Low Carbon Planning Optimization Model of Active Distribution Network Considering Flexible Load

Huiting Qiao, Liangzheng Wu, Shang Wen, Mengke Xue, Yan Huang
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Abstract

In the context of low carbon distribution network, this paper proposes a mixed integer second-order cone programming model for active distribution network considering carbon emission and flexible load. The objective is to provide the investment strategy with the minimum total cost under the premise of satisfying network operation constraints and CO2 emission ceiling. Considering the uncertainty of new energy, load and energy price, a scenario clustering method based on K-means was proposed. The decision variables of the model include replacing overload lines, investing in new energy and energy storage devices, and investing in voltage control devices such as voltage regulators and capacitor banks. The polynomial voltage dependent flexible load, network reconstruction and carbon emission limit constraints are considered. Aiming at the nonconvex nonlinear characteristics of the programming model, the network reconstruction was modeled as a mixed integer linear programming form by using the virtual demand method, and an improved second-order cone relaxation method based on Taylor expansion was proposed to solve the problem of the traditional second-order cone relaxation caused by the flexible load model. Finally, the model is solved under the framework of two-stage stochastic programming. The model was tested by a 69-node system, and the results show that the proposed model not only has a lower total planning cost, but also contributes to reducing carbon emissions.
考虑柔性负荷的有源配电网低碳规划优化模型
在低碳配电网背景下,提出了考虑碳排放和柔性负荷的有源配电网混合整数二阶锥规划模型。目标是在满足网络运行约束和CO2排放上限的前提下,提供总成本最小的投资策略。考虑到新能源、负荷和电价的不确定性,提出了一种基于k均值的情景聚类方法。模型的决策变量包括更换过载线路、投资新能源和储能装置、投资稳压器和电容器组等电压控制装置。考虑了多项式电压相关的柔性负载、网络重构和碳排放限制约束。针对规划模型的非凸非线性特点,采用虚拟需求法将网络重构建模为混合整数线性规划形式,提出了一种改进的基于Taylor展开的二阶锥松弛方法,解决了传统柔性负荷模型引起的二阶锥松弛问题。最后,在两阶段随机规划框架下对模型进行求解。通过69节点系统对该模型进行了验证,结果表明,该模型不仅具有较低的总规划成本,而且有助于减少碳排放。
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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