A Brain-Inspired Decision Making Model Based on Top-Down Biasing of Prefrontal Cortex to Basal Ganglia and Its Application in Autonomous UAV Explorations
Zhao Feifei1,3; Zeng Yi1,2,3; Wang Guixiang1; Bai Jun1; Xu Bo1,2,3
刊名Cognitive Computation
2018
卷号10期号:2页码:296-306
关键词Prefrontal Cortex Working Memory Basal Ganglia Dopamine System Brain-inspired Decision Making Model
文献子类期刊论文
英文摘要

Decision making is a fundamental ability for intelligent agents (e.g., humanoid robots and unmanned aerial vehicles). During decision making process, agents can improve the strategy for interacting with the dynamic
environment through reinforcement learning. Many state-of-the-art reinforcement learning models deal with relatively smaller number of state-action pairs, and the states are preferably discrete, such as Q-learning and Actor-Critic algorithms. While in practice, in many scenario, the states are continuous and hard to be properly discretized. Better autonomous decision making methods need to be proposed to handle these problems. Inspired by the mechanism of decision making in human brain, we propose a general computational model, named as prefrontal cortex-basal ganglia (PFC-BG) algorithm. The proposed model is inspired by the biological reinforcement learning pathway and mechanisms from the following perspectives: (1) Dopamine signals continuously update reward-relevant information for both basal ganglia and working memory in prefrontal cortex. (2) We maintain the contextual reward information in working memory. This has a top-down biasing effect on reinforcement learning in basal ganglia. The proposed model separates the continuous states into smaller distinguishable states, and introduces continuous reward function for each state to obtain reward information at different time. To verify the performance of our model, we apply it to many UAV decision making experiments, such as avoiding obstacles and flying through window and door, and the experiments support the effectiveness of the model. Compared with traditional Q-learning and Actor-Critic algorithms, the proposed model is more biologically inspired, and more accurate and faster to make decision.

内容类型期刊论文
源URL[http://ir.ia.ac.cn/handle/173211/23556]  
专题自动化研究所_类脑智能研究中心
通讯作者Zeng Yi
作者单位1.Institute of Automation, Chinese Academy of Sciences, Beijing, China
2.Center for Excellence in Brain Science and Intelligence Technology, Chinese Academy of Sciences, Shanghai, China
3.University of Chinese Academy of Sciences, Beijing, China
推荐引用方式
GB/T 7714
Zhao Feifei,Zeng Yi,Wang Guixiang,et al. A Brain-Inspired Decision Making Model Based on Top-Down Biasing of Prefrontal Cortex to Basal Ganglia and Its Application in Autonomous UAV Explorations[J]. Cognitive Computation,2018,10(2):296-306.
APA Zhao Feifei,Zeng Yi,Wang Guixiang,Bai Jun,&Xu Bo.(2018).A Brain-Inspired Decision Making Model Based on Top-Down Biasing of Prefrontal Cortex to Basal Ganglia and Its Application in Autonomous UAV Explorations.Cognitive Computation,10(2),296-306.
MLA Zhao Feifei,et al."A Brain-Inspired Decision Making Model Based on Top-Down Biasing of Prefrontal Cortex to Basal Ganglia and Its Application in Autonomous UAV Explorations".Cognitive Computation 10.2(2018):296-306.
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