High quality energy systems information is a crucial input to energy systems research, modeling, and decision-making. Unfortunately, actionable information about energy systems is often of limited availability, incomplete, or only accessible for a substantial fee or through a non-disclosure agreement. Recently, remotely sensed data (e.g., satellite imagery, aerial photography) have emerged as a potentially rich source of energy systems information. However, the use of these data is frequently challenged by its sheer volume and complexity, precluding manual analysis. Recent breakthroughs in machine learning have enabled automated and rapid extraction of useful information from remotely sensed data, facilitating large-scale acquisition of critical energy system variables. Here we present a systematic review of the literature on this emerging topic, providing an in-depth survey and review of papers published within the past two decades. We first taxonomize the existing literature into ten major areas, spanning the energy value chain. Within each research area, we distill and critically discuss major features that are relevant to energy researchers, including, for example, key challenges regarding the accessibility and reliability of the methods. We then synthesize our findings to identify limitations and trends in the literature as a whole, and discuss opportunities for innovation. These include the opportunity to extend the methods beyond electricity to broader energy systems and wider geographic areas; and the ability to expand the use of these methods in research and decision making as satellite data become cheaper and easier to access. We also find that there are persistent challenges: limited standardization and rigor of performance assessments; limited sharing of code, which would improve replicability; and a limited consideration of the ethics and privacy of data.
翻译:高品质能源系统信息是能源系统研究、建模和决策的关键投入。不幸的是,关于能源系统的可操作信息往往供应有限、不完整,或只能通过大量收费或通过不披露协议获得。最近,遥感数据(例如卫星图像、航空摄影)成为能源系统信息的潜在丰富来源。然而,这些数据的使用经常受到其纯度和复杂性的挑战,无法进行人工分析。最近机器学习方面的突破使得能够自动和迅速地从遥感数据中提取有用信息,便利大规模获取关键的能源系统变量。这里我们系统地审查关于这一新主题的文献,对过去二十年中发表的论文进行深入的调查和审查。我们首先将现有文献分类为十个主要领域,跨越能源价值链。我们在每个研究领域,对与能源研究人员有关的主要特征进行细化和批判性讨论,包括,例如,在方法的可获取性和可靠性方面的关键挑战。我们随后综合了我们的调查结果,以确定文献中的局限性和趋势,协助大规模获取关键能源系统变量。我们系统地审查这一新兴主题,对文献进行深入的调查和审查,对过去二十年来发表的论文进行分类。我们首先将现有文献分为10个主要领域,这些研究领域,并讨论这些研究方法的使用机会,包括:扩大能源获取能力,扩大数据使用范围的利用。