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A New Method to Improve the Sensitivity of Leak Detection in Self-Contained Fluid-filled Cables

机译:提高自充液体电缆泄漏检测灵敏度的新方法

摘要

A method of real-time detection of leaks for self-contained fluid-filled cables without taking them out of service has been assessed and a novel machine learning technique, i.e. support vector regression (SVR) analysis has been investigated to improve the detection sensitivity of the self-contained fluid-filled (FF) cable leaks. The condition of a 400 kV underground FF cable route within the National Grid transmission network has been monitored by Drallim pressure, temperature and load current measurement system. These three measured variables are used as parameters to describe the condition of the cable system. In the regression analysis the temperature and load current of the cable circuit are used as independent variables and the pressure within cables is the dependent variable to be predicted. As a supervised learning algorithm, the SVR requires data with known attributes as training samples in the learning process and can be used to identify unknown data or predict future trends. The load current is an independent variable to the fluid-filled system itself. The temperature, namely the tank temperature is determined by both the load current and the weather condition i.e. ambient temperature. The pressure is directly relevant to the temperature and therefore also correlated to the load current. The Gaussian-RBF kernel has been used in this investigation as it has a good performance in general application. The SVR algorithm was trained using 4 days data, as shown in Figure 1, and the optimized SVR is used to predict the pressure using the given load current and temperature information.
机译:评估了一种实时检测自足式充液电缆泄漏而无需停止使用的方法,并研究了一种新型的机器学习技术,即支持向量回归(SVR)分析,以提高电缆的检测灵敏度。自足的充液(FF)电缆泄漏。国家电网输电网络中一条400 kV地下FF电缆路线的状况已通过Drallim压力,温度和负载电流测量系统进行了监控。这三个测量变量用作描述电缆系统状况的参数。在回归分析中,电缆回路的温度和负载电流用作自变量,电缆内的压力是要预测的因变量。作为一种有监督的学习算法,SVR需要具有已知属性的数据作为学习过程中的训练样本,并可用于识别未知数据或预测未来趋势。负载电流是流体填充系统本身的独立变量。温度,即油箱温度,由负载电流和天气条件即环境温度共同决定。压力与温度直接相关,因此也与负载电流相关。高斯-RBF内核已在本研究中使用,因为它在一般应用中具有良好的性能。如图1所示,使用4天的数据对SVR算法进行了训练,并使用优化的SVR根据给定的负载电流和温度信息预测压力。

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