The study objective was to develop a method for an uncertainty analysis of the greenhouse gas (GHG) emission model output based on consecutive use of an analytical and a stochastic approach. The contribution to variance (CTV) analysis followed by the data quality analysis are the main feature of the procedure. When a set of data points of a certain input variable has a high CTV, but its data quality indicator (DQI) is good, then there is no need to iterate data collection of this input variable. This is because the DQI of this data set indicates that there is no room for the reduction of its variance, and the high variance must be its inherent attribute. Through the CTV analysis and data quality analysis, the identified input variables were...
<div><p>Energy supply utilities release significant amounts of greenhouse gases (GHGs) into the atmo...
Our study is a preparatory exercise. We focus on the analysis of uncertainty in greenhouse gas emiss...
Total uncertainty in greenhouse gas (GHG) emissions changes over time due to “learning” and structur...
Uncertainty analysis of greenhouse gas (GHG) emissions is becoming increasingly necessary in order t...
The results of an uncertainty analysis are achieved by the statistical information (standard error, ...
The UK's greenhouse gas inventory for agriculture uses a model based on the IPCC Tier 1 and Tier 2 m...
This method is intended to assist in characterizing uncertainties in emissions data for the Mileubal...
The objective of this paper is to develop a simple method for analyzing the parameter uncertainty of...
Thesis (Ph.D.), Department of Biological Systems Engineering, Washington State UniversityThe aims of...
This paper presents an assessment of the value added of a Monte Carlo analysis of the uncertainties ...
Dairy farms produce significant greenhouse gas (GHG) emissions and are therefore a focal point for G...
This paper presents the main ndings of a research project to deter-mine the uncertainties in the Dut...
Uncertainty estimates in greenhouse gas emission inventories is an important element when prioritizi...
Each sub-model has to be specified by a set of parameters, which are imperfectly known; it may also ...
An uncertainty assessment of the Austrian greenhouse gas inventory provided the basis for this analy...
<div><p>Energy supply utilities release significant amounts of greenhouse gases (GHGs) into the atmo...
Our study is a preparatory exercise. We focus on the analysis of uncertainty in greenhouse gas emiss...
Total uncertainty in greenhouse gas (GHG) emissions changes over time due to “learning” and structur...
Uncertainty analysis of greenhouse gas (GHG) emissions is becoming increasingly necessary in order t...
The results of an uncertainty analysis are achieved by the statistical information (standard error, ...
The UK's greenhouse gas inventory for agriculture uses a model based on the IPCC Tier 1 and Tier 2 m...
This method is intended to assist in characterizing uncertainties in emissions data for the Mileubal...
The objective of this paper is to develop a simple method for analyzing the parameter uncertainty of...
Thesis (Ph.D.), Department of Biological Systems Engineering, Washington State UniversityThe aims of...
This paper presents an assessment of the value added of a Monte Carlo analysis of the uncertainties ...
Dairy farms produce significant greenhouse gas (GHG) emissions and are therefore a focal point for G...
This paper presents the main ndings of a research project to deter-mine the uncertainties in the Dut...
Uncertainty estimates in greenhouse gas emission inventories is an important element when prioritizi...
Each sub-model has to be specified by a set of parameters, which are imperfectly known; it may also ...
An uncertainty assessment of the Austrian greenhouse gas inventory provided the basis for this analy...
<div><p>Energy supply utilities release significant amounts of greenhouse gases (GHGs) into the atmo...
Our study is a preparatory exercise. We focus on the analysis of uncertainty in greenhouse gas emiss...
Total uncertainty in greenhouse gas (GHG) emissions changes over time due to “learning” and structur...