The use of machine learning algorithms to design a generalized simplified denitrification model
暂无分享,去创建一个
[1] R. White,et al. Measuring denitrification activity in soils under pasture: Optimizing conditions for the short-term denitrification enzyme assay and effects of soil storage on denitrification activity , 1996 .
[2] J. Trevors,et al. Crop residue influence on denitrification, N2O emissions and denitrifier community abundance in soil , 2008 .
[3] M. Heinen. Application of a widely used denitrification model to Dutch data sets , 2006 .
[4] Véronique Beaujouan,et al. Effect on nitrate concentration in stream water of agricultural practices in small catchments in Brittany: I. Annual nitrogen budgets , 2002 .
[5] Leo Breiman,et al. Bagging Predictors , 1996, Machine Learning.
[6] C. Basset-Mens,et al. Spatialised fate factors for nitrate in catchments: modelling approach and implication for LCA results. , 2006, The Science of the total environment.
[7] Gerrit Kateman,et al. Pattern classification with artificial neural networks : classification of algae, based upon flow cytometer data , 1992 .
[8] P. Rousseeuw. Silhouettes: a graphical aid to the interpretation and validation of cluster analysis , 1987 .
[9] M. Nguyen,et al. Effect of lime or zeolite on N2O and N2 emissions from a pastoral soil treated with urine or nitrate-N fertilizer under field conditions , 2010 .
[10] Jiafa Luo,et al. Grazing effects on denitrification in a soil under pasture during two contrasting seasons , 1999 .
[11] Véronique Beaujouan,et al. Modelling the effect of the spatial distribution of agricultural practices on nitrogen fluxes in rural catchments , 2001 .
[12] Vance T. Holliday,et al. Methods of soil analysis, part 1, physical and mineralogical methods (2nd edition), A. Klute, Ed., 1986, American Society of Agronomy, Agronomy Monographs 9(1), Madison, Wisconsin, 1188 pp., $60.00 , 1990 .
[13] L. Cooper,et al. When Networks Disagree: Ensemble Methods for Hybrid Neural Networks , 1992 .
[14] M. Gevrey,et al. Review and comparison of methods to study the contribution of variables in artificial neural network models , 2003 .
[15] David Makowski,et al. Bayesian calibration of the nitrous oxide emission module of an agro-ecosystem model , 2009 .
[16] R. Conrad,et al. Acetylene blockage technique leads to underestimation of denitrification rates in oxic soils due to scavenging of intermediate nitric oxide , 1997 .
[17] J. Wayland Eheart,et al. Evaluation of Neural Networks for Modeling Nitrate Concentrations in Rivers , 2003 .
[18] S. Hansen,et al. Simulation of nitrogen dynamics and biomass production in winter wheat using the Danish simulation model DAISY , 1991, Fertilizer research.
[19] M. Kaupenjohann,et al. Landscape fate of nitrate fluxes and emissions in Central Europe: A critical review of concepts, data, and models for transport and retention , 2001 .
[20] C. Guenat,et al. Temporal denitrification patterns in different horizons of two riparian soils , 2003 .
[21] Holger Johnsson,et al. Simulation of field scale denitrification losses from soils under grass ley and barley , 1991, Plant and Soil.
[22] J A Harrison,et al. Denitrification across landscapes and waterscapes: a synthesis. , 2006, Ecological applications : a publication of the Ecological Society of America.
[23] B. Irie,et al. Capabilities of three-layered perceptrons , 1988, IEEE 1988 International Conference on Neural Networks.
[24] D. Hopkins,et al. What is the so-called optimum pH for denitrification in soil? , 2002 .
[25] D. J. Nixon,et al. Soil core incubation system for the field measurement of denitrification using acetylene-inhibition , 1987 .
[26] Keisuke Hanaki,et al. Effects of oxygen concentration and moisture content of refuse on nitrification, denitrification and nitrous oxide production , 2000 .
[27] M. Šimek,et al. The influence of soil pH on denitrification: progress towards the understanding of this interaction over the last 50 years , 2002 .
[28] D Faraggi,et al. A neural network model for survival data. , 1995, Statistics in medicine.
[29] Yoav Freund,et al. A decision-theoretic generalization of on-line learning and an application to boosting , 1997, EuroCOLT.
[30] Ali S. Hadi,et al. Finding Groups in Data: An Introduction to Chster Analysis , 1991 .
[31] S. T. Buckland,et al. An Introduction to the Bootstrap. , 1994 .
[32] Paul Bordenave,et al. Modelling denitrification at the catchment scale. , 2009, The Science of the total environment.
[33] Benoit Gabrielle,et al. Predicting in situ soil N2O emission using NOE algorithm and soil database , 2005 .
[34] Keith A. Smith,et al. N 2 O release from agro-biofuel production negates global warming reduction by replacing fossil fuels , 2007 .
[35] Yoav Freund,et al. A decision-theoretic generalization of on-line learning and an application to boosting , 1995, EuroCOLT.
[36] P. Groffman,et al. Perspectives on measurement of denitrification in the field including recommended protocols for acetylene based methods , 1989, Plant and Soil.
[37] J. Tiedje,et al. Phases of denitrification following oxygen depletion in soil , 1979 .
[38] W. G. Knisel,et al. GLEAMS: Groundwater Loading Effects of Agricultural Management Systems , 1987 .
[39] J. Sogbedji,et al. N fate and transport under variable cropping history and fertilizer rate on loamy sand and clay loam soils: I. Calibration of the LEACHMN model , 2001, Plant and Soil.
[40] Robert Tibshirani,et al. A Comparison of Some Error Estimates for Neural Network Models , 1996, Neural Computation.
[41] Changsheng Li,et al. A model of nitrous oxide evolution from soil driven by rainfall events: 1. Model structure and sensitivity , 1992 .
[42] M. Heinen. Simplified denitrification models : Overview and properties , 2006 .
[43] Pádraig Cunningham,et al. Stability problems with artificial neural networks and the ensemble solution , 2000, Artif. Intell. Medicine.
[44] Russell G. Death,et al. An accurate comparison of methods for quantifying variable importance in artificial neural networks using simulated data , 2004 .
[45] Ana González-Marcos,et al. TAO-robust backpropagation learning algorithm , 2005, Neural Networks.
[46] T. Yoshinari,et al. Acetylene inhibition of nitrous oxide reduction and measurement of denitrification and nitrogen fixation in soil , 1977 .
[47] Kurt Hornik,et al. Multilayer feedforward networks are universal approximators , 1989, Neural Networks.
[48] D. Rolston,et al. PREDICTIVE-DESCRIPTIVE MODELS FOR GAS AND SOLUTE DIFFUSION COEFFICIENTS IN VARIABLY SATURATED POROUS MEDIA COUPLED TO PORE-SIZE DISTRIBUTION: III. INACTIVE PORE SPACE INTERPRETATIONS OF GAS DIFFUSIVITY , 2005 .
[49] H. Šantrůčková,et al. Denitrification in arable soils in relation to their physico-chemical properties and fertilization practice , 2000 .
[50] M. Acreman,et al. Wetland nutrient removal: a review of the evidence , 2004 .
[51] Peter Strauss,et al. AgriBMPWater: systems approach to environmentally acceptable farming , 2005, Environ. Model. Softw..
[52] J M Tiedje,et al. Nitrous Oxide from Soil Denitrification: Factors Controlling Its Biological Production , 1980, Science.
[53] Sven Kralisch,et al. A neural network approach for the optimisation of watershed management , 2003, Environ. Model. Softw..
[54] Kadir Liano,et al. Robust error measure for supervised neural network learning with outliers , 1996, IEEE Trans. Neural Networks.
[55] Fernando José Von Zuben,et al. Neural network ensembles: immune-inspired approaches to the diversity of components , 2010, Natural Computing.
[56] W. Pitts,et al. A Logical Calculus of the Ideas Immanent in Nervous Activity (1943) , 2021, Ideas That Created the Future.
[57] Chantal Gascuel-Odoux,et al. Modelling flow and nitrate transport in groundwater for the prediction of water travel times and of consequences of land use evolution on water quality , 2002 .
[58] D. Rolston,et al. PREDICTIVE-DESCRIPTIVE MODELS FOR GAS AND SOLUTE DIFFUSION COEFFICIENTS IN VARIABLY SATURATED POROUS MEDIA COUPLED TO PORE-SIZE DISTRIBUTION: I. GAS DIFFUSIVITY IN REPACKED SOIL , 2005 .
[59] Véronique Beaujouan,et al. Effect on nitrate concentration in stream water of agricultural practices in small catchments in Brittany: II. Temporal variations and mixing processes , 2002 .
[60] Robert E. Schapire,et al. The Boosting Approach to Machine Learning An Overview , 2003 .
[61] Carolien Kroeze,et al. Potential impact on the global atmospheric N2O budget of the increased nitrogen input required to meet future global food demands , 2000 .
[62] Leo Breiman,et al. Classification and Regression Trees , 1984 .
[63] Ethem Alpaydin,et al. Introduction to Machine Learning (Adaptive Computation and Machine Learning) , 2004 .
[64] P. Groffman,et al. Nitrous oxide production in riparian zones and groundwater , 1998, Nutrient Cycling in Agroecosystems.
[65] Wendy R. Fox,et al. Finding Groups in Data: An Introduction to Cluster Analysis , 1991 .
[66] Martin Cote,et al. Dynamic modelling of the activated sludge process: Improving prediction using neural networks , 1995 .
[67] W S McCulloch,et al. A logical calculus of the ideas immanent in nervous activity , 1990, The Philosophy of Artificial Intelligence.
[68] G. Lewicki,et al. Approximation by Superpositions of a Sigmoidal Function , 2003 .
[69] J. Rydén,et al. Evaluation of the acetylene-inhibition technique for the measurement of denitrification in grassland soils , 1982 .
[70] Padraig Cunningham,et al. Confidence and prediction intervals for neural network ensembles , 1999, IJCNN'99. International Joint Conference on Neural Networks. Proceedings (Cat. No.99CH36339).
[71] C. Nevison. Review of the IPCC methodology for estimating nitrous oxide emissions associated with agricultural leaching and runoff , 2000 .
[72] Christoph Müller,et al. The use of artificial neural networks (ANNs) to simulate N2O emissions from a temperate grassland ecosystem , 2004 .
[73] J. Arnold,et al. SWAT2000: current capabilities and research opportunities in applied watershed modelling , 2005 .
[74] G. Lischeid. Investigating trends of hydrochemical time series of small catchments by artificial neural networks , 2001 .
[75] Hiederer Roland,et al. Background Guide for the Calculation of Land Carbon Stocks in the Biofuels Sustainability Scheme Drawing on the 2006 IPCC Guidelines for National Greenhouse Gas Inventories , 2010 .
[76] B. Efron,et al. Bootstrap confidence intervals , 1996 .
[77] J. Friedman. Greedy function approximation: A gradient boosting machine. , 2001 .
[78] Markus Kempen,et al. Linking an economic model for European agriculture with a mechanistic model to estimate nitrogen and carbon losses from arable soils in Europe , 2008 .
[79] Paul Bordenave,et al. Variations of denitrification in a farming catchment area , 2007 .
[80] Keith Beven,et al. Prophecy, reality and uncertainty in distributed hydrological modelling , 1993 .
[81] R. Cicerone. Changes in Stratospheric Ozone , 1987, Science.
[82] S. Jarvis,et al. An improved soil core incubation method for the field measurement of denitrification and net mineralization using acetylene inhibition , 2001, Nutrient Cycling in Agroecosystems.
[83] Jack T. Trevors,et al. Review: Denitrification in temperate climate riparian zones , 1999 .
[84] S. O. Petersen,et al. Nitrous oxide evolution from structurally intact soil as influenced by tillage and soil water content , 2008 .
[85] Martin T. Hagan,et al. Neural network design , 1995 .
[86] I. Dimopoulos,et al. Neural network models to study relationships between lead concentration in grasses and permanent urban descriptors in Athens city (Greece) , 1999 .
[87] S. Lek,et al. Predicting stream nitrogen concentration from watershed features using neural networks , 1999 .
[88] André Elisseeff,et al. Stability and Generalization , 2002, J. Mach. Learn. Res..
[89] G. Billen,et al. Isotopic composition of nitrate-nitrogen as a marker of riparian and benthic denitrification at the scale of the whole Seine River system , 2003 .
[90] T. Yoshinari,et al. Acetylene inhibition of nitrous oxide reduction by denitrifying bacteria. , 1976, Biochemical and biophysical research communications.
[91] A. Watson,et al. Estimating the monthly pCO2 distribution in the North Atlantic using a self-organizing neural network , 2009 .
[92] Jerome H Friedman,et al. Multiple additive regression trees with application in epidemiology , 2003, Statistics in medicine.
[93] B. Efron. Better Bootstrap Confidence Intervals , 1987 .
[94] W. Cheng,et al. N2O and NO production in various Chinese agricultural soils by nitrification , 2004 .
[95] P. Whitehead,et al. Nitrous oxide emission from a range of land uses across Europe , 2002 .
[96] N. Hofstra,et al. Denitrification in Agricultural Soils: Summarizing Published Data and Estimating Global Annual Rates , 2005, Nutrient Cycling in Agroecosystems.
[97] Klaus Butterbach-Bahl,et al. Methods for measuring denitrification: diverse approaches to a difficult problem. , 2006, Ecological applications : a publication of the Ecological Society of America.
[98] J. Rydén. Denitrification loss from a grassland soil in the field receiving different rates of nitrogen as ammonium nitrate , 1983 .
[99] J Elith,et al. A working guide to boosted regression trees. , 2008, The Journal of animal ecology.
[100] J. Germon,et al. NEMIS, a predictive model of denitrification on the field scale , 2000 .
[101] Lars Bergström,et al. Simulated nitrogen dynamics and losses in a layered agricultural soil , 1987 .
[102] Field evaluation of models of denitrification linked to nitrate leaching for aggregated soil , 1996 .