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Online Informative Path Planning for Autonomous Underwater Vehicles with Cross Entropy Optimization

机译:交叉熵优化的水下机器人在线信息路径规划

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Autonomous underwater vehicles (AUVs) have been extensively utilized both in civil and military applications, among which the marine environment monitoring is one of the key issue. In this paper, we focus on online informative path planning for long-term monitoring in continuous workspace. We point out that the likelihood of measurements is related to when it is acquired. Thus we first model the underwater environment based on modified Gaussian process (GP) with considering the dynamic likelihood of measurements. Then, clamped B-curve is utilized to parametrize the continuous path segments. In order to maximize the amount of received information, we propose a path replanning scheme based on cross-entropy optimization. Moreover, we introduce the numerical simulation to highlight the effectiveness of our algorithm.
机译:自主水下航行器(AUV)已在民用和军事应用中得到广泛利用,其中海洋环境监测是关键问题之一。在本文中,我们专注于在线信息路径规划,以在连续工作空间中进行长期监控。我们指出,测量的可能性与获取时间有关。因此,我们首先考虑到测量的动态可能性,基于改进的高斯过程(GP)对水下环境进行建模。然后,使用夹紧的B曲线对连续路径段进行参数化。为了最大化接收信息量,我们提出了一种基于交叉熵优化的路径重新规划方案。此外,我们引入数值模拟以突出我们算法的有效性。

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