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PARTICLE SWARM OPTIMIZATION-BASED FEATURE SELECTION AND PARAMETER OPTIMIZATION FOR POWER SYSTEM DISTURBANCES CLASSIFICATION

机译:电力系统扰动分类的基于粒子群优化的特征选择和参数优化

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摘要

In many data mining applications that address classification problems, feature and model selection are considered as key tasks. The appropriate input features of the classifier are selected from a given set of possible features, and the structure parameters of the classifier are adapted with respect to these features and a given dataset. This paper describes the particle swarm optimization algorithm (PSO) that performs feature and model selection simultaneously for the probabilistic neural network (PNN) classifier for power system disturbances. The probabilistic neural network is one of the successful classifiers used to solve many classification problems. However, the computational effort and storage requirement of the PNN method will prohibitively increase as the number of patterns used in the training set increases. An important issue that has not been given enough attention is the selection of a "spread parameter, "also called a "smoothing parameter, "in the PNN classifier. PSO is a powerful meta-heuristic technique in the artificial intelligence field; therefore, this study proposes a PSO-based approach, called PSO-PNN, to specify the beneficial features and the value of spread parameter to enhance the performance of PNN. The experimental results indicate that the proposed PSO-based approach significantly improves the classification accuracy with the discriminating input features for PNN.
机译:在许多解决分类问题的数据挖掘应用程序中,特征和模型选择被视为关键任务。从一组给定的可能特征中选择分类器的适当输入特征,并且针对这些特征和给定的数据集调整分类器的结构参数。本文介绍了粒子群优化算法(PSO),该算法同时为电力系统扰动的概率神经网络(PNN)分类器执行特征和模型选择。概率神经网络是用于解决许多分类问题的成功分类器之一。但是,随着训练集中使用的模式数量的增加,PNN方法的计算量和存储要求将令人讨厌地增加。尚未引起足够重视的重要问题是在PNN分类器中选择“扩展参数”,也称为“平滑参数”。 PSO是人工智能领域中一种强大的元启发式技术。因此,本研究提出了一种基于PSO的方法,称为PSO-PNN,以指定有益特性和扩展参数的值来增强PNN的性能。实验结果表明,所提出的基于PSO的方法通过区分PNN的输入特征,显着提高了分类精度。

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  • 来源
    《Applied Artificial Intelligence》 |2012年第10期|832-861|共30页
  • 作者单位

    Department of Computer Science and Engineering, Dr. Sivanthi Adiatanar College of Engineering, Tiruchendur, Tamilnadu, India;

    Department of Computer Science and Engineering, Manonmanium Sundaranar University,Tirunelveli, Tamilnadu, India;

    Department of Computer Science and Engineering, Dr. Sivanthi Adiatanar College of Engineering, Tiruchendur, Tamilnadu, India;

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