AAHES: A hybrid expert system realization of Adaptive Autonomy for smart grid

A. Fereidunian, M. Zamani, F. Boroomand, H. Jamalabadi, H. Lesani, C. Lucas, Shahab Shariat-Torbaghan, Mohammad Meydani
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引用次数: 8

Abstract

Smart grid expectations objectify the need for optimizing power distribution systems greater than ever. Distribution Automation (DA) is an integral part of the SG solution; however, disregarding human factors in the DA systems can make it more problematic than beneficial. As a consequence, Human-Automation Interaction (HAI) theories can be employed to optimize the DA systems in a human-centered manner. Earlier we introduced a novel framework for the realization of Adaptive Autonomy (AA) concept in the power distribution network using expert systems. This research presents a hybrid expert system for the realization of AA, using both Artificial Neural Networks (ANN) and Logistic Regression (LR) models, referred to as AAHES, respectively. AAHES uses neural networks and logistic regression as an expert system inference engine. This system fuses LR and ANN models' outputs which will results in a progress, comparing to both individual models. The practical list of environmental conditions and superior experts' judgments are used as the expert systems database. Since training samples will affect the expert systems performance, the AAHES is implemented using six different training sets. Finally, the results are interpreted in order to find the best training set. As revealed by the results, the presented AAHES can effectively determine the proper level of automation for changing the performance shaping factors of the HAI systems in the smart grid environment.
智能电网自适应自治的混合专家系统实现
智能电网的期望使优化配电系统的需求比以往任何时候都更加客观。配电自动化(DA)是SG解决方案不可或缺的一部分;然而,忽视数据分析系统中的人为因素可能会带来更多问题而不是益处。因此,人-自动化交互(HAI)理论可以用于以人为中心的方式优化数据处理系统。在此之前,我们介绍了一种利用专家系统实现配电网自适应自治概念的新框架。本研究提出了一种混合专家系统,采用人工神经网络(ANN)和逻辑回归(LR)模型(分别称为AAHES)来实现AA。aahs使用神经网络和逻辑回归作为专家系统推理引擎。该系统融合了LR和ANN模型的输出,这将导致一个进步,比较两个单独的模型。将实际的环境条件列表和优秀专家的判断作为专家系统数据库。由于训练样本会影响专家系统的性能,aahs使用六个不同的训练集来实现。最后,对结果进行解释,以找到最佳训练集。结果表明,在智能电网环境下,所提出的aahs可以有效地确定适当的自动化水平,以改变HAI系统的性能塑造因素。
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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