SinCity 2.0: An Environment for Exploring the Effectiveness of Multi-agent Learning Techniques
نویسندگان
چکیده
Enhanced Deliberation in BDI-Modelled Agents p. 59 Cooperative Behaviors Description for Self-* Systems Implementation p. 69 Collaborative Dialogue Agent for COPD Self-management in AMICA: A First Insight p. 75 Methodology and Engineering Application of Model Driven Techniques for Agent-Based Simulation p. 81 Using ICARO-T Framework for Reactive Agent-Base Mobile Robots p. 91 REST-A: An Agent Virtual Machine Based on REST Framework p. 103 Detection of Overworked Agents in INGENIAS p. 113 Mobile Agents in Vehicular Networks: Taking a First Ride p. 119 CRISIS Management and Robots A Multi-Agent System Approach for Interactive Table Using RFID p. 125 Forest Fires Prediction by an Organization Based System p. 135 Self-adaptive Coordination for Robot Teams Accomplishing Critical Activities p. 145 A Cooperative Communications Platform for Safety Critical Robotics: An Experimental Evaluation p. 151
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