基于自然启发进化算法的浮式太阳能光伏组件低碳清洁发电综合性能评估

Anik Goswami, Pradip Kumar Sadhu
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引用次数: 6

摘要

FSPV系统的开发和部署仍处于初级阶段,因此FSPV系统的长期性能、控制和可行性研究尚未得到很好的解决。精确、稳健的FSPV面板参数估计对于确定FSPV系统的实际性能、碳减排和长期可行性研究具有重要作用。本文采用混合随机萤火虫算法(HSFA)进行参数估计和优化。采用混合算法求解了单二极管模型、双二极管模型和FSPV模块的参数。用FSPV模块在不同辐照度条件下进行了实验。通过将模拟结果与实验结果进行比较,计算相对误差和均方根误差(RMSE),对模型的精度进行了评价。采用该方法提取的参数RMSE值非常低,为9.83002E-04。对实验结果和估计结果的评估表明,晴天测电量的相对误差为0.57%,阴天测电量的相对误差为0.89%。在部分遮阳条件下,相对误差为0.79%,均方根误差为6.5%。计算结果与实验值吻合较好,表明该模型在确定FSPV参数方面具有较好的性能。正确估计FSPV参数将有助于研究人员、科学家、工程师和与太阳能光伏系统相关的所有参与者对FSPV系统的部署做出合理的判断,并通过适应低碳发电方法,帮助社会发展可持续的生态系统,以实现工业4.0。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Nature inspired evolutionary algorithm integrated performance assessment of floating solar photovoltaic module for low-carbon clean energy generation

Development and deployment of FSPV systems are still in the nascent stages hence long-term performance, control and feasibility study of FSPV systems are not well addressed. Precise and robust estimation of FSPV panel parameters will play an important role in determining the actual performance, carbon savings and long-term feasibility studies of FSPV systems. Here, hybrid stochastic firefly algorithm (HSFA) is used for parameter estimation and optimization. The hybrid algorithm is used to find out the parameters of single diode model, double diode model and FSPV module. An experiment is also performed using FSPV modules under varying irradiance conditions. The accuracy of model is evaluated by comparing the simulated results with the experimental results and computing the relative error and root mean square error (RMSE). The parameters extracted using the proposed method has a very low RMSE value of 9.83002E-04. Assessment of the experimental and estimated results show that the relative error for measured electricity on a sunny day is 0.57% while for an overcast day it is 0.89%. For partial shading condition, the relative error and RMSE was 0.79% and 6.5%, respectively. The results which are in well agreement with the experimental values demonstrate the superior performance of the model in determining the FSPV parameters. Proper estimation of the FSPV parameters will help researchers, scientists, engineers and all actors associated with solar PV systems in making sound judgements towards the deployment of FSPV systems and help the society in developing a sustainable ecosystem towards implementation of industry 4.0 by adapting to low-carbon power generation methods.

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