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首页> 外文期刊>Neural Networks: The Official Journal of the International Neural Network Society >Robust min-max optimal control design for systems with uncertain models: A neural dynamic programming approach
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Robust min-max optimal control design for systems with uncertain models: A neural dynamic programming approach

机译:具有不确定模型的系统的强大最大最佳控制设计:神经动态规划方法

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The design of an artificial neural network (ANN) based sub-optimal controller to solve the finite-horizon optimization problem for a class of systems with uncertainties is the main outcome of this study. The optimization problem considers a convex performance index in the Bolza form. The dynamic uncertain restriction is considered as a linear system affected by modeling uncertainties, as well as by external bounded perturbations. The proposed controller implements a min-max approach based on the dynamic neural programming approximate solution. An ANN approximates the Value function to get the estimate of the Hamilton-Jacobi-Bellman (HJB) equation solution. The explicit adaptive law for the weights in the ANN is obtained from the approximation of the HJB solution. The stability analysis based on the Lyapunov theory yields to confirm that the approximate Value function serves as a Lyapunov function candidate and to conclude the practical stability of the equilibrium point. A simulation example illustrates the characteristics of the sub-optimal controller. The comparison of the performance indexes obtained with the application of different controllers evaluates the effect of perturbations and the sub-optimal solution. (c) 2020 Elsevier Ltd. All rights reserved.
机译:基于人工神经网络(ANN)的子最优控制器的设计,解决了一类具有不确定性的一类系统的有限范围优化问题是本研究的主要结果。优化问题考虑Bolza表单中的凸性能索引。动态不确定的限制被认为是通过对不确定性建模影响的线性系统,以及由外部有界扰动的影响。基于动态神经编程近似解决方案,该控制器实现了一种最小最大方法。 ANN近似于获得哈密尔顿-Jacobi-Bellman(HJB)方程解决方案的估计值的值函数。从HJB溶液的近似获得ANN中重量的显式自适应法。基于Lyapunov理论的稳定性分析产生,确认近似值函数用作Lyapunov功能候选者,并得出平衡点的实际稳定性。仿真示例说明了子最优控制器的特性。使用不同控制器的应用获得的性能指标的比较评估了扰动和次优溶液的效果。 (c)2020 elestvier有限公司保留所有权利。

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