Adaptive Expansion Planning Framework for MISO Transmission Planning Process

Cody J. Newlun, J. McCalley, Rajaz Amitava, A. J. Ardakani, Abhinav Venkatraman, Armando Figueroa Acevedo
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引用次数: 1

Abstract

Given the evolving energy landscape and uncertainties present in the expansion planning problem, modeling of uncertainties should be incorporated within the planning practices of independent system operators. In fact, the Mid-continent Independent System Operator (MISO) has characterized uncertainties (e.g. load growth, carbon emission reduction, renewable portfolio standards, investment costs) to construct future scenarios that are studied in the long-term planning process. Therefore, MISO takes a scenario-based approach to identify optimal resource investment portfolios. This provides the opportunity to implement an adaptive expansion planning (AEP) framework to MISO's scenario-based planning process. The AEP model is a stochastic-based expansion planning model that seeks to minimize the net present value of the investment and operation costs within the generation and transmission systems. The AEP model identifies core and adaptive investments designed to provide a flexible investment portfolio over the planning horizon for all planning scenarios under study. This paper presents optimal investment portfolios from the AEP model and discusses implications to how the AEP model can benefit the MISO planning process.
MISO传输规划过程的自适应扩展规划框架
考虑到不断变化的能源格局和扩展规划问题中存在的不确定性,不确定性建模应纳入独立系统运营商的规划实践中。事实上,中大陆独立系统运营商(MISO)已经将不确定性(例如负荷增长、碳排放减少、可再生能源投资组合标准、投资成本)特征化,以构建在长期规划过程中研究的未来情景。因此,MISO采用基于场景的方法来确定最佳资源投资组合。这为MISO基于场景的规划过程实现自适应扩展规划(AEP)框架提供了机会。AEP模型是一种基于随机的扩展规划模型,旨在使发电和输电系统内的投资和运营成本的净现值最小化。AEP模型确定了核心投资和适应性投资,旨在为所研究的所有规划方案提供规划范围内的灵活投资组合。本文介绍了AEP模型的最优投资组合,并讨论了AEP模型如何使MISO规划过程受益的含义。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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