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Forecasting faults of industrial equipment using machine learning classifiers

机译:使用机器学习分类器预测工业设备的故障

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This work presents a predictive maintenance methodology so as to forecast possible equipment stoppages (or faults) of an industrial equipment for anode production along with the fault type in real time, utilizing process sensor data from operation periods. The warning timeframe so as equipment stoppage to be predicted has been set by the process experts as far as possible before the incident occurs. For the forecasting, some widely used machine learning architectures are tested. The visualization of the features patterns and the simulation results show that a warning timeframe around 5-10 minutes before the incident occurs is a feasible goal.
机译:这项工作提出了一种预测性维护方法,以便利用运行期间的过程传感器数据实时预测用于阳极生产的工业设备可能发生的设备停工(或故障)以及故障类型。过程专家会在事件发生之前尽可能地设置警告时间,以便预测设备停止运行的时间。为了进行预测,测试了一些广泛使用的机器学习架构。特征模式的可视化和模拟结果表明,在事件发生前5-10分钟左右的警告时间是可行的目标。

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