AI-Driven Predictive Maintenance with Environmental Context Integration for Connected Vehicles: Simulation, Benchmarking, and Field Validation
Kushal Khemani (Independent Researcher, India), Anjum Nazir Qureshi (Rajiv Gandhi College of Engineering Research, Technology)

TL;DR
This paper introduces a novel contextual data fusion framework for predictive maintenance in connected vehicles, integrating internal sensors with environmental data for improved accuracy and real-world validation.
Contribution
The study presents a new framework combining vehicle-internal and external environmental data, validated on synthetic, benchmark, and real-world vehicle telemetry, demonstrating enhanced predictive performance.
Findings
Contextual features improve F1 score by 2.6 points.
Model achieves 100% detection of wear events with 12.2 days MAE.
Edge inference reduces latency from 3.5s to under 1.0s.
Abstract
Predictive maintenance for connected vehicles offers the potential to reduce unexpected breakdowns and improve fleet reliability, but most existing systems rely exclusively on internal diagnostic signals and are validated on simulated or industrial benchmark data. This paper presents a contextual data fusion framework integrating vehicle-internal sensor streams with external environmental signals -- road quality, weather, traffic density, and driver behaviour -- acquired via V2X communication and third-party APIs, with inference at the vehicle edge. The framework is evaluated across four layers. A feature group ablation study on a physics-informed synthetic dataset shows contextual features contribute a 2.6-point F1 improvement; removing all context reduces macro F1 from 0.855 to 0.807. On the AI4I 2020 benchmark (10,000 samples), LightGBM achieves AUC-ROC 0.973 under 5-fold stratified…
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