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Non-linear Optimization of Multi-Vehicle Ocean Sampling Networks for Cost-effective Ocean Prediction Systems

机译:用于经济高效的海洋预测系统的多车辆海洋采样网络的非线性优化

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The problem of optimally deploying a suite of sensors to estimate the oceanographic environment is addressed. The best way to estimate (nowcast) and predict (forecast) the ocean environemnt is to assimilate measurements from dynamical and uncertain regions into a dynamic ocean model. A Genetic Algorithm (GA) approach to this problem is presented. The scalar cost function is defined as a weighted combination of a sensor suites sampling of the ocean variability, ocean dynamics, transmission loss sensitivity, model uncertainty (and others). An example with 3 Gliders, 2 REMUS powered vehicles, and 3 moorings is presented to illustrate the optimization approach in the complex Mid-Atlantic Bight region off the coast of New Jersey.
机译:解决了最佳地部署一个传感器套件来估算海洋环境的问题。估计(现在的)和预测(预测)海洋环境的最佳方式是将动态和不确定区域的测量同化到动态海洋模型中。提出了遗传算法(GA)对此问题的方法。标量成本函数被定义为海洋变异性,海洋动力学,传输损耗灵敏度,模型不确定性(和其他)的传感器套件的加权组合。提出了一个带有3个滑翔机,2个Remus动力车辆和3个系泊的一个例子,以说明新泽西州海岸的复杂中大西洋地区的优化方法。

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