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Design and Implementation of Acoustic Sensing System for Online Early Fault Detection in Industrial Fans

机译:工业风机在线早期故障检测的声传感系统设计与实现

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Industrial fans play a critical role in manufacturing facilities, and a sudden shutdown of critical fans can cause significant disruptions. Ensuring early, effective, and accurate detection of fan malfunctions first requires confirming the characteristics of anomalies resulting from initial damage to rotating machinery. In addition, sensing and detection must rely on the use of sensors and sensing characteristics appropriate to various operational abnormalities. This research proposes an online industrial fan monitoring and fault detection technique based on acoustic signals as a physical sensing index. The proposed system detects and assesses anomalies resulting from preliminary damage to rotating machinery, along with improved sensing resolution bandwidth features for microphone sensors as compared to accelerometer sensors. The resulting Intelligent Prediction Integration System with Internet (IPII) is built to analyze rotation performance and predict malfunctions in industrial fans. The system uses an NI cRIO-9065 embedded controller and a real-time signal sensing module. The kernel algorithm is based on an acoustic signal enhancement filter (ASEF) as well as an adaptive Kalman filter (AKF). The proposed scheme uses acoustic signals with adaptive order-tracking technology to perform algorithm analysis and anomaly detection. Experimental results showed that the acoustic signal and adaptive order analysis method could effectively perform real-time early fault detection and prediction in industrial fans.
机译:工业风扇在制造设施中起着至关重要的作用,关键风扇的突然关闭会导致严重的故障。确保及早,有效和准确地检测风扇故障首先需要确认由于旋转机械最初损坏而导致的异常特征。另外,感测和检测必须依赖于适合各种操作异常的传感器和感测特性的使用。本文提出了一种基于声信号作为物理传感指标的工业风机在线监测与故障检测技术。所提出的系统检测和评估由旋转机械的初步损坏导致的异常,以及与加速度计传感器相比,传声器传感器的传感分辨率带宽特性得到改善。由此产生的具有Internet的智能预测集成系统(IPII)可以分析旋转性能并预测工业风扇的故障。该系统使用NI cRIO-9065嵌入式控制器和实时信号感应模块。内核算法基于声音信号增强滤波器(ASEF)和自适应卡尔曼滤波器(AKF)。所提出的方案使用具有自适应顺序跟踪技术的声学信号来执行算法分析和异常检测。实验结果表明,声信号和自适应阶次分析方法可以有效地进行工业风机​​的实时早期故障检测和预测。

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