Power Wheeling Hybrid System of PV-Pumped Storage Using MW-KM Method

Frida Hasana, S. P. Hadi, M. I. B. Setyonegoro, Tumiran
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Abstract

It is widely recognized that using conventional power plants requires an expensive and massive fossil fuel supply. This can be minimized by doing a hybrid conventional power plants and renewable energy sources (RES), along with pumped storage. In this paper, the optimal scheduling of that hybrid system is simulated using MATPOWER Optimal Scheduling Tool (MOST) to obtained the most optimal and economic condition. Utilize the scheduling outcomes and the assumption that power wheeling is implemented, this paper calculates the network lease. This paper provides the leasing calculation using MW-km method with the reverse, absolute, and dominant approach by considering the direction of power flow. According to the simulation results, a scheduling method that includes pumped storage and RES can reduce conventional plant operations. Moreover, this paper shows that the reverse approach produced the lowest calculation results compared to the other approaches.
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基于MW-KM方法的pv -抽水蓄能动力轮式混合系统
人们普遍认为,使用传统发电厂需要大量昂贵的化石燃料供应。这可以通过将传统发电厂和可再生能源(RES)以及抽水蓄能相结合来最小化。本文利用MATPOWER最优调度工具(MOST)对该混合系统的最优调度进行了仿真,得到了最优和最经济的状态。利用调度结果,在实现动力轮转的假设下,计算网络租期。本文在考虑潮流方向的情况下,采用反向、绝对、优势的兆瓦公里法进行租赁计算。仿真结果表明,一种包含抽水蓄能和可再生能源的调度方法可以减少电厂的常规操作。此外,本文还表明,与其他方法相比,反向方法的计算结果最低。
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