基于人工神经网络的内部故障分类

Mohd Anuar Shafi'i, N. Hamzah
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引用次数: 37

摘要

本课题的主要目标是利用图像处理技术建立一个智能模型,将内部故障分为低、中、中、高四类。采用红外热像仪采集内部故障定位样本,存储RGB彩色图像,并用Matlab进行处理。处理涉及到impixelregion,它包括创建一个与当前图中显示的图像相关联的像素区域工具,称为目标图像。这些信息随后被用于使用Levenberg Marquardt算法训练一个三层人工神经网络(ANN)。总共168个样本用于训练,另外168个样本用于测试。通过分析各种分类模型中常用的性能指标,对优化后的模型进行评价和验证。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Internal fault classification using Artificial Neural Network
The main objective of this project is to create an intelligent model using image processing techniques in order to categorize the internal fault to four categories, which are low, intermediate, medium and high. Sample of internal fault location are captured using infrared thermography camera in which the RGB color image are stored and processed using Matlab. Processing involves impixelregion which includes creating a Pixel Region tool associated with the image displayed in the current figure, called the target image. This information is then being used to train a three layer Artificial Neural Network (ANN) using Levenberg Marquardt algorithm. A total of 168 samples are used as training whilst another 168 samples are used for testing. The optimized model is evaluated and validated through analysis of performance indicators frequently used in any classification model.
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