Affiliation:
1. Institute for Software and Systems Engineering, Technische Universität Clausthal, 38678 Clausthal-Zellerfeld, Germany
Abstract
Recently, remarkable successes have been achieved in the quality assurance of automotive software systems (ASSs) through the utilization of real-time hardware-in-the-loop (HIL) simulation. Based on the HIL platform, safe, flexible and reliable realistic simulation during the system development process can be enabled. However, notwithstanding the test automation capability, large amounts of recordings data are generated as a result of HIL test executions. Expert knowledge-based approaches to analyze the generated recordings, with the aim of detecting and identifying the faults, are costly in terms of time, effort and difficulty. Therefore, in this study, a novel deep learning-based methodology is proposed so that the faults of automotive sensor signals can be efficiently and automatically detected and identified without human intervention. Concretely, a hybrid GRU-based denoising autoencoder (GRU-based DAE) model with the k-means algorithm is developed for the fault-detection and clustering problem in sequential data. By doing so, based on the real-time historical data, not only individual faults but also unknown simultaneous faults under noisy conditions can be accurately detected and clustered. The applicability and advantages of the proposed method for the HIL testing process are demonstrated by two automotive case studies. To be specific, a high-fidelity gasoline engine and vehicle dynamic system along with an entire vehicle model are considered to verify the performance of the proposed model. The superiority of the proposed architecture compared to other autoencoder variants is presented in the results in terms of reconstruction error under several noise levels. The validation results indicate that the proposed model can perform high detection and clustering accuracy of unknown faults compared to stand-alone techniques.
Funder
Open Access Publishing Fund of Clausthal University of Technology
Subject
Electrical and Electronic Engineering,Biochemistry,Instrumentation,Atomic and Molecular Physics, and Optics,Analytical Chemistry
Reference68 articles.
1. ISO (2021, November 22). ISO 26262-10:2012—Road Vehicles—Functional Safety—Part 10: Guideline on ISO 26262. Available online: https://www.iso.org/standard/54591.html.
2. Feature dependencies in automotive software systems: Extent, awareness, and refactoring;Vogelsang;J. Syst. Softw.,2020
3. Trends in the application of model-based fault detection and diagnosis of technical processes;Isermann;Control. Eng. Pract.,1997
4. Theissler, A. (2013). Detecting Anomalies in Multivariate Time Series from Automotive Systems. [Ph.D. Thesis, Brunel University School of Engineering and Design PhD Theses].
5. Diagnosis of wireless sensor networks in presence of permanent and intermittent faults;Sahoo;Wirel. Pers. Commun.,2014