FRAMEWORK OF HYBRID RENEWABLE ENERGYWITH CONVENTIONAL POWER GENERATION SCHEDULING USING NOVEL METAHEURISTIC OPTIMIZATION ALGORITHM

IF 0.3 Q4 ENGINEERING, ELECTRICAL & ELECTRONIC
Kingsuk Majumdar, P. Roy, Subrata Banerjee
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引用次数: 0

Abstract

In the present era, only thermal generation cannot be a solution to modern demand. The hybrid renewable energy with conventional power generation is the answer to save mother nature and meet the current electricity demand. In this article, traditional thermal power plants are interconnected with natural resources like wind, hydro units with all-day planning and operation strategies. And the generated power is needed to transfer from one section to another section in the existing grid system, which is the subject of available transfer capability (ATC), the modern power system’s critical factor. In this article, the minimization of power generation cost of the thermal power units is achieved by incorporating renewable sources, says hydro, and wind plants for 24 h scheduled, and ATC calculation is the prime objective. In recent literature, the mayfly algorithm (MA) optimization approach, which combines the advantages of evolutionary algorithms and swarms intelligence to attend better results, is successfully implemented. In this article, optimum power flow (OPF)-based ATC is enforced under various conditions with hydro–thermal–wind scheduling concept on the IEEE 39-test bus system to check the proposed chaotic MA’s performance. The chaotic MA (CHMA) is a hybridized format of the MA and chaotic map method. It is noted from the simulation study that the suggested novel CHMA approach has a dominant nature over other well-established optimization algorithms. Also in the case of multi-objective function, the cost function value is improved by more than 10% and ATC value is enhanced by near about 60% and more.
基于新型元启发式优化算法的混合可再生能源与传统发电调度框架
在当前时代,仅靠火力发电不能满足现代需求。将可再生能源与传统发电相结合,是拯救自然、满足当前电力需求的良策。在本文中,传统火电厂与风能、水力发电机组等自然资源互联,采用全天规划和运行策略。而发电需要在现有电网系统中从一段传输到另一段,这是可用输电能力(ATC)的主题,是现代电力系统的关键因素。在本文中,火电机组发电成本的最小化是通过纳入可再生能源,如水力和风力发电厂24小时的计划,ATC计算是主要目标。在最近的文献中,mayfly算法(MA)优化方法成功地实现了进化算法和群体智能的优点,以获得更好的结果。在ieee39测试总线系统上,利用水力热风调度概念在各种条件下实施基于最优潮流(OPF)的ATC,以检验所提出的混沌混合调度算法的性能。混沌遗传算法(CHMA)是遗传算法和混沌映射方法的混合形式。从仿真研究中可以看出,所提出的新型CHMA方法比其他成熟的优化算法具有优势。在多目标函数情况下,成本函数值提高了10%以上,ATC值提高了近60%以上。
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来源期刊
International Journal of Power and Energy Systems
International Journal of Power and Energy Systems ENGINEERING, ELECTRICAL & ELECTRONIC-
CiteScore
1.00
自引率
0.00%
发文量
5
期刊介绍: First published in 1972, this journal serves a worldwide readership of power and energy professionals. As one of the premier referred publications in the field, this journal strives to be the first to explore emerging energy issues, featuring only papers of the highest scientific merit. The subject areas of this journal include power transmission, distribution and generation, electric power quality, education, energy development, competition and regulation, power electronics, communication, electric machinery, power engineering systems, protection, reliability and security, energy management systems and supervisory control, economics, dispatching and scheduling, energy systems modelling and simulation, alternative energy sources, policy and planning.
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