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Prediction of Biomass Production and Nutrient Uptake in Land Application Using Partial Least Squares Regression Analysis

机译:利用偏最小二乘回归分析预测土地利用过程中的生物量生产和养分吸收

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Partial Least Squares Regression (PLSR) can integrate a great number of variables and overcome collinearity problems, a fact that makes it suitable for intensive agronomical practices such as land application. In the present study a PLSR model was developed to predict important management goals, including biomass production and nutrient recovery (i.e., nitrogen and phosphorus), associated with treatment potential, environmental impacts, and economic benefits. Effluent loading and a considerable number of soil parameters commonly monitored in effluent irrigated lands were considered as potential predictor variables during the model development. All data were derived from a three year field trial including plantations of four different plant species (Acacia cyanophylla, Eucalyptus camaldulensis, Populus nigra, and Arundo donax), irrigated with pre-treated domestic effluent. PLSR method was very effective despite the small sample size and the wide nature of data set (with many highly correlated inputs and several highly correlated responses). Through PLSR method the number of initial predictor variables was reduced and only several variables were remained and included in the final PLSR model. The important input variables maintained were: Effluent loading, electrical conductivity (EC), available phosphorus (Olsen-P), Na+, Ca2+, Mg2+, K2+, SAR, and NO3−-N. Among these variables, effluent loading, EC, and nitrates had the greater contribution to the final PLSR model. PLSR is highly compatible with intensive agronomical practices such as land application, in which a large number of highly collinear and noisy input variables is monitored to assess plant species performance and to detect impacts on the environment.
机译:偏最小二乘回归(PLSR)可以集成大量变量并克服共线性问题,这一事实使其适合于密集的农艺实践,例如土地应用。在本研究中,开发了PLSR模型来预测重要的管理目标,包括与处理潜力,环境影响和经济效益相关的生物量生产和养分回收(即氮和磷)。在模型开发过程中,通常将污水灌溉土地中的污水负荷和相当数量的土壤参数视为潜在的预测变量。所有数据均来自一项为期三年的田间试验,其中包括使用预处理的生活污水进行灌溉的四种不同植物(蓝藻相思树,桉树,黑杨和阿鲁多那克斯)的人工林。尽管样本量小且数据集的性质广泛(具有许多高度相关的输入和若干高度相关的响应),PLSR方法还是非常有效的。通过PLSR方法,减少了初始预测变量的数量,仅保留了几个变量并将其包含在最终PLSR模型中。维持的重要输入变量为:废水负荷,电导率(EC),有效磷(Olsen-P),Na + ,Ca 2 + ,Mg 2 + ,K 2 + ,SAR和NO 3 - -N。在这些变量中,废水负荷,EC和硝酸盐对最终PLSR模型的贡献更大。 PLSR与集约农艺实践(例如土地应用)高度兼容,在该实践中,对大量高度共线且嘈杂的输入变量进行监视,以评估植物的性能并检测对环境的影响。

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