An Efficient Scheduling Algorithm for Multi-Robot Task Allocation in Assembling Aircraft Structures
Efficient utilization of cooperating robots in the assembly of aircraft structures relies on balancing the workload of the robots and ensuring collision-free scheduling. We cast this problem as that of allocating a large number of repetitive assembly tasks, such as drilling holes and installing fast...
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Zusammenfassung: | Efficient utilization of cooperating robots in the assembly of aircraft
structures relies on balancing the workload of the robots and ensuring
collision-free scheduling. We cast this problem as that of allocating a large
number of repetitive assembly tasks, such as drilling holes and installing
fasteners, among multiple robots. Such task allocation is often formulated as a
Traveling Salesman Problem (TSP), which is NP-hard, implying that computing an
exactly optimal solution is computationally prohibitive for real-world
applications. The problem complexity is further exacerbated by intermittent
robot failures necessitating real-time task reallocation. In this letter, we
present an efficient method that exploits workpart geometry and problem
structure to initially generate balanced and conflict-free robot schedules
under nominal conditions. Subsequently, we deal with the failures by allowing
the robots to first complete their nominal schedules and then employing a
market-based optimizer to allocate the leftover tasks. Results show an
improvement of 11.5\% in schedule efficiency as compared to an optimized greedy
multi-agent scheduler on a four robot system, which is especially promising for
aircraft assembly processes that take many hours to complete. Moreover, the
computation times are similar and small, typically hundreds of milliseconds. |
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DOI: | 10.48550/arxiv.1902.08905 |