进化神经调节的机器人覆盖控制

K. Harrington, E. Awa, Sylvain Cussat-Blanc, J. Pollack
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引用次数: 11

摘要

进化和学习之间的一个重要联系是在一个多世纪前提出的,现在被称为鲍德温效应。学习是进化搜索过程的向导。在本研究中,训练强化学习代理来解决机器人覆盖控制问题。这些药物通过进化神经调节基因调节网络(GRN)来改善,影响药物的学习和记忆。由这些神经调节grn训练的智能体始终比用固定参数设置训练的智能体具有更好的泛化能力。这项工作将进化的GRN模型引入到神经调节的背景下,并说明了神经调节GRN的一些好处。
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Robot coverage control by evolved neuromodulation
An important connection between evolution and learning was made over a century ago and is now termed as the Baldwin effect. Learning acts as a guide for an evolutionary search process. In this study reinforcement learning agents are trained to solve the robot coverage control problem. These agents are improved by evolving neuromodulatory gene regulatory networks (GRN) that influence the learning and memory of agents. Agents trained by these neuromodulatory GRNs can consistently generalize better than agents trained with fixed parameter settings. This work introduces evolutionary GRN models into the context of neuromodulation and illustrates some of the benefits that stem from neuromodulatory GRNs.
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