This study investigates real-time acoustic anomaly detection in vehicles, focusing on diesel particulate filter (DPF) faults in a pickup truck as a case study. Utilizing two WAV audio recordings—one from normal idling and another during a DPF fault—features such as Mel-Frequency Cepstral Coefficients (MFCC) and Discrete Wavelet Transform (DWT) were extracted. Machine learning models, including Support Vector Machines (SVM) and Convolutional Neural Networks (CNN), were deployed on the Hailo-8 AI processor for edge-based, real-time inference. The approach achieved high accuracy in anomaly classification, demonstrating the viability of embedded AI for predictive vehicle maintenance. This non-invasive method enhances fault detection speed and efficiency, reducing downtime and emissions in automotive applications. The edge computing approach demonstrates significant advantages over cloud-based alternatives: sub-millisecond inference latency enables immediate fault detection critical for preventing vehicle damage; continuous operation without network dependency ensures reliability in areas with poor connectivity; local processing eliminates security risks associated with transmitting sensitive vehicle data; and bandwidth requirements are reduced as only anomaly alerts require transmission. Hailo-8's power-efficient architecture enables continuous monitoring without significant battery drain, while its 26 TOPS performance capability ensures real-time processing of complex acoustic signatures. This non-invasive method enhances fault detection speed and efficiency, reducing downtime and emissions in automotive applications while providing a scalable solution deployable across entire vehicle fleets without cloud infrastructure dependencies.
| Primary Language | English |
|---|---|
| Subjects | Automotive Engineering (Other) |
| Journal Section | Research Article |
| Authors | |
| Submission Date | August 21, 2025 |
| Acceptance Date | December 16, 2025 |
| Publication Date | December 17, 2025 |
| Published in Issue | Year 2025 Volume: 9 Issue: 1st Future of Vehicles Conf. |
International Journal of Automotive Science and Technology (IJASTECH) is published by Society of Automotive Engineers Turkey
