水生杂草预测的比较研究

E. Emary, Rania E. Elesawy, Salwa M. Abou El Ella, A. Hassanien
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摘要

水生杂草是水生环境中最大的生物量产生者,这促使人们使用智能方法来预测和估计影响水生杂草生长的指标。本研究采用了一套新的插值方法,并在研究区进行了评估,以预测一套能够预测和影响杂草生长的化学指标。使用的方法有双谐波、张力正则样条、巴恩斯、三散射和克里格。不同的插值器用于创建代表不同化学指标的专题地图,这些指标在离散位置被感知,以支持决策。使用一组测试点的均方误差来评估单个内插器的性能。结果表明,三散点插值法对所有感测指标的插值效果最好,而正则样条插值法在插值点数足够大时表现较好。
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Aquatic weeds prediction: A comparative study
Aquatic weeds are the greatest generator of biomass in aquatic environment which motivates using intelligent methods for the prediction and estimation of indicators that affect the growth of such weeds. In this study a set of new interpolation methods are used and assessed over the study area for predicting a set of chemical indicators that can predict and affect the growth of weeds. The used methods are bi-harmonic, regularized spline with tension, Barnes, tri-scatter, and kriging. The different interpolants are used to create thematic maps representing the different chemical indicators that are sensed at discrete positions for supporting decision making. The performance of individual interpolants is assessed using mean square error over a set of test sites. Results prove that the Tri-scatter interpolant is the one with best performance for all the sensed indicators while the regularized spline performs well when the number of points for interpolation is large enough.
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