多auv协同控制改进流场因变量估计

P. A. Hackbarth, E. Kreuzer, A. Gray, J. Hedrick
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引用次数: 3

摘要

本文提出了一种控制框架,通过控制多个auv来创建依赖流场的海洋物理变量的三维地图,以最大化信息增益。在该框架中,非线性卡尔曼滤波器用于更新来自不确定位置的多个传感器的噪声测量。首先,将感兴趣的区域离散成三维网格。每个网格点对物理变量及其不确定性都有一个相关的估计或测量。多个auv通过测量来更新当前位置网格点的值和不确定度。当这些信息在auv之间传递时,更新的3D地图就会随着时间向前传播。为了确定如何控制auv,开发了一个非线性模型预测控制器(NMPC)来为auv生成路径,从而最大限度地减少三维海洋物理变量图中估计的总体不确定性。仿真显示了多个auv,以说明该方法的实用性和应用。初始化各种流体动力环境,例如涡流,并控制auv以最佳地测量温度分布。结果表明,与单纯搜索方法相比,该方法提高了对海洋变量的估计,减少了任务时间。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Collaborative control of multiple AUVs for improving the estimation of flow field dependent variables
This paper presents a control framework for creating a 3D map of flow field dependent physical ocean variables by controlling multiple AUVs to maximize information gain. In this framework a nonlinear Kalman Filter is used to update the noisy measurements from multiple sensors at uncertain positions. First, the area of interest is discretized into a 3D grid. Each grid point has an associated estimate or measurement of the physical variable as well as its uncertainty. Multiple AUVs make measurements to update the value and uncertainty of the grid point at their current location. When this information is communicated between AUVs an updated 3D map is then propagated forward through time. To determine how to control the AUVs, a Nonlinear Model Predictive Controller (NMPC) is developed to generate paths for the AUVs which will minimize the overall uncertainty of the estimates in the 3D map of physical ocean variables. Simulations are shown with multiple AUVs to illustrate the utility and application of this approach. Various fluid dynamic environments, e.g. vortex flow, are initialized, and the AUVs are controlled to optimally measure a temperature distribution. The results show this method improves the estimation of the ocean variables as well as decreases mission time when compared to naive search methods.
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