Uncertainty analysis of greenhouse gas (GHG) emissions is becoming increasingly necessary in order to obtain a more accurate estimation of their quantities. The Monte Carlo simulation (MCS) and non-parametric block bootstrap (BB) methods were tested to estimate the uncertainty of GHG emissions from the consumption of feedstuffs and energy by dairy cows. In addition, the contribution to variance (CTV) approach was used to identify significant input variables for the uncertainty analysis. The results demonstrated that the application of the non-parametric BB method to the uncertainty analysis, provides a narrower confidence interval (CI) width, with a smaller percentage uncertainty (U) value of the GHG emission model compared to the MCS metho...
In constructing the model, creating variable names, and linking the model to the Monte Carlo program...
This method is intended to assist in characterizing uncertainties in emissions data for the Mileubal...
Greenhouse gas (GHG) emission from electricity generation has been recognized as one of the most sig...
Uncertainty analysis of greenhouse gas (GHG) emissions is becoming increasingly necessary in order t...
The study objective was to develop a method for an uncertainty analysis of the greenhouse gas (GHG) ...
Dairy farms produce significant greenhouse gas (GHG) emissions and are therefore a focal point for G...
The UK's greenhouse gas inventory for agriculture uses a model based on the IPCC Tier 1 and Tier 2 m...
The results of an uncertainty analysis are achieved by the statistical information (standard error, ...
In recent years, a substantial amount of work has been done to evaluate uncertainty associated with ...
<p>The global animal food chain has a large contribution to the global anthropogenic greenhouse gas ...
This paper presents an assessment of the value added of a Monte Carlo analysis of the uncertainties ...
Thesis (Ph.D.), Department of Biological Systems Engineering, Washington State UniversityThe aims of...
Each sub-model has to be specified by a set of parameters, which are imperfectly known; it may also ...
Background, aim and scope As a food exporting nation, New Zealand recognises that the Global Warming...
<div><p>Energy supply utilities release significant amounts of greenhouse gases (GHGs) into the atmo...
In constructing the model, creating variable names, and linking the model to the Monte Carlo program...
This method is intended to assist in characterizing uncertainties in emissions data for the Mileubal...
Greenhouse gas (GHG) emission from electricity generation has been recognized as one of the most sig...
Uncertainty analysis of greenhouse gas (GHG) emissions is becoming increasingly necessary in order t...
The study objective was to develop a method for an uncertainty analysis of the greenhouse gas (GHG) ...
Dairy farms produce significant greenhouse gas (GHG) emissions and are therefore a focal point for G...
The UK's greenhouse gas inventory for agriculture uses a model based on the IPCC Tier 1 and Tier 2 m...
The results of an uncertainty analysis are achieved by the statistical information (standard error, ...
In recent years, a substantial amount of work has been done to evaluate uncertainty associated with ...
<p>The global animal food chain has a large contribution to the global anthropogenic greenhouse gas ...
This paper presents an assessment of the value added of a Monte Carlo analysis of the uncertainties ...
Thesis (Ph.D.), Department of Biological Systems Engineering, Washington State UniversityThe aims of...
Each sub-model has to be specified by a set of parameters, which are imperfectly known; it may also ...
Background, aim and scope As a food exporting nation, New Zealand recognises that the Global Warming...
<div><p>Energy supply utilities release significant amounts of greenhouse gases (GHGs) into the atmo...
In constructing the model, creating variable names, and linking the model to the Monte Carlo program...
This method is intended to assist in characterizing uncertainties in emissions data for the Mileubal...
Greenhouse gas (GHG) emission from electricity generation has been recognized as one of the most sig...