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

Jethro Ssengonzi, Jeremiah X. Johnson, Joseph F. DeCarolis
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引用次数: 3

Abstract

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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一种估算区域电网渗透率增加时可再生能源容量信贷的有效方法
可变可再生能源技术(VREs)的大规模部署为电网脱碳提供了一条途径。电网可靠运行的一个挑战是确保有足够的发电能力满足所有时间的需求。通过确定单个发电机对资源充足性的贡献,基于其在需要电力时的预期可用性,估计这些资源的容量信用。本研究的目的是量化VRE对资源充足性的贡献,作为VRE渗透的函数,跨越几个地区、技术和资源。采用有效承载能力(ELCC)方法建立计算模型,计算美国相邻地区的容量信用值。随着VRE部署的增加,其对满足峰值负荷的边际贡献减少,这反过来又需要额外的发电能力来保持可靠性。此外,本文还演示了一种快速逼近方法来估计太阳能和风能容量信用,该方法依赖于净需求高峰时段的容量因子。我们发现,与使用ELCC方法计算的容量信用相比,使用最高净10个需求小时的平均可再生资源容量因子,无论资源类型如何,估计误差最小。使用情境化的容量信用值可以改善发电容量扩张的长期决策,为深度脱碳培养更经济的长期资源规划。
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