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Self-organizing map artificial neural network application in multidimensional soil data analysis

机译:自组织图人工神经网络在多维土壤数据分析中的应用

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Because of the complex nonlinear relationships between soil variables and their multivariable aspects, classical analytic, deterministic, or linear statistical methods are unreliable and cause difficulty to present or visualize the results. Using intelligent techniques, which have ability to analyze the multidimensional soil data with an intricate visualization technique, is crucial for nutrient and water management in soil, consequently, for sustainable agriculture and groundwater management. In this study, first, the Kohonen self-organizing feature maps (KSOFM) neural network was applied to analyze the effects of soil physical properties on soil chemical/hydraulic processes, and to diagnose the inter-relationships of the multivariable soil data in vadose zone. The inter-relationships among the soil variables were extracted and interpreted using the pattern analysis visualized in component planes. Then K-means clustering algorithm was used to determine the optimal number of clusters by using the Silhouette clustering validity index, resulting in six clusters or groups for soil variables. In conclusion, the KSOFM technique is an effective tool for analyzing and diagnosing the dynamics in soil and extracting information from the multidimensional soil data. These results suggest that this technique has a potential to monitor and diagnose not only soil physical/chemical/hydraulic processes, but also soil morphological and microbiological processes.
机译:由于土壤变量及其多变量方面之间存在复杂的非线性关系,因此经典的分析,确定性或线性统计方法不可靠,并且难以呈现或可视化结果。使用能够通过复杂的可视化技术分析多维土壤数据的智能技术,对于土壤中的养分和水管理,从而对可持续农业和地下水管理至关重要。在这项研究中,首先,使用Kohonen自组织特征图(KSOFM)神经网络分析土壤物理特性对土壤化学/液压过程的影响,并诊断渗流带中多变量土壤数据的相互关系。 。提取土壤变量之间的相互关系,并使用在组成平面中可视化的模式分析来解释。然后使用K-means聚类算法通过使用Silhouette聚类有效性指标来确定最佳聚类数,从而得出土壤变量的六个聚类或分组。总之,KSOFM技术是用于分析和诊断土壤动力学以及从多维土壤数据中提取信息的有效工具。这些结果表明,该技术不仅可以监测和诊断土壤物理/化学/液压过程,而且还可以监测和诊断土壤形态和微生物过程。

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