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首页> 外文期刊>IEEE transactions on industrial informatics >LSTM and Edge Computing for Big Data Feature Recognition of Industrial Electrical Equipment
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LSTM and Edge Computing for Big Data Feature Recognition of Industrial Electrical Equipment

机译:LSTM和Edge Computing为工业电气设备大数据特征识别

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摘要

With the rapid development of Industrial Internet of Things, the category and quantity of industrial equipment will increase gradually. For centralized monitoring and management of numerous and multivariate equipment in the intelligent manufacturing process, the equipment categories shall be identified first. However, manual labeling of electrical equipment needs high costs. For the purpose of recognizing industrial equipment accurately in manufacturing systems, this study adopts the long short-term memory to analyze big data features and build a nonintrusive load monitoring system. Edge computing is used to implement parallel computing to improve the efficiency of equipment identification. Considering the practical popularity, the fairly priced low-frequency Smart Meter is used to collect the appliance data. According to the proposed optimal adjustment strategy of parameter model, the average random recognition rate can achieve 88% and the average recognition rate of the continuous data of a single electrical equipment can achieve 83.6%.
机译:随着工业互联网的快速发展,工业设备的类别和数量将逐渐增加。对于智能制造过程中众多和多变量设备的集中监控和管理,应首先识别设备类别。但是,手动标记电气设备需要高成本。为了准确识别工业设备,在制造系统中准确识别,本研究采用长期短期内存来分析大数据特征,并建立一个非易插入的负荷监测系统。边缘计算用于实现并行计算以提高设备识别效率。考虑到实际普及,相当价格的低频智能仪表用于收集设备数据。根据参数模型的提议的最佳调整策略,平均随机识别率可以达到88%,单个电气设备连续数据的平均识别率可以达到83.6%。

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