声发射在自主装置故障诊断与预测中的应用实验

Kai-Zheng Zhong, J. Chen
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引用次数: 0

摘要

在工业4.0的发展趋势下,工业发展正逐步向智能自主方向转变。应用预防技术对机械系统进行故障诊断是迫切而必要的。因此,本文广泛提出了各种基于AI(人工智能)的异常诊断和预测技术。此外,利用声学信息ML (Acoustic Information Machine learning)系统收集声学信息,可以深入了解系统的健康状况,防止系统故障。该系统是基于数据驱动的ML系统从声学数据开发的。顺便说一下,它包括振动信号和从机械上收集的声学图像。该系统采用深度学习模型对输入的声学特征数据进行分析和组合。此外,利用人工智能学习方法开发了诊断模型,可用于各种目标的决策问题。该系统可广泛应用于许多方面,特别是在监控机器状态和产品质量方面具有很高的辨识度。采用AI架构的应用和ML方案的适配来满足以下实际操作的需求。例如工厂自动化,对自动化工厂设备的电机故障进行错误诊断和预测,甚至是异常声音检测后的自动反馈系统。一旦将上述场景与EC(边缘计算)迁移模块相结合,就可以激发创新的设计概念。通过声学分析、AI、EC、电磁学、通信等理论基础学科等实用技术的协同,便于针对Edge运营的趋势做出灵活的改变。特别是,它可以形成一个独特的定制系统。此外,本文还研究了嵌入式系统在智能音箱中的应用作为基础。然后结合音频记录(电机音频发射)建立机器学习模型,利用音频发射数据进行训练。arm-4mf芯片上采用DSP系统完成音频信号转换数字的复杂计算,能够完全方便判断特定电机发出的音频信号。本文构建框架的结果表明,音频判断的准确率可以达到85%,但现阶段对电机音频发射的判断准确率仍达不到20%。在研究中也可能遇到很多问题。最后,本文提供了一种分析方法,以达到解决电机轴线判断偏差的目的。该方法基于TinyML(微型机器学习)技术,使物联网领域朝着智能节能的方向发展。本文认为AIOT (AI物联网)在AI普及的未来,势必会影响和改变人们的生活方式。
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Experimental Applying Acoustic Emission to Fault Diagnosis and Prediction of Autonomous Devices
Industrial development is gradually transforming towards intelligent autonomy by the development trend of Industry 4.0. The mechanical system fault diagnosis by using prevention techniques is urgent and necessary. Thus, various abnormal diagnosis and prediction technologies based on AI (Artificial Intelligence) are extensively proposed in this paper. Moreover, it is using of Acoustic Information ML (Machine learning) systems to collect acoustic information, which can in-depth acknowledge system health and prevent system failures. The system is developed from acoustic data based on a data-driven ML system. By the way, it is including vibration signals and acoustic images gathered from machinery. This developed system uses a deep learning model to analyze and combine input acoustic feature data. Besides, there is a diagnosis model developed with AI learning methods that can be used for decision-making problems of various goals. The system can be widely used in many aspects, especially in monitoring machine status and product quality with a high degree of identification. The application of AI architecture plus the adaptation of ML scheme are employed to satisfy the requirements of the following practical operations. For example, the factory automation, error diagnosis and prediction of motor failure of automatic factory equipment, and even automatic feedback system after abnormal sound detection. Once the aforementioned scenario is combined with EC (edge computing) migration module can inspire innovative design concepts. Through the collaboration of practical technology, such as acoustics analysis, AI, EC, electromagnetics, communications, and other theoretical basis subjects, it is convenient for flexible changes made in response to the trend of Edge operation. Especially, it can be formed as a unique customized system. In addition, this paper investigates the embedded system in the application of smart speakers as a basis. Then it is jointing with audio recording (motor audio emission) to establish an ML model which is trained by the audio emission data. There a DSP system on the arm-4mf chip is adopted to complete the complex calculation of audio signal conversion digital, which is able to completely facilitate the judgment of audio signal emission from a specific motor. In this paper, the results from the build framework illustrate the accuracy of audio judgment can reach 85%, but the accuracy of judgment for motor audio emission still cannot reach 20% at the current stage. There are also many possible problems encountered in the research. Eventually, this paper provides an analysis method to accomplish the goal of solving judgment misalignment of the motor axis. The method is based on TinyML (Tiny machine learning) techniques so that the field of IoT can move toward the direction of smart energy saving. This article believes that the AIOT (AI Internet of Thing) in the future of AI popularization is bound to affect and change people’s lifestyles.
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