TY - JOUR
PY - 2021//
TI - Intelligent vehicle automatic stop-and-go task based on humanized learning control model
JO - Advances in civil engineering
A1 - Sun, Tianjun
A1 - Gao, Zhenhai
A1 - Gao, Fei
A1 - Zhang, Tianyao
A1 - Ji, Di
A1 - Chen, Siyan
SP - e8867091
EP - e8867091
VL - 2021
IS -
N2 - The automatic stop-and-go task of intelligent vehicles can make the adaptive cruise control system achieve a full-speed range. However, the conventional design methods mostly focus on functional safety, without considering drivers' behaviors, thereby leading to a poor driving experience. To improve the situation, a humanized learning control model is used instead of mechanical switching logic. Therefore, first, the common characteristics of human drivers with different driving styles are found by analyzing real drivers' experiments. Then, the vehicle automatic starting function is designed based on iterative learning control with the fast Fourier transform for acceleration fitting. Next, the vehicle automatic braking function is designed based on dynamic time to collision. Finally, the simulation of the stop-and-go scenario is shown in CARSIM, and the real vehicle test is performed under the urban overpass driving condition.
RESULTS show that the proposed model can improve the humanization in the vehicle stop-and-go task.
Language: en
LA - en SN - 1687-8086 UR - http://dx.doi.org/10.1155/2021/8867091 ID - ref1 ER -