首页> 外文会议>ASME annual dynamic systems and control conference >ERGODIC EXPLORATION FOR ADAPTIVE SAMPLING OF WATER COLUMNS USING GLIDING ROBOTIC FISH
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ERGODIC EXPLORATION FOR ADAPTIVE SAMPLING OF WATER COLUMNS USING GLIDING ROBOTIC FISH

机译:用滑行鱼对水柱进行自适应采样的探索

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In recent years, gliding robotic fish have emerged as promising mobile platforms for underwater sensing and monitoring due to their notable energy efficiency and maneuverability. For sensing of aquatic environments, it is important to use efficient sampling strategies that incorporate previously observed data in deciding where to sample next so that the gained information is maximized. In this paper, we present an adaptive sampling strategy for mapping a scalar field in an underwater environment using a gliding robotic fish. An ergodic exploration framework is employed to compute optimal exploration trajectories. To effectively deal with the challenging complexity of finding optimum three-dimensional trajectories that are feasible for the gliding robotic fish, we propose a novel strategy that combines a unicycle model-based 2D trajectory optimization with spiral-enabled water column sampling. Gaussian process (GP) regression is used to infer the field values at unsampled locations, and to update a map of expected information density (EID) in the environment. The outputs of GP regression are then fed back to the ergodic exploration engine for trajectory optimization. We validate the proposed approach with simulation results and compare its performance with a uniform sampling grid.
机译:近年来,滑行机器人鱼因其显着的能源效率和可操作性而成为有前途的水下传感和监测移动平台。对于水生环境的感知,重要的是使用有效的采样策略,该策略应结合先前观察到的数据来决定下一步采样的位置,以便最大程度地获取所获得的信息。在本文中,我们提出了一种自适应采样策略,用于使用滑行机器人鱼在水下环境中标量场的映射。遍历勘探框架用于计算最佳勘探轨迹。为了有效应对寻找适用于滑行机器鱼的最佳三维轨迹的挑战性复杂性,我们提出了一种新颖的策略,该策略将基于单轮模型的2D轨迹优化与启用螺旋的水柱采样相结合。高斯过程(GP)回归用于推断未采样位置的字段值,并更新环境中的预期信息密度(EID)的图。 GP回归的输出然后反馈到遍历探索引擎以进行轨迹优化。我们通过仿真结果验证了所提出的方法,并将其性能与统一的采样网格进行了比较。

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