A two-level gradient based approach for intelligent coordination of large-scale systems. Part I

N. Sadati
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引用次数: 4

Abstract

In this paper, the concept of coordination is introduced within the framework of two-level large-scale systems and a new approach based on interaction prediction principle is presented. The proposed approach is formulated in an intelligent manner in such a way that it provides a new strategy that can be used to synthesize an on-line supervisory controller for the overall two-level large-scale systems, extendable to multi-level control systems. By using the new methodology, which is based on using neural network for modeling each sub-system, typical gradient method for optimization of first-level sub-problems, and the gradient of the interaction prediction errors related to the predicted interactions, at the second level, the coordination of the overall large-scale system is done. Simulation results demonstrate the effectiveness of the proposed strategy in compare to the classical methods
基于两级梯度的大系统智能协调方法。第一部分
本文在两级大系统框架下引入了协调的概念,提出了一种基于相互作用预测原理的协调方法。所提出的方法以一种智能的方式制定,它提供了一种新的策略,可用于综合整个两级大型系统的在线监控控制器,可扩展到多级控制系统。该方法利用神经网络对各子系统进行建模,利用典型梯度法对一级子问题进行优化,利用与预测的相互作用相关的相互作用预测误差梯度对二级系统进行整体协调。仿真结果表明,与传统方法相比,该方法具有较好的有效性
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