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Improved ocean chlorophyll estimate from remote sensed data: The modified blending technique

机译:通过遥感数据改进的海洋叶绿素估计:改进的混合技术

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Gregg and Conkright (2001) who pioneered the use of the blending technique in an attempt to calibrate ocean chlorophyll, expressed the need for further work to be done in order to obtain improved results. One problem faced when using this technique with spatially sparse data, is distortion of the resulting blended field when approaching the coastal boundaries. In this paper, the causes of the distortion and alternative methods for solving it are discussed. One of these method herein termed the corrector factor method, appeared the most appropriate in correcting the problem. In it, the blending process is done twice. This method sees the reduction of the mean squared difference between the blended and satellite fields from 6.299 in the normal blending to 0.347 in the corrector factor blending. This figure is also below the tolerance margin (the mean squared difference between the satellite and in situ fields) for the real data which was 0.989. Furthermore, this method is backed by a standard statistical procedure which produces identical results to its own even though the two methods differ in structure. A mathematical proof as to why these results coincide is also outlined. Validation study carried out by the authors showed that at least 80% of the times these methods are used the corrector factor will provide a better estimate of chlorophyll concentration than the original blending method. It is expected that analysis on primary productivity and management in the ocean environment will be greatly enhanced by this new finding.
机译:Gregg和Conkright(2001)率先使用混合技术来校准海洋叶绿素,他表示需要做进一步的工作以获得更好的结果。当将该技术与空间稀疏数据一起使用时,面临的一个问题是接近沿海边界时所产生的混合场的失真。本文讨论了失真的原因和解决方法。这些方法中一种被称为校正因子方法,似乎最适合于校正问题。在其中,混合过程完成了两次。此方法可以看到混合场和卫星场之间的均方差从正常混合时的6.299减少到校正因子混合时的0.347。该数字也低于实际数据的公差极限(卫星和原位场之间的均方差)为0.989。此外,此方法以标准统计程序为后盾,即使两种方法的结构不同,该统计方法也能产生与之相同的结果。还概述了有关这些结果为何一致的数学证明。作者进行的验证研究表明,至少使用这些方法80%的时间,校正因子将比原始混合方法更好地估算叶绿素浓度。预计这一新发现将大大加强对海洋环境中初级生产力和管理的分析。

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