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Application of Principle Component Analysis in Resolving Influential Factor Subject to Industrial Motor Failure

机译:主成分分析在解决工业电机故障影响因素中的应用

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Predictive maintenance is very important towards industrial economy by improving equipment efficiency, reliability and reducing downtime. In recent years, abundant of data of rotating equipment is readily available from various sources. However, these data are not being utilized and analyzed for improving maintenance performance. This requires advanced techniques to analyze a variety of data in order to transform into relevant information. Most problems with a lot of parameters involved were not being specific to analyze the contribution of motor failure. Therefore, this research proposed an efficient data analysis using Principle Component Analysis (PCA) in determining the most influential factor to the failure of the industrial motor. The result will show the parameters that influence the motor failure. This finding can be used as a guideline for predictive maintenance in order to mitigate the risk of the plant shutdown.
机译:通过提高设备效率,可靠性和减少停机时间,预测性维护对工业经济非常重要。近年来,可以从各种来源容易地获得大量旋转设备的数据。但是,这些数据没有被利用和分析以改善维护性能。这就需要先进的技术来分析各种数据,以便转换为相关的信息。大多数涉及很多参数的问题并不是专门用来分析电动机故障的原因。因此,本研究提出了一种使用主成分分析(PCA)的有效数据分析方法,来确定对工业电机故障产生最大影响的因素。结果将显示影响电机故障的参数。该发现可以用作预测性维护的准则,以减轻工厂停工的风险。

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