电压崩溃评价的多属性动态模糊决策树方法

H. Abidin, K. Lo, Z.F. Hussein
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引用次数: 1

摘要

电压崩溃是一个复杂的现象,其成因是多方面的。过去已经对这一现象进行了分析。因此,人们设计了各种分析方法。有些方法被认为是复杂、缓慢但准确的,有些方法被认为是简单、快速但不准确的。随着机器学习技术的出现,数据挖掘方法也可以作为一种替代的诊断工具。这种方法被称为模糊决策树。本文将概述对现有模糊决策树方法的改进,通过增加更多的贡献属性来划分,创建混合模糊决策树。采用IEEE 300总线系统进行了比较和测试。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multiple attribute dynamic fuzzy decision tree approach for voltage collapse evaluation
Voltage collapse is a complex phenomenon which has a variety of contributing factors. Past efforts have been given in analysing this phenomenon. As a result, various methods of analysis have been devised. Some methods are considered to be complex, slow but accurate and some methods are considered to simple, fast but inaccurate. With the emergence of machine learning techniques, a data mining method can also be used as an alternative diagnostic tool. This method is known as fuzzy decision tree. This paper will outline improvements made to an existing fuzzy decision tree method by adding more contributing attributes for partitioning, creating a hybrid fuzzy decision tree. Comparison and tests are made using an IEEE 300 bus system.
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