Closing Gaps in Emissions Monitoring with Climate TRACE
- URL: http://arxiv.org/abs/2511.19277v1
- Date: Mon, 24 Nov 2025 16:28:44 GMT
- Title: Closing Gaps in Emissions Monitoring with Climate TRACE
- Authors: Brittany V. Lancellotti, Jordan M. Malof, Aaron Davitt, Gavin McCormick, Shelby Anderson, Pol Carbó-Mestre, Gary Collins, Verity Crane, Zoheyr Doctor, George Ebri, Kevin Foster, Trey M. Gowdy, Michael Guzzardi, John Heal, Heather Hunter, David Kroodsma, Khandekar Mahammad Galib, Paul J. Markakis, Gavin McDonald, Daniel P. Moore, Eric D. Nguyen, Sabina Parvu, Michael Pekala, Christine D. Piatko, Amy Piscopo, Mark Powell, Krsna Raniga, Elizabeth P. Reilly, Michael Robinette, Ishan Saraswat, Patrick Sicurello, Isabella Söldner-Rembold, Raymond Song, Charlotte Underwood, Kyle Bradbury,
- Abstract summary: Climate TRACE is an open-access platform delivering global emissions estimates with enhanced detail, coverage, and timeliness.<n>The dataset is the first to provide globally comprehensive emissions estimates for individual sources.
- Score: 1.0107331293412294
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Global greenhouse gas emissions estimates are essential for monitoring and mitigation planning. Yet most datasets lack one or more characteristics that enhance their actionability, such as accuracy, global coverage, high spatial and temporal resolution, and frequent updates. To address these gaps, we present Climate TRACE (climatetrace.org), an open-access platform delivering global emissions estimates with enhanced detail, coverage, and timeliness. Climate TRACE synthesizes existing emissions data, prioritizing accuracy, coverage, and resolution, and fills gaps using sector-specific estimation approaches. The dataset is the first to provide globally comprehensive emissions estimates for individual sources (e.g., individual power plants) for all anthropogenic emitting sectors. The dataset spans January 1, 2021, to the present, with a two-month reporting lag and monthly updates. The open-access platform enables non-technical audiences to engage with detailed emissions datasets for most subnational governments worldwide. Climate TRACE supports data-driven climate action at scales where decisions are made, representing a major breakthrough for emissions accounting and mitigation.
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