Literature DB >> 19098240

Modeling methane production from beef cattle using linear and nonlinear approaches.

J L Ellis1, E Kebreab, N E Odongo, K Beauchemin, S McGinn, J D Nkrumah, S S Moore, R Christopherson, G K Murdoch, B W McBride, E K Okine, J France.   

Abstract

Canada is committed to reducing its greenhouse gas emissions to 6% below 1990 amounts between 2008 and 2012, and methane is one of several greenhouse gases being targeted for reduction. Methane production from ruminants is one area in which the agriculture sector can contribute to reducing our global impact. Through mathematical modeling, we can further our understanding of factors that control methane production, improve national or global greenhouse gas inventories, and investigate mitigation strategies to reduce overall emissions. The purpose of this study was to compile an extensive database of methane production values measured on beef cattle, and to generate linear and nonlinear equations to predict methane production from variables that describe the diet. Extant methane prediction equations were also evaluated. The linear equation developed with the smallest root mean square prediction error (RMSPE, % observed mean) and residual variance (RV) was Eq. I: CH(4), MJ/d=2.72 (+/-0.543) + [0.0937 (+/-0.0117) x ME intake, MJ/d] + [4.31 (+/-0.215) x Cellulose, kg/d] - [6.49 (+/-0.800) x Hemicellulose, kg/d] - [7.44 (+/-0.521) x Fat, kg/d] [RMSPE=26.9%, with 94% of mean square prediction error (MSPE) being random error; RV=1.13]. Equations based on ratios of one diet variable to another were also generated, and Eq. P, CH(4), MJ/d=2.50 (+/-0.649) - [0.367 (+/-0.0191) x (Starch:ADF)] + [0.766 (+/-0.116) x DMI, kg/d], resulted in the smallest RMSPE values among these equations (RMSPE=28.6%, with 93.6% of MSPE from random error; RV=1.35). Among the nonlinear equations developed, Eq. W, CH(4), MJ/d=10.8 (+/-1.45) x (1-e([-0.141 (+/-0.0381) x DMI, kg/d])), performed well (RMSPE=29.0%, with 93.6% of MSPE from random error; RV=3.06), as did Eq. W(3), CH(4), MJ/d=10.8 (+/-1.45) x [1-e({-[-0.034 x (NFC/NDF)+0.228] x DMI, kg/d})] (RMSPE=28.0%, with 95% of MSPE from random error). Extant equations from a previous publication by the authors performed comparably with, if not better than in some cases, the newly developed equations. Equation selection by users should be based on RV and RMSPE analysis, input variables available to the user, and the diet fed, because the equation selected must account for divergence from a "normal" diet (e.g., high-concentrate diets, high-fat diets).

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Year:  2008        PMID: 19098240     DOI: 10.2527/jas.2007-0725

Source DB:  PubMed          Journal:  J Anim Sci        ISSN: 0021-8812            Impact factor:   3.159


  5 in total

1.  Artificial polychromatic light affects growth and physiology in chicks.

Authors:  Jinming Pan; Yefeng Yang; Bo Yang; Yonghua Yu
Journal:  PLoS One       Date:  2014-12-03       Impact factor: 3.240

2.  Effects of dietary forage-to-concentrate ratio on nutrient digestibility and enteric methane production in growing goats (Capra hircus hircus) and Sika deer (Cervus nippon hortulorum).

Authors:  Youngjun Na; Dong Hua Li; Sang Rak Lee
Journal:  Asian-Australas J Anim Sci       Date:  2017-03-21       Impact factor: 2.509

3.  Prediction of methane emission from sheep based on data measured in vivo from open-circuit respiratory studies

Authors:  Tao Ma; Kaidong Deng; Qiyu Diao
Journal:  Asian-Australas J Anim Sci       Date:  2019-02-07       Impact factor: 2.509

4.  Prediction of methane per unit of dry matter intake in growing and finishing cattle from the ratio of dietary concentrations of starch to neutral detergent fiber alone or in combination with dietary concentration of ether extract.

Authors:  Michael L Galyean; Kristin E Hales
Journal:  J Anim Sci       Date:  2022-09-01       Impact factor: 3.338

5.  A mathematical model to describe the diurnal pattern of enteric methane emissions from non-lactating dairy cows post-feeding.

Authors:  Min Wang; Rong Wang; Xuezhao Sun; Liang Chen; Shaoxun Tang; Chuangshe Zhou; Xuefeng Han; Jinghe Kang; Zhiliang Tan; Zhixiong He
Journal:  Anim Nutr       Date:  2015-11-28
  5 in total

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