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Filtering adaptive neural network controller for multivariable nonlinear systems with mismatched uncertainties. (English) Zbl 1466.93167

Summary: This paper synthesizes a filtering adaptive neural network controller for multivariable nonlinear systems with mismatched uncertainties. The multivariable nonlinear systems under consideration have both matched and mismatched uncertainties, which satisfy the semiglobal Lipschitz condition. The nonlinear uncertainties are approximated by a Gaussian radial basis function (GRBF)-based neural network incorporated with a piecewise constant adaptive law, where the adaptive law will generate adaptive parameters by solving the error dynamics between the real system and the state predictor with the neglection of unknowns. The combination of GRBF-based neural network and piecewise constant adaptive law relaxes hardware limitations (CPU). A filtering control law is designed to handle the nonlinear uncertainties and deliver a good tracking performance with guaranteed robustness. The matched uncertainties are cancelled directly by adopting their opposite in the control signal, whereas a dynamic inversion of the system is required to eliminate the effect of the mismatched uncertainties on the output. Since the virtual reference system defines the best performance that can be achieved by the closed-loop system, the uniform performance bounds are derived for the states and control signals via comparison. To validate the theoretical findings, comparisons between the model reference adaptive control method and the proposed filtering adaptive neural network control architecture with the implementation of different sampling time are carried out.

MSC:

93E11 Filtering in stochastic control theory
93C40 Adaptive control/observation systems
93B70 Networked control
93C10 Nonlinear systems in control theory
Full Text: DOI

References:

[1] LiuZ, LaiG, ZhangY, ChenCLP. Adaptive neural output feedback control of output‐constrained nonlinear systems with unknown output nonlinearity. IEEE Trans Neural Networks Learn Syst. 2015;26:1789‐1802.
[2] R.M.Sanner, J.‐J.E.Slotine, Gaussian networks for direct adaptive control. Paper presented at: 1991 American Control Conference, IEEE. 1991. pp. 2153‐2159.
[3] WangH, LiuPX, BaoJ, XieX‐J, LiS. Adaptive neural output‐feedback decentralized control for large‐scale nonlinear systems with stochastic disturbances. IEEE Trans Neural Networks Learn Syst. 2019;31:972‐983.
[4] ZhangT, XiaM, YiY. Adaptive neural dynamic surface control of strict‐feedback nonlinear systems with full state constraints and unmodeled dynamics. Automatica. 2017;81:232‐239. · Zbl 1372.93125
[5] ZhangT, XiaM, YiY, ShenQ. Adaptive neural dynamic surface control of pure‐feedback nonlinear systems with full state constraints and dynamic uncertainties. IEEE Trans Syst Man Cybern: Syst. 2017;47:2378‐2387.
[6] LuK, LiuZ, LaiG, ChenCP, ZhangY. Adaptive fuzzy output feedback control for nonlinear systems based on event‐triggered mechanism. Inf Sci. 2019;486:419‐433. · Zbl 1454.93165
[7] WangH, LiuPX, XieX, LiuX, HayatT, AlsaadiFE. Adaptive fuzzy asymptotical tracking control of nonlinear systems with unmodeled dynamics and quantized actuator. Inf Sci. 2018. (in press).
[8] WangH, LiuPX, ZhaoX, LiuX. Adaptive fuzzy finite‐time control of nonlinear systems with actuator faults. IEEE Trans Cybern. 2019;50:1786‐1797.
[9] WangL‐X, MendelJM. Fuzzy basis functions, universal approximation, and orthogonal least‐squares learning. IEEE Trans Neural Netw. 1992;3:807‐814.
[10] WangW, TongS. Adaptive fuzzy containment control of nonlinear strict‐feedback systems with full state constraints. IEEE Trans Fuzzy Syst. 2019;27:2024‐2038.
[11] W.Wang, S.Tong, Distributed adaptive fuzzy event‐triggered containment control of nonlinear strict‐feedback systems, IEEE Trans Cybern. 2019;1.
[12] ZhangL, LamH‐K, SunY, LiangH. Fault detection for fuzzy semi‐Markov jump systems based on interval type‐2 fuzzy approach. IEEE Trans Fuzzy Syst. 2019. (in press).
[13] JiangM‐M, XieX‐J, ZhangK. Finite‐time stabilization of stochastic high‐order nonlinear systems with FT‐SISS inverse dynamics. IEEE Trans Autom Control. 2018;64:313‐320. · Zbl 1423.93398
[14] LaiG, LiuZ, ZhangY, ChenCLP, XieS. Asymmetric actuator backlash compensation in quantized adaptive control of uncertain networked nonlinear systems. IEEE Trans Neural Networks Learn Syst. 2015;28:294‐307.
[15] ZhaiJ, KarimiHR. Global output feedback control for a class of nonlinear systems with unknown homogenous growth condition. Int J Robust Nonlinear Control. 2019;29:2082‐2095. · Zbl 1458.93091
[16] ZhangT, XiaX. Robust adaptive DSC of directly input‐coupled nonlinear systems with input unmodeled dynamics and time‐varying output constraints. Int J Robust Nonlinear Control. 2017;27:4398‐4420. · Zbl 1379.93064
[17] ChenB, ZhangH, LiuX, LinC. Neural observer and adaptive neural control design for a class of nonlinear systems. IEEE Trans Neural Networks Learn Syst. 2017;29:4261‐4271.
[18] ChenM, GeSS. Direct adaptive neural control for a class of uncertain nonaffine nonlinear systems based on disturbance observer. IEEE Trans Cybern. 2012;43:1213‐1225.
[19] ChenM, ShiP, LimC‐C. Adaptive neural fault‐tolerant control of a 3‐DOF model helicopter system. IEEE Trans Syst Man Cybern: Syst. 2015;46:260‐270.
[20] GeSS, LiZ. Robust adaptive control for a class of MIMO nonlinear systems by state and output feedback. IEEE Trans Autom Control. 2013;59:1624‐1629. · Zbl 1360.93349
[21] HeW, GeSS. Cooperative control of a nonuniform gantry crane with constrained tension. Automatica. 2016;66:146‐154. · Zbl 1335.93012
[22] HeW, MengT, HeX, GeSS. Unified iterative learning control for flexible structures with input constraints. Automatica. 2018;96:326‐336. · Zbl 1406.93072
[23] LiT, LiZ, WangD, ChenCP. Output‐feedback adaptive neural control for stochastic nonlinear time‐varying delay systems with unknown control directions. IEEE Trans Neural Networks Learn Syst. 2014;26:1188‐1201.
[24] LiuY‐J, LiJ, TongS, ChenCP. Neural network control‐based adaptive learning design for nonlinear systems with full‐state constraints. IEEE Trans Neural Networks Learn Syst. 2016;27:1562‐1571.
[25] LiuY‐J, ZengQ, LiuL, TongS. An adaptive neural network controller for active suspension systems with hydraulic actuator. IEEE Trans Syst Man Cybern: Syst. 2018;1. (in press).
[26] LiuY‐J, ZengQ, TongS, ChenCP, LiuL. Adaptive neural network control for active suspension systems with time‐varying vertical displacement and speed constraints. IEEE Trans Ind Electron. 2019;66:9458‐9466.
[27] ChenB, LiuX, LinC. Observer and adaptive fuzzy control design for nonlinear strict‐feedback systems with unknown virtual control coefficients. IEEE Trans Fuzzy Syst. 2017;26:1732‐1743.
[28] LiY, TongS. Prescribed performance adaptive fuzzy output‐feedback dynamic surface control for nonlinear large‐scale systems with time delays. Inf Sci. 2015;292:125‐142. · Zbl 1355.93100
[29] LiY, TongS, LiT. Hybrid fuzzy adaptive output feedback control design for uncertain MIMO nonlinear systems with time‐varying delays and input saturation. IEEE Trans Fuzzy Syst. 2015;24:841‐853.
[30] LiY, TongS, LiuY, LiT. Adaptive fuzzy robust output feedback control of nonlinear systems with unknown dead zones based on a small‐gain approach. IEEE Trans Fuzzy Syst. 2013;22:164‐176.
[31] LiuZ, WangF, ZhangY, ChenX, ChenCP. Adaptive tracking control for a class of nonlinear systems with a fuzzy dead‐zone input. IEEE Trans Fuzzy Syst. 2014;23:193‐204.
[32] WangH, ChenB, LiuK, LiuX, LinC. Adaptive neural tracking control for a class of nonstrict‐feedback stochastic nonlinear systems with unknown backlash‐like hysteresis. IEEE Trans Neural Networks Learn Syst. 2013;25:947‐958.
[33] WangH, LiuS, YangX. Adaptive neural control for non‐strict‐feedback nonlinear systems with input delay. Inf Sci. 2020;514:605‐616. · Zbl 1461.93408
[34] GuoB‐Z, WuZ‐H. Output tracking for a class of nonlinear systems with mismatched uncertainties by active disturbance rejection control. Syst Control Lett. 2017;100:21‐31. · Zbl 1356.93025
[35] WuZ‐H, GuoB‐Z. Approximate decoupling and output tracking for MIMO nonlinear systems with mismatched uncertainties via ADRC approach. J Frankl Inst. 2018;355:3873‐3894. · Zbl 1390.93273
[36] HovakimyanN, CaoC. ℒ1 Adaptive Control Theory: Guaranteed Robustness with Fast Adaptation. Philadelphia: SIAM; 2010. · Zbl 1214.93004
[37] T.Ma, J.Che, C.Cao, Control of nonlinear systems using filtered high‐gain observer. Paper presented at: 2016 International Symposium on Flexible Automation (ISFA), IEEE. 2016 pp. 483‐489.
[38] MaT, LiuY, ShihC, CaoC. Handling of nonlinear systems using filtered high‐gain output feedback controller. Int J Robust Nonlinear Control. 2018;28:6070‐6086. · Zbl 1405.93101
[39] MaT, CaoC. L1 adaptive control for general partial differential equation (PDE) systems. Int J Gen Syst. 2019;48:656‐689.
[40] MaT, CaoC. L1 adaptive output‐feedback control of multivariable nonlinear systems subject to constraints using online optimization. Int J Robust Nonlinear Control. 2019;29:4116‐4134. · Zbl 1426.93140
[41] MaT, CaoC. L1 adaptive output‐feedback descriptor for multivariable nonlinear systems with measurement noises. Int J Robust Nonlinear Control. 2019;29:4097‐4115. · Zbl 1426.93139
[42] MaT. Filtering adaptive tracking controller for multivariable nonlinear systems subject to constraints using online optimization method. Automatica. 2019;113:108689. · Zbl 1440.93254
[43] KhalilHK. Nonlinear systems. Upper Saddle River, NJ: Prentice hall; 2002. · Zbl 1003.34002
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