TY - GEN
T1 - A Rational Decision-Making Approach Based on Bayesian Network and BDI Model For Autonomous Driving System
AU - Zhang, Xinyuan
AU - Du, Dehui
N1 - Publisher Copyright:
© 2023 SPIE.
PY - 2023
Y1 - 2023
N2 - The safety of decision-making in autonomous driving systems (ADSs) is a challenging issue, which is very important for ADS development. As a highly acceptable decision method, Bayesian Net\vork (BN) has attracted more and more attention, therefore, its decision confidence and robustness have also become a focus. Since BN is a form of reasoning based on probability, for the decision results with low confidence (that is, the probability values of several optional decision actions have a small difference), when the data is slightly disturbed, it is likely to change, resulting in serious consequences such as car crash. To generate safe decision-making, we innovatively propose a rational Bayesian network decision-making approach based on BDI model. It helps to improve the decision confidence of the traditional B. BDI model is a well-known theory of inferencing agents' mental states (belief, desire and intention). We use it to guide the decision-making process of Bayesian network. According to the domain knowledge of ADS, we introduce and design rule-based intention inference for the decision agent to build a Bayesian net\vork with BDI-layer. And for other uncertain agents in the environment, we utilize LSTM model to predict their intentions and provide scenario information for the construction of the above network. To sum up, we propose a rational decision-making approach based on Bayesian network guided by BDI model. Our novel approach makes the traditional Bayesian network decision more humanized and improves the confidence of decision results. Finally, we take the lane-change and overtaking scenario as an example to illustrate our approach in detail and demonstrate the effectiveness in improving decision confidence.
AB - The safety of decision-making in autonomous driving systems (ADSs) is a challenging issue, which is very important for ADS development. As a highly acceptable decision method, Bayesian Net\vork (BN) has attracted more and more attention, therefore, its decision confidence and robustness have also become a focus. Since BN is a form of reasoning based on probability, for the decision results with low confidence (that is, the probability values of several optional decision actions have a small difference), when the data is slightly disturbed, it is likely to change, resulting in serious consequences such as car crash. To generate safe decision-making, we innovatively propose a rational Bayesian network decision-making approach based on BDI model. It helps to improve the decision confidence of the traditional B. BDI model is a well-known theory of inferencing agents' mental states (belief, desire and intention). We use it to guide the decision-making process of Bayesian network. According to the domain knowledge of ADS, we introduce and design rule-based intention inference for the decision agent to build a Bayesian net\vork with BDI-layer. And for other uncertain agents in the environment, we utilize LSTM model to predict their intentions and provide scenario information for the construction of the above network. To sum up, we propose a rational decision-making approach based on Bayesian network guided by BDI model. Our novel approach makes the traditional Bayesian network decision more humanized and improves the confidence of decision results. Finally, we take the lane-change and overtaking scenario as an example to illustrate our approach in detail and demonstrate the effectiveness in improving decision confidence.
KW - BDI model
KW - Bayesian network
KW - autonomous driving
KW - decision-making
UR - https://www.scopus.com/pages/publications/85188060416
U2 - 10.1117/12.2683203
DO - 10.1117/12.2683203
M3 - 会议稿件
AN - SCOPUS:85188060416
T3 - Proceedings of SPIE - The International Society for Optical Engineering
BT - International Conference on Computer Network Security and Software Engineering, CNSSE 2023
A2 - Cai, Xiaohao
A2 - bin Ahmad, Badrul Hisham
PB - SPIE
T2 - 2023 International Conference on Computer Network Security and Software Engineering, CNSSE 2023
Y2 - 10 February 2023 through 12 February 2023
ER -