Speeding Up Learning in Real-Time Search through Parallel Computing

Vinícius Marques, L. Chaimowicz, R. Ferreira
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引用次数: 1

Abstract

Real-time search algorithms solve the problem of path planning, regardless the size and complexity of the maps, and the massive presence of entities in the same environment. In such methods, the learning step aims to avoid local minima and improve the results for future searches, ensuring the convergence to the optimal path when the same planning task is solved repeatedly. However, performing search in a limited area due to real-time constraints makes the run to convergence a lengthy process. In this work, we present a parallelization strategy that aims to reduce the time to convergence, maintaining the real-time properties of the search. The parallelization technique consists on using auxiliary searches without the real-time restrictions present in the main search. In addition, the same learning is shared by all searches. The empirical evaluation shows that even with the additional cost required to coordinate the auxiliary searches, the reduction in time to convergence is significant, showing gains from searches occurring in environments with fewer local minima to larger searches on complex maps, where performance improvement is even better.
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通过并行计算加速实时搜索中的学习
实时搜索算法解决了路径规划问题,而不考虑地图的大小和复杂性,也不考虑同一环境中实体的大量存在。在这些方法中,学习步骤旨在避免局部最小值,并为以后的搜索改善结果,确保在重复求解同一规划任务时收敛到最优路径。然而,由于实时约束,在有限的区域内执行搜索使得收敛成为一个漫长的过程。在这项工作中,我们提出了一种并行化策略,旨在减少收敛时间,保持搜索的实时性。并行化技术包括使用辅助搜索,而不存在主搜索中存在的实时限制。此外,所有搜索都可以共享相同的学习结果。经验评估表明,即使需要额外的成本来协调辅助搜索,收敛时间的减少也是显著的,显示了从局部最小值较少的环境中的搜索到复杂地图上的较大搜索的收益,其中性能改进甚至更好。
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