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Modelling of habitat conditions by self-organizing feature maps using relations between soil, plant chemical properties and type of basaltoides

机译:利用土壤,植物化学性质和玄武草类型之间的关系通过自组织特征图对生境条件进行建模

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The paper shows the use of Kohonen's network for classification of basaltoides on the base of chemical properties of soils and Polypodium vulgare L. The study area was Lower Silesia (Poland). The archival data were: chemical composition of types of basaltoides from 89 sites (Al2O3, CaO, FeO, Fe2O3, K2O, MgO, MnO, Na2O, P2O5, SiO2 and TiO2), elements contents in soils (Cd, Co, Cu, Fe, Mn, Mo, Ni, Pb, S, Ti and Zn) and leaves of P. vulgare (Ca, Cd, Co, Cu, Fe, K, Mg, Mn, Mo, N, Ni, P, Pb, S, Ti and Zn) from 20 sites. Descriptive statistical parameters of soils and leaves chemical properties have been shown, statistical analyses using ANOVA and relationships between chemical elements were carried out, and SOFM models have been constructed. The study revealed that the ordination of individuals and groups of neurons in topological maps of plant and soil chemical properties are similar. The constructed models are related with significantly different contents of elements in plants and soils. These models represent different chemical types of soils and are connected with ordination of types of basaltoides worked out by SOFM model of TAS division. The SOFM appeared to be a useful technique for ordination of ecological data and provides a novel framework for the discovery and forecasting of ecosystem properties.
机译:本文说明了基于土壤和虎杖的化学特性,利用Kohonen网络对玄武岩进行分类的方法。研究区域为下西里西亚(波兰)。档案数据为:来自89个地点的玄武岩类型的化学组成(Al2O3,CaO,FeO,Fe2O3,K2O,MgO,MnO,Na2O,P2O5,SiO2和TiO2),土壤中的元素含量(Cd,Co,Cu,Fe ,Mn,Mo,Ni,Pb,S,Ti和Zn)和普通百日草的叶子(Ca,Cd,Co,Cu,Fe,K,Mg,Mn,Mo,N,Ni,P,Pb,S, Ti和Zn)来自20个站点。给出了土壤和叶片化学性质的描述性统计参数,使用ANOVA进行统计分析并进行了化学元素之间的关系,并构建了SOFM模型。研究表明,在植物和土壤化学性质的拓扑图中,神经元的个体和群体的排序是相似的。构建的模型与植物和土壤中元素的含量差异显着有关。这些模型代表了土壤的不同化学类型,并与由TAS部门的SOFM模型得出的玄武岩类型的排序有关。 SOFM似乎是用于整理生态数据的有用技术,并为发现和预测生态系统特性提供了新颖的框架。

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