A Hybrid Neural Classifier for Dimensionality Reduction and Data Visualization and Its Application to Fault Detection and Classification of Induction Motors

Mahnoosh Nadjarpoorsiyahkaly, C. Lim
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引用次数: 1

Abstract

In this paper, a hybrid neural classifier combining the auto-encoder neural network and the Lattice Vector Quantization (LVQ) model is described. The auto-encoder network is used for dimensionality reduction by projecting high dimensional data into the 2D space. The LVQ model is used for data visualization by forming and adapting the granularity of a data map. The mapped data are employed to predict the target classes of new data samples. To improve classification accuracy, a majority voting scheme is adopted by the hybrid classifier. To demonstrate the applicability of the hybrid classifier, a series of experiments using simulated and real fault data from induction motors is conducted. The results show that the hybrid classifier is able to outperform the Multi-Layer Perceptron neural network, and to produce very good classification accuracy rates for various fault conditions of induction motors.
基于降维和数据可视化的混合神经分类器及其在感应电机故障检测和分类中的应用
本文提出了一种结合自编码器神经网络和点阵向量量化(LVQ)模型的混合神经分类器。自动编码器网络通过将高维数据投影到二维空间中来进行降维。LVQ模型通过形成和调整数据映射的粒度来实现数据可视化。利用映射数据预测新数据样本的目标类。为了提高分类精度,混合分类器采用了多数投票方案。为了验证混合分类器的适用性,对异步电动机的仿真和真实故障数据进行了一系列实验。结果表明,混合分类器的分类性能优于多层感知器神经网络,对异步电动机的各种故障情况都能产生很好的分类准确率。
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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