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Fault detection in electrical equipment's images by using optimal features with deep learning classifier

机译:通过使用深度学习分类器的最佳功能来检测电气设备图像中的故障

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摘要

Infrared imaging frameworks have been broadly utilized as a part of the military and civil fields, for example, target recognition, fault diagnosis, fire identification, and medical analysis. Evaluating and monitoring the electrical parts is necessary to analyze the thermal fault at the beginning period. The paper presents the IRT electrical images for diagnosing and classifying the faults by the feature extraction and classification process. At first, IRT segmented switch image (highly temperature zone) is considered, followed by the feature extraction procedure is applied where the images are selected based on the optimal features. The optimal features are accomplished by the inspired optimization algorithm i.e. Opposition based Dragonfly Algorithm (ODA). It chose the best features for the unproblematic classification process. With the intention of classifying the segmented portion as faulty and non-faulty IRT, an approach Deep Neural Network (DNN) is presented. On the basis of the optimal weight attained from learning algorithm, categorize the faulty electrical image easily. The results show that the proposed work accomplishes maximum classification accuracy i.e. 99.99% compared to existing classification approaches.
机译:红外成像框架已被广泛用作军事和民用领域的一部分,例如目标识别,故障诊断,火灾识别和医学分析。评估和监控电气部件对于分析初期的热故障是必要的。通过特征提取和分类过程,提出了用于故障诊断和分类的IRT电图像。首先,考虑IRT分段开关图像(高温区域),然后应用特征提取过程,其中基于最佳特征选择图像。最佳功能是通过启发性的优化算法(即基于对立的蜻蜓算法(ODA))来实现的。它为无问题的分类过程选择了最佳功能。为了将分割的部分分类为有故障的IRT和无故障的IRT,提出了一种深度神经网络(DNN)方法。根据学习算法获得的最佳权重,可以轻松地对故障电子图像进行分类。结果表明,与现有分类方法相比,所提出的工作实现了最大的分类精度,即99.99%。

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