Machine learning-based intelligent cabin alert filtering system for vehicles
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1.Syncore Autotech Co., Ltd., Guangzhou 511400, P. R. China;2.GAC Energy Technology Co., LTD., Guangzhou 510800, P. R. China;3.GAC Toyota Motor Co., LTD., Guangzhou 511455, P. R. China;4.4aSchool of Mechanical Engineering and Robotics, Guangzhou City University of Technology, Guangzhou 510800, P. R. China;5.4bInstitute of Engineering Research, Guangzhou City University of Technology, Guangzhou 510800, P. R. China;6.School of Mechanical and Automotive Engineering, South China University of Technology , Guangzhou 510641, P. R. China;7.School of Vehicle Engineering, Chongqing University of Technology, Chongqing 400054, P. R. China

Clc Number:

U469.72+2

Fund Project:

Supported by National Natural Science Foundation of China(61602345).

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    Abstract:

    This study presents a machine learning-based intelligent cabin alert filtering system for vehicles aiming to address safety risks caused by excessive and redundant alarm sources. To overcome limitations in current systems, such as alarm redundancy and inaccurate classifications, a hybrid selection strategy is proposed that combines manual expert filtering with a convolutional neural network (CNN) model. The system integrates operational data from various devices, applying manual heuristics to eliminate likely false signals and employing the CNN model for robust feature extraction and precise classification. Experimental results show that the CNN model achieves a classification accuracy of 89.07% on the test dataset. When combined with manual filtering, the overall selection accuracy of alarm signals reaches 99.998%, significantly surpassing the conventional VAS system (90%). These results validate the proposed method’s effectiveness in filtering alarm information. Future research will focus on expanding training datasets, optimizing model parameters, and improving text pre-processing techniques to further enhance the overall system performance.

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张莹,袁海兵,何祺,姜立标,陈毅锋,陈桥芳.基于机器学习的汽车智能座舱告警筛选系统[J].重庆大学学报,2025,48(8):99~110

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  • Received:November 02,2024
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  • Online: July 19,2025
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