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首页> 外文期刊>European Journal of Agronomy >Artificial neural network approach for prediction of ammonia emission from field-applied manure and relative significance assessment of ammonia emission factors.
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Artificial neural network approach for prediction of ammonia emission from field-applied manure and relative significance assessment of ammonia emission factors.

机译:人工神经网络方法从田间施肥预测氨氮排放及氨氮排放因子的相对显着性评估。

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摘要

This article presents a systematic method for enhancing the estimation accuracy of ammonia emission from field-applied manure and for assessing the relative significance of ammonia emission factors, using the feedforward-backpropagation artificial neural network (ANN) approach. The multivariate linear regression (MLR) method well describes the ammonia emission tendency with the emission factor variation. However, ammonia emission from manure slurry is too complex to be captured in a linear regression model. This necessitates a model which can describe complex nonlinear effects between the ammonia emission variables such as soil and manure states, climate and agronomic factors. In the present study, a principle component analysis (PCA) based preprocessing and weight partitioning method (WPM) based postprocessing ANN approach (called the PWA approach) is proposed to account for the complex nonlinear effects. The ammonia emission is predicted with precision by the 11 emission factors, using the nonlinear ANN approach. The relative importance among the 11 emission factors is identified using the elasticity analysis in the MLR method and using the WPM in the ANN approach. The relative significance obtained quantitatively by the PWA approach in the present study gives an excellent explanation of the most important processes controlling NH3 emission..
机译:本文提出了一种系统的方法,该方法使用前馈-反向传播人工神经网络(ANN)方法来提高田间施肥过程中氨气排放的估算准确性并评估氨气排放因子的相对重要性。多元线性回归(MLR)方法很好地描述了氨排放趋势随排放因子的变化。但是,粪肥中的氨排放太复杂,无法在线性回归模型中捕获。因此,需要一个模型来描述氨排放变量(例如土壤和肥料状态,气候和农艺因素)之间的复杂非线性效应。在本研究中,提出了基于主成分分析(PCA)的预处理和基于权重分配方法(WPM)的后处理ANN方法(称为PWA方法)来解决复杂的非线性效应。使用非线性ANN方法,可以通过11个排放因子精确预测氨的排放。使用MLR方法中的弹性分析和ANN方法中的WPM确定了11个排放因子之间的相对重要性。通过本研究中的PWA方法定量获得的相对重要性为控制NH3排放的最重要过程提供了极好的解释。

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