TY - JOUR A2 - Forte, Paola AU - Hu, Haoju AU - Luo, Huan AU - Deng, Xiaoqiang PY - 2021 DA - 2021/04/24 TI - Health Monitoring of Automotive Suspensions: A LSTM Network Approach SP - 6626024 VL - 2021 AB - In the automotive industry, one of the critical issues is to develop a health monitoring system for condition assessment and remaining fatigue life estimation of key load-bearing components including automotive suspension. However, considering the difficulty to obtain expert knowledge and nonlinear dynamics in large-scale sensory data, health monitoring of automotive suspension is a challenging work. With the development of deep learning based sequence models in recent years, a long short-term memory (LSTM) network has been proved to capture long-term dependencies in time-series prediction without additional expert knowledge. In this paper, a novel health monitoring system based on a LSTM network is proposed to estimate the remaining fatigue life of automotive suspension. Specifically, first durability tests under various driving cycles are implemented to obtain sequential sensory data provided by common sensors on a test car. Then, a LSTM-based load identification method is designed to predict dynamic stress histories based on the available sensory data. Finally, the damages and remaining fatigue life of the suspensions are estimated by each time step. The experimental results prove that our model can achieve a better performance compared with other representative models. SN - 1070-9622 UR - https://doi.org/10.1155/2021/6626024 DO - 10.1155/2021/6626024 JF - Shock and Vibration PB - Hindawi KW - ER -