TY - JOUR
T1 - An Embedded Driving Style Recognition Approach
T2 - Leveraging Knowledge in Learning
AU - Zhang, Chaopeng
AU - Wang, Wenshuo
AU - Ju, Zhiyang
AU - Chen, Zhaokun
AU - Venture, Gentiane
AU - Xi, Junqiang
N1 - Publisher Copyright:
IEEE
PY - 2024
Y1 - 2024
N2 - Online driving style recognition can enhance the customization of human-centric driving systems, thereby improving comfort, safety, and fuel economy. However, the limited performance of automotive-grade chips makes it highly challenging to compile and run complicated algorithms in real time. To overcome this bottleneck, this paper proposes an embedded method for recognizing driving styles, which is computationally efficient. This approach leverages experts' prior knowledge in learning algorithms and applies it to the electronic control unit (ECU) characterized by a limited RAM. More specifically, the approach integrates knowledge-based rules and learning-based rules. The design of knowledge-based rules relies on the correlation between driving styles and vehicle dynamics (i.e., friction circle). Learning-based rules are established as explicit hyperplanes extracted through hierarchical clustering and support vector machine analysis of the naturalistic driving behaviors exhibited by 100 drivers. These knowledge- and learning-based rules are then integrated into an embedded driving style recognition model. The resulting model is compiled into an executable file that operates within the vehicle's onboard ECU. The proposed method is validated through real vehicle testing in naturalistic driving settings, demonstrating a remarkable 94.4% level of subjective-objective consistency.
AB - Online driving style recognition can enhance the customization of human-centric driving systems, thereby improving comfort, safety, and fuel economy. However, the limited performance of automotive-grade chips makes it highly challenging to compile and run complicated algorithms in real time. To overcome this bottleneck, this paper proposes an embedded method for recognizing driving styles, which is computationally efficient. This approach leverages experts' prior knowledge in learning algorithms and applies it to the electronic control unit (ECU) characterized by a limited RAM. More specifically, the approach integrates knowledge-based rules and learning-based rules. The design of knowledge-based rules relies on the correlation between driving styles and vehicle dynamics (i.e., friction circle). Learning-based rules are established as explicit hyperplanes extracted through hierarchical clustering and support vector machine analysis of the naturalistic driving behaviors exhibited by 100 drivers. These knowledge- and learning-based rules are then integrated into an embedded driving style recognition model. The resulting model is compiled into an executable file that operates within the vehicle's onboard ECU. The proposed method is validated through real vehicle testing in naturalistic driving settings, demonstrating a remarkable 94.4% level of subjective-objective consistency.
KW - Behavioral sciences
KW - Driving style
KW - Intelligent vehicles
KW - Knowledge based systems
KW - Random access memory
KW - Supervised learning
KW - Support vector machines
KW - Vehicles
KW - intelligent vehicles
KW - knowledge-based rules
KW - learning-based rules
KW - online recognition
UR - http://www.scopus.com/inward/record.url?scp=85184806589&partnerID=8YFLogxK
U2 - 10.1109/TIV.2024.3363146
DO - 10.1109/TIV.2024.3363146
M3 - Article
AN - SCOPUS:85184806589
SN - 2379-8858
SP - 1
EP - 14
JO - IEEE Transactions on Intelligent Vehicles
JF - IEEE Transactions on Intelligent Vehicles
ER -