Assessing Ice Break-Up Trends in Slave River Delta through Satellite Observations and Random Forest Modeling
Section 1: Publication
Publication Type
Journal Article
Authorship
Moalemi, I., Kheyrollah Pour, H., Scott, K.A.
Title
Assessing Ice Break-Up Trends in Slave River Delta through Satellite Observations and Random Forest Modeling
Year
2024
Publication Outlet
Remote Sensing
DOI
ISBN
ISSN
Citation
Moalemi, I., Kheyrollah Pour, H., Scott, K.A. (2024) Assessing Ice Break-Up Trends in Slave River Delta through Satellite Observations and Random Forest Modeling, Remote Sensing,
https://doi.org/10.3390/rs16122244
Abstract
The seasonal temperature trends and ice phenology in the Great Slave Lake (GSL) are significantly influenced by inflow from the Slave River. The river undergoes a sequence of mechanical break-ups all the way to the GSL, initiating the GSL break-up process. Additionally, upstream water management practices impact the discharge of the Slave River and, consequently, the ice break-up of the GSL. Therefore, monitoring the break-up process at the Slave River Delta (SRD), where the river meets the lake, is crucial for understanding the cascading effects of upstream activities on GSL ice break-up. This research aimed to use Random Forest (RF) models to monitor the ice break-up processes at the SRD using a combination of satellite images with relatively high spatial resolution, including Landsat-5, Landsat-8, Sentinel-2a, and Sentinel-2b. The RF models were trained using selected training pixels to classify ice, open water, and cloud. The onset of break-up was determined by data-driven thresholds on the ice fraction in images with less than 20% cloud coverage. Analysis of break-up timing from 1984 to 2023 revealed a significant earlier trend using the Mann–Kendall test with a p-value of 0.05. Furthermore, break-up data in recent years show a high degree of variability in the break-up rate using images in recent years with better temporal resolution.
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