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A Deep Learning Approach to the Acoustic Condition Monitoring of a Sintering Plant

机译:烧结厂声学状态监测的深度学习方法

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This paper proposes the use of deep learning classification for acoustic monitoring of an industrial process. Specifically, the application is to process sound recordings to detect when additional air leaks through gaps between grate bars lining the bottom of the sinter strand pallets, caused by thermal cycling, aging and deterioration. Detecting holes is not possible visually as the hole is usually small and covered with a granular bed of sinter/blend material. Acoustic signals from normal operation and periods of air leakage are fed into the basic supervised classification methods (SVM and J48) and the deep learning networks, to learn and distinguish the differences. Results suggest that the applied deep learning approach can effectively detect the acoustic emissions from holes time segments with a minimum 79% of accuracy.
机译:本文提出将深度学习分类用于工业过程的声学监控。具体来说,该应用程序是处理声音记录,以检测何时由于热循环,老化和劣化而导致额外的空气通过衬在烧结坯料托盘底部的炉排之间的间隙泄漏。由于孔通常很小,并覆盖有烧结/混合材料的颗粒床,因此肉眼无法检测到孔。来自正常运行和漏气时间的声音信号被馈送到基本的监督分类方法(SVM和J48)和深度学习网络中,以学习和区分差异。结果表明,所应用的深度学习方法可以以最低79%的准确度有效地检测出孔时间段的声发射。

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