Sustainable Energy Transition: Analyzing the Impact of Renewable Energy Sources on Global Power Generation

None Rahul Kumar Jha
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Abstract

This study delves into the intricate relationship between power plant attributes and electricity generation, employing data analysis and predictive modelling techniques. Through a comprehensive analysis of a global power plant dataset, critical factors such as plant capacity and commissioning year were identified as significant influencers on electricity generation. The research utilized correlation heatmaps to visually represent these relationships, offering valuable insights for policymakers and investors. A linear regression model was employed, leveraging capacity and commissioning year as features to predict electricity generation. The model's accuracy was evaluated using mean squared error, providing a quantitative measure of its predictive capabilities.
可持续能源转型:分析可再生能源对全球发电的影响
本研究采用数据分析和预测建模技术,深入探讨发电厂属性与发电量之间的复杂关系。通过对全球发电厂数据集的综合分析,确定了工厂容量和调试年份等关键因素是对发电量的重要影响因素。该研究利用相关热图直观地表示了这些关系,为政策制定者和投资者提供了有价值的见解。采用线性回归模型,以容量和调试年份为特征预测发电量。该模型的准确性使用均方误差进行评估,为其预测能力提供了定量衡量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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