论文标题
使用动态市场机制对电路进行交易控制
Transactive Control of Electric Railways Using Dynamic Market Mechanisms
论文作者
论文摘要
电力铁路的电力需求是电力系统需求响应应用中相对尚未开发的灵活性来源。在本文中,我们提出了一个基于交易控制的优化框架,用于协调电网网络和火车网络。这是通过使用两步优化来协调可调度分布式能源资源和需求火车的需求概况来实现的。提出了一种基于铁路的动态市场机制(RDMM),用于使用迭代的谈判过程沿电动铁路沿电力网络中分布式能源(DER),并产生电价的配置文件,并构成第一步。火车调度试图最大程度地减少沿铁路驶入的火车的运营成本,同时受到其加速度,路线时间表和火车动态的限制,并产生火车的需求配置文件并构成第二步。 RDMM试图在确保电力平衡的同时优化基础DER的运营成本。它们共同形成了一个整体框架,该框架产生了铁路和电网基础设施之间所需的交易。使用对美国东北走廊(NEC)南行Amtrak服务的模拟研究来验证这种总体优化方法,与基于最低工作的标准TRIP优化相比,该方法显示了25%的能源成本,与使用现场数据集计算出的火车成本相比,能源成本降低了75%。
Electricity demand of electric railways is a relatively unexplored source of flexibility in demand response applications in power systems. In this paper, we propose a transactive control based optimization framework for coordinating the power grid network and the train network. This is accomplished by coordinating dispatchable distributed energy resources and demand profiles of trains using a two-step optimization. A railway based dynamic market mechanism (rDMM) is proposed for the dispatch of distributed energy resources (DER) in the power network along the electric railway using an iterative negotiation process, and generates profiles of electricity prices, and constitutes the first step. The train dispatch attempts minimize the operational costs of trains that ply along the railway, while subject to constraints on their acceleration profiles, route schedules, and the train dynamics, and generates demand profiles of trains and constitutes the second step. The rDMM seeks to optimize the operational costs of the underlying DERs while ensuring power balance. Together, they form an overall framework that yields the desired transactions between the railway and power grid infrastructures. This overall optimization approach is validated using simulation studies of the Southbound Amtrak service along the Northeast Corridor (NEC) in the United States, which shows a 25% reduction in energy costs when compared to standard trip optimization based on minimum work, and a 75% reduction in energy costs when compared to the train cost calculated using a field dataset.