Vehicle State Monitoring and Fault Detection System for Unmanned Ground Vehicles (UGV) using Markov Models

Kalpit Vadnerkar, Pierluigi Pisu
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Abstract

This research presents a novel fault detection and diagnostics system for unmanned ground vehicles (UGVs) by combining Markov models representing the vehicle's navigation, kinematic behavior, and vehicle dynamics systems. Existing studies do not specifically address the challenges related to UGVs and their complex subsystems or the incorporation of weather and environmental condition data. The proposed system leverages environmental and weather condition data to monitor the UGV's state and detect anomalies in its behavior. By predicting the probability of faults such as collisions, sensor damage, and other malfunctions, the system aims to enhance the safety, reliability, and performance of UGVs. The research will demonstrate the effectiveness of the proposed methodology through case studies and performance evaluation, highlighting its potential application in various real-world scenarios. This work contributes to the ongoing research in prognostics and health management, particularly for autonomous systems, by providing a new approach to fault detection and diagnostics in UGVs.
基于马尔可夫模型的无人地面车辆状态监测与故障检测系统
该研究结合了代表车辆导航、运动学行为和车辆动力学系统的马尔可夫模型,提出了一种新的无人地面车辆故障检测和诊断系统。现有的研究没有具体解决与ugv及其复杂子系统相关的挑战,也没有纳入天气和环境条件数据。该系统利用环境和天气条件数据来监测UGV的状态,并检测其行为中的异常情况。该系统通过预测碰撞、传感器损坏等故障的概率,提高ugv的安全性、可靠性和性能。该研究将通过案例研究和绩效评估来证明所提出方法的有效性,突出其在各种现实世界场景中的潜在应用。这项工作通过提供ugv故障检测和诊断的新方法,有助于正在进行的预测和健康管理研究,特别是对于自主系统。
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