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Complete Coverage Path Planning in an Unknown Underwater Environment Based on D-S Data Fusion Real-Time Map Building

机译:基于D-S数据融合实时地图构建的未知水下环境中的完整覆盖路径规划

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A real-time map-building system is proposed for an autonomous underwater vehicle (AUV) to build a map of an unknown underwater environment. The system, using the AUV's onboard sensor information, includes a neurodynamics model proposed for complete coverage path planning and an evidence theoretic method proposed for map building. The complete coverage of the environment guarantees that the AUV can acquire adequate environment information. The evidence theory is used to handle the noise and uncertainty of the sensor data. The AUV dynamically plans its path with obstacle avoidance through the landscape of neural activity. Concurrently, real-time sensor data are “fused” into a two-dimensional (2D) occupancy grid map of the environment using evidence inference rule based on the Dempster-Shafer theory. Simulation results show a good quality of map-building capabilities and path-planning behaviors of the AUV.
机译:提出了一种用于自主水下航行器(AUV)的实时地图构建系统,以构建未知水下环境的地图。该系统利用AUV的机载传感器信息,包括为完整的覆盖路径计划而提出的神经动力学模型,以及为地图构建而提出的证据理论方法。完整的环境覆盖范围可确保AUV能够获取足够的环境信息。证据理论用于处理传感器数据的噪声和不确定性。 AUV通过神经活动的场景动态规划其避障路径。同时,使用基于Dempster-Shafer理论的证据推断规则,将实时传感器数据“融合”到环境的二维(2D)占用栅格图中。仿真结果表明,AUV的地图构建能力和路径规划行为具有良好的质量。

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