Road adhesion coefficient estimation by multi-sensors with LM-MMSOFNN algorithm

Bibliographic Details
Title: Road adhesion coefficient estimation by multi-sensors with LM-MMSOFNN algorithm
Authors: Guiyang Wang, Shaohua Li, Guizhen Feng, Zekun Yang
Source: Advances in Mechanical Engineering, Vol 15 (2023)
Publisher Information: SAGE Publishing, 2023.
Publication Year: 2023
Collection: LCC:Mechanical engineering and machinery
Subject Terms: Mechanical engineering and machinery, TJ1-1570
More Details: Accurate and efficient road adhesion coefficient estimation is the premise for the proper functioning of vehicle active safety control system. With the increased application of distributed drive vehicles and on-board sensors, a multi-module self-organizing feedforward neural network (LM-MMSOFNN) based on improved Levenberg-Marquardt (LM) learning algorithm is proposed for online road adhesion coefficient estimation. In this method, the vehicle dynamics model and the Dugoff tire model were well established, and the input and output variables of the neural network model were obtained by Principal Component Analysis (PCA) method. To improve the estimation accuracy, Extended Kalman Filter (EKF) and Moving Average (MA) were used to denoise the measured signal. On this basis, a road adhesion coefficient estimation model based on multi-module self-organizing neural network was established. Both sides of road adhesion coefficients are calculated by multi-module self-organizing neural network simultaneously. Through the increase and decrease of self-organizing neurons and the improved LM learning algorithm, the computational complexity and system hardware storage are reduced, and the algorithm exhibits a good adaptability to different roads. Simulation and vehicle experiments show that the proposed method can fully extract multi-sensor information and adapt to the different road characteristics changes under driving condition. As compared with Kmeans method, it has higher estimation accuracy and stronger adaptability to varying speed.
Document Type: article
File Description: electronic resource
Language: English
ISSN: 1687-8140
16878132
Relation: https://doaj.org/toc/1687-8140
DOI: 10.1177/16878132231183232
Access URL: https://doaj.org/article/18417d50cb3f47c983328fedb56a1acd
Accession Number: edsdoj.18417d50cb3f47c983328fedb56a1acd
Database: Directory of Open Access Journals
More Details
ISSN:16878140
16878132
DOI:10.1177/16878132231183232
Published in:Advances in Mechanical Engineering
Language:English