约束线性系统在线控制律输入输出流形的神经网络拟合

Samronne N. do Carmo, M. O. D. Almeida, F. A. D. Castro, Rafael F. R. Campos, J. M. Araújo, C. Dórea
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引用次数: 1

摘要

对控制和状态有约束的系统的控制技术有些吸引力,主要是在这些约束代表安全或操作临界点的情况下。约束线性系统控制的一种重要方法是基于集合不变性的概念,其主要优点是在整个设计中包含约束,控制器的非保守性以及处理噪声测量和进入系统的干扰的能力。一些缺点是高阶系统的控制律可能非常复杂,或者在某些情况下缺乏分析的离线控制律,例如在输出反馈情况下。每一步控制输入的在线计算是可能的,但所涉及的计算成本可能使求解在具有快速动力学的系统中不可行。另一方面,神经网络是函数逼近的一种有趣的替代方法,从控制系统仿真生成的训练集开始,它可以很好地捕获在线控制律的输入输出流形的特征。本文将神经网络应用于在线控制计算的有效替代。通过实例验证了所提神经控制器的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Neural network fitting for input-output manifolds of online control laws in constrained linear systems
Control techniques for systems with constraints on control and state are somewhat attractive, mainly in cases where these constraints represent safety or critical points of operation. An important approach for control of constrained linear systems is based on the concept of set invariance, whose main advantages are the inclusion of constraints in the whole design, the non-conservative nature of the controllers and the ability to cope with noise measurement and disturbance entering in the system. Some disadvantage are a possibly high complexity of the control law for higher order systems or the absence of an analytical, off-line control law in some cases, as, for instance, in the output feedback case. The online computation of the control input at each step is ever possible, but the computational cost involved may turn the solution impracticable in the case of systems with fast dynamics. Neural networks, on the other hand, is an interesting alternative for function approximation, and works well in capturing the characteristics of the input-output manifold of the online control law, starting from a training set generated by simulation of the control system. In this paper, neural networks are applied to substitute in an efficient way the online control computation. A real case based example is used to verify the effectiveness of the proposed neural controller.
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