Ethological Concepts in Hierarchical Reinforcement Learning and Control of Intelligent Agents

被引:0
|
作者
Nahodil, Pavel [1 ]
机构
[1] Czech Tech Univ, Dept Cybernet, Karlovo Namesti 13, Prague 12135, Czech Republic
来源
23RD EUROPEAN CONFERENCE ON MODELLING AND SIMULATION (ECMS 2009) | 2009年
关键词
Agent; Simulation; Control; Reinforcement Learning; Ethology; Behavioral Approach; Artificial Life; SIMULATION;
D O I
暂无
中图分类号
TP3 [计算技术、计算机技术];
学科分类号
0812 ;
摘要
This paper integrates rigorous methods of reinforcement learning (RL) and control engineering with a behavioral (ethology) approach to the agent technology. The main outcome is a hybrid architecture for intelligent autonomous agents targeted to the Artificial Life like environments. The architecture adopts several biology concepts and shows that they can provide robust solutions to some areas. The resulting agents perform from primitive behaviors, simple goal directed behaviors, to complex planning. The agents are fully autonomous through environment feedback evaluating internal agent state and motivate the agent to perform behaviors that return the agent towards optimal conditions. This principle is typical to animals. Learning and control is realized by multiple RL controllers working in a hierarchy of Semi Markov Decision Processes (SMDP). Used model free Q(lambda) learning works online, the agents gain experiences during interaction with the environment. The decomposition of the root SMDP into hierarchy is automated as opposed to the conventional methods that are manual. The agents assess utility of the behavior and provide rewards to RL controller as opposed to the conventional RL methods where the rewards situations map is defined by the designer upfront. Agent behavior is continuously optimized according to the distance from the agent's optimal conditions.
引用
收藏
页码:180 / 186
页数:7
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