智能CICA-T计算用于非线性系统的辨识与控制

G. Venayagamoorthy
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引用次数: 0

摘要

系统表征和辨识是系统理论中的基本问题,在控制器设计中起着重要作用。系统识别和非线性控制已经提出并实现使用智能系统,如神经网络,模糊逻辑,强化学习,人工免疫系统和许多其他使用逆模型,直接/间接自适应,或克隆线性控制器。自适应批评设计(ACDs)是一种能够在噪声和不确定性条件下随时间优化的神经网络。ACD技术利用两个网络——批评网络和行动网络来开发最优控制律。将介绍所采用的每种方法的优点。本教程的主要目的是为工业/学术界的控制和系统工程师/研究人员提供计算智能领域的新知识,为快速发展的计算智能领域及其现实世界的应用提供基础知识,包括识别和控制电力和能源系统,无人驾驶车辆导航,信号和图像处理,以及可进化和自适应硬件系统。
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Tutorial CICA-T Computing with intelligence for identification and control of nonlinear systems
System characterization and identification are fundamental problems in systems theory and play a major role in the design of controllers. System identification and nonlinear control has been proposed and implemented using intelligent systems such as neural networks, fuzzy logic, reinforcement learning, artificial immune system and many others using inverse models, direct/indirect adaptive, or cloning a linear controller. Adaptive Critic Designs (ACDs) are neural networks capable of optimization over time under conditions of noise and uncertainty. The ACD technique develops optimal control laws using two networks - critic and action. There are merits for each approach adopted will be presented. The primary aim of this tutorial is to provide control and system engineers/researchers from industry/academia, new to the field of computational intelligence with the fundamentals required to benefit from and contribute to the rapidly growing field of computational intelligence and its real world applications, including identification and control of power and energy systems, unmanned vehicle navigation, signal and image processing, and evolvable and adaptive hardware systems.
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