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首页> 外文期刊>Agroforestry Systems >A data mining approach to improve multiple regression models of soil nitrate concentration predictions in Quercus rotundifolia montados (Portugal)
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A data mining approach to improve multiple regression models of soil nitrate concentration predictions in Quercus rotundifolia montados (Portugal)

机译:一种数据挖掘方法,用于改善蒙特哥栎(Quercus rotundifolia montados)(葡萄牙)土壤硝酸盐浓度预测的多个回归模型

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The changes in the soil nitrate concentration were studied during 2 years in a “montado” ecosystem, in the South of Portugal. Total rainfall, air and soil temperature and soil water content under and outside Quercus rotundifolia canopy were also evaluated. A cluster analysis was carried out using climatic and microclimatic parameters in order to maximize the intraclass similarity and minimize the interclass similarity. It was used the k-Means Clustering Method. Several cluster models were developedusing k values ranging between 2 and 5. Thereafter, in each cluster, the data were divided according to their origin (soil under canopy and open areas, and from surface and deep layers). Multiple regression models were tested for each cluster, to assessthe relationship between soil nitrate concentration and a set of climatic and microclimatic parameters and the results were compared with models assessed without clustering. The models achieved with data grouped in result of clustering analysis showed better performance than the models achieved without clustering, mostly for data from open areas soils. When temperature is low and/or water presents excess or scarcity levels, the data from soils in undercanopy areas, give rise to models with worst performance than models from open soil areas data. The results obtained for undercanopy area suggest that nitrification process in soil under Quercus rotundifolia trees influence is more complex than for open areas, and subject to other relevant factors beyondwater and temperature.
机译:在葡萄牙南部的一个“蒙塔多”生态系统中,研究了两年中土壤硝酸盐浓度的变化。还评估了栎栎冠层内部和外部的总降雨量,空气和土壤温度以及土壤水分。使用气候和微气候参数进行聚类分析,以使类内相似度最大化,并使类间相似度最小。使用了k-Means聚类方法。使用2到5之间的k值开发了几个聚类模型。此后,在每个聚类中,根据数据的来源(冠层和开放区域下的土壤,以及表层和深层的土壤)对数据进行划分。对每个聚类测试了多元回归模型,以评估土壤硝酸盐浓度与一组气候和微气候参数之间的关系,并将结果与​​未聚类的模型进行了比较。用聚类分析结果分组的数据获得的模型显示出比不聚类获得的模型更好的性能,主要是针对开放区域土壤的数据。当温度较低和/或水含量过多或稀少时,树冠下区域土壤的数据将导致性能比空旷土壤数据的模型差。冠层下区域的结果表明,栎木影响下的土壤硝化过程比开放区域更为复杂,并且受水和温度以外的其他相关因素的影响。

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