• 
    

    
    

      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 ?

      Modeling and Robust Backstepping Sliding Mode Control with Adaptive RBFNN for a Novel Coaxial Eight-rotor UAV

      2015-08-11 11:56:10ChengPengYueBaiXunGongQingjiaGaoChangjunZhaoandYantaoTian
      IEEE/CAA Journal of Automatica Sinica 2015年1期

      Cheng Peng,Yue Bai,Xun Gong,Qingjia Gao,Changjun Zhao,and Yantao Tian

      Modeling and Robust Backstepping Sliding Mode Control with Adaptive RBFNN for a Novel Coaxial Eight-rotor UAV

      Cheng Peng,Yue Bai,Xun Gong,Qingjia Gao,Changjun Zhao,and Yantao Tian

      —This paper focuses on the robust attitude control of a novelcoaxialeight-rotor unmanned aerialvehicles(UAV)which has higher drive capability as well as greater robustness against disturbances than quad-rotor UAV.The dynamicaland kinematicalmodelfor the coaxialeight-rotor UAV is developed,which has never been proposed before.A robust backstepping sliding mode controller(BSMC)with adaptive radial basis function neural network(RBFNN)is proposed to controlthe attitude of the eightrotor UAV in the presence of model uncertainties and external disturbances.The combinative method of backstepping control and sliding mode control has improved robustness and simplified design procedure benefiting from the advantages of both controllers.The adaptive RBFNN as the uncertainty observer can effectively estimate the lumped uncertainties withoutthe knowledge oftheir bounds for the eight-rotor UAV.Additionally,the adaptive learning algorithm,which can learn the parameters of RBFNN online and compensate the approximation error,is derived using Lyapunov stability theorem.And then the uniformly ultimate stability of the eight-rotor system is proved.Finally,simulation results demonstrate the validity of the proposed robust control method adopted in the novel coaxial eight-rotor UAV in the case of model uncertainties and external disturbances.

      Index Terms—Coaxial eight-rotor UAV,model uncertainties, external disturbances,robust backstepping sliding mode controller,adaptive radial basis function neural network.

      I.INTRODUCTION

      R Ecently,a quad-rotor UAV as the rotary wing UAV consisting of four individual rotors of“X”arrangement, has evoked a greatinterestin the research and academic circles due to its simple mechanical structure and attractive vertical take-off and landing capability[1].Numerous applications of the quad-rotor have been steadily increasing in a wide range of areas such as surveillance,search,rescue and scout[2].

      However,in practical situations,there are many difficult problems in controlling quad-rotor UAV because of the inevitable uncertainties[3].Thus,the robust control problemhas been increasingly considered for quad-rotor with model uncertainties and external disturbances[4?10].A robust sliding mode flightcontroller with sliding mode disturbance observer was developed for a smallquad-rotor[4].This technique allows for a continuous control robust to external disturbance and model uncertainties without the use of high control gain or extensive computational power.Raffo et al.[5]proposed an integral predictive and nonlinear robust control strategy with a hierarchical scheme consisting of a model predictive controller(MPC)to track the reference trajectory together with a nonlinear H∞controller to stabilize the rotational movements for a quad-rotor.The effectiveness and the robustness of the controller were corroborated by simulations in the presence of aerodynamic disturbances,parametric and structural uncertainties.Mohammadi et al.[6]used model reference adaptive control(MRAC)technique to control a quad-rotor in the case of various conditions with parametric and non-parametric uncertainties in the model.An accurate simulation including empiricaldynamic modelofbattery,sensors,and actuators was performed to validate the stability of the closed loop system. A controller based on the block control technique combined with the super twisting controlalgorithm[7]has been proposed for the quad-rotor.The virtual control inputs and the wind parameter resulting from the aerodynamic forces have been estimated via the first order exact differentiator.Simulations and experiments verified the validity of the controller when faced with disturbances.Saticietal.[8]designed an L1-optimal controller for a quad-rotor UAV that rejects persistent disturbances.The controller yields an exponential decrease of the magnitude of the errors in an L1-optimalsense in the presence of parametric uncertainty and measurement noise.Liu et al.[9]designed a robust attitude control method combining PD control with the robust compensation for uncertain quadrotors.The PD controller is aimed to achieve the desired tracking and the robust compensator is added to restrain the influence of the uncertainties.A simple robust quad-rotor controller[10]was provided using linear matrix inequalities to synthesize controller gains.The controller is based on approximate feedback linearization considering dynamic external disturbances,inexact nonlinearity cancellation,multiplicative actuator uncertainty and saturated integrators.

      The aforementioned robust control methods are all based on the inherent structure of quad-rotor that leads to the deficiency in driving capability.This paper therefore develops a novel coaxial eight-rotor UAV with a new configuration.It is designed with eightrotors thatare arranged as fourcounterrotating offset pairs mounted at the ends of four carbon fiberarms in a cruciform configuration.The four sets of matched counter rotating rotor blades provide differential thrust from four equally spaced points,which allows the eight-rotor UAV to maneuver with higher agility.And it offers the advantage of markedly increased drive capability and greater ability to resistto disturbance owing to its added four rotors than quadrotor in condition of using the same type of motors and rotors.As a result,the coaxial eight-rotor UAV has nearly twice overallthrustthan a quad-rotor UAV withoutincreasing the weight to double.Besides,the eight-rotor UAV has the same floor space as a quad-rotor UAV.Obviously,the higher coefficientproportion between thrustand gravity as wellas the greater payload capacity are provided by the eight-rotor UAV as compared with a quad-rotor UAV in the case of the same type ofmotors and rotors.Furthermore,the coaxialeight-rotor UAV has dominant superiorities in terms of weaker degree of attitude coupling in the cruciform structure and stronger damage tolerance to have stable flight when some of rotors are broken,these features are notprovided in quad-rotor UAV.

      On this basis,a robustbackstepping sliding mode controller (BSMC)with adaptive radial basis function neural network (RBFNN)is proposed to control the attitude of the coaxial eight-rotor UAV in the case of modeluncertainties and external disturbances.As we know,the key feature of backstepping design is thatitstabilizes the system states through a step-bystep recursive process[11].Once the finalstep is completed,the stability of the entire system is guaranteed naturally[12].However,conventional backstepping design with integral adaptive laws is no longer applicable when the derivatives of the model uncertainty and the disturbance cannot be regarded as zero[13].Thereby,efforts to combine backstepping technique with sliding mode control(SMC)that has inherent insensitivity and robustness against disturbances under the matching conditions were made[14?15].Unfortunately,a prior knowledge of the uncertainty and disturbance bounds is required for the backstepping and sliding mode control.On account of these characteristics,adaptive RBFNN is introduced as the uncertainty observer in this research.It can effectively estimate the model uncertainties and external disturbances without the pre-knowledge of uncertainties bounds,which makes itpossible to combine those two design methodologies to preserve their advantages and at the same time overcome their drawbacks mentioned above.Finally,the satisfactory robustness and attitude control performance of BSMC with adaptive RBFNN method are demonstrated via simulations in the case where the inertia matrix uncertainties as model uncertainties and external disturbance are taken into account.

      II.DYNAMIC MODEL OF COAXIAL EIGHT-ROTOR UAV

      The eight-rotor UAV in cruciform configuration consists of four pairs of coaxial double rotors,as shown in Fig.1,where?i,i=1,2,···,8 is the speed of eight rotors respectively. Each pair of double rotors is counter rotating.Meanwhile, the two adjacent pairs of rotors rotate in opposite directions. That is,the rotors of 1,4,5,8 rotate clockwise,while the other rotors rotate counterclockwise.When the rotorspeeds are together varied,the thrust will be changed,which will affect the altitude of the system.The pitch movement is obtained by increasing(reducing)the speed of the rear pair of rotors and reducing(increasing)the speed of the frontpair of rotors,the roll angle can be obtained similarly using the remaining two pairs of rotors.The yaw movement is provided by speeding up or slowing down the speed of counter-clockwise rotors and changing the same speed of rotary clockwise rotors in the opposite direction depending on the desired angle direction, which in turn generates reactive torque.The translational movement depends on the change of pitch or roll angle.

      There are two main reference frames defi ned to express the dynamics of eight-rotor UAV,as shown in Fig.1:the earthfixed inertial frame E={Ogxgygzg}and the body-fixed frame B={Obxbybzb}both fixed atthe centre of the aircraft. The translational position of the eight-rotor UAV is defined as ζ=[x,y,z]Tand the attitude is expressed by three Euler anglesη=[φ,θ,ψ]T.

      Fig.1.The scheme of coaxial eight-rotor UAV.

      Owing to the eight-rotor UAV treated as a symmetricalrigid body with six degrees offreedom,the nonlineardynamics can be derived by using Newton-Euler formulas.The rotational dynamic equations of the eight-rotor UAV can be obtained by

      and JJJ=diag(Ix,Iy,Iy)as the moment of inertia along x,y and z directions.ω = [p,q,r]Tdenotes the angular velocity with respect to body-fi xed frame B.= [ΔM1x,ΔM1y,ΔM1z]expresses unmodeled dynamics such as gyroscopic effect and aerodynamic moments that actually is very complicated and hardly modeled.= [ΔM2x,ΔM2y,ΔM2z]denotes external disturbances.From the above,by substituting(2)into(1),it can be derived that

      where sk(ω)is called as skew-symmetric matrix and defined as

      Furthermore,the inertia matrix uncertainty is considered as the modeluncertainty caused by the change in mass properties andis expressed asΔJJJ=diagΔIx,ΔIy,ΔIz.Then the rotational dynamic equation is given by In addition,the torque MMM=[Mx,My,Mz]Tprovided by the rotors thrust is expressed as

      where the thrust factor k1and the drag factor k2are positive coefficients and assumed to be constant when the eight-rotor UAV is operated at low speed,the parameter l expresses the distance between the rotor and the centre of the aircraft.

      Accordingly,by substituting(6)into(5),we have

      There is the relationship between the body angular velocity ωand the Euler rates˙ηby the factthatthey are from different coordinate systems,which can be described as

      The matrix T is invertible when the pitch angle satisfies θ/=(2k?1)π/2(k∈Z).In the generalcase ofsmallattitude angles,we can assume that T is a unit matrix for simplicity. As a consequence,the rotational kinematics equation can be facilitated as follow:

      The translational model calculated by the Newton-Euler equation is derived as

      where VVV =[u,v,w]Tdenotes the velocity with respect to the body fixed frame B,E3E3E3=[0,0,1]T,m is mass of the eight-rotor UAV,g is acceleration of gravity,and the thrust is expressed by

      Moreover,the relationship between the velocity VVV and the inertial translational positionζcan be described as

      Thereby,the translational dynamic model is obtained as

      In addition,according to the calculation of the pseudoinverse matrix,the relationship between the attitude control and the rotor speed is given as follow

      and A termed as control allocation matrix is described as

      III.ROBUST BSMC WITH ADAPTIVE RBFNN METHOD

      On account of inevitable model uncertainties and external disturbances of the coaxial eight-rotor UAV,a backstepping sliding mode control(BSMC)using adaptive RBFNN method is exploited to control the attitude of the eight-rotor UAV.

      The attitude controlblock diagram of the eight-rotor system employing the robust BSMC with adaptive RBFNN method is depicted in Fig.2.It is noted that the attitude control of the eight-rotor UAV is divided into three attitude channels,that is,pitch channel,rollchannel and yaw channel.Each attitude channelis separately controlled by the proposed algorithm.For example with respect to the roll control channel,the design process of the proposed algorithm is described step-by-step as follows.

      Fig.2.The attitude control block diagram with the proposed method.

      The roll channel is represented as

      where x1denotes the state of rollangle,x2expresses the state of roll angle velocity.Dxtermed as the lumped uncertainties in the roll channel is given by

      whereτx=ΔMx/(Ix+ΔIx)treated as the external disturbance in the rollchannelis bounded,fx=?ΔIxMx/[Ix(Ix+ ΔIx)]in the case when the inertia matrix uncertainty is considered as the model uncertainty.

      Step 1.

      For the sake of rollangle tracking objective,define the roll angle tracking error as

      where x1ddenotes the desired roll angle.And the derivative of z1is obtained by

      Define the following stabilizing function

      whereαis a positive constant.The first Lyapunov function is chosen as

      Define the rollangle velocity tracking error as z2=x2?˙x1d?c1,then the derivative of V1is

      Step 2.

      The derivative of z2is now expressed as

      Then,the following Lyapunov function is defined by

      with the sliding surface designed as

      where k is a positive constant.Then by substituting(26),(27) and(29)into(28),it can be derived that

      Step 3.

      Since the lumped uncertainty Dxin the roll channel is unknown in practical application,the bound is difficult to determine.Thereby,an adaptive RBFNN uncertainty observer is proposed to adapt the estimated value of the lumped uncertainty?Dx.The structure of RBFNN with receptive field units is shown in Fig.3 and the receptive field function is usually a Gaussian function ora logarithmic function[16].Ifthe Gaussian function is selected as the receptive field function in the roll channel and the input vector of RBFNN is=[z1,˙z1]T, then the output is derived as follows using the weighted sum method

      where Wjis the connective weight between the hidden layer and the output layer.N denotes the number of hidden nodes. And each hidden node contains a centre vector expressed by Mjand a positive scalar called the width expressed byσj.

      Fig.3.The structure of RBFNN in the roll channel.

      To develop the adaptation laws of the RBFNN uncertainty observer,define minimum reconstructed errorσxin the roll channel as

      where W?

      WW is an optimal weight vector that achieves the minimum reconstructed error.Then,a Lyapunov candidate is chosen as

      whereη1andη2are positive constants,?δxdenotes the estimated value of the minimum reconstructed error.δxis provided to compensate the observed error induced by the RBFNN uncertainty observer and to further guarantee the stable characteristic ofthe attitude controlsystem forthe eightrotor UAV.

      Then,the derivative of the Lyapunov function V3is expressed by

      Consequently,the robustbackstepping sliding-mode control law Uxthat is equal to Mxof the eight-rotor system is designed as

      in whichγ,h are positive constants,the robust controller UHis redesigned as(37)and URis a compensated controller designed as(38)

      Accordingly,the derivative of the Lyapunov function is derived by

      Then the derivative of the Lyapunov function V3can be rewritten as

      whereΛis a symmetric matrix with the following form

      According to Barbalat's lemma[14,17],it is noted that˙V3≤0 whenΛis guaranteed to be positive definite as expressed by

      Thereby,the eight-rotor control system in the roll channel is asymptotically stable in the case of the above condition despite the presence of model uncertainties and external disturbances withoutthe knowledge of bounds.Furthermore,the attitude control in pitch channel and yaw channel with the proposed method have the same design procedure,which is not described for the sake of simplicity.

      IV.NUMERICAL SIMULATIONS RESULTS

      In this section,simulations for the attitude control of the coaxial eight-rotor UAV are performed to demonstrate the validity ofthe proposed BSMC with adaptive RBFNN method in the face of model uncertainties and external disturbances with unknown bounds.Furthermore,the performance of the proposed control algorithm and BSMC algorithm are compared to verify the improvementon robustness ofthe proposed control algorithm.The parameters of dynamic model in the simulations are taken from the eight-rotor prototype,as listed in Table I.

      An uncertainty of ?30% in the inertia matrix is assumed as the model uncertainties,i.e.,ΔI = [?0.3Ix,?0.3Iy,?0.3Iz]T.In addition,the constant external disturbance and the time-varying external disturbance given byτd1=0.4 andτd2=0.2sin(0.5t)are considered to act on the pitch,roll as well as yaw control,respectively.

      TABLE I THE PARAMETERS OF THE EIGHT-ROTOR PROTOTYPE

      To investigate the effectiveness of the proposed algorithm, two simulated cases of different desired attitude angles are considered with the same initial attitude angles asη0= [0,0,0]Tdegree in the following:

      Case 1.ηd=[12,12,30]Tdegree

      Case 2.ηd=[12 cos(t),12 cos(t),30 cos(t)]Tdegree

      The parameters of backstepping sliding-mode control are tuned as follows to achieve the favorable transient control performance,and at the same time to guarantee the great steady-state performance along with satisfying the stability condition described in(44).

      Roll channel:αx=10,kx=0.5,γx=15,hx=1, Pitch channel:αy=15,ky=0.5,γy=25,hy=4, Yaw channel:αz=12,kz=0.5,γz=20,hz=1,

      whereαhas an influence on the response speed of system, while excessive increase will degenerate the system stability. Additionally,the significantreduction of k leads to the increasing steady-state error,and it will produce jerk in the system when it goes up too high.γdecides the convergent speed to approach the sliding surface,but its dramatic increase can worsen the stability performance.h can guarantee to reach the sliding surface in a limited time,in the meantime,a much larger value will cause greater chattering.

      In addition,the number of the hidden nodes in the adaptive RBFNN observer is set to 6,the centre and the width in each hidden node is chosen as m=3 andσ=7,respectively. Moreover,the adaptive coefficients are taken asη1=10 and η2=3.All these parameters are given to achieve a better estimation performance by trial and error.

      A.Numerical Simulations Result For Case 1

      Firstly,the simulation for comparing attitude control through the proposed method and BSMC method for Case 1 is operated with model uncertainties,along with constant external disturbance as well as time-varying external disturbance,as shown in Fig.4,Fig.5,Fig.6,respectively.Additionally,to make a quantitative comparison of the results attained by the two control algorithms,some attitude control performance indices in Case 1 are elaborated in Table II,where Rollij,P itchij,and Y awij,i=1,2,j=1,2,3,respectively denote three attitude controls.The control channel with the proposed method is represented by i=1 while with BSMC method by i=2.Besides,j=1,2,3 expresses the different uncertainties in turn,that is,model uncertainty,constant external disturbance and time-varying external disturbance.

      Therefore,it can be clearly obtained that all the attitude angles subjected to the constantdisturbance have a remarkable steady-state error with BSMC algorithm,while the steadystate error is thoroughly eliminated using the proposed algorithm due to the fact that adaptive RBFNN successfully estimates and compensates the constantdisturbance.As such, faced with the time-varying disturbance,three attitude control performances suffer from significantly less deterioration with the proposed method than that with BSMC method.While there is relatively little difference between the two methods under inertia matrix uncertainty.Moreover,it is worth noting that the yaw angle control performance deteriorates moreseriously than the otherattitude controlperformances using the BSMC method in the case of disturbances.The phenomenon probably results from the weaker drive ability on the yaw movement as compared to the other attitude movements.

      Fig.4.Roll angle comparison result between BSMC with adaptive RBFNN and BSMC in Case 1.

      TABLE II ATTITUDE CONTROL PERFORMANCE INDICES IN THE CASE I

      Fig.5.Pitch angle comparison resultbetween BSMC with adaptive RBFNN and BSMC in Case 1.

      B.Numerical Simulations Result For Case 2

      Next,to test the robustness of the proposed method,the disturbance estimation and attitude angles error comparison simulations in Case 2 withτd2are presented in Fig.7,Fig.8 and Fig.9,from which it can be seen that the proposed method provides better control performance against external disturbance over BMSC method.

      Fig.6.Yaw angle comparison result between BSMC with adaptive RBFNN and BSMC in Case 2.

      Fig.7(b)shows that the roll angle error based on the proposed method is dramatically limited of the order of about ±0.005 degree than that of BSMC method which has an error of about±0.6 degree.Similarly,Fig.8(b)illustrates pitch angle error utilizing the proposed method is controlled in the interval as±0.006 degree,while it ranges at±0.011 degree using the BSMC algorithm.Besides,the proposed method in the yaw control channel also has smaller yaw error of about±0.017 degree than BSMC method with yaw error of approximately±0.0126 degree,as shown in Fig.9(b). Furthermore,the satisfactory estimation performance against the external disturbance with the adaptive RBFNN observer is definitely corroborated in attitude control,as described in Fig.7(a),Fig.8(a)and Fig.9(a).

      Hence simulation results highlight the claim that BSMC with adaptive RBFNN algorithm can offer the greater attitude control performance and the stronger robustness as compared to BSMC algorithm in the presence of modeluncertainties and external disturbances.It is evident that the proposed method is better suited in dealing with the robust control problem of the uncertain eight-rotor UAV.

      V.CONCLUSION

      In this paper,the robustattitude controlstrategy is presented for a novelcoaxialeight-rotor UAV.The noveleight-rotor UAV is modeled for the very firsttime to the best of our knowledge which offers remarkable advantages with respect to increasedability of disturbance rejection,greater payload capacity and damage tolerance over quad-rotor in condition of using the same type of motors and rotors.

      Fig.7.Disturbance estimation and roll angle error comparison between the proposed method and BSMC method in Case 2.

      Fig.8.Disturbance estimation and pitch angle error comparison between the proposed method and BSMC method in Case 2.

      Fig.9.Disturbance estimation and yaw angle error comparison between the proposed method and BSMC method in Case 2.

      On this basis,a robustbackstepping sliding-mode controller with adaptive radial basis function neural network method is proposed to control the attitude of the eight-rotor UAV involving the model uncertainties and external disturbances. The proposed strategy with the simplified design has excellently greater robustness against disturbances than BSMC method.And the adaptive RBFNN observer can effectively estimate the lumped uncertainties with the compensation of the approximation error for the eight-rotor UAV,where thebounds of uncertainties are not required for the controller design.Besides,the uniformly ultimate stability of the eightrotor system is proved using Lyapunov stability theorem.

      Finally,simulation results demonstrate that the proposed method adopted in the novelcoaxialeight-rotor UAV has better control performance and significantly greater robustness than backstepping sliding mode control method,where the inertia matrix uncertainty as model uncertainty,constant external disturbance and time-varying external disturbance are taken into account.

      REFERENCES

      [1]Zuo Z.Trajectory tracking control design with command-filtered compensation for a quadrotor.IETControlTheoryApplications,2009,4(11): 2343?2355

      [2]Dierks T,Jagannathan S.Output feedback control of a quadrotor UAV using neural networks.IEEE Transactions on Neural Networks,2010, 21(1):50?66

      [3]Chen Zong-Ji,Zhang Ru-Lin,Zhang Ping,Zhou Rui.Flight control: chanllenges and opportunities.Acta Automatica Sinica,2013,39(6): 703?710(in Chinese)

      [4]Besnard L,Shtessel Y B,Landrum B.Quadrotor vehicle control via sliding mode controller driven by sliding mode disturbance observer. Journal of theFranklinInstitute,2012,349(2):658?684

      [5]Raffo GV,Ortega MG,Rubio F R.An integralpredictive/nonlinear H∞control structure for a quadrotor helicopter.Automatica,2010,46(1): 29?39

      [6]Mohammadi M,Shahri A M.Adaptive nonlinear stabilization control for a quadrotor UAV:theory,simulation and experimentation.Journal of Intelligent&Robotic Systems,2013,72(1):105?122

      [7]Vega L L,Toledo B C,Loukianov A G.Robust block second order sliding mode control for a quadrotor.Journal of the Franklin Institute, 2012,349(2):719?739

      [8]Satici A C,Poonawala H,Spong M W.Robust optimal control of quadrotor UAVs.IEEE Access,2013,1:79?93

      [9]Liu H,Bai Y Q,Lu G,Zhong Y S.Robust attitude control of uncertain quadrotors.IET ControlTheoryandApplications,2013,7(11): 1583?1589

      [10]Ryan T,Kim H J.LMI-based gain synthesis for simple robustquadrotor control.IEEE Transactions on Automation Science and Engineering, 2013,10(4):1173?1178

      [11]Li Shi-Hua,Ding Shi-Hong,Tian Yu-Ping.A finite-time state feedback stabilization method for a class of second order nonlinear systems.Acta Automatica Sinica,2007,33(1):101?104(in Chinese)

      [12]Das A,Lewis F,Subbarao K.Backstepping approach for controlling a quadrotor using Lagrange form dynamics.Journal of Intelligent& Robotic Systems,2009,56(1?2):127?151

      [13]Cong B L,Liu X D,Chen Z.Backstepping based adaptive sliding mode control for spacecraft attitude maneuvers.Aerospace Science and Technology,2013,30(1):1?7

      [14]Lin F J,Shen P H,Hsu S P.Adaptive backstepping sliding mode control for linear induction motor drive.Electric Power Applications, 2002,149(3):184?194

      [15]Wang Jia-Jun.Sliding mode backstepping control of induction motor based on self-recurrentwaveletneuralnetworks.ActaAutomaticaSinica, 2013,35(1):1?8(in Chinese)

      [16]Roger Jang J S,Sun C T.Functional equivalence between radial basis function networks and fuzzy inference systems.IEEE Transactions on Neural Network,1933,4(1):156?159

      [17]Slotine J J E,Li W P.Applied NonlinearControl.New Jersey:Prentice-Hall,1991.122?126

      Cheng Peng Ph.D.candidate at the Institute of Telecommunication Engineering,Jilin University. She graduated from Jilin University in 2010.Her research interests include unmanned aerial vehicle (UAV)control system,robust control and bounded control.

      Xun Gong received his Ph.D.degree from the School of Telecommunication Engineering,Jilin University,China.He received his M.Sc.degree from Harbin Institute of Technology,China in 2008. His research interests include unmanned aerial vehicle control system,bounded control,and faulttolerant control.

      Qingjia Gao Ph.D.candidate at Changchun Institute of Optics,Fine Mechanics and Physics,Chinese Academy of Sciences,China.His research interests include aircraft mechanical systems and permanent magnet motor design.

      Changjun Zhao Ph.D.candidate at Changchun Institute of Optics,Fine Mechanics and Physics, Chinese Academy of Sciences,China.He received his M.Sc.degree from Northeast Dianli University, China in 2011.His research interests include UAV controlsystem,adaptive control,and nonlinear control.

      Yantao Tian Professor at the Institute of Telecommunication Engineering,Jilin University.He received his M.Sc.degree and Ph.D.degree from Jilin University of Technology in 1987 and 1993, respectively.His research interests include complex system,distributed intelligent system and network control,intelligent robot control system,pattern recognition,and machine vision.Corresponding author of this paper.

      eceived his Ph.D.degree from Changchun Institute of Optics,Fine Mechanics and Physics, Chinese Academy of Sciences,China in 2006.He is an associate professor in Changchun Institute of Optics,Fine Mechanics and Physics,Chinese Academy of Sciences.His research interests include automatic control and dynamics for micro aerial vehicle,space fly-wheel practical technology under extreme conditions.

      Manuscript

      September 27,2013;accepted May 28,2014.This work was supported by National Natural Science Foundation of China (11372309,61304017).Recommended by Associate Editor Changyin Sun

      :Cheng Peng,Yue Bai,Xun Gong,Qingjia Gao,Changjun Zhao, Yantao Tian.Modeling and robust backstepping sliding mode control with adaptive RBFNN for a novel coaxial eight-rotor UAV.IEEE/CAA Journal of Automatica Sinica,2015,2(1):56?64

      Cheng Peng is with the Department of Control Science and Engineering, Jilin University,Changchun 130025,China(e-mail:litianjinorc@126.com).

      Yue Bai and Xun Gong are with the Changchun Institute of Optics,Fine Mechanics and Physics,Chinese Academy of Sciences,Changchun 130033, China(e-mail:baiy@comp.ac.cn;as1123@163.com).

      Qingjia Gao and Changjun Zhao are with Changchun Institute of Optics, Fine Mechanics and Physics,Chinese Academy of Sciences,Changchun 130033,China,and also with University of Chinese Academy of Sciences, Beijing 100039,China(e-mail:gaoqi@ciomp.ac.cn;Zhaoqi913@163.com).

      Yantao Tian is with the Department of Control Science and Engineering, Jilin University,Changchun 130025,China(e-mail:tianyt@jlu.edu.cn).

      凤凰县| 望谟县| 崇阳县| 台中县| 玛曲县| 昆明市| 隆昌县| 平顺县| 黎川县| 麻城市| 康定县| 石家庄市| 定陶县| 江口县| 门源| 馆陶县| 黄骅市| 望江县| 都昌县| 新晃| 姜堰市| 会同县| 华蓥市| 林芝县| 沙坪坝区| 惠水县| 元阳县| 吐鲁番市| 年辖:市辖区| 华阴市| 雅江县| 务川| 海宁市| 翁源县| 贵南县| 聊城市| 石景山区| 那坡县| 东港市| 中卫市| 商城县|