Publications

Joshi, RC; Ryu, D; Lane, PNJ; Sheridan, GJ (2023). Seasonal forecast of soil moisture over Mediterranean-climate forest catchments using a machine learning approach. JOURNAL OF HYDROLOGY, 619, 129307.

Abstract
Seasonal forecast of soil moisture at large spatial scale over forested landscape has numerous implications in forest hydrology and bushfire risk planning. Remotely sensed plant response to rainfall, input meteorological forcing, and site-specific landscape attributes were integrated into a data-driven Gradient Boosting Machine Learning (ML) model to forecast summer season (December to February) soil moisture equivalent to those from Australian Water Resource Assessment-Landscape (AWRA-L) at root-zone (0-1 m) and deep (1-6 m) layers of the soil.Multispectral and thermal infrared bands from MODIS (Band 1-12, LST (day, night)) and meteorological forcing for 2000 - 2018 during and prior to winter (before August) and site-specific landscape attributes were used to generate the explanatory input variables to the model. Spatial and temporal forecasting skills of the model were evaluated using two types of cross-validation: two-fold cross-validation by space over the entire period (2000-2018) and two-fold cross-validation by time for all grid cells (2160 cells). In the first method, the model showed a high skill to forecast deep soil moisture (R2 = 0.81, NSE = 0.79, RMSE = 58.01 mm) and root-zone soil moisture (R2 = 0.65, NSE = 0.63, RMSE = 24.34 mm). In comparison, the second evaluation resulted in more accurate forecast deep-soil moisture (R2 = 0.88, NSE = 0.86, RMSE = 47.39 mm) but in lower performance for root-zone soil (R2 = 0.55, NSE = 0.47, RMSE = 29.2 mm). These outcomes have highlighted that the (>80%) variability in summers deep (1-6 m) soil moisture and (>50%) variability in root-zone (0-1 m) soil moisture over forested landscape can be explained at the end of winters. Furthermore, integrating remotely sensed observations has improved the results by showing an enhancement in the RMSE by 22.8-33.3% in the deep (1-6 m) soil moisture and 8.8-14.3% in root-zone (0-1 m) soil moisture.Overall, the integrated system using remotely sensed plant response, climate forcing and machine learning exhibit great potential to forecast summer soil moisture three months ahead in the Mediterranean climates.

DOI:
10.1016/j.jhydrol.2023.129307

ISSN:
1879-2707