利用卷积神经网络(CNN)预测地中海地区2030-2050年的太阳能发电量

Mahmood Abdoos , Hamidreza Rashidi , Pourya Esmaeili , Hossein Yousefi , Mohammad Hossein Jahangir
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引用次数: 0

摘要

本研究调查了2010年至2022年地中海地区太阳能产量的显著增长,将这种增长归因于技术进步、成本降低和有利的地理条件。利用卷积神经网络(CNN)模型,该研究预测了西班牙、埃及、土耳其、法国和希腊到2050年的太阳能产量。结果表明,到2050年夏季,西班牙预计将以42,547,680瓦时的产量领先,而土耳其预计将在同一时期达到20,528,640瓦时。研究结果强调,由于对可再生能源基础设施的投资增加和政府的支持性政策,所有被分析的国家都实现了强劲增长。定量分析显示,太阳能安装成本大幅下降,例如美国从2010年的每瓦7.53美元下降到2021年的2.65美元,这进一步刺激了太阳能的扩张。该研究强调了政府倡议在促进可再生能源采用方面的关键作用,并概述了太阳能如何为减少碳排放和加强能源安全做出重大贡献。与中东和美国西南部等地区的比较表明了太阳能潜力的共性,但也突出了气候变化和基础设施差异带来的挑战。CNN模型的鲁棒性体现在其整合实时气候数据的能力,通过考虑太阳辐射变化和极端天气事件等因素,提高了预测精度。该研究的结论是提倡通过混合技术和气候变化情景整合来进一步改进模型,以增强预测能力。总体而言,这些见解为政策制定者和能源生产商规划未来可持续能源生产战略提供了有价值的指导。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Forecasting solar energy generation in the mediterranean region up to 2030–2050 using convolutional neural networks (CNN)

Forecasting solar energy generation in the mediterranean region up to 2030–2050 using convolutional neural networks (CNN)
This study investigates the significant rise in solar energy production across the Mediterranean region from 2010 to 2022, attributing this growth to technological advancements, cost reductions, and favorable geographic conditions. Utilizing a Convolutional Neural Network (CNN) model, the research forecasts solar energy production for Spain, Egypt, Turkey, France, and Greece up to 2050. Results indicate that Spain is projected to lead with an estimated production of 42,547,680 watt-hours in the summer of 2050, while Turkey is anticipated to reach 20,528,640 watt-hours during the same period. The findings highlight robust growth in all analyzed countries due to increased investments in renewable energy infrastructure and supportive government policies. Quantitative analysis reveals a substantial decline in solar installation costs, exemplified by a decrease from $7.53 per watt in 2010 to $2.65 in 2021 in the U.S., which further stimulates solar energy expansion. The study emphasizes the critical role of government initiatives in promoting renewable energy adoption and outlines how solar energy can significantly contribute to reducing carbon emissions and enhancing energy security. Comparisons with regions such as the Middle East and southwestern United States suggest commonalities in solar potential but also highlight challenges posed by climatic variability and infrastructure differences. The robustness of the CNN model is demonstrated through its ability to integrate real-time climate data, enhancing forecasting accuracy by accounting for factors like solar radiation changes and extreme weather events. The research concludes by advocating for further refinement of the model through hybrid techniques and climate change scenario integration to bolster predictive capabilities. Overall, these insights provide valuable guidance for policymakers and energy producers in planning sustainable energy production strategies for the future.
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