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Leak detection for self-contained fluid-filled cables using regression analysis

机译:使用回归分析检测自包含流体电缆的泄漏

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This paper investigates the methodology of the machine learning technique, namely the Support Vector Machine to assess the condition of fluid-filled high voltage cables based on thermal, pressure and load current information. Field data from a healthy circuit containing pressure, temperature and load current information have been obtained. The data structure has been investigated and a feasible algorithm to restructure the data for further analysis is proposed. The post-processing technique using Support Vector Machine Regression to predict oil pressure in the system is demonstrated. Results obtained using the regression analysis in this paper are very promising. Based on this method, an expert system could give early warning with better sensitivity than the existing system for the cable circuit and implementation of this approach can be achieved without taking the circuit out of service.
机译:本文研究了机器学习技术的方法,即支持向量机,用于根据热,压力和负载电流信息评估充液的高压电缆的状况。已从健康的电路获得了包含压力,温度和负载电流信息的现场数据。研究了数据结构,并提出了一种可行的数据重组算法,以进行进一步的分析。演示了使用支持向量机回归预测系统中油压的后处理技术。本文使用回归分析获得的结果非常有希望。基于此方法,专家系统可以比现有的电缆电路系统更灵敏地提供预警,并且可以在不使电路停运的情况下实现此方法的实现。

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