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An Adaptive Forecast-Based Chart for Non-Gaussian Processes Monitoring: With Application to Equipment Malfunctions Detection in a Thermal Power Plant

机译:基于自适应预测的非高斯过程监控图:在火电厂设备故障检测中的应用

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摘要

In order to ensure power quality and keep supplying power in a thermal power plant, early detection of equipment malfunctions is a critical issue. This study attempts to develop an adaptive forecast-based chart so as to enhance the fault detectability in a thermal power plant. In the proposed monitoring statistic, the exponentially weighted moving average is adopted to preserve the information of past observations. Simultaneously, independent component analysis (ICA) is used to extract non-Gaussian information. The advantages of the proposed statistic include the fact that it is capable of monitoring non-Gaussian processes, the detection of small process shifts is improved, and the traditional ICA chart is a special case of the proposed one. The efficiency of the proposed method is verified by a simulated process and a real case of thermal power plant of Taiwan Power Company. Results demonstrated that the proposed method outperforms conventional monitoring methods, especially for detecting small process changes.
机译:为了确保电能质量并在火力发电厂中保持供电,及早发现设备故障是一个关键问题。本研究试图开发一种基于自适应预测的图表,以提高火电厂的故障检测能力。在拟议的监测统计中,采用指数加权移动平均值来保存过去的观测信息。同时,独立成分分析(ICA)用于提取非高斯信息。所提出的统计数据的优点包括以下事实:它能够监视非高斯过程,改进了对小过程偏移的检测,并且传统的ICA图是所提出的统计数据的特例。通过模拟过程和台湾电力公司火电厂的实际案例验证了该方法的有效性。结果表明,所提出的方法优于传统的监视方法,特别是对于检测小的过程变化。

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