Acoustic Signal-based Leak Size Estimation for Electric Valves Using Deep Belief Network

A. Ayodeji, Yong-kuo Liu, Wen Zhou, Xin-qiu Zhou
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引用次数: 6

Abstract

To achieve the balance of plant, industrial valves are extensively used for critical safety and control functions. Conventionally, the threshold and the visual observation method are used for valve health monitoring. However, these methods are slow. This study presents a systematic application of deep belief network (DBN) for fault size estimation in the DN50 electric gate valve. First, real acoustic signals representing the malfunctions are acquired. Secondly, the influence of the transmission path and background noise from other equipment are decoupled, using wavelet packet decomposition and reconstruction. Finally, three different DBN models are developed for valve internal leakage assessment, using the original signals, time-domain parameters and the decomposed wavelet packets. Evaluation results show that the model trained with the time-domain signals achieve the optimal result. The model also shows the capability to automatically extract the deep features from the signal, escaping the dependence on the conventional signal processing method and reducing the signal processing time. The application of DBN for size estimation also solves the slow convergence problems in the conventional multi-layer, backpropagation neural networks.
基于声信号的电动阀门泄漏尺寸深度置信网络估计
为了实现工厂的平衡,工业阀门被广泛用于关键的安全和控制功能。阀门健康监测通常采用阈值法和目测法。然而,这些方法是缓慢的。将深度信念网络(DBN)系统地应用于DN50电动闸阀故障大小估计。首先,获取代表故障的真实声信号。其次,利用小波包分解和重构,解耦了传输路径和其他设备背景噪声的影响;最后,利用原始信号、时域参数和分解后的小波包,建立了三种不同的DBN模型,用于阀门内泄漏评估。评价结果表明,用时域信号训练的模型达到了最优效果。该模型还具有自动提取信号深层特征的能力,摆脱了对传统信号处理方法的依赖,减少了信号处理时间。DBN在尺寸估计中的应用也解决了传统多层反向传播神经网络的缓慢收敛问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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