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首页> 外文期刊>Tellus. A >Measuring Information Content From Observations Fordata Assimilations: Connection Between Different measures And Application To Radar Scan Design
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Measuring Information Content From Observations Fordata Assimilations: Connection Between Different measures And Application To Radar Scan Design

机译:从观测中测量信息内容Fordata同化:不同度量之间的联系以及在雷达扫描设计中的应用

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摘要

The previously derived formulations for using the relative entropy and Shannon entropy difference (SD) to measure information content from observations are revisited in connection with another known information measure-degrees of freedom for signal, which is defined as the statistical average of the signal part of the relative entropy. For a linear assimilation system, the statistical average of the relative entropy reduces to the SD. The formulations are extended for four-dimensional variational data assimilation (4DVar). The extended formulations reveal that the information content increases (or decreases) as the model error increase (or decrease) and/or become strongly (or weakly) correlated in 4-D space. These properties are also highlighted by illustrative examples, and the extended formulations are shown to be potential useful for designing optimum phased-array radar scan configurations to maximize the extractable information contents from radar observations by a 4DVar analysis system.
机译:结合其他已知的信号信息测量自由度,重新定义了先前使用相对熵和香农熵差(SD)来测量观测信息内容的公式,该自由度定义为信号的信号部分的统计平均值相对熵。对于线性同化系统,相对熵的统计平均值减小为SD。该公式扩展为可用于四维变化数据同化(4DVar)。扩展的公式揭示了信息内容随着模型误差的增加(或减少)而增加(或减少)和/或在4-D空间中变得强(或弱)相关。这些特性还通过说明性示例得到了突出显示,并且扩展的公式显示出对于设计最佳相控阵雷达扫描配置以最大化4DVar分析系统从雷达观测中可提取的信息内容的潜在有用。

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