Open AccessBook
Neural Network Control of Nonlinear Discrete-Time Systems
Jagannathan Sarangapani
- 24 Apr 2006
467
TL;DR: This paper presents a meta-modelling architecture for adaptive control of Nonlinear Discrete-Time Systems using a model called Adaptive NN Control Design using State Measurements Output Feedback NN Controller Design.
read more
Abstract: BACKGROUND ON NEURAL NETWORKS NN Topologies and Recall Properties of NN NN Weight Selection and Training NN Learning and Control Architectures References Problems BACKGROUND AND DISCRETE-TIME ADAPTIVE CONTROL Dynamical Systems Mathematical Background Properties of Dynamical Systems Nonlinear Stability Analysis and Controls Design Robust Implicit STR References Problems Appendix 2.A NEURAL NETWORK CONTROL OF NONLINEAR SYSTEMS AND FEEDBACK LINEARIZATION NN Control with Discrete-Time Tuning Feedback Linearization NN Feedback Linearization Multilayer NN for Feedback Linearization Passivity Properties of the NN Conclusions References Problems NEURAL NETWORK CONTROL OF UNCERTAIN NONLINEAR DISCRETE-TIME SYSTEMS WITH ACTUATOR NONLINEARITIES Background on Actuator Nonlinearities Reinforcement NN Learning Control with Saturation Uncertain Nonlinear System with Unknown Deadzone and Saturation Nonlinearities Adaptive NN Control of Nonlinear System with Unknown Backlash Conclusions References Problems Appendix 4.A Appendix 4.B Appendix 4.C Appendix 4.D OUTPUT FEEDBACK CONTROL OF STRICT FEEDBACK NONLINEAR MIMO DISCRETE-TIME SYSTEMS Class of Nonlinear Discrete-Time Systems Output Feedback Controller Design Weight Updates for Guaranteed Performance Conclusions References Problems Appendix 5.A Appendix 5.B NEURAL NETWORK CONTROL OF NONSTRICT FEEDBACK NONLINEAR SYSTEMS Introduction Adaptive NN Control Design Using State Measurements Output Feedback NN Controller Design Conclusions References Problems Appendix 6.A Appendix 6.B SYSTEM IDENTIFICATION USING DISCRETE-TIME NEURAL NETWORKS Identification of Nonlinear Dynamical Systems Identifier Dynamics for MIMO Systems NN Identifier Design Passivity Properties of the NN Conclusions References Problems DISCRETE-TIME MODEL REFERENCE ADAPTIVE CONTROL Dynamics of an mnth-Order Multi-Input and Multi-Output System NN Controller Design Projection Algorithm Conclusions References Problems NEURAL NETWORK CONTROL IN DISCRETE-TIME USING HAMILTON-JACOBI-BELLMAN FORMULATION Optimal Control and Generalized HJB Equation in Discrete-Time NN Least-Squares Approach Numerical Examples Conclusions References Problems NEURAL NETWORK OUTPUT FEEDBACK CONTROLLER DESIGN AND EMBEDDED HARDWARE IMPLEMENTATION Embedded Hardware-PC Real-Time Digital Control System SI Engine Test Bed Lean Engine Controller Design and Implementation EGR Engine Controller Design and Implementation Conclusions References Problems Appendix 10.A Appendix 10.B INDEX
read more
Chat with Paper
AI Agents for this Paper
Find similar papers on Google Scholar, PubMed and Arxiv
Write a critical review of this paper
Analyze citations of this paper to find unaddressed research gaps
Citations
Event-based optimal regulator design for nonlinear networked control systems
Avimanyu Sahoo,Hao Xu,Sarangapani Jagannathan +2 more
- 01 Dec 2014
TL;DR: An online stochastic actor-critic neural network (NN) based approach is utilized to achieve the near optimal regulation in the presence of network constraints, such as, network induced time-varying delays and random packet losses under event-based transmission of the feedback signals.
12
Robust optimal control of uncertain nonaffine MIMO nonlinear discrete-time systems with application to HCCI engines
TL;DR: In this article, a forward-in-time Hamilton-Jacobi-Bellman equation-based optimal approach is developed to control the affine-like nonlinear discrete-time system by using both NN as an online approximation and output measurements alone.
12
Neural network-based adaptive event-triggered control for cyber-physical systems under resource constraints and hybrid cyberattacks
Xuhuan Xie,Yonggui Liu,Qinxue Li +2 more
TL;DR: In this article , a neural network-based adaptive event-triggered control (AETC) strategy is developed for cyber-physical systems (CPSs) under resource constraints and hybrid cyberattacks.
12
A decentralized fault accommodation scheme for nonlinear interconnected systems
Hasan Ferdowsi,Sarangapani Jagannathan +1 more
- 08 Oct 2013
TL;DR: In this article, a decentralized detection and accommodation (FDA) methodology is proposed for interconnected nonlinear continuous-time systems by using local subsystem states alone in contrast with traditional distributed FDA schemes where the entire measured or the estimated state vector is needed.
11
An online approximator-based fault detection framework for nonlinear discrete-time systems
B.T. Thumati,Sarangapani Jagannathan +1 more
- 01 Dec 2007
TL;DR: In this paper, a fault detection scheme for nonlinear discrete time systems is developed, where the changes in the system dynamics due to incipient failures are modeled as a nonlinear function of state and input variables while the time profile of the failures is assumed to be exponentially developing.