1. What are the contributions in "Task allocation on layered multi-agent systems: when evolutionary many-objective optimization meets deep q-learning" ?
This paper is concerned with the multi-task multiagent allocation problem via many-objective optimization for multi-agent systems ( MASs ).. In the first layer of the model, the deep Q-learning method is introduced to simplify the prioritization of the original task set.. As compared with existing allocation methods, the developed method in this paper exhibits an outstanding feature that the task assignment and the task scheduling are carried out simultaneously.
read more
2. What future works have the authors mentioned in the paper "Task allocation on layered multi-agent systems: when evolutionary many-objective optimization meets deep q-learning" ?
Thus, further research topics include 1 ) the distributed MASs deep learning within different cooperation environment and various agent types for various targets [ 6 ], [ 25 ] ; 2 ) solving the uncertain task allocation problem in a dynamic environment by using some novel optimization methods [ 2 ], [ 10 ], [ 35 ] – [ 38 ], [ 53 ] ; and 3 ) the task allocation problem on MASs subject to engineering-oriented complexities [ 40 ], [ 46 ], [ 59 ], [ 62 ] – [ 64 ].
read more





