利用机器学习模型在拉伯克预测太阳能发电

Q1 Multidisciplinary Emerging Science Journal Pub Date : 2023-07-12 DOI:10.28991/esj-2023-07-04-02
Afshin Balal, Yaser Pakzad Jafarabadi, A. Demir, Morris Igene, M. Giesselmann, Stephen B. Bayne
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引用次数: 3

摘要

太阳能是一种可广泛获取、清洁、可持续的能源。鉴于目前的全球能源危机,太阳能收集以在智能电网上发电是必不可少的。然而,太阳辐射的高度可变性为准确预测太阳能光伏发电提出了独特的挑战。诸如云量、大气条件和季节变化等因素显著影响可转化为电能的太阳能量。因此,为了评估智能电网的潜力,准确估算太阳能发电的输出是至关重要的。本文介绍了一项利用各种机器学习模型预测德克萨斯州Lubbock太阳能光伏(PV)发电的研究。均方误差(MSE)和R²指标被用来展示每个模型的性能。结果表明,随机森林回归(RFR)模型和长短期记忆(LSTM)模型的MSE分别为2.06%和2.23%,R²分别为0.977和0.975,均优于其他模型。此外,RFR和LSTM展示了它们捕捉太阳能发电数据中固有的复杂模式和复杂关系的能力。开发的机器学习模型可以帮助太阳能光伏投资者简化流程并改进太阳能生产计划。Doi: 10.28991/ESJ-2023-07-04-02全文:PDF
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Forecasting Solar Power Generation Utilizing Machine Learning Models in Lubbock
Solar energy is a widely accessible, clean, and sustainable energy source. Solar power harvesting in order to generate electricity on smart grids is essential in light of the present global energy crisis. However, the highly variable nature of solar radiation poses unique challenges for accurately predicting solar photovoltaic (PV) power generation. Factors such as cloud cover, atmospheric conditions, and seasonal variations significantly impact the amount of solar energy available for conversion into electricity. Therefore, it is essential to precisely estimate the output of solar power in order to assess the potential of smart grids. This paper presents a study that utilizes various machine learning models to predict solar photovoltaic (PV) power generation in Lubbock, Texas. Mean Squared Error (MSE) and R² metrics are utilized to demonstrate the performance of each model. The results show that the Random Forest Regression (RFR) and Long Short-Term Memory (LSTM) models outperformed the other models, with a MSE of 2.06% and 2.23% and R² values of 0.977 and 0.975, respectively. In addition, RFR and LSTM demonstrate their capability to capture the intricate patterns and complex relationships inherent in solar power generation data. The developed machine learning models can aid solar PV investors in streamlining their processes and improving their planning for the production of solar energy. Doi: 10.28991/ESJ-2023-07-04-02 Full Text: PDF
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来源期刊
Emerging Science Journal
Emerging Science Journal Multidisciplinary-Multidisciplinary
CiteScore
5.40
自引率
0.00%
发文量
155
审稿时长
10 weeks
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