A Pivotal Supplier Identification Approach Considering Unit Ramp Rate in Day-ahead Electricity Market

Siyu Zhu, Zhihang Jiang, Hailang He, Zhen-tao Hu, Wengan Chen, Chenyang Li
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Abstract

With wind power, solar energy and other large-scale intermittent renewable energy integrating to the grid, the demand for the ramp rate will be significantly increased in day-ahead electricity market. The power producers may use their ramp rate to become the pivotal supplier and exercise their market power. Therefore, it is necessary to quantitatively analyze the influence that the ramp rate of units may have on their possibility to become the pivotal suppliers. In this paper, a multi-period ex-ante pivotal supplier identification model with considering the unit ramp rate constraints is proposed to quantify the ex-ante market power. The objective function is to minimize the sum of the output slack variables for each period. The constraints include unit output constraints, transmission constraints and unit ramp rate constraints. Considering that the slack variables of different periods may affect with each other, a progressive optimization strategy is proposed to accurately locate the periods that pivotal suppliers emerge. Meanwhile, the multi-scenario analysis is used to deal with the uncertainty of the net load forecasting. The proposed model is a linear programming problem which is implemented on the GAMS platform and solved by the CPLEX solver efficiently. Finally, the effectiveness of the method proposed in this paper is verified through the case study which is based on the modified IEEE14-node system.
日前电力市场中考虑机组斜坡率的关键供应商识别方法
随着风电、太阳能等大规模间歇性可再生能源并网发电,日前电力市场对坡道费率的需求将显著增加。电力生产商可能会利用他们的爬坡率成为关键的供应商,并行使他们的市场力量。因此,有必要定量分析单位的斜坡率对其成为关键供应商的可能性的影响。本文提出了一种考虑单位爬坡率约束的多周期事前关键供应商识别模型,用于量化事前市场力。目标函数是使每个周期的输出松弛变量的总和最小。约束条件包括单位输出约束、传输约束和单位匝道速率约束。考虑到不同时期的松弛变量可能相互影响,提出了一种渐进式优化策略,以准确定位关键供应商出现的时期。同时,采用多情景分析方法处理净负荷预测的不确定性。该模型是一个在GAMS平台上实现的线性规划问题,并由CPLEX求解器进行高效求解。最后,通过基于改进的ieee14节点系统的实例研究,验证了本文方法的有效性。
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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