久久久一区二区三区| 欧美一区二区国产精品久久精品| h日本视频在线播放| 无人区码免费观看不卡| 久久婷婷人人爽人人干人人爱| 一区二区三区国产精品乱码| 久久天躁狠狠躁夜夜2o2o| 久久久久亚洲av毛片大全| 一本精品99久久精品77| 久久中文字幕一级| 动漫黄色视频在线观看| 欧美中文日本在线观看视频| 国产精品一区二区三区四区久久| 99国产精品一区二区三区| 午夜精品在线福利| 日韩 欧美 亚洲 中文字幕|