端到端原则
强化学习
死胡同
计算机科学
钢筋
最终用户
人工智能
工程类
心理学
万维网
社会心理学
结构工程
补偿(心理学)
作者
Dong Hu,Longfei Mo,Jingda Wu,Chao Huang
标识
DOI:10.1109/lra.2025.3577523
摘要
End-to-end navigation strategies using reinforcement learning (RL) can improve the adaptability and autonomy of unmanned ground vehicles (UGVs) in complex environments. However, RL still faces challenges in data efficiency and safety. Neuroscientific and psychological research shows that during exploration, the brain balances between fear and curiosity, a critical process for survival and adaptation in dangerous environments. Inspired by this scientific insight, we propose the “Feariosity” model, which integrates fear and curiosity model to simulate the complex psychological dynamics organisms experience during exploration. Based on this model, we developed an innovative policy constraint method that evaluates potential hazards and applies necessary safety constraints while encouraging exploration of unknown areas. Additionally, we designed a new experience replay mechanism that quantifies the threat and unknown level of data, optimizing their usage probability. Extensive experiments in both simulation and real-world scenarios demonstrate that the proposed method significantly improves data efficiency, asymptotic performance during training. Furthermore, it achieves higher success rates, driving efficiency, and robustness in deployment. This also highlights the key role of mimicking biological neural and psychological mechanisms in improving the safety and efficiency through RL.
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