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Warning model of new energy vehicle under improving time-to-rollover with neural network

Peipei Chao, Ruiyuan Zhang, Yi-Die Wang, Hong Tang, Hong-Liang Dai

2022Measurement and Control21 citationsDOIOpen Access PDF

Abstract

The probability of electric vehicle rollover accident can be effectively reduced by shortening the prediction time interval and improving the prediction accuracy. Based on a multilayer neural network, an improved time-to-rollover method is presented in this paper. Firstly, the force model of vehicle rollover is established and analyzed where the structure and mass of a battery box have an important influence on the occurrence of rollover. Then, the rollover indexes considering hyperparameters are divided into five categories, and the multi-layer neural network is used to simplify the algorithm structure of the time to rollover, and quickly calculate the operating state parameters with a variation step size in real time. Finally, the influence of the hyperparameters on the prediction results of neural network is studied, and higher efficiency is obtained by comparing with traditional methods.

Topics & Concepts

Rollover (web design)Artificial neural networkHyperparameterComputer scienceAutomotive engineeringEngineeringArtificial intelligenceWorld Wide WebVehicle Dynamics and Control SystemsMechanical Engineering and Vibrations ResearchAdvanced Battery Technologies Research
Warning model of new energy vehicle under improving time-to-rollover with neural network | Litcius