A Deep Learning Approach for Modeling and Hindcasting Lake Michigan Ice Cover
Hazem Abdelhady, Cary Troy

TL;DR
This paper introduces a deep learning model combining ConvLSTM and CNN to accurately predict and hindcast Lake Michigan's ice cover, outperforming existing physics-based models in both lake-wide and local accuracy.
Contribution
A novel deep learning framework integrating ConvLSTM and CNN for high-resolution ice cover prediction and hindcasting in large lakes.
Findings
High agreement with NOAA ice charts (RMSE 0.029)
Local prediction errors averaged RMSE 0.102
Lake-wide and local errors reduced by nearly 50% for weekly/monthly averages
Abstract
In large lakes, ice cover plays an important role in shipping and navigation, coastal erosion, regional weather and climate, and aquatic ecosystem function. In this study, a novel deep learning model for ice cover concentration prediction in Lake Michigan is introduced. The model uses hindcasted meteorological variables, water depth, and shoreline proximity as inputs, and NOAA ice charts for training, validation, and testing. The proposed framework leverages Convolution Long Short-Term Memory (ConvLSTM) and Convolution Neural Network (CNN) to capture both spatial and temporal dependencies between model input and output to simulate daily ice cover at 0.1{\deg} resolution. The model performance was assessed through lake-wide average metrics and local error metrics, with detailed evaluations conducted at six distinct locations in Lake Michigan. The results demonstrated a high degree of…
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Taxonomy
TopicsArctic and Antarctic ice dynamics · Methane Hydrates and Related Phenomena · Geology and Paleoclimatology Research
