DVF-RRT: Randomized Path Planning on Predictive Vector Fields

Tauhidul Alam, Fabian Okafor, Ankit Patel, Abdullah Al Redwan Newaz
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Abstract

Autonomous surface vehicle (ASV) navigation in marine environments is challenging due to the disturbances caused by water currents and their spatiotemporal variations. Existing methods take into account only spatial variations of vector fields that are measured through vehicle sensors, but neglect temporal variations of vector fields. Effective path planning for ASVs also requires critical reasoning about the prediction of spatiotemporally varying water currents in marine environments. Therefore, this paper presents a method that integrates the prediction of water vector fields with a randomized path planner. We model the water flow of an area of interest as an unknown vector field and then train a Long-Short Term Memory (LSTM) neural network to learn such an unknown vector field accurately and effectively from real ocean current data. This allows the generation of a randomized path that moves along the vector field in a continuous space. To generate a randomized path on the predicted vector field, we present a Deep Vector Field - Rapidly-exploring Random Tree (DVF-RRT) algorithm for reaching a goal configuration starting from an initial configuration that leverages the strength of the RRT algorithm. The algorithm is validated through simulated randomized paths on predictive vector fields and benchmarking with regard to an existing VF-RRT method.
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预测向量场的随机路径规划
由于水流的干扰及其时空变化,自主水面航行器(ASV)在海洋环境中导航具有挑战性。现有的方法只考虑了车辆传感器测量的矢量场的空间变化,而忽略了矢量场的时间变化。有效的asv路径规划还需要对海洋环境中时空变化的水流预测进行批判性推理。因此,本文提出了一种将水向量场预测与随机路径规划器相结合的方法。我们将感兴趣区域的水流建模为未知向量场,然后训练长短期记忆(LSTM)神经网络来准确有效地从实际洋流数据中学习未知向量场。这允许生成沿着连续空间中的向量场移动的随机路径。为了在预测向量场上生成随机路径,我们提出了一种深度向量场快速探索随机树(DVF-RRT)算法,用于从利用RRT算法的强度的初始配置开始达到目标配置。通过预测向量场上的模拟随机路径和现有VF-RRT方法的基准测试,验证了该算法的有效性。
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