LDIPRS: A novel longitudinal driving intention prior recognition technique empowered by TENG and deep learning

被引:2
作者
Tan, Haiqiu [1 ]
Sun, Dongxian [1 ]
Guo, Hongwei [1 ]
Wang, Yuhan [2 ]
Shi, Jian [1 ]
Zhang, Haodong [3 ]
Wang, Wuhong [1 ]
Zhang, Fanqing [4 ]
Gao, Ming [5 ]
机构
[1] Beijing Inst Technol, Sch Mech Engn, Beijing 100081, Peoples R China
[2] China FAW Corp Ltd, Intelligent & Connected Vehicle Dev Inst, Changchun 130000, Peoples R China
[3] Tsinghua Univ, Sch Vehicle & Mobil, Beijing 100083, Peoples R China
[4] Beijing Inst Technol, Sch Mechatron Engn, Beijing 100081, Peoples R China
[5] Hunan Univ, Coll Mech & Vehicle Engn, Changsha 410082, Peoples R China
关键词
Triboelectric nanogenerators; Autonomous vehicles; Driving intention recognition; Prior recognition system; Human-machine interaction; VEHICLES;
D O I
10.1016/j.nanoen.2024.110087
中图分类号
O64 [物理化学(理论化学)、化学物理学];
学科分类号
070304 ; 081704 ;
摘要
For autonomous vehicles, real-time and accurate longitudinal driving intention recognition is crucial as it effectively enhances driving safety and improves the driving experience. This study proposes a novel data and model hybrid-driven fine-grained longitudinal driving intention prior recognition system (LDIPRS). Firstly, the system integrates a human-pedal interaction sensor (HPIS) based on triboelectric nanogenerators for fine-grained longitudinal driving maneuver monitoring and the channel attention (CA)-enhanced convolutional neural network (CBRCNet). The HPIS, integrated into the vehicle's acceleration and brake pedals, is capable of monitoring driver foot movement information in the form of electrical signals before the vehicle responds, achieving data level advance. The collected electrical signals are fed into the CBRCNet network, which models and learns the mapping relationship between these signals and fine-grained longitudinal driving intentions, leading to model level advances. The HPIS completes the capture of longitudinal maneuver information 541 ms before the driving simulator starts to respond at the data level. At the model level, CBRCNet can achieve a recognition accuracy of 96.1 % based on partial response data (50 ms after starting response) rather than complete response data of the HPIS. Finally, our proposed LDIPRS realizes the recognition of emergency braking, rapid acceleration, normal braking, and normal acceleration in advance by 732 ms, 1035 ms, 1757 ms, and 2227 ms, respectively. This study introduces self-powered, low-cost, highly sensitive triboelectric sensors into the field of intention recognition, and combines the triboelectric sensors with deep learning algorithms to offer a promising solution to improve the safety of autonomous vehicles and the efficiency of intelligent transportation systems.
引用
收藏
页数:13
相关论文
共 48 条
[1]   Tire Condition Monitoring and Intelligent Tires Using Nanogenerators Based on Piezoelectric, Electromagnetic, and Triboelectric Effects [J].
Askari, Hassan ;
Hashemi, Ehsan ;
Khajepour, Amir ;
Khamesee, Mir Behrad ;
Wang, Zhong Lin .
ADVANCED MATERIALS TECHNOLOGIES, 2019, 4 (01)
[2]   A Triboelectric Self-Powered Sensor for Tire Condition Monitoring: Concept, Design, Fabrication, and Experiments [J].
Askari, Hassan ;
Saadatnia, Zia ;
Khajepour, Amir ;
Khamesee, Mir Behrad ;
Zu, Jean .
ADVANCED ENGINEERING MATERIALS, 2017, 19 (12)
[3]   Future Directions of Intelligent Vehicles: Potentials, Possibilities, and Perspectives [J].
Cao, Dongpu ;
Wang, Xiao ;
Li, Lingxi ;
Lv, Chen ;
Na, Xiaoxiang ;
Xing, Yang ;
Li, Xuan ;
Li, Ying ;
Chen, Yuanyuan ;
Wang, Fei-Yue .
IEEE TRANSACTIONS ON INTELLIGENT VEHICLES, 2022, 7 (01) :7-10
[4]   Triboelectric nanogenerator sensors for intelligent steering wheel aiming at automated driving [J].
Chen, Longping ;
Yuan, Kang ;
Chen, Shiyang ;
Huang, Yanjun ;
Askari, Hassan ;
Yu, Ninghai ;
Mo, Jingyue ;
Xu, Nan ;
Wu, Mingzhi ;
Chen, Hong ;
Khajepour, Amir ;
Wang, Zhonglin .
NANO ENERGY, 2023, 113
[5]   Triboelectric nanogenerators [J].
Cheng, Tinghai ;
Shao, Jiajia ;
Wang, Zhong Lin .
NATURE REVIEWS METHODS PRIMERS, 2023, 3 (01)
[6]   Recent Advances in Triboelectric Nanogenerators: From Technological Progress to Commercial Applications [J].
Choi, Dongwhi ;
Lee, Younghoon ;
Lin, Zong-Hong ;
Cho, Sumin ;
Kim, Miso ;
Ao, Chi Kit ;
Soh, Siowling ;
Sohn, Changwan ;
Jeong, Chang Kyu ;
Lee, Jeongwan ;
Lee, Minbaek ;
Lee, Seungah ;
Ryu, Jungho ;
Parashar, Parag ;
Cho, Yujang ;
Ahn, Jaewan ;
Kim, Il-Doo ;
Jiang, Feng ;
Lee, Pooi See ;
Khandelwal, Gaurav ;
Kim, Sang-Jae ;
Kim, Hyun Soo ;
Song, Hyun-Cheol ;
Kim, Minje ;
Nah, Junghyo ;
Kim, Wook ;
Menge, Habtamu Gebeyehu ;
Park, Yong Tae ;
Xu, Wei ;
Hao, Jianhua ;
Park, Hyosik ;
Lee, Ju-Hyuck ;
Lee, Dong-Min ;
Kim, Sang-Woo ;
Park, Ji Young ;
Zhang, Haixia ;
Zi, Yunlong ;
Guo, Ru ;
Cheng, Jia ;
Yang, Ze ;
Xie, Yannan ;
Lee, Sangmin ;
Chung, Jihoon ;
Oh, Il-Kwon ;
Kim, Ji-Seok ;
Cheng, Tinghai ;
Gao, Qi ;
Cheng, Gang ;
Gu, Guangqin ;
Shim, Minseob .
ACS NANO, 2023, 17 (12) :11087-11219
[7]   Flexible triboelectric generator! [J].
Fan, Feng-Ru ;
Tian, Zhong-Qun ;
Wang, Zhong Lin .
NANO ENERGY, 2012, 1 (02) :328-334
[8]   Manifold Siamese Network: A Novel Visual Tracking ConvNet for Autonomous Vehicles [J].
Gao, Ming ;
Jin, Lisheng ;
Jiang, Yuying ;
Guo, Baicang .
IEEE TRANSACTIONS ON INTELLIGENT TRANSPORTATION SYSTEMS, 2020, 21 (04) :1612-1623
[9]   A highly sensitive, self-powered triboelectric auditory sensor for social robotics and hearing aids [J].
Guo, Hengyu ;
Pu, Xianjie ;
Chen, Jie ;
Meng, Yan ;
Yeh, Min-Hsin ;
Liu, Guanlin ;
Tang, Qian ;
Chen, Baodong ;
Liu, Di ;
Qi, Song ;
Wu, Changsheng ;
Hu, Chenguo ;
Wang, Jie ;
Wang, Zhong Lin .
SCIENCE ROBOTICS, 2018, 3 (20)
[10]   Self-Powered Hall Vehicle Sensors Based on Triboelectric Nanogenerators [J].
Guo, Tong ;
Zhao, Junqing ;
Liu, Wenbo ;
Liu, Guoxu ;
Pang, Yaokun ;
Bu, Tianzhao ;
Xi, Fengben ;
Zhang, Chi ;
Li, Xinjian .
ADVANCED MATERIALS TECHNOLOGIES, 2018, 3 (08)