Reward-based evolutionary swarm UAVs on search and rescue mission

user-5dd52aee530c701191bf1b99(2019)

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摘要
Search and rescue missions (SARs) are challenging in a harsh environment especially on a sea surface. Currently, swarm robotics incorporating group of autonomous aerial vehicle (UAVs) can cover greater search area than one autonomous vehicle more efficiently if correctly programmed. An ongoing study applying a rewards-based system to an evolutionary swarm (ES) to enhance its searching capability in a harsh environment is reported in this paper. However, the evolutionary method utilising fitness function to tackle tasks in such environments often gives a deceptive result, because the predefined objective function is fixed. The fitness function for the evolutionary mechanism should not be fixed for a useful result to be obtained. In this study a rewards-based system is used to investigate a method to overcome these deceptive results. Results and comparison between fitness-based and rewards-based ES on SAR mission are discussed in this paper and preliminary results reported on.
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关键词
Swarm robotics,Fitness function,Swarm behaviour,Search and rescue,Machine learning,Computer science,Artificial intelligence
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