MA3: Model-Accuracy Aware Anytime Planning with Simulation Verification for Navigating Complex Terrains

M. Das, D. Conover, Sungmin Eum, H. Kwon, M. Likhachev
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引用次数: 1

Abstract

Off-road and unstructured environments often contain complex patches of various types of terrain, rough elevation changes, deformable objects, etc. An autonomous ground vehicle traversing such environments experiences physical interactions that are extremely hard to model at scale and thus very hard to predict. Nevertheless, planning a safely traversable path through such an environment requires the ability to predict the outcomes of these interactions instead of avoiding them. One approach to doing this is to learn the interaction model offline based on collected data. Unfortunately, though, this requires large amounts of data and can often be brittle. Alternatively, models using physics-based simulators can generate large data and provide a reliable prediction. However, they are very slow to query online within the planning loop. This work proposes an algorithmic framework that utilizes the combination of a learned model and a physics-based simulation model for fast planning. Specifically, it uses the learned model as much as possible to accelerate planning while sparsely using the physics-based simulator to verify the feasibility of the planned path. We provide a theoretical analysis of the algorithm and its empirical evaluation showing a significant reduction in planning times.
MA3:模型精度感知随时规划与仿真验证导航复杂地形
越野和非结构化环境通常包含各种地形类型的复杂斑块,粗糙的高程变化,可变形的物体等。在这样的环境中行驶的自动地面车辆会经历物理相互作用,这些物理相互作用非常难以大规模建模,因此很难预测。然而,在这样的环境中规划一条安全可穿越的路径需要预测这些交互结果的能力,而不是避免它们。一种方法是基于收集到的数据离线学习交互模型。然而,不幸的是,这需要大量的数据,而且往往很脆弱。另外,使用基于物理的模拟器的模型可以生成大量数据并提供可靠的预测。然而,它们在规划循环中在线查询非常慢。这项工作提出了一种算法框架,该框架利用了学习模型和基于物理的仿真模型的组合来进行快速规划。具体来说,它尽可能地使用学习到的模型来加速规划,同时稀疏地使用基于物理的模拟器来验证规划路径的可行性。我们提供了该算法的理论分析及其经验评估,显示了规划时间的显着减少。
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