Computational modeling of natural, economic, and technological systems is a primary analytical methodology in US energy and environmental regulation. Validating or otherwise evaluating such models and analyzing the uncertainties involved in their regulatory applications have become both more important and more challenging. This paper reviews these issues in the context of an important recent example involving energy, the US Environmental Protection Agency’s (EPA’s) development of regulations to reduce carbon dioxide emissions from electric power plants using a numerical model of the US electric power system. Following a summary of background information about greenhouse gas abatement policy, the paper discusses the agency’s general computat...
Ambitious climate change mitigation requires the implementation of effective and equitable climate p...
Greenhouse gas (GHG) emission from electricity generation has been recognized as one of the most sig...
Recent studies have considered uncertainty for GHG reductions by using the stochastic programming mo...
Computational modeling of natural, economic, and technological systems is a primary analytical metho...
When designing environmental protection and energy regulation policies legislators and regulators re...
Electric energy is a fundamental commodity for any aspects of the modern world. However, there are ...
Click on the DOI link to access the article (may not be free).In this paper, a much more detailed re...
Computational models support environmental regulatory activities by providing the regulator an abili...
In this study, an interval two-stage integer programming model is formulated for planning electric-p...
Achieving a global warming limit of 2°C is likely only possible if humanity ceases to emit greenhous...
Thesis: Ph. D., Massachusetts Institute of Technology, Engineering Systems Division, February 2013.C...
This dissertation deals with strategies to handle uncertainty about restrictions in CO2 emissions. A...
Includes bibliographical references (p. 31-32).Abstract in HTML and technical report in HTML and PDF...
This posting contains the supporting information for the research article titled “Estimating Emissio...
Abstract: Large-scale greenhouse gas (GHG) abatement policies are subject to a range of uncertaintie...
Ambitious climate change mitigation requires the implementation of effective and equitable climate p...
Greenhouse gas (GHG) emission from electricity generation has been recognized as one of the most sig...
Recent studies have considered uncertainty for GHG reductions by using the stochastic programming mo...
Computational modeling of natural, economic, and technological systems is a primary analytical metho...
When designing environmental protection and energy regulation policies legislators and regulators re...
Electric energy is a fundamental commodity for any aspects of the modern world. However, there are ...
Click on the DOI link to access the article (may not be free).In this paper, a much more detailed re...
Computational models support environmental regulatory activities by providing the regulator an abili...
In this study, an interval two-stage integer programming model is formulated for planning electric-p...
Achieving a global warming limit of 2°C is likely only possible if humanity ceases to emit greenhous...
Thesis: Ph. D., Massachusetts Institute of Technology, Engineering Systems Division, February 2013.C...
This dissertation deals with strategies to handle uncertainty about restrictions in CO2 emissions. A...
Includes bibliographical references (p. 31-32).Abstract in HTML and technical report in HTML and PDF...
This posting contains the supporting information for the research article titled “Estimating Emissio...
Abstract: Large-scale greenhouse gas (GHG) abatement policies are subject to a range of uncertaintie...
Ambitious climate change mitigation requires the implementation of effective and equitable climate p...
Greenhouse gas (GHG) emission from electricity generation has been recognized as one of the most sig...
Recent studies have considered uncertainty for GHG reductions by using the stochastic programming mo...