Automated Extraction of Energy Systems Information from Remotely Sensed Data: A Review and Analysis
Simiao Ren, Wei Hu, Kyle Bradbury, Dylan Harrison-Atlas, Laura, Malaguzzi Valeri, Brian Murray, and Jordan M. Malof

TL;DR
This paper systematically reviews the use of remotely sensed data and machine learning for extracting energy systems information, highlighting current trends, limitations, and future opportunities in the field.
Contribution
It provides an in-depth survey of two decades of literature, classifies research into ten areas, and discusses challenges and opportunities for advancing remote sensing in energy systems.
Findings
Remote sensing enables large-scale energy data collection.
Major challenges include standardization and data privacy concerns.
Opportunities exist for expanding methods beyond electricity systems.
Abstract
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…
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Taxonomy
TopicsAtmospheric and Environmental Gas Dynamics · Energy Load and Power Forecasting · Impact of Light on Environment and Health
