Synthetic data generation of vibration signals at different speed and load conditions of transmissions utilizing generative adversarial networks

IF 0.8 4区 工程技术 Q4 INSTRUMENTS & INSTRUMENTATION Tm-Technisches Messen Pub Date : 2023-05-17 DOI:10.1515/teme-2023-0001
Timo König, Fabian Wagner, Robin Bäßler, M. Kley, M. Liebschner
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Abstract

Abstract Condition monitoring of machines and powertrain components is an essential part of ensuring reliability and product safety in many industries. The monitored machines and components are often divided into different condition classes as well as classified using machine learning methods. In order to enable classification with machine learning algorithms, the acquisition of a sufficient amount of data from each condition class is essential. In reality, the collection of data for faulty system states turns out to be much more difficult, therefore in many use cases balanced data sets are not available. However, when classifying faulty states, an identical number of data per class is of great importance. This problem can be counteracted with synthetic data generation. Generative Adversarial Networks (GAN) are a suitable approach to generate synthetic data based on real measured data. In most cases of synthetic data generation, different damage cases, e.g. from a transmission, are simulated, but a generation of synthetic data is not performed at different operating conditions. However, different speeds and torques are a reality when monitoring, as the drive systems operate under changing operating conditions. Therefore, in the context of this paper, synthetic data generation at different operating states is investigated in order to implement a condition monitoring system for good and bad system conditions which includes different operating states. So, vibration data is acquired at different operating conditions of a transmission on a drive test rig and relevant features are highlighted using a suitable signal pre-processing method. The features, caused by different operating conditions, can also be generated synthetically by GAN. Therefore, it is possible to achieve a similar classification accuracy by integrating synthetically generated data as with real data, which makes the synthetic data generation a viable solution for extending existing data sets.
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基于生成对抗网络的不同传输速度和负载条件下振动信号的合成数据生成
在许多行业中,机器和动力总成部件的状态监测是确保产品可靠性和安全性的重要组成部分。被监测的机器和部件通常被划分为不同的状态类,并使用机器学习方法进行分类。为了使用机器学习算法进行分类,从每个条件类中获取足够数量的数据是必不可少的。实际上,收集故障系统状态的数据要困难得多,因此在许多用例中,平衡数据集是不可用的。然而,在对故障状态进行分类时,每个类的数据数量相同是非常重要的。这个问题可以通过合成数据生成来解决。生成对抗网络(GAN)是一种基于实际测量数据生成合成数据的合适方法。在合成数据生成的大多数情况下,模拟了不同的损坏情况,例如来自传输的损坏,但合成数据的生成不是在不同的操作条件下进行的。然而,在监测时,由于驱动系统在不断变化的工作条件下运行,不同的速度和扭矩是一个现实。因此,本文研究不同运行状态下的综合数据生成,以实现包括不同运行状态的系统好工况和坏工况的状态监测系统。为此,在传动试验台上采集变速器在不同工况下的振动数据,并采用合适的信号预处理方法突出变速器的振动特征。由不同操作条件引起的特征也可以由GAN合成。因此,通过将合成生成的数据与真实数据集成,可以达到类似的分类精度,这使得合成数据生成成为扩展现有数据集的可行解决方案。
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来源期刊
Tm-Technisches Messen
Tm-Technisches Messen 工程技术-仪器仪表
CiteScore
1.70
自引率
20.00%
发文量
105
审稿时长
6-12 weeks
期刊介绍: The journal promotes dialogue between the developers of application-oriented sensors, measurement systems, and measurement methods and the manufacturers and measurement technologists who use them. Topics The manufacture and characteristics of new sensors for measurement technology in the industrial sector New measurement methods Hardware and software based processing and analysis of measurement signals to obtain measurement values The outcomes of employing new measurement systems and methods.
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