JOURNAL ARTICLE

Vehicle Sideslip Angle estimation under critical road conditions via nonlinear Kalman filter-based state-dependent Interacting Multiple Model approach

Abstract

The knowledge of Vehicle Sideslip Angle (VSA) can play an essential role in active safety vehicle control systems. However, due to the high costs of sensing instruments, this information is difficult to be directly measured onboard of series production vehicles, restricting de facto its application in practice. It follows that there is a need for online VSA estimation methods only based on available measurements from low-cost sensors. From this perspective, this work proposes a strategy based on Interacting Multiple Model (IMM) filters, which does not require tyre–road friction coefficient knowledge. By integrating the available onboard sensor data, the IMM estimates relevant information in different driving conditions leveraging a 2-Degrees Of Freedom (DOF) single-track vehicle model embedding a Dugoff tyre representation. Two alternative IMM algorithms based on the Extended (EKF) and Unscented Kalman filter (UKF) are developed. Moreover, while usually the transition probabilities among models in classical IMMs are fixed and set on prior information and/or dedicated analysis, here these conservative hypotheses are relaxed introducing a state-dependent Markov transition matrix based on a novel model switching algorithm. The effectiveness of the new proposed methods is evaluated on extensive non-trivial simulation scenarios through a Monte Carlo analysis exploiting an accurate 15-DOF vehicle model via a purposely designed high-fidelity co-simulation platform embedding the dSPACE software Automotive Simulation Model (ASM). Results provide a meaningful comparative performance analysis between the IMMEKF and IMMUKF solutions, as well as with respect to traditional IMM based on constant probabilities transition matrix, blue in both the EKF and UKF configuration. Finally, the developed IMM-based estimation strategy is tested in two realistic driving scenarios to assess the VSA estimation accuracy in case of abrupt changes in road surface conditions.

Keywords:
Kalman filter Control theory (sociology) Extended Kalman filter Nonlinear system State (computer science) Moving horizon estimation Estimation Computer science Nonlinear model Control engineering Engineering Control (management) Algorithm Artificial intelligence Physics

Metrics

27
Cited By
10.78
FWCI (Field Weighted Citation Impact)
60
Refs
0.97
Citation Normalized Percentile
Is in top 1%
Is in top 10%

Citation History

Topics

Vehicle Dynamics and Control Systems
Physical Sciences →  Engineering →  Automotive Engineering
Hydraulic and Pneumatic Systems
Physical Sciences →  Engineering →  Mechanical Engineering
Vehicle Noise and Vibration Control
Physical Sciences →  Engineering →  Automotive Engineering

Related Documents

JOURNAL ARTICLE

Vehicle Sideslip Angle Estimation Based on Interacting Multiple Model Kalman Filter Using Low-Cost Sensor Fusion

Giseo Park

Journal:   IEEE Transactions on Vehicular Technology Year: 2022 Vol: 71 (6)Pages: 6088-6099
JOURNAL ARTICLE

Interacting Multiple Model Kalman Filter Based Vehicle Lateral Motion Estimation Under Various Road Surface Conditions

Dae Jung KimSeung-Hi LeeChung Choo Chung

Journal:   2018 IEEE Conference on Control Technology and Applications (CCTA) Year: 2018 Pages: 1234-1239
JOURNAL ARTICLE

Nonlinear Estimation of Vehicle Sideslip Angle Based on Adaptive Extended Kalman Filter

Xiaojie GaoZhuoping Yu

Journal:   SAE technical papers on CD-ROM/SAE technical paper series Year: 2010 Vol: 1
JOURNAL ARTICLE

Vehicle Sideslip Angle Estimation Based on Hybrid Kalman Filter

Jing LiJiaxu Zhang

Journal:   Mathematical Problems in Engineering Year: 2016 Vol: 2016 Pages: 1-10
© 2026 ScienceGate Book Chapters — All rights reserved.