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Neural Network based Tire-Road Friction Estimation Using Experimental Data

Nicolas Lampe, Karl-Philipp Kortmann, Clemens Westerkamp

2023IFAC-PapersOnLine12 citationsDOIOpen Access PDF

Abstract

Knowledge of the maximum friction coefficient µmax between tire and road is necessary for implementing autonomous driving. As this coefficient cannot be measured via existing serial vehicle sensors, µmax estimation is a challenging field in modern automotive research. In particular, model-based approaches are applied, which are limited in the estimation accuracy by the physical vehicle model. Therefore, this paper presents a data-based µmax estimation using serial vehicle sensors. For this purpose, recurrent artificial neural networks are trained, validated, and tested based on driving maneuvers carried out with a test vehicle showing improved results compared to the model-based algorithm from previous works.

Topics & Concepts

Artificial neural networkAutomotive industryComputer scienceEstimationAutomotive engineeringBraking distanceFriction coefficientTest dataSimulationArtificial intelligenceEngineeringBrakeProgramming languageAerospace engineeringComposite materialSystems engineeringMaterials scienceVehicle Dynamics and Control SystemsVehicle emissions and performanceHydraulic and Pneumatic Systems