Demand response for contingency management via real-time pricing in Smart Grids

Mohammad R. Vedady Moghadam, Rui Zhang, Richard T. B. Ma
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引用次数: 14

Abstract

In this paper, we investigate real-time pricing for a power grid operator that sells electric power to a set of self-interested aggregators within a particular day, named actual day. We propose a real-time pricing scheme for the grid operator to manage demand response (DR) of aggregators upon a contingency of supply deficiency. Under our scheme, the grid operator offers real-time discounted electricity prices to aggregators in order to incentivize them to reschedule their day-ahead demands over time. We formulate a bilevel optimization problem, named bilevel discount pricing problem (BDPP), to design discounted electricity prices for the grid operator so as to minimize its residual cost, defined as the sum of operational costs from the contingency up to the end of the actual day. We further derive the equivalent one-level optimization problem of BDPP, named one-level discount pricing problem (ODPP). Since both BDPP and ODPP are non-convex optimization problems, it is difficult to solve them globally optimally. Alternatively, we develop a sequential convex programming (SCP) based algorithm to solve ODPP locally optimally. We also propose a randomized search (RS) based algorithm to heuristically solve BDPP. Last, we compare performances of algorithms using a numerical example based on the Singapore power grid data, from which we observe that the residual cost of the grid operator reduces remarkably while aggregators pay less bills after rescheduling. Moreover, algorithms converge in an efficient time, e.g., a couple of minutes. Hence, our pricing scheme can manage DR of aggregators in real time to provide a cost-efficient secondary reserve service.
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基于智能电网实时定价的应急管理需求响应
在本文中,我们研究了电网运营商在特定的一天(即实际日)内向一组自利益聚合器出售电力的实时定价问题。本文提出了一种实时定价方案,用于电网运营商在电力供应不足的情况下管理聚合器的需求响应。在我们的计划下,电网运营商向聚合商提供实时折扣电价,以激励他们随着时间的推移重新安排他们的前一天需求。我们提出了一个双层优化问题,称为双层折扣定价问题(BDPP),为电网运营商设计折扣电价,使其剩余成本最小,剩余成本定义为从突发事件到实际结束的运营成本之和。进一步推导出等价的BDPP一级优化问题,称为一级折扣定价问题(ODPP)。由于BDPP和ODPP都是非凸优化问题,很难得到全局最优解。或者,我们开发了一个基于序列凸规划(SCP)的算法来局部最优地解决ODPP。我们还提出了一种基于随机搜索(RS)的算法来启发式求解BDPP。最后,以新加坡电网数据为例,比较了两种算法的性能,结果表明,重新调度后,电网运营商的剩余成本显著降低,而聚合器支付的账单也减少了。此外,算法在一个有效的时间内收敛,例如,几分钟。因此,我们的定价方案可以实时管理聚合器的DR,以提供具有成本效益的二级储备服务。
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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