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Detection of faults in electrical panels using deep learning method

机译:使用深度学习方法检测配电盘中的故障

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In the image analysis, a big trend within the field of artificial intelligence is using the Deep Learning method, which is an upgrade of the existing neural network adaptive architecture (ANN). Deep Learning is a major new field in machine learning that encompasses a wide range of neural network architectures designed to perform various tasks. In the thermography energy sector, examples that are processed on a daily basis are sampling of active energy components, focus segmentation, and fault classification. The most popular network architecture for Deep Learning in image analysis is the convolution neural network (CNN), where traditional machine learning methods require determination and calculation, from which the algorithm training comes. Deep Learning approach captures important features as well as the appropriate weight of these attributes to make decision for new data. This paper describes a method and tool that are available to build and conduct an effective analysis of the Deep Learning Methodfor electrical components.
机译:在图像分析中,人工智能领域的一大趋势是使用深度学习方法,该方法是对现有神经网络自适应体系结构(ANN)的升级。深度学习是机器学习中的一个主要新领域,它包含旨在执行各种任务的各种神经网络体系结构。在热成像能源领域,每天处理的示例是有功电能分量采样,焦点分割和故障分类。图像分析中最流行的深度学习网络架构是卷积神经网络(CNN),其中传统的机器学习方法需要确定和计算,算法训练来自此。深度学习方法捕获了重要特征以及这些属性的适当权重,以便为新数据做出决策。本文介绍了可用于构建和进行电气元件深度学习方法的有效分析的方法和工具。

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