并网屋顶光伏阵列中期能源输出预测——斯里兰卡太阳能电池板安装商案例研究

Bhagya N. Wickramasinghe, P. Asanka
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引用次数: 0

摘要

在绿色能源的道路上,世界正在转向对可再生能源的更高利用,以保护环境友好的气氛。通过采用太阳能光伏发电产生可持续能源在世界范围内是普遍的。本研究的目标是确定影响光伏系统发电量的显著因素,利用一系列机器学习算法建立预测模型,并根据准确性和精度指标确定最佳机器学习算法来预测发电量。这些目标有助于实现本研究的目的,即建立一个预测模型来确定并网屋顶太阳能系统产生的中期能量。该研究揭示了光伏系统动力学和特定位置数据如何有助于预测系统输出功率的新知识。此外,研究结果对行业专家以及当前和未来的太阳能电池板用户至关重要。利用安装人员的所有太阳能电池板位置的数据,并从源信息系统中提取。应用了必要的转换和验证,并执行了详细的分析。对数据进行特征工程、特征缩放、离群点处理、多重共线性和特征选择。建立了基于14种监督式机器学习算法的预期预测模型。在主成分分析后的所有特征因子分析中,KNN回归算法优于所有其他构建的模型。此外,主成分分析对太阳能电池板能量输出预测有很强的正相关关系。作为未来工作的一部分,必须建立利用更广泛的并网屋顶太阳能发电厂样本的模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Forecasting of Medium-Term Energy Output of On-Grid Rooftop Photovoltaic Arrays -Case Study for a Sri Lankan Solar Panel Installer
The world is shifting towards the higher utilization of renewable energy sources in the road to greener energy which conserves an environmentally friendly atmosphere. The generation of sustainable energy via adopting solar photovoltaic is common worldwide. The objectives of the research study are to identify the salient factors contributing to the energy generation of photovoltaic systems, to utilize a gamut of machine learning algorithms to build the predictive model and to identify the best machine learning algorithm to predict the energy generation based on accuracy and precision metrices. These objectives aid to achieve the aim of this study, which is to build a predictive model to determine the medium-term energy generated from on-grid rooftop solar systems. The study has unveiled a new piece of knowledge on how the photovoltaic system dynamics and location specific data has contributed to the prediction of the power output of the system. Further the findings are of paramount importance to the industry experts as well as the current and prospective solar panel users. The data of all solar panel sites of the installer was utilized and it was extracted from the source information systems. The necessary transformations and validations were applied and a detailed analysis was performed. The feature engineering, feature scaling, outlier-handling, multi-collinearity and feature selection was performed on data. The intended forecasting model based on fourteen supervised machine learning algorithms was built. The KNN Regression algorithm in the factor analysis of all features after principal component analysis has outperformed all other built models. Moreover, a strong positive co-relation was observed in the principal component analysis towards the solar panel energy output prediction. As part of future work, it’s imperative to build models utilizing a wider sample of on-grid roof top solar plants.
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