首页> 外文会议>Intelligent Systems Application to Power Systems, 2005. Proceedings of the 13th International Conference on >A characterization methodology for distribution system abnormalities using wavelet packets and self-organizing map neural networks
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A characterization methodology for distribution system abnormalities using wavelet packets and self-organizing map neural networks

机译:小波包和自组织映射神经网络的配电系统异常特征描述方法

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Automatic data processing and information retrieval is a desirable approach in dealing with the curse of the large volume of data recorded for the condition assessment of equipment in power systems. This approach involves developing a methodology that utilizes the inherent relationships of the data to automate the characterization of system behavior. This paper discusses a practical approach to process incipient abnormality data in an underground distribution system to detect failing equipment. The core components of the proposed approach consist of feature extraction, data mapping, clustering, and rule extraction. Wavelet packet analysis was used to extract the informative features from high frequency current signals and the self-organizing map was utilized to model the data and produce prototype vectors. Descriptive rules for the identified patterns were extracted from the k-means clustering results. The results can be employed in rule-based classifiers to automatically characterize the data in an unsupervised fashion.
机译:自动数据处理和信息检索是处理为电力系统中设备的条件评估记录的大量数据的诅咒的理想方法。这种方法涉及开发一种方法,该方法利用数据的固有关系来自动化系统行为的表征。本文讨论了一种实用的方法来处理地下分配系统中的初期异常数据以检测故障设备。所提出的方法的核心组件包括特征提取,数据映射,聚类和规则提取。小波分组分析用于提取来自高频电流信号的信息特征,并且利用自组织地图来建模数据并产生原型向量。从K-Means聚类结果中提取了所识别模式的描述性规则。结果可以在基于规则的分类器中使用,以便以无监督的方式自动表征数据。

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