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Neural-network-based modeling and dynamic policy synthesis for model predictive control of nonlinear systems

机译:基于神经网络的建模和动态策略综合用于非线性系统的模型预测控制

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摘要

A dynamic control policy with optimized dynamics is explored for its use in a model predictive control (MPC) algorithm for a nonlinear system modeled with a feedforward neural network. The nonlinear system is expressed as a polytopic quasi-linear-parameter-varying (quasi-LPV) system over a region of the state-input space and the dynamics of the policy are allowed to depend on the time-varying parameter of the quasi-LPV model. The policy dynamics are optimized off-line to obtain an enlarged domain of attraction which matches with the state-input region over which the polytopic approximation of the system holds good. A complete MPC algorithm using the dynamic policy as the terminal policy ensures stabilization and improved performance over a larger domain without a larger horizon length.
机译:探索了一种具有动态优化的动态控制策略,以将其用于使用前馈神经网络建模的非线性系统的模型预测控制(MPC)算法中。非线性系统表示为状态输入空间区域上的多目标准线性参数变化(quasi-LPV)系统,并且策略的动态性取决于准时空参数的时变参数LPV模型。离线优化策略动态,以获取引力的扩大域,该域与状态输入区域相匹配,系统的多态近似在该状态输入区域上保持良好状态。使用动态策略作为终端策略的完整MPC算法可确保在更大范围内实现稳定并提高性能,而无需增加视域长度。

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