Article ID Journal Published Year Pages File Type
411930 Robotics and Autonomous Systems 2012 14 Pages PDF
Abstract

Task allocation mechanisms are employed by multi-robot systems to efficiently distribute tasks between different robots. Currently, many task allocation methods rely on detailed expert knowledge to coordinate robots. However, it may not be feasible to dedicate an expert human user to a multi-robot system. Hence, a non-expert user may have to specify tasks to a team of robots in some situations. This paper presents a novel reduced human user input multi-robot task allocation technique that utilises Fuzzy Inference Systems (FISs). A two-stage primary and secondary task allocation process is employed to select a team of robots comprising manager and worker robots. A multi-robot mapping and exploration task is utilised as a model task to evaluate the task allocation process. Experiments show that primary task allocation is able to successfully identify and select manager robots. Similarly, secondary task allocation successfully identifies and selects worker robots. Both task allocation processes are also robust to parameter variation permitting intuitive selection of parameter values.

► A reduced input task allocation method for hierarchical multi-robot systems is presented. ► Using graded inputs, tasks can potentially be specified by non-expert human users. ► Fuzzy inference systems are employed to reduce robot physical capabilities. ► Task allocation robustness permits intuitive selection of parameter values.

Related Topics
Physical Sciences and Engineering Computer Science Artificial Intelligence
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