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Validation of genetic algorithm-based optimal sampling for ocean data assimilation

机译:基于遗传算法的海洋数据同化最优采样的验证

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摘要

Regional ocean models are capable of forecasting conditions for usefully long intervals of time (days) provided that initial and ongoing conditions can be measured. In resource-limited circumstances, the placement of sensors in optimal locations is essential. Here, a nonlinear optimization approach to determine optimal adaptive sampling that uses the genetic algorithm (GA) method is presented. The method determines sampling strategies that minimize a user-defined physics-based cost function. The method is evaluated using identical twin experiments, comparing hindcasts from an ensemble of simulations that assimilate data selected using the GA adaptive sampling and other methods. For skill metrics, we employ the reduction of the ensemble root mean square error (RMSE) between the "true" data-assimilative ocean simulation and the different ensembles of data-assimilative hindcasts. A five-glider optimal sampling study is set up for a 400 km x 400 km domain in the Middle Atlantic Bight region, along the New Jersey shelf-break. Results are compared for several ocean and atmospheric forcing conditions.
机译:只要可以测量初始条件和持续条件,区域海洋模型就可以在很长的时间间隔(天)内预测条件。在资源有限的情况下,必须将传感器放置在最佳位置。在这里,提出了一种使用遗传算法(GA)方法确定最优自适应采样的非线性优化方法。该方法确定采样策略,以最小化用户定义的基于物理的成本函数。使用相同的孪生实验评估该方法,比较来自模拟集合的后播,这些模拟吸收使用GA自适应采样和其他方法选择的数据。对于技能指标,我们采用“真实的”数据同化海洋模拟与数据同化后预报的不同集合之间的整体均方根误差(RMSE)的减小。在新泽西州陆架断裂带的中大西洋海岸线地区,针对400 km x 400 km的区域建立了一个五滑翔机的最佳采样研究。比较了几种海洋和大气强迫条件的结果。

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