Affiliation:
1. Addfor S.p.a., Italy
2. ZF Friedrichshafen AG, Germany
Abstract
<div>A valuable quantity for analyzing the lateral dynamics of road vehicles is the
side-slip angle, that is, the angle between the vehicle’s longitudinal axis and
its speed direction. A reliable real-time side-slip angle value enables several
features, such as stability controls, identification of understeer and oversteer
conditions, estimation of lateral forces during cornering, or tire grip and wear
estimation. Since the direct measurement of this variable can only be done with
complex and expensive devices, it is worth trying to estimate it through virtual
sensors based on mathematical models. This article illustrates a methodology for
real-time on-board estimation of the side-slip angle through a machine learning
model (SSE—side-slip estimator). It exploits a recurrent neural network trained
and tested via on-road experimental data acquisition. In particular, the machine
learning model only uses input signals from a standard road car sensor
configuration. The model adaptability to different road conditions and tire wear
levels has been verified through a sensitivity analysis and model testing on
real-world data proves the robustness and accuracy of the proposed solution
achieving a root mean square error (RMSE) of 0.18 deg and a maximum absolute
error of 1.52 deg on the test dataset. The proposed model can be considered as a
reliable and cheap potential solution for the real-time on-board side-slip angle
estimation in serial cars.</div>
Subject
Modeling and Simulation,Safety, Risk, Reliability and Quality,Mechanical Engineering,Automotive Engineering
Cited by
2 articles.
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