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Neural network and state-space models for studying relationships among soil properties

机译:用于研究土壤特性之间关系的神经网络和状态空间模型

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The study of soil property relationships is of great importance in agronomy aiming for a rational management of environmental resources and an improvement of agricultural productivity. Studies of this kind are traditionally performed using static regression models, which do not take into account the involved spatial structure. This work has the objective of evaluating the relation between a time-consuming and "expensive" variable (like soil total nitrogen) and other simple, easier to measure variables (as for instance, soil organic carbon, pH, etc.). Two important classes of models (linear state-space and neural networks) are used for prediction and compared with standard uni- and multivariate regression models, used as reference. For an oat crop cultivated area, situated in Jaguariuna, SP, Brazil (22o41' S, 47o00' W) soil samples of a Typic Haplustox were collected from the plow layer at points spaced 2 m apart along a 194 m spatial transect. Recurrent neural networks and standard state-space models had a better predictive performance of soil total nitrogen as compared to the standard regression models. Among the standard regression models the Vector Auto-Regression model had a better predictive performance for soil total nitrogen.
机译:为了合理管理环境资源和提高农业生产力,研究土壤属性关系在农学中具有重要意义。传统上,此类研究是使用静态回归模型进行的,该模型不考虑所涉及的空间结构。这项工作的目的是评估耗时且“昂贵”的变量(如土壤总氮)与其他简单,易于测量的变量(例如,土壤有机碳,pH等)之间的关系。两类重要的模型(线性状态空间和神经网络)用于预测,并与标准的单变量和多元回归模型进行比较,以作为参考。对于位于巴西SP Jaguariuna(22o41'S,47o00'W)的燕麦作物种植区,从耕层上沿194 m空间样点隔开2 m的点收集了典型Typlus Haplustox的土壤样品。与标准回归模型相比,循环神经网络和标准状态空间模型对土壤总氮的预测性能更好。在标准回归模型中,向量自回归模型对土壤总氮的预测性能更好。

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