Car Sensors Health Monitoring by Verification Based on Autoencoder and Random Forest Regression
Sahar Torkhesari, Behnam Yousefimehr, Mehdi Ghatee

TL;DR
This paper presents a sensor health monitoring system for vehicles that uses autoencoders and random forest regression to detect sensor failures and estimate sensor values, achieving 99% accuracy in real vehicle data.
Contribution
It introduces a novel combination of autoencoders and random forest regression for proactive sensor failure detection and value estimation in automotive systems.
Findings
Achieved 99% accuracy in sensor failure detection.
Effectively estimated faulty sensor values using machine learning.
Proactively alerted driver and maintenance for sensor issues.
Abstract
Driver assistance systems provide a wide range of crucial services, including closely monitoring the condition of vehicles. This paper showcases a groundbreaking sensor health monitoring system designed for the automotive industry. The ingenious system leverages cutting-edge techniques to process data collected from various vehicle sensors. It compares their outputs within the Electronic Control Unit (ECU) to evaluate the health of each sensor. To unravel the intricate correlations between sensor data, an extensive exploration of machine learning and deep learning methodologies was conducted. Through meticulous analysis, the most correlated sensor data were identified. These valuable insights were then utilized to provide accurate estimations of sensor values. Among the diverse learning methods examined, the combination of autoencoders for detecting sensor failures and random forest…
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Taxonomy
TopicsFire Detection and Safety Systems · Advanced Sensor and Control Systems · Advanced Measurement and Detection Methods
