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A data Processing Method for Fault Prediction of Industrial Pipeline Time Series Data

机译:一种用于工业管道时间序列数据的故障预测数据处理方法

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This paper solves the problem of data processing in fault prediction in the manufacturing process of industrial pipeline based on time series data. A data processing method is provided, which can segment and reorganize the pipeline data, and clean and preprocess the reconstructed data. At the same time, data training and evaluation prediction models are proposed to evaluate the processed data. The implementation of the data processing method is modular and scalable, supporting the underlying production process and collecting data changes. Based on the recurrent neural network, a prediction model was proposed and the data collected by the thin film transistor liquid crystal displayer production line was used to evaluate the method.
机译:本文解决了基于时间序列数据的工业管道制造过程中故障预测数据处理的问题。提供数据处理方法,其可以段和重新组织流水线数据,并清洁和预处理重建数据。同时,提出了数据培训和评估预测模型来评估处理的数据。数据处理方法的实现是模块化且可伸缩的,支持底层的生产过程和收集数据变化。基于经常性神经网络,提出了一种预测模型,并使用薄膜晶体管液晶显示器生产线收集的数据来评估该方法。

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