Assessing Robustness of Risk-Constrained Operating Strategies for Power Systems with Renewables by Contamination-Based Technique

Yujia Li, S. Feng, Yunhe Hou
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Abstract

Risk-constrained stochastic programming (SP) is an effective tool to cope with the increasing uncertainty renewable energy resources (RESs) bring in look-ahead dispatch (LAD). However, since the solutions of SP are dependent on characteristics of uncertain RESs, inaccurate predication of RESs significantly influences the LAD strategies. This paper proposes a contamination-based technique (CBT) to evaluate the robustness of a dispatch strategy against inaccurate RESs predication. Without loss of generality, the proposed CBT is used in a two-stage CVaR-constrained stochastic program, where the first stage optimizes a strategy based on the original inaccurate predication and the second stage corrects this strategy by contaminating the first-stage inaccurate predication with updated information. The robustness of a strategy against the inaccurate predication is quantified by this method and, furthermore, the sensitivities of some critical parameters, such as penetration level of RESs and system flexibility, are analyzed. Case study validates the feasibility of proposed method.
基于污染技术评估可再生能源电力系统风险约束运行策略的鲁棒性
风险约束随机规划(SP)是应对可再生能源引入的前瞻性调度(LAD)中不确定性日益增加的一种有效工具。然而,由于SP的解依赖于不确定RESs的特征,因此对RESs的不准确预测会显著影响LAD策略。本文提出了一种基于污染的技术(CBT)来评估调度策略对不准确的RESs预测的鲁棒性。在不丧失一般性的情况下,所提出的CBT用于两阶段cvar约束随机规划,其中第一阶段基于原始不准确的预测优化策略,第二阶段通过使用更新信息污染第一阶段不准确的预测来纠正该策略。通过该方法量化了策略对不准确预测的鲁棒性,并分析了关键参数(如RESs的渗透水平和系统灵活性)的敏感性。实例研究验证了所提方法的可行性。
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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