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Machine Learning Based Fault Type Identification In the Active Distribution Network

机译:主动配电网中基于机器学习的故障类型识别

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摘要

To realize the intelligent of the distribution network, it is necessary to identify the fault type accurately. This paper presents the fault type identification method based on machine learning in active distribution networks. The process of machine learning is divided into four steps: data preparation, data preprocessing, feature extraction and model training. When preparing data, a method of generating fault scenarios in the batch of simulation experiments is presented. The IEEE34 Bus System is built in PSCAD to complete the data preparation for machine learning. Variation multiples of voltage and current are extracted as the features to describe the fault type. Various machine learning models are trained by cross-validation method to get the accuracy of identification. The application of decision tree in fault type identification is presented in the form of a tree diagram. The result of fault type identification is shown by the confusion matrix of the decision tree. All the test results show that the proposed fault identifiers can identify all kinds of fault types in the distribution network.
机译:为了实现配电网的智能化,必须准确识别故障类型。提出了一种基于机器学习的主动配电网故障类型识别方法。机器学习的过程分为四个步骤:数据准备,数据预处理,特征提取和模型训练。在准备数据时,提出了一种在大量仿真实验中生成故障场景的方法。 PSCAD中内置了IEEE34总线系统,以完成机器学习的数据准备。提取电压和电流的变化倍数作为描述故障类型的特征。通过交叉验证方法训练各种机器学习模型,以获取识别的准确性。决策树在故障类型识别中的应用以树形图的形式呈现。故障类型识别的结果由决策树的混淆矩阵表示。所有测试结果表明,所提出的故障识别符可以识别配电网中的各种故障类型。

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