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Neural computation using discrete and continuous Hopfield networks for power system economic dispatch and unit commitment

机译:使用离散和连续Hopfield网络进行神经计算以进行电力系统经济调度和机组承诺

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摘要

A new method using artificial neural networks for the solution of the unit commitment (UC) and economic dispatch (ED) using Hopfield neural network (HNN) is presented. Discrete and Continuous Hopfield Networks have been used earlier to solve UC and ED problems separately. But these two problems are completely interdependent. Due to their inseparable nature, both the problems must be solved simultaneously. The difficulty in combining these problems is that while the first one requires a discrete neuron model, the latter requires a continuous neuron model. The combined solution of these problems using HNN requires the interconnection of discrete and continuous neural network models and the formulation of a unified energy function, which is quite complicated. The important contribution of this work is the proposal of a new architecture for the discrete HNN for UC and the output of the UC module is used as input to the continuous HNN for ED. The associated advantage of using HNN for the combined solution of UC and ED is the decoupling of their interdependency, i.e., both the UC and ED are iteratively solved using respective HNN for the particular period. The implementation of the proposed method causes a considerable reduction in the HNN size and hence complexity and computation requirements, compared to earlier attempts. The method was successfully tested for different cases (3, 5, 6, 10 and 26 generator units), with varying load pattern of different durations (24 and 168 h) on Matlab on P-IV machine in windows enviroment. Each case study is done with an aim to bring out the important features of the proposed method. The results for the case studies are presented and important observations are discussed.
机译:提出了一种新的使用人工神经网络的方法,即使用Hopfield神经网络(HNN)解决单位承诺(UC)和经济调度(ED)的问题。离散和连续Hopfield网络早先用于分别解决UC和ED问题。但是这两个问题是完全相互依存的。由于其不可分割的性质,这两个问题必须同时解决。组合这些问题的困难在于,尽管第一个问题需要离散的神经元模型,而第二个问题需要连续的神经元模型。使用HNN组合解决这些问题需要离散和连续神经网络模型的互连以及统一的能量函数的制定,这非常复杂。这项工作的重要贡献是针对UC的离散HNN提出了一种新架构的建议,并且UC模块的输出被用作ED的连续HNN的输入。将HNN用于UC和ED的组合解决方案的相关优势是它们相互依赖性的解耦,即在特定时期内分别使用HNN迭代地解决了UC和ED的问题。与较早的尝试相比,所提出的方法的实现导致HNN尺寸的显着减小,从而降低了复杂度和计算要求。在Windows环境下的P-IV机器上,在Matlab上的不同工况(3、5、6、10和26个发电机组),不同持续时间(24和168小时)的不同负载模式下,已经成功测试了该方法。每个案例研究都旨在揭示所提出方法的重要特征。介绍了案例研究的结果并讨论了重要的观察结果。

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