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Predicting Water Temperature Dynamics of Unmonitored Lakes With Meta-Transfer Learning

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Jared Willard, Jordan S Read, Alison P Appling, Samantha K Oliver, Xiaowei Jia, and Vipin Kumar, 2021-06-16, Predicting Water Temperature Dynamics of Unmonitored Lakes With Meta-Transfer Learning: Water Resources Research, v. 57, iss. 7.

Summary

Most environmental data come from a minority of well-monitored sites. An ongoing challenge in the environmental sciences is transferring knowledge from monitored sites to unmonitored sites. Here, we demonstrate a novel transfer-learning framework that accurately predicts depth-specific temperature in unmonitored lakes (targets) by borrowing models from well-monitored lakes (sources). This method, meta-transfer learning (MTL), builds a meta-learning model to predict transfer performance from candidate source models to targets using lake attributes and candidates' past performance. We constructed source models at 145 well-monitored lakes using calibrated process-based (PB) modeling and a recently developed approach called process-guided [...]

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  • National and Regional Climate Adaptation Science Centers
  • North Central CASC

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citationTypeJournal
journalWater Resources Research
parts
typeDOI
valuehttps://doi.org/10.1029/2021WR029579
typeVolume
value57
typeIssue
value7

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