Title
Attention-based convolutional capsules for evapotranspiration estimation at scale
Abstract
Evapotranspiration (ET) measures the amount of water lost from the Earth's surface to the atmosphere and is an integral metric for both agricultural and environmental sciences. Understanding and quantifying ET is critical for achieving effective management of freshwater and irrigation systems. However, current ET estimation models suffer from a trade-off between accuracy and spatial coverage. In this study, we introduce our model Quench, a neural network architecture that achieves highly-accurate ET estimates over large continuous spatial extents. Quench uses our novel Attention-Based Convolutional Capsule for its neural network layers to identify areas of focus and efficiently extract ET information from satellite imagery. Benchmarks that profile our model's performance show substantive improvements in accuracy, with up to 128% increase in accuracy compared to traditional convolutional-based and process-based models. Quench also demonstrates consistent model performance over high geospatial variability and a diverse array of regions, seasons, climates, and vegetations.
Year
DOI
Venue
2022
10.1016/j.envsoft.2022.105366
Environmental Modelling & Software
Keywords
DocType
Volume
Evapotranspiration,Satellite imagery,Neural networks,Capsule networks,Residual learning,Attention-based learning
Journal
152
ISSN
Citations 
PageRank 
1364-8152
0
0.34
References 
Authors
0
9