This study proposes a learning-based method with domain adaptability for input estimation of vehicle suspension systems. In a crowdsensing setting for bridge health monitoring, vehicles carry sensors to collect samples of the bridge's dynamic response. The primary challenge is in preprocessing; signals are highly contaminated from road profile roughness and vehicle suspension dynamics. Additionally, signals are collected from a diverse set of vehicles vitiating model-based approaches. In our data-driven approach, two autoencoders for the cabin signal and the tire-level signal are constrained to force the separation of the tire-level input from the suspension system in the latent state representation. From the extracted features, we estimate the tire-level signal and determine the vehicle class with high accuracy (98% classification accuracy). Compared to existing solutions for the vehicle suspension deconvolution problem, we show that the proposed methodology is robust to vehicle dynamic variations and suspension system nonlinearity.
翻译:这项研究建议了一种基于学习的方法,对车辆悬浮系统的投入估计具有领域适应性。在用于桥梁健康监测的人群监测环境中,车辆携带传感器收集桥体动态反应的样本。主要挑战在于预处理;信号受到道路剖面粗糙和车辆悬浮动态的高度污染。此外,信号是从一系列不同机动车辆中收集的,这些机动车辆的示范方法正在削弱。在我们的数据驱动方法中,机舱信号和轮胎级信号的两台自动校正器被限制在潜在状态代表中强制将轮胎级输入从悬浮系统分离。我们从提取的特征中估算轮胎级信号,并以高度精确度(98%的分类准确性)确定车辆等级。与车辆悬浮变异问题的现有解决方案相比,我们表明拟议的方法对车辆动态变异和悬浮系统不线性都十分健全。