人工智能预测太阳能生产:风险与经济效益

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摘要

在可持续发展和日益转向非化石替代能源的背景下,太阳能在转化为电能方面具有无数优势。现代技术为在预测太阳能生产过程中引入人工智能提供了巨大机遇。然而,国际科学界对这一课题的探索还很不够,因此本研究具有现实意义。本研究的目的是分析人工智能对太阳能产量预测的影响。为实现研究目的,采用了系统的文献分析方法。研究结果表明,人工智能在太阳能生产预测过程中的应用潜力巨大。研究能够建立基于人工智能的随机预测模型和机器学习模型,以确定其在太阳能生产预测过程中的成本效益和风险。在查阅文献的过程中,发现以下四种模型在工作中最为有效:RFR、LIME、ELI5 和 SHAP。每种模型都有各自的优缺点。这些优势体现在生产管理、高速预测、灵活性和解释性、降低变异风险等方面。然而,在预测太阳能生产过程中采用人工智能的成本效益要远远高于风险方面的经济效益。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Artificial Intelligence to Predict Solar Energy Production: Risks and Economic Efficiency
In the context of sustainable development and the increasing shift to non-fossil alternative energy sources, solar energy offers countless advantages for its conversion into electricity. Modern technologies offer great opportunities for the introduction of artificial intelligence in the process of predicting the production of solar energy. However, this topic is still quite unexplored in the international scientific community, which makes this study relevant. The purpose of this study is to analyze the impact of artificial intelligence on solar energy production forecasting. To achieve the purpose of the study, a systematic literature analysis method was applied. As a result of the study, it was possible to establish that artificial intelligence has great potential for its implementation in the process of forecasting solar energy production. The study was able to establish random prediction models and machine learning models based on artificial intelligence for their cost effectiveness and risk in the process of forecasting solar energy production. During the literature review, it became clear that the following four models are the most effective in the work: the RFR, LIME, ELI5 and SHAP. Each model has its own advantages and disadvantages. These are manifested in production management, forecasting with high speed, flexibility, and explanation, reducing the risk of variability. However, the cost-effectiveness of implementing artificial intelligence in the process of forecasting solar energy production has much more economic efficiency than the risk aspects.
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