论文标题
从远程感知的数据中自动提取能源系统信息:审核和分析
Automated Extraction of Energy Systems Information from Remotely Sensed Data: A Review and Analysis
论文作者
论文摘要
高质量的能源系统信息是能源系统研究,建模和决策的关键意见。不幸的是,有关能源系统的可行信息通常是有限的可用性,不完整的,或者只能获得大量费用或通过不公开协议而获得的。最近,远程感知的数据(例如卫星图像,航空摄影)已成为一种潜在的能源系统信息来源。但是,这些数据的使用经常受到其纯粹的体积和复杂性的挑战,从而排除了手动分析。机器学习的最新突破使自动化和快速提取有用信息从远程感知的数据中提取,从而促进了对关键能源系统变量的大规模收购。在这里,我们对有关此新兴主题的文献进行了系统的综述,提供了对过去二十年来发表的论文的深入调查和审查。我们首先将现有文献分类为跨越能量链的十个主要领域。在每个研究领域,我们都会提炼和批判性地讨论与能源研究人员相关的主要特征,包括例如,有关方法的可访问性和可靠性的关键挑战。然后,我们综合我们的发现,以确定整个文献中的局限性和趋势,并讨论创新的机会。其中包括将电力范围扩展到更广泛的能源系统和更广泛地理区域的机会;随着卫星数据变得更便宜,更容易访问,在研究和决策中扩展这些方法的使用能力。我们还发现存在持续的挑战:绩效评估的标准化有限和严格;代码共享有限,这将提高可复制性;以及对数据的道德和隐私的有限考虑。
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.