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An Adaptive Prediction Target Search Algorithm for Multi-AUVs in an Unknown 3D Environment

机译:未知3D环境中多AUV的自适应预测目标搜索算法

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摘要

For a target search of autonomous underwater vehicles (AUVs) in a completely unknown three-dimensional (3D) underwater environment, a multi-AUV collaborative target search algorithm based on adaptive prediction is proposed in this paper. The environmental information sensed by the forward-looking sonar is used to judge the current state of view, and the AUV system uses this environmental information to perform the target search task. If there is no target in the field of view, the AUV system will judge whether all sub-regions of the current layer have been searched or not. The next sub-region for searching is determined by the evaluation function and the task assignment strategy. If there are targets in the field of view, the evaluation function and the estimation function of the adaptive predictive optimization algorithm is used to estimate the location of the unknown target. At the same time, the algorithm also can reduce the positioning error caused by the noise of the sonar sensor. In this paper, the simulation results show that the proposed algorithm can not only deal with static targets and random dynamic interference target search tasks, but it can also perform target search tasks under some random AUV failure conditions. In this process, the underwater communication limits are also considered. Finally, simulation experiments indicate the high efficiency and great adaptability of the proposed algorithm.
机译:于在完全未知的三维(3D)目标搜索自主式水下航行器(AUV)的水下环境中,基于自适应预测的多AUV协作目标搜索算法在本文提出。由前视声纳检测到的环境信息来判断。从目前的状态,以及AUV系统使用此环境信息来执行目标搜索任务。如果在视场中没有目标,水下机器人系统将判断当前层的所有子区域是否已被搜索与否。用于搜索下一个子区域由评价功能和任务分配策略决定的。如果在视场中的目标,评价功能和自适应预测算法的评估函数用来估计未知目标的位置。同时,该算法还可以减少由声纳传感器的噪声的定位误差。在本文中,仿真结果表明,该算法不仅可以处理静态指标和动态随机干扰目标搜索任务,但它也可以一些随机AUV故障条件下执行目标搜索任务。在此过程中,水下通信限制也被考虑。最后,仿真实验表明,该算法的效率高,适应性强。

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