A Bio-Inspired Dopamine Model for Robots with Autonomous Decision-Making.

IF 3.4 3区 医学 Q1 ENGINEERING, MULTIDISCIPLINARY
Marcos Maroto-Gómez, Javier Burguete-Alventosa, Sofía Álvarez-Arias, María Malfaz, Miguel Ángel Salichs
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Abstract

Decision-making systems allow artificial agents to adapt their behaviours, depending on the information they perceive from the environment and internal processes. Human beings possess unique decision-making capabilities, adapting to current situations and anticipating future challenges. Autonomous robots with adaptive and anticipatory decision-making emulating humans can bring robots with skills that users can understand more easily. Human decisions highly depend on dopamine, a brain substance that regulates motivation and reward, acknowledging positive and negative situations. Considering recent neuroscience studies about the dopamine role in the human brain and its influence on decision-making and motivated behaviour, this paper proposes a model based on how dopamine drives human motivation and decision-making. The model allows robots to behave autonomously in dynamic environments, learning the best action selection strategy and anticipating future rewards. The results show the model's performance in five scenarios, emphasising how dopamine levels vary depending on the robot's situation and stimuli perception. Moreover, we show the model's integration into the Mini social robot to provide insights into how dopamine levels drive motivated autonomous behaviour regulating biologically inspired internal processes emulated in the robot.

用于自主决策机器人的多巴胺生物启发模型
决策系统允许人工代理根据从环境和内部过程中感知到的信息调整自己的行为。人类拥有独特的决策能力,能够适应当前形势并预测未来挑战。仿照人类进行适应性和预测性决策的自主机器人可以让机器人拥有用户更容易理解的技能。人类的决策在很大程度上取决于多巴胺,这是一种调节动机和奖赏、确认积极和消极情况的大脑物质。考虑到最近关于多巴胺在人脑中的作用及其对决策和动机行为的影响的神经科学研究,本文提出了一个基于多巴胺如何驱动人类动机和决策的模型。该模型允许机器人在动态环境中自主行动,学习最佳行动选择策略并预测未来奖励。研究结果显示了该模型在五个场景中的表现,强调了多巴胺水平如何随机器人的处境和刺激感知而变化。此外,我们还展示了该模型与迷你社交机器人的整合情况,让人们深入了解多巴胺水平是如何通过调节机器人仿真的生物内部过程来驱动自主行为的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Biomimetics
Biomimetics Biochemistry, Genetics and Molecular Biology-Biotechnology
CiteScore
3.50
自引率
11.10%
发文量
189
审稿时长
11 weeks
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