Day-Ahead Scheduling Model of the Distributed Small Hydro-Wind-Energy Storage Power System Based on Two-Stage Stochastic Robust Optimization

IF 3.3 3区 环境科学与生态学 Q2 ENVIRONMENTAL SCIENCES Sustainability Pub Date : 2019-05-01 DOI:10.3390/SU11102829
Jun Dong, Peiwen Yang, Shilin Nie
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引用次数: 8

Abstract

With renewable energy sources (RESs) highly penetrating into the power system, new problems emerge for the independent system operator (ISO) to maintain and keep the power system safe and reliable in the day-ahead dispatching process under the fluctuation caused by renewable energy. In this paper, considering the small hydropower with no reservoir, different from the other hydro optimization research and wind power uncertain circumstances, a day-ahead scheduling model is proposed for a distributed power grid system which contains several distributed generators, such as small hydropower and wind power, and energy storage systems. To solve this model, a two-stage stochastic robust optimization approach is presented to smooth out hydro power and wind power output fluctuation with the aim of minimizing the total expected system operation cost under multiple cluster water inflow scenarios, and the worst case of wind power output uncertainty. More specifically, before dispatching and clearing, it is necessary to cluster the historical inflow scenarios of small hydropower into several typical scenarios via the Fuzzy C-means (FCM) clustering method, and then the clustering comprehensive quality (CCQ) method is also presented to evaluate whether these scenarios are representative, which has previously been ignored by cluster research. It can be found through numerical examples that FCM-CCQ can explain the classification more reasonably than the common clustering method. Then we optimize the two stage scheduling, which contain the pre-clearing stage and the rescheduling stage under each typical inflow scenario after clustering, and then calculate the final operating cost under the worst wind power output scenario. To conduct the proposed model, the day-ahead scheduling procedure on the Institute of Electrical and Electronics Engineers (IEEE) 30-bus test system is simulated with real hydropower and wind power data. Compared with traditional deterministic optimization, the results of two-stage stochastic robust optimization structured in this paper, increases the total cost of the system, but enhances the conservative scheduling strategy, improves the stability and reliability of the power system, and reduces the risk of decision-making simultaneously.
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基于两阶段随机鲁棒优化的分布式小型水电-风能储能系统日前调度模型
随着可再生能源(RESs)对电力系统的高度渗透,在可再生能源带来的波动下,独立系统运营商(ISO)在日前调度过程中如何维护和保证电力系统的安全可靠出现了新的问题。本文针对无水库的小水电,不同于其他水电优化研究和风电不确定情况,提出了包含多台分布式发电机组(如小水电、风电)和储能系统的分布式电网系统日前调度模型。针对该模型,提出了一种两阶段随机鲁棒优化方法,以最小化多集群入水情景下的系统总预期运行成本和风电输出不确定性最坏情况下的系统运行成本为目标,平滑水电和风电输出波动。具体而言,在调度清理之前,需要通过模糊c均值(FCM)聚类方法将历史小水电入库情景聚类为几个典型情景,然后提出聚类综合质量(CCQ)方法来评价这些情景是否具有代表性,这是以往聚类研究所忽略的。通过数值算例可以发现,FCM-CCQ比普通聚类方法更能合理地解释分类。然后对聚类后各典型入流情景下的预清仓和重调度两阶段调度进行优化,计算出最坏风电输出情景下的最终运行成本。为了实现所提出的模型,利用实际水电和风电数据,对IEEE 30总线测试系统上的日前调度过程进行了仿真。与传统的确定性优化相比,本文构建的两阶段随机鲁棒优化结果在增加系统总成本的同时,增强了保守调度策略,提高了电力系统的稳定性和可靠性,同时降低了决策风险。
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来源期刊
Sustainability
Sustainability ENVIRONMENTAL SCIENCES-ENVIRONMENTAL SCIENCES
CiteScore
6.80
自引率
20.50%
发文量
14120
审稿时长
17.72 days
期刊介绍: Sustainability (ISSN 2071-1050) is an international and cross-disciplinary scholarly, open access journal of environmental, cultural, economic and social sustainability of human beings, which provides an advanced forum for studies related to sustainability and sustainable development. It publishes reviews, regular research papers, communications and short notes, and there is no restriction on the length of the papers. Our aim is to encourage scientists to publish their experimental and theoretical research relating to natural sciences, social sciences and humanities in as much detail as possible in order to promote scientific predictions and impact assessments of global change and development. Full experimental and methodical details must be provided so that the results can be reproduced.
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