Brake Disc Deformation Detection Using Intuitive Feature Extraction and Machine Learning

Author:

Dózsa Tamás123ORCID,Őri Péter12ORCID,Szabari Mátyás34,Simonyi Ernő14,Soumelidis Alexandros14ORCID,Lakatos István12ORCID

Affiliation:

1. Vehicle Industry Research Center, Széchenyi István University, H-9026 Győr, Hungary

2. Vehicle Industry Research Center, Road and Rail Vehicles Department, Széchenyi István University, H-9026 Győr, Hungary

3. Department of Numerical Analysis, Eötvös Loránd University, H-1117 Budapest, Hungary

4. Systems and Control Laboratory, HUN-REN Institute For Computer Science and Control, H-1111 Budapest, Hungary

Abstract

In this work we propose proof-of-concept methods to detect malfunctions of the braking system in passenger vehicles. In particular, we investigate the problem of detecting deformations of the brake disc based on data recorded by acceleration sensors mounted on the suspension of the vehicle. Our core hypothesis is that these signals contain vibrations caused by brake disc deformation. Since faults of this kind are typically monitored by the driver of the vehicle, the development of automatic fault-detection systems becomes more important with the rise of autonomous driving. In addition, the new brake boosters separate the brake pedal from the hydraulic system which results in less significant effects on the brake pedal force. Our paper offers two important contributions. Firstly, we provide a detailed description of our novel measurement scheme, the type and placement of the used sensors, signal acquisition and data characteristics. Then, in the second part of our paper we detail mathematically justified signal representations and different algorithms to distinguish between deformed and normal brake discs. For the proper understanding of the phenomenon, different brake discs were used with measured runout values. Since, in addition to brake disc deformation, the vibrations recorded by our accelerometers are nonlinearly dependent on a number of factors (such as the velocity, suspension, tire pressure, etc.), data-driven models are considered. Through experiments, we show that the proposed methods can be used to recognize faults in the braking system caused by brake disc deformation.

Funder

European Union within the framework of the National Laboratory for Autonomous Systems

Ministry of Culture and Innovation of Hungary from the National Research, Development and Innovation Fund

National Research, Development and Innovation Fund

Publisher

MDPI AG

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