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Multi-Objective and Model-Predictive Tree Search for Spatiotemporal Informative Planning

Weizhe Chen, Lantao Liu

Year
2019
Citations
7

Abstract

Adaptive sampling and planning in robotic environmental monitoring are challenging when the target environmental process varies over space and time. The underlying environmental dynamics require the planning module to integrate future environmental changes so that action decisions made earlier do not quickly become outdated. We propose a Monte Carlo tree search method which not only well balances the environment exploration and exploitation in space, but also catches up to the environmental dynamics that are related to time. This is achieved by incorporating multi-objective optimization and a look-ahead model-predictive rewarding mechanism. We show that by allowing the robot to leverage the simulated and predicted spatiotemporal environmental process, the proposed informative planning approach achieves a superior performance after comparing with other baseline methods in terms of the root mean square error of the environment model and the distance to the ground truth.

Keywords

Leverage (statistics)Computer scienceTree (set theory)Baseline (sea)Monte Carlo methodGround truthProcess (computing)Machine learningRobotDecision tree

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