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Uncertainty-based adaptive AXBT sampling with SPOTS

机译:基于SPOTS的基于不确定度的自适应AXBT采样

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Naval operations continue to evolve toward Littoral Warfare as military action shifts to regional conflicts. To accomplish this evolution, new navigation, sensor, and data-analysis capabilities are needed to support operations in the highly variable and complicated near-shore waters of the littoral environment. Antisubmarine Warfare (ASW) is often conducted in shallow-water areas, where subsurface enemies pose a constant threat, and where knowledge of ocean thermal data is critical, but lacking. Planning operations in these harsh-environment areas is difficult because accurate predictions of sensor performance depend on detailed knowledge of the local conditions. Tactical mission planning is thus seldom optimal or efficient, often resulting in coverage gaps and increased risk. The Naval Air Systems Command has recently been exploring new environmental sonobuoy concepts to better characterize the littoral environment. Most designs contain a thermistor string, to measure ocean temperatures, and other environmental sensors. This type of sonobuoy, with a complex set of sensors, would be more expensive than a traditional AXBT but it could provide a more thorough littoral environment assessment. The increased cost implies the need for an Environmental Decision Aid to determine the minimum number and best locations for sensors to meet performance objectives. The work reported here concerns the development and evaluation of Sensor Placement for Optimal Temperature Sampling (SPOTS), which addresses these sampling requirements. The SPOTS process follows the following steps: 1) divide the area of interest into cells with varying volumes of water; 2) estimate the volume-weighted uncertainty of temperatures and the local anisotropic temperature covariance in each cell, based on current optimal interpolation nowcasts; 3) calculate the overall volume-weighted reduction in temperature uncertainty that would result from various sampling patterns; and 4) choose the pattern with the l-owest uncertainty. This uncertainty-based approach leads to sampling patterns that produce the highest accuracy temperature characteriz ations. SPOTS employs three innovations: 1) analysis of remotely-sensed data, confirmed with a numerical model, when needed; 2) adapting the covariance ellipse axes automatically to the predominant coastline features; and 3) using depth-weighted and volume-weighted uncertainty where the depth-dependent uncertainty and volume of water in a cell is considered in the optimization process. SPOTS uses an optimal interpolation technique that weights all input data by their uncertainties and provides uncertainty estimates for the output. That is a significant advantage over other interpolation schemes. Horizontal/vertical smoothing routines remove large discontinuities and produce the final "nowcast." As a result of these innovations, SPOTS sampling recommendations emphasize the upper water column, where most of the dynamic effects occur, and where acoustic variability is greatest. Data from several water-sampling flights in the Sea of Japan off the east coast of Korea were used to develop SPOTS. Approximately 44 AXBTs were dropped on a 15-min grid during each flight. Ten combinations of these AXBT measurements, ranging from three to all of the measurements, were assimilated into the Modular Ocean Data Assimilation System (MODAS). The climatology alone and climatology with assimilated satellite sea surface temperatures brought the number of cases to twelve. These were analyzed to determine the relationship between nowcast accuracy and the number (and placement) of assimilated in-situ measurements. The sub-sampled nowcast estimates were compared with the measured temperatures and reported as RMS temperature errors. The results show that: 1) a small number of well-placed measurements outperforms a larger number of gridded measurements; 2) a small number of poorly-placed measurements can significantly degrade a nowcast; and 3) approximately
机译:随着军事行动转向区域冲突,海军行动继续向沿海战争发展。为了实现这一发展,需要新的导航,传感器和数据分析功能来支持在沿海环境多变和复杂的近岸水域中的操作。反潜战(ASW)通常在浅水区域进行,在这些区域,地下敌人不断构成威胁,并且对海洋热数据的了解非常关键,但缺乏这种知识。在这些恶劣环境区域中计划操作非常困难,因为对传感器性能的准确预测取决于对当地情况的详细了解。因此,战术任务计划很少是最优的或有效的,通常会导致覆盖范围缺口和增加的风险。海军航空系统司令部最近一直在探索新的声纳浮标概念,以更好地表征沿海环境。大多数设计包含用于测量海洋温度的热敏电阻串以及其他环境传感器。这种带有复杂传感器的声波浮标比传统的AXBT昂贵,但可以提供更全面的滨海环境评估。增加的成本意味着需要环境决策助手来确定传感器的最小数量和最佳位置,以满足性能目标。此处报告的工作涉及用于最佳温度采样(SPOTS)的传感器放置的开发和评估,该传感器可满足这些采样要求。 SPOTS过程遵循以下步骤:1)将感兴趣的区域划分为具有不同体积水的细胞; 2)根据当前最优插值临近预报,估算每个单元中温度的体积加权不确定性和局部各向异性温度协方差; 3)计算由于各种采样模式而导致的温度不确定性的总体体积加权降低;和4)使用l-选择模式 其他不确定性。这种基于不确定性的方法导致产生最高精度温度表征的采样模式。 SPOTS采用了三项创新:1)必要时通过数值模型确认的遥感数据分析; 2)使协方差椭圆轴自动适应主要的海岸线特征; 3)使用深度加权和体积加权不确定性,其中在优化过程中要考虑与深度相关的不确定性和单元中水的体积。 SPOTS使用最佳插值技术,通过其不确定性对所有输入数据进行加权,并为输出提供不确定性估计。与其他插值方案相比,这是一个显着的优势。水平/垂直平滑例程可消除较大的不连续性并产生最终的“临近预报”。这些创新的结果是,SPOTS采样建议着重于上部水柱,在该处,大多数动力作用发生,并且声学变化性最大。来自韩国东海岸日本海的几次水采样飞行的数据被用于开发SPOTS。在每次飞行中,大约有44个AXBT落在15分钟的网格上。这些AXBT测量值的十种组合(从三项测量值到所有测量值)被同化到模块化海洋数据同化系统(MODAS)中。单独的气候学和卫星海面温度被吸收的气候学使病例数增加到十二。对这些进行分析,以确定临近预报精度与同化原位测量的数量(和放置)之间的关系。将二次采样的临近预报估计值与测得的温度进行比较,并报告为RMS温度误差。结果表明:1)少量合理放置的测量结果优于大量网格化的测量结果; 2)少量放置不当的测量会显着降低临近预报的质量;和3)大约

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