在数据驱动的能源技术建模中需要更好的统计测试

IF 38.6 1区 材料科学 Q1 CHEMISTRY, PHYSICAL
Joule Pub Date : 2024-09-18 DOI:10.1016/j.joule.2024.07.016
C. Lennart Baumgärtner , Rupert Way , Matthew C. Ives , J. Doyne Farmer
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引用次数: 0

摘要

技术建模是制定和理解能源系统方案和政策的重要组成部分,但由于数据限制、深度不确定性以及能源系统演变过程中涉及的复杂社会和技术动态,技术建模具有挑战性。这些困难往往因不健全的技术预测实践而加剧,包括过度拟合、数据选择偏差和临时假设,从而导致不可靠的结论。我们列举了几个存在问题的案例,并详细分析了最近用于预测太阳能光伏发电和风能部署速度的模型。我们讨论了一般启示,并就如何进行统计测试以避免未来出现此类问题以及量化预测的可靠性提出了建议。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The need for better statistical testing in data-driven energy technology modeling

Technology modeling is a vital part of developing and understanding energy system scenarios and policy, but it is challenging due to data limitations, deep uncertainty, and the complex social and technological dynamics involved in the evolution of energy systems. These difficulties are often compounded by unsound technology forecasting practice, including overfitting, data selection bias, and ad hoc assumptions, leading to unreliable conclusions. We flag several cases where this has been problematic and analyze in detail a recent model for predicting the pace of solar photovoltaic and wind energy deployment. We discuss general takeaways and provide suggestions for how statistical testing should be conducted to avoid such problems in the future and to quantify the reliability of forecasts.

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来源期刊
Joule
Joule Energy-General Energy
CiteScore
53.10
自引率
2.00%
发文量
198
期刊介绍: Joule is a sister journal to Cell that focuses on research, analysis, and ideas related to sustainable energy. It aims to address the global challenge of the need for more sustainable energy solutions. Joule is a forward-looking journal that bridges disciplines and scales of energy research. It connects researchers and analysts working on scientific, technical, economic, policy, and social challenges related to sustainable energy. The journal covers a wide range of energy research, from fundamental laboratory studies on energy conversion and storage to global-level analysis. Joule aims to highlight and amplify the implications, challenges, and opportunities of novel energy research for different groups in the field.
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