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Improvement of remote monitoring on water quality in a subtropical reservoir by incorporating grammatical evolution with parallel genetic algorithms into satellite imagery

机译:通过将语法进化与并行遗传算法结合到卫星图像中来改善亚热带水库水质的远程监控

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摘要

Parallel GEGA was constructed by incorporating grammatical evolution (GE) into the parallel genetic algorithm (GA) to improve reservoir water quality monitoring based on remote sensing images. A cruise was conducted to ground-truth chlorophyll-α (Chl-α) concentration longitudinally along the Feitsui Reservoir, the primary water supply for Taipei City in Taiwan. Empirical functions with multiple spectral parameters from the Landsat 7 Enhanced Thematic Mapper (ETM+) data were constructed. The GE, an evolutionary automatic programming type system, automatically discovers complex nonlinear mathematical relationships among observed Chl-a concentrations and remote-sensed imageries. A GA was used afterward with GE to optimize the appropriate function type. Various parallel subpopulations were processed to enhance search efficiency during the optimization procedure with GA. Compared with a traditional linear multiple regression (LMR), the performance of parallel GEGA was found to be better than that of the traditional LMR model with lower estimating errors.
机译:通过将语法进化算法(GE)纳入并行遗传算法(GA)中来构建并行GEGA,以改善基于遥感图像的水库水质监测。沿着菲翠水库(台湾台北市的主要供水)沿纵向对叶绿素-α(Chl-α)浓度进行了实地考察。利用Landsat 7增强主题映射器(ETM +)数据构建了具有多个光谱参数的经验函数。 GE是一种进化的自动编程类型系统,可以自动发现观察到的Chl-a浓度与遥感图像之间的复杂非线性数学关系。随后,将GA与GE一起使用以优化适当的功能类型。在使用GA进行优化的过程中,处理了各种并行的子种群以提高搜索效率。与传统的线性多元回归(LMR)相比,并行GEGA的性能要好于估计误差较低的传统LMR模型。

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