基于机器学习方法的综合框架提高城市能源弹性

Q1 Engineering
Asmaa M. Hassan, Naglaa A. Megahed
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引用次数: 3

摘要

导读:气候变化和全球变暖是当今世界面临的最大挑战之一。作为回应,一种被称为城市弹性的新概念应运而生。城市恢复力有多种方法。其中,城市能源弹性(UER)方法提出了相当大的挑战。机器学习(ML)作为人工智能(AI)的一种应用,提供了强大而实惠的计算资源、大规模数据挖掘、先进的算法和实时监控。然而,很少有研究调查如何将这些方面整合到一般的城市弹性中,特别是UER。研究目的:本研究开发了一个基于机器学习方法的综合框架,可以提高用户使用效率。方法:我们根据人工智能的概念、模型和应用,对UER进行了文献计量学分析和系统综述。结果:本研究的结果被用于创建一个基于三个层次阶段的综合框架,该框架有效地解决了UER的主要能力,确定了其优先事项,并阐明了机器学习如何使整个UER受益。新颖性:本研究中开发的框架还提供了将ML方法尽可能战略性地整合到UER中的见解,特别是在气候变化和城市能源系统的背景下。该框架可以作为专家和决策者的参考,旨在扩展人工智能和机器学习应用程序以优化用户使用效率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
IMPROVINGURBAN ENERGYRESILIENCEWITH AN INTEGRATIVE FRAMEWORK BASED ON MACHINE LEARNINGMETHODS
Introduction:Climate change and global warming are among the greatest challenges facing the world today. A newconcept, known as urban resilience, has been developed in response. There are various approaches to urban resilience. Among them, is the urban energy resilience (UER) approach, which poses a considerable challenge. Machine learning (ML), as an application of artificial intelligence (AI), provides powerful and affordable computing resources, large-scale datamining, advanced algorithms, and real-timemonitoring. However, veryfewstudies have investigated howsuch aspectscan be integrated into urban resilience in general, and UER in particular. Purpose of the study: The study develops an integrative framework that can improve UER, based on ML methods. Methodology: We carried out a bibliometric analysisand a systematic review of UER in accordance with AI concepts, models, and applications. Results:The findings of this study were used to create an integrative framework, based on three hierarchical phases, which effectively addressed the main capabilities of UER, identified its priorities, and shed light on how ML can benefit UER as a whole. Novelty:The framework developed in this study also offers insights in integrating ML methods into UER as strategically as possible, especially in the context of climate change and urban energy systems. This framework can serve as reference for specialistsand decision-makers aiming to expand AI and ML applications to optimize UER.
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来源期刊
Architecture and Engineering
Architecture and Engineering Engineering-Architecture
CiteScore
1.80
自引率
0.00%
发文量
26
审稿时长
7 weeks
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