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Predicting machine failures from industrial time series data

机译:预测工业时间序列数据的机器故障

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This paper addresses the problem of predicting machine failures in an industrial manufacturing process based on multivariate time series data. A workflow is presented for cleaning and preprocessing the data, and for training and evaluating a predictive model. Its implementation is modular and extensible to support changes in the underlying production processes and the gathered data. Two predictive models are presented, based on Convolutional Neural Networks and Recurrent Neural Networks, and evaluated on data from an advanced machining process used for cutting complex shapes into metal pieces.
机译:本文根据多变量时间序列数据,解决了在工业制造过程中预测机器故障的问题。提供了用于清洁和预处理数据的工作流程,以及用于训练和评估预测模型。其实现是模块化的,可扩展,以支持底层生产过程和收集数据的变化。基于卷积神经网络和经常性神经网络向两种预测模型提出,并从用于将复杂形状切成金属片的高级加工过程中的数据评估。

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