太阳能光伏与燃料电池联合发电系统优化调度方法

Xiao Xue, Yangbin Zheng, Yajie Duan
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引用次数: 0

摘要

传统太阳能光伏发电系统中使用的电池性能较差,太阳能具有一定的波动性,这使得太阳能光伏发电体系的性能显著下降。为了提高太阳能光伏发电系统的性能,开发了一种太阳能-光伏-燃料电池联合发电系统。然而,传统的联合发电系统优化调度过程中存在投资成本和总成本高、优化调度方案生成时间短等问题。本文以解决传统系统优化调度问题为研究目标,设计了一种新的太阳能光伏与燃料电池联合发电系统优化调度方法。分析了太阳能-光伏-燃料电池联合发电系统的组成和拓扑结构。该系统由光伏阵列、燃料电池、电解槽、短期储能单元和能量控制单元组成。它主要可以将太阳光辐射转化为电能,并通过多个环节转化为人们使用的直流或交流,以确保我国电力供应的稳定和安全。根据光伏发电模型、燃料电池发电模型、电解制氢模型、电池模型、功率转换模型和联合发电系统模型,建立调度模型。并采用多目标布谷鸟算法对模型进行求解,得到了太阳能-光伏-燃料电池联合发电系统的优化调度结果。实验结果表明,该方法的总投资成本与实验比较法相比分别降低了123678.4元和175858.7元,总成本与实验对比法相比分别减少了301195.5元和414991.8元。结果表明,与实验比较方法相比,该方法的总投资成本和总成本更低,最优调度方案的生成时间在0.19s到0.25s之间,实际应用效果良好。它充分解决了传统方法中存在的问题,具有一定的应用意义。
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Optimization Scheduling Method of Solar Photovoltaic and Fuel Cell Combined Power Generation System
The performance of the battery used in the traditional solar photovoltaic power generation system is poor, and the solar energy has a certain volatility, which makes the performance of the solar photovoltaic power generation system decline significantly. In order to improve the performance of the solar photovoltaic power generation system, a solar photovoltaic fuel cell combined power generation system has been developed. However, there are some problems in the process of traditional combined generation system optimal scheduling, such as high investment cost and total cost, and short generation time of optimal scheduling scheme. This paper takes solving the problems of traditional system optimal scheduling as the research goal, a new optimization scheduling method of solar photovoltaic and fuel cell combined power generation system was designed. The composition and topological structure of the solar photovoltaic fuel cell combined power generation system are analyzed. The system is composed of photovoltaic array, fuel cell, electrolytic cell, short-term energy storage unit and energy control unit. It can mainly convert sunlight radiation into electric energy, and convert it into DC or AC used by people through multiple links, so as to ensure the stability and security of power supply in our country. A scheduling model is established according to the photovoltaic cell power generation model, the fuel cell power generation model, the electrolytic hydrogen production model, the battery model, the power conversion model and the combined power generation system model. And the multi-objective cuckoo algorithm is used to solve the model, the optimization scheduling results of solar photovoltaic fuel cell combined power generation system are obtained. The experimental results show that the total investment cost of this method is reduced by 123678.4 yuan and 175858.7 yuan compared with the experimental comparison method, and the total cost is reduced by 301195.5 yuan and 414991.8 yuan compared with the experimental comparison method. It shows that compared with the experimental comparison method, the total investment cost and total cost of this method are lower, and the generation time of the optimal scheduling scheme is between 0.19s and 0.25s, and the practical application effect is good. It fully solves the problems existing in the traditional methods and has certain application significance.
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来源期刊
Strategic Planning for Energy and the Environment
Strategic Planning for Energy and the Environment Environmental Science-Environmental Science (all)
CiteScore
1.50
自引率
0.00%
发文量
25
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