基于强化学习的信息路径规划策略自适应选择

Taeyeong Choi, Grzegorz Cielniak
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引用次数: 4

摘要

在我们之前的工作中,我们设计了一个系统的策略来优先考虑采样位置,通过使用高斯过程回归(GPR)的预测不确定性作为路径规划中部署机器人的“吸引力”,从而显著提高空间插值的精度。虽然与旅行推销员问题(TSP)求解器的集成也显示出相对较短的旅行距离,但我们在这里假设了几个可能降低整体预测精度的因素,因为次优位置最终可能包含在它们的路径中。为了解决这个问题,在本文中,我们首先探索了采用不同空间范围的“局部规划”方法,在这些空间范围内优先考虑下一个采样位置,以研究它们对预测性能和产生的旅行距离的影响。此外,基于强化学习(RL)的高级控制器被训练成自适应地从一组特定的局部规划者中产生混合计划,并根据最新的预测状态从选择中继承独特的优势。我们对温度监测机器人用例的实验表明,规划器的动态混合不仅可以生成单个规划器无法单独创建的复杂、信息丰富的计划,而且还可以在不影响预测可靠性的情况下确保显著缩短行程距离,而无需任何额外的最短路径计算模块的帮助。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Adaptive Selection of Informative Path Planning Strategies via Reinforcement Learning
In our previous work, we designed a systematic policy to prioritize sampling locations to lead significant accuracy improvement in spatial interpolation by using the prediction uncertainty of Gaussian Process Regression (GPR) as "attraction force" to deployed robots in path planning. Although the integration with Traveling Salesman Problem (TSP) solvers was also shown to produce relatively short travel distance, we here hypothesise several factors that could decrease the overall prediction precision as well because sub-optimal locations may eventually be included in their paths. To address this issue, in this paper, we first explore "local planning" approaches adopting various spatial ranges within which next sampling locations are prioritized to investigate their effects on the prediction performance as well as incurred travel distance. Also, Reinforcement Learning (RL)-based high-level controllers are trained to adaptively produce blended plans from a particular set of local planners to inherit unique strengths from that selection depending on latest prediction states. Our experiments on use cases of temperature monitoring robots demonstrate that the dynamic mixtures of planners can not only generate sophisticated, informative plans that a single planner could not create alone but also ensure significantly reduced travel distances at no cost of prediction reliability without any assist of additional modules for shortest path calculation.
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