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A comparison of eight metamodeling techniques for the simulation of N_2O fluxes and N leaching from corn crops

机译:八种用于模拟玉米作物中N_2O通量和氮淋失的元建模技术的比较

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摘要

The environmental costs of intensive farming activities are often under-estimated or not traded by the market, even though they play an important role in addressing future society's needs. The estimation of nitrogen (N) dynamics is thus an important issue which demands detailed simulation based methods and their integrated use to correctly represent complex and non-linear interactions into cropping systems. To calculate the N_2O flux and N leaching from European arable lands, a modeling framework has been developed by linking the CAPRI agro-economic dataset with the DNDC-EUROPE bio-geo-chemical model. But, despite the great power of modern calculators, their use at continental scale is often too computationally costly. By comparing several statistical methods this paper aims to design a metamodel able to approximate the expensive code of the detailed modeling approach, devising the best compromise between estimation performance and simulation speed. We describe the use of two parametric (linear) models and six non-parametric approaches: two methods based on splines (ACOSSO and SDR), one method based on kriging (DACE), a neural networks method (multilayer perceptron, MLP), SVM and a bagging method (random forest, RF). This analysis shows that, as long as few data are available to train the model, splines approaches lead to best results, while when the size of training dataset increases, SVM and RF provide faster and more accurate solutions.
机译:集约化农业活动的环境成本经常被低估或无法通过市场进行交易,即使它们在满足未来社会的需求方面发挥着重要作用。因此,氮(N)动力学的估算是一个重要的问题,需要基于详细模拟的方法及其集成使用,以正确表示进入作物系统的复杂和非线性相互作用。为了计算欧洲耕地的N_2O通量和N淋溶,通过将CAPRI农业经济数据集与DNDC-EUROPE生物地球化学模型联系起来,建立了一个建模框架。但是,尽管现代计算器功能强大,但在大陆范围内使用它们在计算上往往过于昂贵。通过比较几种统计方法,本文旨在设计一种能够逼近详细建模方法的昂贵代码的元模型,并在估计性能和仿真速度之间做出最佳折衷。我们描述了两个参数(线性)模型和六个非参数方法的使用:两种基于样条曲线的方法(ACOSSO和SDR),一种基于克里金法的方法(DACE),神经网络方法(多层感知器,MLP),SVM和套袋方法(随机森林,RF)。该分析表明,只要可用于训练模型的数据很少,样条曲线方法就能获得最佳结果,而当训练数据集的大小增加时,SVM和RF将提供更快,更准确的解决方案。

著录项

  • 来源
    《Environmental Modelling & Software》 |2012年第2012期|p.51-66|共16页
  • 作者单位

    IUT de Perpignan (Dpt ST1D, Carcassonne), Univ. Perpignan, Via Domitia, France ,Institut de Mathematiques de Toulouse, Universite Paul Sabatier, 118 route de Narbonne, F-31062 Toulouse cedex 9, France;

    European Commission, Institute for Environment and Sustainability, CCU, Ispra, Italy;

    European Commission, Econometrics and Applied Statistics Unit, Ispra, Italy;

    European Commission, Institute for Environment and Sustainability, CCU, Ispra, Italy;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    metamodeling; splines; SVM; neural network; random forest; N_2O flux; N leaching; agriculture;

    机译:元模型花键支持向量机;神经网络;随机森林N_2O通量;N浸出;农业;

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