基于GWO算法的微电网最优成本及组件配置分析

Md. Sajjad-Ul Islam, Md. Arafat Bin Zafar, Arafat Ibne Ikram, Tanzib Chowdhury, Mohammad Saimur Rahaman Sachha, S. Hossain
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引用次数: 0

摘要

采用经济分析方法对微电网的理想规模及其效率进行了评估。为了经济地维持和发展微电网,优化是必不可少的。为了降低整个生产成本,可以满足各种平等和不平等的要求,包括对资本、运营、污染和可再生能源等方面的补贴。灰狼优化(GWO)是一种强大且适应性强的成本削减策略。在特定情况下,GWO与其他基于人工智能的优化方法协同使用。在这里,我们提供了一个模型来评估独立于电网运行的能源系统的可行性、费用以及社会和环境影响。微电网的协调。微数学网格的作用可能是根据可用资源逐小时回收输出的电力,并将多余的能量储存在电池中。在这项工作中,我们模拟和优化了孟加拉国Chattogram的halishahar thana的PV-Wind-WtE-battery混合系统。设计方面的考虑包括可再生能源,包括太阳能电池板、风力涡轮机、电池和柴油发动机。据我们估计,泰国每年使用约107150兆瓦时的电力。我们使用灰狼优化方法来寻找最优的设计参数,以最小化总年成本。这个微电网可以轻松地提供1,40,423.8兆瓦时的电力,足以为哈利沙哈尔供电一整年。通过这种设置,实现了0.221美元千瓦时的低水平能源成本(LCOE)。它比传统能源减少了更多的二氧化碳排放。
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Optimal Cost and Component Configuration Analysis of Micro-grid Using GWO Algorithm
Economic analysis is used to assess the ideal size of a micro-grid and its efficiency. In order to maintain and grow a micro-grid economically, optimization is essential. A variety of equality and inequality requirements may be met to reduce the entire production cost, which includes subsidies for things like capital, operations, pollution, and renewable energy. Grey wolf optimization (GWO) is a powerful and adaptable cost-cutting strategy. GWO is used in tandem with other AI-based optimization methods in particular situations. Here, we provide a model for evaluating the viability, expense, and societal and environmental effects of energy systems that operate independently from the grid. Harmonization of micro-grids. It's possible that the micro-mathematical grid's role is to recycle power output hour by hour in accordance with available resources and to store any excess energy in a battery. In this work, we simulate and optimize a PV-Wind-WtE-battery hybrid system in the halishahar thana of Chattogram, Bangladesh. Design concerns include renewable energy sources including solar panels, wind turbines, batteries, and diesel engines. By our estimates, the thana uses around 107,150 MWh of power annually. We use a Grey wolf optimization approach to find the optimal design parameters to minimize the overall yearly cost. This micro-grid can easily provide 1,40,423.8 MWh, more than enough to power Halishahar for a whole year. A low levelized cost of energy (LCOE) of 0.221 $kWh is achieved with this setup. It reduces carbon dioxide emissions by a larger margin than traditional power.
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