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Nonlinear Optimization of Autonomous Undersea Vehicle Sampling Strategies for Oceanographic Data-Assimilation

机译:海洋数据同化自主水下航行器采样策略的非线性优化

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摘要

The problem of how to optimally deploy a suite of sensors to estimate the oceanographic environment is addressed. An optimal way to estimate (nowcast) and predict (forecast) the ocean environment is to assimilate measurements from dynamic and uncertain regions into a dynamical ocean model. In order to determine the sensor deployment strategy that optimally samples the regions of uncertainty, a Genetic Algorithm (GA) approach is presented. The scalar cost function is defined as a weighted combination of a sensor suite's sampling of the ocean variability, ocean dynamics, transmission loss sensitivity, modeled temperature uncertainty (and others). The benefit of the GA approach is that the user can determine "optimal" via a weighting of constituent cost functions, which can include ocean dynamics, acoustics, cost, time, etc. A numerical example with three gliders, two powered AUVs, and three moorings is presented to illustrate the optimization approach in the complex shelfbreak region south of New England.
机译:解决了如何最佳地部署一组传感器来估计海洋环境的问题。估计(预测)和预测(预测)海洋环境的最佳方法是将来自动态和不确定区域的测量值同化为动态海洋模型。为了确定对不确定区域进行最佳采样的传感器部署策略,提出了一种遗传算法(GA)方法。标量成本函数定义为传感器套件对海洋变率,海洋动力学,传输损耗敏感性,建模温度不确定性(及其他)的采样的加权组合。 GA方法的好处在于,用户可以通过对组成成本函数进行加权来确定“最优”,其中包括海洋动力学,声学,成本,时间等。一个带有三个滑翔机,两个有源AUV和三个滑翔机的数值示例提出了系泊设备,以说明新英格兰南部复杂的棚架断裂区域的优化方法。

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