High-Level Feedback Control with Neural Networks

Y. H. Kim, F. Lewis
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引用次数: 166

Abstract

From the Publisher: Complex industrial or robotic systems with uncertainty and disturbances are difficult to control. As system uncertainty or performance requirements increase, it becomes necessary to augment traditional feedback controllers with additional feedback loops that effectively "add intelligence" to the system. Some theories of artificial intelligence (AI) are now showing how complex machine systems should mimic human cognitive and biological processes to improve their capabilities for dealing with uncertainty. This book bridges the gap between feedback control and AI. It provides design techniques for "high-level" neural-network feedback-control topologies that contain servo-level feedback-control loops as well as AI decision and training at the higher levels. Several advanced feedback topologies containing neural networks are presented, including "dynamic output feedback", "reinforcement learning" and "optimal design", as well as a "fuzzy-logic reinforcement" controller. The control topologies are intuitive, yet are derived using sound mathematical principles where proofs of stability are given so that closed-loop performance can be relied upon in using these control systems. Computer-simulation examples are given to illustrate the performance.
基于神经网络的高级反馈控制
具有不确定性和干扰的复杂工业或机器人系统很难控制。随着系统不确定性或性能要求的增加,有必要用额外的反馈回路来增强传统的反馈控制器,从而有效地为系统“添加智能”。人工智能(AI)的一些理论现在表明,复杂的机器系统应该如何模仿人类的认知和生物过程,以提高它们处理不确定性的能力。这本书弥合了反馈控制和人工智能之间的差距。它提供了“高级”神经网络反馈控制拓扑的设计技术,该拓扑包含伺服级反馈控制回路以及更高级别的人工智能决策和训练。提出了几种包含神经网络的高级反馈拓扑,包括“动态输出反馈”、“强化学习”和“优化设计”,以及“模糊逻辑强化”控制器。控制拓扑是直观的,但是是使用可靠的数学原理推导出来的,其中给出了稳定性的证明,以便在使用这些控制系统时可以依赖闭环性能。计算机仿真实例说明了该方法的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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