Automated Extraction of Energy Systems Information from Remotely Sensed
Data: A Review and Analysis
- URL: http://arxiv.org/abs/2202.12939v1
- Date: Fri, 18 Feb 2022 14:38:49 GMT
- Title: Automated Extraction of Energy Systems Information from Remotely Sensed
Data: A Review and Analysis
- Authors: Simiao Ren, Wei Hu, Kyle Bradbury, Dylan Harrison-Atlas, Laura
Malaguzzi Valeri, Brian Murray, and Jordan M. Malof
- Abstract summary: High quality energy systems information is a crucial input to energy systems research, modeling, and decision-making.
Recently, remotely sensed data have emerged as a potentially rich source of energy systems information.
Recent breakthroughs in machine learning have enabled automated and rapid extraction of useful information.
- Score: 10.137044808866053
- License: http://creativecommons.org/licenses/by-sa/4.0/
- Abstract: High quality energy systems information is a crucial input to energy systems
research, modeling, and decision-making. Unfortunately, precise 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.
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