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Abnormal data analysis in process industries using deep-learning method

机译:使用深度学习方法对过程工业中的异常数据进行分析

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This research is mainly about the abnormal data analysis in factories of process industries. In the processing factory, there are many sensors which transmit the values to each other. Workers in process factory need to be alerted when the values of some sensors are abnormal values. In our research, the main target is to detect the potential abnormal value from different sensors of process industries. Since the value is filled with noise and delays, we first use the cross-correlation and wavelet transformation to remove them. Then, use deep-learning method to train the model with processed data and use the model to detect potential abnormal value. Finally, we evaluate the model we trained by the data extracted from a real process factory. The result shows that our model performs well.
机译:这项研究主要涉及过程工业工厂中的异常数据分析。在加工厂中,有许多传感器将值相互传送。当某些传感器的值异常时,需要提醒过程工厂的工人。在我们的研究中,主要目标是从过程工业的不同传感器中检测潜在的异常值。由于该值充满了噪声和延迟,因此我们首先使用互相关和小波变换将其删除。然后,使用深度学习方法用处理过的数据训练模型,并使用模型检测潜在的异常值。最后,我们根据从实际流程工厂提取的数据评估我们训练的模型。结果表明我们的模型表现良好。

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