Publication number: 20240230397
Abstract: A method for predicting mass of heavy vehicles based on networked operating data and machine learning includes: collecting operating data; extracting speed, engine output torque, satellite elevation, and gear position under a driving condition; determining a transmission ratio of the heavy vehicle based on the gear position; filtering the speed, engine output torque, and the satellite elevation using three of the plurality of filtering parameters; determining a filtered vehicle longitudinal acceleration under the driving condition using the filtered speed, and one of the plurality of filtering parameters; determining a filtered road gradient sine value under the driving condition using the filtered speed, satellite elevation, and one of the plurality of filtering parameters; and inputting the speed, engine output torque, vehicle longitudinal acceleration, road gradient sine value, and transmission ratio into a vehicle mass prediction model to obtain a predicted mass.
Type:
Application
Filed:
September 27, 2023
Publication date:
July 11, 2024
Applicants:
CATARC AUTOMOTIVE TEST CENTER (TIANJIN) CO., LTD, CHINA AUTOMOTIVE TECHNOLOGY AND RESEARCH CENTER CO., LTD
Inventors:
Xiaoxin BAI, Chunling WU, Xiaojun JING, Yongzhen YANG, Changyu LI, Xu LI, Weilin LIU, Ziming JING, Jinghui FAN, Na LI, Jing WANG, Wenjin ZHOU