Knowledge Agora



Scientific Article details

Title Development and evaluation of hybrid deep learning long short-term memory network model for pan evaporation estimation trained with satellite and ground-based data
ID_Doc 66959
Authors Jayasinghe, WJMLP; Deo, RC; Ghahramani, A; Ghimire, S; Raj, N
Title Development and evaluation of hybrid deep learning long short-term memory network model for pan evaporation estimation trained with satellite and ground-based data
Year 2022
Published
DOI 10.1016/j.jhydrol.2022.127534
Abstract Evaporation, as a core process within the global hydrological cycle, requires reliable methods to monitor its variation, for decision-making in agriculture, irrigation systems and dam operations, also in other areas of hydrology and water resource management. Accurate monitoring of pan evaporation (E-p) is one the most popular approaches to understand the evaporative process. This work aims to construct a hybrid Long Short-Term Memory (LSTM) predictive model that is coupled with Neighbourhood Component Analysis for feature selection to predict E-P in drought-prone regions in Queensland, Australia (Amberley, Gatton, Oakey, & Townsville). Utilizing the daily-scale dataset [31 August 2002 to 22 September 2020], the performance of the proposed deep learning (DL) hybrid model, denoted as NCA-LSTM, is compared with competitive benchmark models, i.e., standalone LSTM, other types of DL, single hidden layer neuronal architecture and decision tree-based method. The testing results reveal the lowest Relative Root Mean Square Error ( <= 20%), Absolute Percentage Bias ( <= 14.5%) and the highest Kling-Gupta Efficiency ( >= 87%) attained by the NCA-LSTM hybrid model (relative to benchmark models) tested for Amberley, Gatton, and Oakey sites. In respect to the predictive efficiency, the proposed NCA-LSTM hybrid model, improved with feature selection, outperforms all benchmark models, indicating its future utility in the prediction of daily E-p. In practical sense, the predictive model developed for E-p estimation provides an accurate estimation of evaporative water loss in hydrological cycle and therefore, can be implemented in areas of irrigation management, planning of irrigation-based agriculture, and mitigation of financial losses to agricultural and related sectors where, regular monitoring and forecasting of water resources are a vital part of sustainable livelihood and business.
Author Keywords Prediction of pan evaporation; Long short-term memory networks; Neighbourhood component analysis; Deep learning; Hybrid models; Evaporative water loss
Index Keywords Index Keywords
Document Type Other
Open Access Open Access
Source Science Citation Index Expanded (SCI-EXPANDED)
EID WOS:000810761800003
WoS Category Engineering, Civil; Geosciences, Multidisciplinary; Water Resources
Research Area Engineering; Geology; Water Resources
PDF http://manuscript.elsevier.com/S0022169422001093/pdf/S0022169422001093.pdf
Similar atricles
Scroll