能源与监管市场合并PBDR下停车场运营商的随机调度

Suman Sharma, Sunil Jangid, P. Jain
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引用次数: 0

摘要

停车场运营商(PLO)可以向系统运营商(SO)提供V2G的上下调节服务,以保证电网的稳定。然而,PLO面临着能源价格、监管价格、出行行为动态等市场价格的多重不确定性,严重影响了其V2G运营行为。提出了PLO整合基于价格的需求响应计划(PBDRP)的工作模式,以利用电动汽车车主的灵活性,应对不确定性,改善其市场运作,实现其预期利润最大化。利用蒙特卡罗模拟和基于Kantorovich距离的反向约简算法对这些不确定性进行建模,提出了随机规划问题。PLO从电动汽车车主的角度设计分时电价,使充电成本最小化。条件风险价值(CVaR)是一种用于风险管理的一致性风险度量。实际案例研究的结果表明,基于建议方法的决策在预期利润和风险度量方面提供了更好的权衡。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Stochastic Scheduling of Parking Lot Operator in Energy and Regulation Markets amalgamating PBDR
Parking lot operator (PLO) can provide V2G regulation up/down services to System Operator (SO) for grid stability. Nevertheless, PLO faces multiple uncertainties in market prices viz. energy and regulation prices and mobility behavior dynamics, affecting severely its V2G operational behavior. Proposed work models integration of Price-based Demand Response Program (PBDRP) by PLO, to utilize the flexibility of EV owners, deal with the uncertainties, improve its market operations and maximize its expected profit. Proposed stochastic programming problem is formulated by modelling these uncertainties using Monte Carlo Simulation and Kantorovich Distance-based backward reduction algorithm. TOU price design by PLO from EV owners' perspective minimizes charging cost. Conditional-Value-at-Risk (CVaR) is employed as a coherent risk measure for risk-management. The results from realistic case studies illustrate that decisions based on the proposed approach provide better trade-off in terms of expected profit and risk measure.
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