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Application of Robust Optimization Approach to Determine Optimal Retail Electricity Price in Presence of Intermittent and Conventional Distributed Generation Considering Demand Response

机译:鲁棒优化方法在考虑需求响应考虑间歇性和传统分布发电的情况下确定最佳零售电价

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In this paper, a robust optimization approach is proposed to determine selling electricity price for a retailer who procures its obligated energy through two different resources: (1) wholesale market and (2) self-generation facilities. Regarding the self-generation facilities, two different kinds of distributed resources, including gas turbine units (GT) and roof-top photovoltaic sites (RPV) with considering energy storage systems (ESS), are addressed as the deterministic and intermittent power resources. Considering the wholesale market, the retailer can procure some parts of its obligated energy through bilateral contracts and day-ahead market. To overcome the uncertainties associated with power output forecasting of solar sites, a new statistical approach is used considering the dependency of power output to the weather issues, such as irradiation, temperature and wind speed. The problem is formulated by using a robust mixed-integer quadratic program considering a confidence bound for the wholesale electricity price uncertainty. To determine the optimal selling price, a successive algorithm is developed through two iterative optimizations, including inner and outer iterative procedures. Regarding the outer optimization, the confidence bound of wholesale electricity price is portioned into subintervals to evaluate the impacts of each robust subregion of wholesale price on the offered retail selling price. Through the inner optimization, the consumers' response to the offered price is evaluated using a complete demand function model. Finally, a case study containing the bilateral contracts, wholesale market, RPV units, GT units, ESS, flexible demands and the retailer providing demand response is considered to demonstrate the proficiency of the proposed approach.
机译:本文提出了一种强大的优化方法,以确定通过两种不同资源采购义务能源的零售商的电价:(1)批发市场和(2)自发电设施。关于自发电设施,考虑能量存储系统(ESS)的两种不同类型的分布式资源(包括燃气轮机单元(GT)和屋顶光伏站(RPV)被称为确定性和间歇电力资源。考虑到批发市场,零售商可以通过双边合同和日前市场采购其有义务的某些部分。为了克服与太阳能站点的电力输出预测相关的不确定性,将采用新的统计方法,考虑功率输出对天气问题的依赖性,例如辐照,温度和风速。考虑到批发电价不确定性的令人信心,通过使用强大的混合整数二次程序制定了问题。为了确定最佳销售价格,通过两个迭代优化开发了连续算法,包括内部和外部迭代程序。关于外部优化,批发电价的置信度被分配到子内部,以评估每个强大的批发价格对提供的零售价格的影响的影响。通过内部优化,使用完整的需求函数模型评估消费者对提供的价格的响应。最后,含有双边合同,批发市场,RPV单位,GT单位,ESS,灵活需求和零售商提供需求响应的案例研究被认为展示了拟议方法的熟练程度。

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