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Belt conveyor roller fault audio detection based on the wavelet neural network

机译:基于小波神经网络的皮带输送机滚筒故障音频检测

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Belt conveyor is the main equipment in coal production department. And it is of great significance to its normal operation on coal safety production. At present, the belt conveyors fault detection method is still not perfect. Both the discovery and identification of the belt conveyors faults are also not timely. This paper focuses on roller fault sound audio analysis, exploring a new kind of automatic fault detection and identification method based on wavelet transform and BP neural network technology, through de-noising method to extract fault feature sound improving system recognition accuracy. This method through field verification in the mine achieves good results, which proves its feasibility.
机译:带式输送机是煤炭生产部门的主要设备。对于其正常运行对煤矿安全生产具有重要意义。目前,皮带输送机的故障检测方法仍不完善。带式输送机故障的发现和识别都不是及时的。本文重点研究了滚动故障声音的分析,探索了一种基于小波变换和BP神经网络技术的故障自动检测与识别的新方法,通过降噪方法提取故障特征声音,提高了系统的识别精度。通过矿场现场验证,该方法取得了良好的效果,证明了该方法的可行性。

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