An efficient method to estimate renewable energy capacity credit at increasing regional grid penetration levels

The wide scale deployment of variable renewable energy technologies (VREs) offers a pathway to decarbonize the electric grid. One challenge to reliably operating the grid is ensuring that sufficient generating capacity is available to meet demand at all hours. By determining an individual generator&...

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Main Authors: Jethro Ssengonzi, Jeremiah X. Johnson, Joseph F. DeCarolis
Format: Article
Language:English
Published: Elsevier 2022-08-01
Series:Renewable and Sustainable Energy Transition
Subjects:
Online Access:http://www.sciencedirect.com/science/article/pii/S2667095X22000174
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author Jethro Ssengonzi
Jeremiah X. Johnson
Joseph F. DeCarolis
author_facet Jethro Ssengonzi
Jeremiah X. Johnson
Joseph F. DeCarolis
author_sort Jethro Ssengonzi
collection DOAJ
description The wide scale deployment of variable renewable energy technologies (VREs) offers a pathway to decarbonize the electric grid. One challenge to reliably operating the grid is ensuring that sufficient generating capacity is available to meet demand at all hours. By determining an individual generator's contribution to resource adequacy based on its expected availability when power is needed, the capacity credit for these resources is estimated. The objective of this study is to quantify the contribution of VRE to resource adequacy as a function of VRE penetration, across several regions, technologies, and resources. A computational model was built using the effective load carrying capability (ELCC) method to calculate capacity credit values for regions spanning the contiguous United States. As the deployment of VRE increases, we show its marginal contribution to meeting peak load decreases, which in turn requires additional generating capacity to maintain reliability. In addition, a rapid approximation method is demonstrated to estimate solar and wind capacity credit, relying on the capacity factors during hours of peak net demand. We find that estimates with the lowest error relative to capacity credits calculated using the ELCC method occur using the average renewable resource capacity factors of the top net 10 demand hours, regardless of resource type. Using context-specific values for capacity credit can improve long-term decision making in generation capacity expansion, cultivating more economical long-term resource planning for deep decarbonization.
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spelling doaj.art-1c5105fe46d140ebaebdbe8aeea4aceb2022-12-22T04:41:58ZengElsevierRenewable and Sustainable Energy Transition2667-095X2022-08-012100033An efficient method to estimate renewable energy capacity credit at increasing regional grid penetration levelsJethro Ssengonzi0Jeremiah X. Johnson1Joseph F. DeCarolis2Corresponding author.; Department of Civil, Construction and Environmental Engineering, North Carolina State University, Raleigh, NC, USADepartment of Civil, Construction and Environmental Engineering, North Carolina State University, Raleigh, NC, USADepartment of Civil, Construction and Environmental Engineering, North Carolina State University, Raleigh, NC, USAThe wide scale deployment of variable renewable energy technologies (VREs) offers a pathway to decarbonize the electric grid. One challenge to reliably operating the grid is ensuring that sufficient generating capacity is available to meet demand at all hours. By determining an individual generator's contribution to resource adequacy based on its expected availability when power is needed, the capacity credit for these resources is estimated. The objective of this study is to quantify the contribution of VRE to resource adequacy as a function of VRE penetration, across several regions, technologies, and resources. A computational model was built using the effective load carrying capability (ELCC) method to calculate capacity credit values for regions spanning the contiguous United States. As the deployment of VRE increases, we show its marginal contribution to meeting peak load decreases, which in turn requires additional generating capacity to maintain reliability. In addition, a rapid approximation method is demonstrated to estimate solar and wind capacity credit, relying on the capacity factors during hours of peak net demand. We find that estimates with the lowest error relative to capacity credits calculated using the ELCC method occur using the average renewable resource capacity factors of the top net 10 demand hours, regardless of resource type. Using context-specific values for capacity credit can improve long-term decision making in generation capacity expansion, cultivating more economical long-term resource planning for deep decarbonization.http://www.sciencedirect.com/science/article/pii/S2667095X22000174Capacity creditEffective load carrying capabilityLoss of load probabilityMonte Carlo simulation
spellingShingle Jethro Ssengonzi
Jeremiah X. Johnson
Joseph F. DeCarolis
An efficient method to estimate renewable energy capacity credit at increasing regional grid penetration levels
Renewable and Sustainable Energy Transition
Capacity credit
Effective load carrying capability
Loss of load probability
Monte Carlo simulation
title An efficient method to estimate renewable energy capacity credit at increasing regional grid penetration levels
title_full An efficient method to estimate renewable energy capacity credit at increasing regional grid penetration levels
title_fullStr An efficient method to estimate renewable energy capacity credit at increasing regional grid penetration levels
title_full_unstemmed An efficient method to estimate renewable energy capacity credit at increasing regional grid penetration levels
title_short An efficient method to estimate renewable energy capacity credit at increasing regional grid penetration levels
title_sort efficient method to estimate renewable energy capacity credit at increasing regional grid penetration levels
topic Capacity credit
Effective load carrying capability
Loss of load probability
Monte Carlo simulation
url http://www.sciencedirect.com/science/article/pii/S2667095X22000174
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