论文标题

刹车尖叫的深度学习:振动检测,表征和预测

Deep learning for brake squeal: vibration detection, characterization and prediction

论文作者

Stender, Merten, Tiedemann, Merten, Spieler, David, Schoepflin, Daniel, Hofffmann, Norbert, Oberst, Sebastian

论文摘要

尽管在摩擦引起的振动和制动尖叫的建模方面取得了重大进展,但大多数工业研究和设计仍在实验中进行,因为尖叫的许多方面及其涉及的机制仍然未知。我们首次在这里报告了处理数据密集型振动测试的新型策略,以便更好地了解摩擦制动系统振动和噪声机制。采用基于机器学习的方法来检测和表征振动,了解敏感性并预测刹车尖叫的方法,目的是说明跨学科方法如何利用数据科学技术的潜力来应对经典的机械工程挑战的潜力。在第一部分中,开发了深度学习制动尖叫检测器,以识别几类典型的摩擦噪声记录。检测方法植根于基于卷积神经网络的对象检测的最新计算机视觉技术。它允许克服仅依靠记录噪声的瞬时光谱特性的经典方法的局限性。结果表明,与最先进的制动尖叫检测器相比,检测和表征质量出色。在第二部分中,采用复发性神经网络来学习确定操作制动系统动态稳定性的参数模式。给定一组多元加载条件,RNN学会了预测结构的噪声。经过验证的RNN代表了特定制动系统尖叫行为的虚拟双胞胎模型。发现该模型可以以高精度预测制动尖叫的发生和发作,并且可以在加载条件下识别出复杂的模式和时间依赖性,从而将动态结构驱动到不稳定性方案中。

Despite significant advances in modeling of friction-induced vibrations and brake squeal, the majority of industrial research and design is still conducted experimentally, since many aspects of squeal and its mechanisms involved remain unknown. We report here for the first time on novel strategies for handling data-intensive vibration testings to gain better insights into friction brake system vibrations and noise generation mechanisms. Machine learning-based methods to detect and characterize vibrations, to understand sensitivities and to predict brake squeal are applied with the aim to illustrate how interdisciplinary approaches can leverage the potential of data science techniques for classical mechanical engineering challenges. In the first part, a deep learning brake squeal detector is developed to identify several classes of typical friction noise recordings. The detection method is rooted in recent computer vision techniques for object detection based on convolutional neural networks. It allows to overcome limitations of classical approaches that solely rely on instantaneous spectral properties of the recorded noise. Results indicate superior detection and characterization quality when compared to a state-of-the-art brake squeal detector. In the second part, a recurrent neural network is employed to learn the parametric patterns that determine the dynamic stability of an operating brake system. Given a set of multivariate loading conditions, the RNN learns to predict the noise generation of the structure. The validated RNN represents a virtual twin model for the squeal behavior of a specific brake system. It is found that this model can predict the occurrence and the onset of brake squeal with high accuracy and that it can identify the complicated patterns and temporal dependencies in the loading conditions that drive the dynamical structure into regimes of instability.

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