基于土地利用和可解释机器学习的多尺度用电预测模型:中国案例研究

IF 13 Q1 ENERGY & FUELS Advances in Applied Energy Pub Date : 2024-10-28 DOI:10.1016/j.adapen.2024.100197
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引用次数: 0

摘要

用电量预测在促进可持续发展、确保能源安全和弹性、促进区域规划以及整合可再生能源方面发挥着至关重要的作用。本文提出了一种基于土地利用的新型用电特征描述和预测模型。该模型实现了土地利用的细分,提供了高度相关的变量;表现出很强的可解释性,从而揭示了土地利用对用电量的边际效应;并表现出很高的性能,从而实现了大规模的模拟和预测。以 297 个城市和 2,505 个县作为案例研究,主要发现如下:(1) 模型具有较强的泛化能力(R2 = 0.91)、较高的精度(Kappa = 0.77)和稳健性,总体预测精度超过 80%;(2) 工业用地对用电量的边际影响较为复杂,将其面积限制在 104.3 平方公里或 288.2 至 657.3 平方公里之间可提高效率;(3) 商业用地和住宅用地对用电量的边际影响呈现出较强的线性关系(R2 >0.80)。将规模限制在 11.3 平方公里可有效缓解这一影响。商住混合用地对整体用电控制有利,但超过 43.5 km2 后,城市居住用地的布局需要单独考虑;(4)预计 2030 年,上海用电量将达到 1551.43 亿 kW-h,在 297 个城市中居首位。同时,苏州工业园区的用电量为 309.96 亿 kW-h,在 2,505 个区中居首位;(5)确定未来的用电热点和集群特征,评估这些热点地区的可再生能源潜力,并提出相应的针对性策略。
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Multi-scale electricity consumption prediction model based on land use and interpretable machine learning: A case study of China
The prediction of electricity consumption plays a vital role in promoting sustainable development, ensuring energy security and resilience, facilitating regional planning, and integrating renewable energy sources. A novel electricity consumption characterization and prediction model based on land use was proposed. This model achieves land-use subdivision to provide highly correlated variables; exhibits strong interpretability, thereby revealing even marginal effects of land use on electricity consumption; and demonstrates high performance, thereby enabling large-scale simulations and predictions. Using 297 cities and 2,505 counties as case studies, the key findings are as follows: (1) The model demonstrates strong generalization ability (R2 = 0.91), high precision (Kappa = 0.77), and robustness, with an overall prediction accuracy exceeding 80 %; (2) The marginal impact of industrial land on electricity consumption is more complex, with more efficiency achieved by limiting its area to either 104.3 km2 or between 288.2 and 657.3 km2; (3) The marginal impact of commercial and residential land on electricity consumption exhibits a strong linear relationship (R2 > 0.80). Restricting the scale to 11.3 km2 could effectively mitigate this impact. Mixed commercial and residential land is advantageous for overall electricity consumption control, but after exceeding 43.5 km2, separate layout considerations for urban residential land are necessary; (4) In 2030, Shanghai's electricity consumption is projected to reach 155,143 million kW·h, making it the highest among the 297 cities. Meanwhile, Suzhou Industrial Park leads among the 2,505 districts with a consumption of 30,996 million kW·h; (5) Identify future electricity consumption hotspots and clustering characteristics, evaluate the renewable energy potential in these hotspot areas, and propose targeted strategies accordingly.
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来源期刊
Advances in Applied Energy
Advances in Applied Energy Energy-General Energy
CiteScore
23.90
自引率
0.00%
发文量
36
审稿时长
21 days
期刊最新文献
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