Javascript must be enabled to continue!
Application of HP-LSTM Models for Groundwater Level Prediction in Karst Regions: A Case Study in Qingzhen City
View through CrossRef
Groundwater serves as an indispensable global resource, essential for agriculture, industry, and the urban water supply. Predicting the groundwater level in karst regions presents notable challenges due to the intricate geological structures and fluctuating climatic conditions. This study examines Qingzhen City, China, introducing an innovative hybrid model, the Hodrick–Prescott (HP) filter–Long Short-Term Memory (LSTM) network (HP-LSTM), which integrates the HP filter with the LSTM network to enhance the precision of groundwater level forecasting. By attenuating short-term noise, the HP-LSTM model improves the long-term trend prediction accuracy. Findings reveal that the HP-LSTM model significantly outperformed the conventional LSTM, attaining R2 values of 0.99, 0.96, and 0.98 on the training, validation, and test datasets, respectively, in contrast to LSTM values of 0.92, 0.76, and 0.95. The HP-LSTM model achieved an RMSE of 0.0276 and a MAPE of 2.92% on the test set, significantly outperforming the LSTM model (RMSE: 0.1149; MAPE: 9.14%) in capturing long-term patterns and reducing short-term fluctuations. While the LSTM model is effective at modeling short-term dynamics, it is more prone to noise, resulting in greater prediction errors. Overall, the HP-LSTM model demonstrates superior robustness for long-term groundwater level prediction, whereas the LSTM model may be better suited for scenarios requiring rapid adaptation to short-term variations. Selecting an appropriate model tailored to specific predictive needs can thus optimize groundwater management strategies.
Title: Application of HP-LSTM Models for Groundwater Level Prediction in Karst Regions: A Case Study in Qingzhen City
Description:
Groundwater serves as an indispensable global resource, essential for agriculture, industry, and the urban water supply.
Predicting the groundwater level in karst regions presents notable challenges due to the intricate geological structures and fluctuating climatic conditions.
This study examines Qingzhen City, China, introducing an innovative hybrid model, the Hodrick–Prescott (HP) filter–Long Short-Term Memory (LSTM) network (HP-LSTM), which integrates the HP filter with the LSTM network to enhance the precision of groundwater level forecasting.
By attenuating short-term noise, the HP-LSTM model improves the long-term trend prediction accuracy.
Findings reveal that the HP-LSTM model significantly outperformed the conventional LSTM, attaining R2 values of 0.
99, 0.
96, and 0.
98 on the training, validation, and test datasets, respectively, in contrast to LSTM values of 0.
92, 0.
76, and 0.
95.
The HP-LSTM model achieved an RMSE of 0.
0276 and a MAPE of 2.
92% on the test set, significantly outperforming the LSTM model (RMSE: 0.
1149; MAPE: 9.
14%) in capturing long-term patterns and reducing short-term fluctuations.
While the LSTM model is effective at modeling short-term dynamics, it is more prone to noise, resulting in greater prediction errors.
Overall, the HP-LSTM model demonstrates superior robustness for long-term groundwater level prediction, whereas the LSTM model may be better suited for scenarios requiring rapid adaptation to short-term variations.
Selecting an appropriate model tailored to specific predictive needs can thus optimize groundwater management strategies.
Related Results
Characteristics of groundwater circulation and evolution in Yanhe spring basin driven by coal mining
Characteristics of groundwater circulation and evolution in Yanhe spring basin driven by coal mining
Abstract
The Yanhe spring basin located in the Jindong coal base is relatively short of water resources and the ecological environment is fragile. With the large-scale mini...
Characterizing Groundwater Quality, Recharge and Distribution under Anthropogenic conditions
Characterizing Groundwater Quality, Recharge and Distribution under Anthropogenic conditions
Awareness concerning sustainable groundwater management is gaining traction and calls for adequate understanding of the complexities of natural and anthropogenic processes and how ...
A comprehensive bioassessment of karst aquifer flow paths
A comprehensive bioassessment of karst aquifer flow paths
Current challenges in the assessment of groundwater characteristics in karst areas result from the difficulties to effectively identify episodes of high water discharge and flow pa...
Multiscale Integration for Karst Reservoir Flow Simulation Models
Multiscale Integration for Karst Reservoir Flow Simulation Models
Abstract
The significant oil reserves related to karst reservoirs in Brazilian pre-salt field adds new frontiers to the development of upscaling procedures to reduce...
Hydatid Disease of The Brain Parenchyma: A Systematic Review
Hydatid Disease of The Brain Parenchyma: A Systematic Review
Abstarct
Introduction
Isolated brain hydatid disease (BHD) is an extremely rare form of echinococcosis. A prompt and timely diagnosis is a crucial step in disease management. This ...
Karst Caves
Karst Caves
Karst refers to the processes of chemical dissolution and mechanical erosion acting on soluble rocks (mainly carbonates and evaporites), and to the surface and subsurface landforms...
IMPACT OF CLIMATE CHANGE ON GROUNDWATER RECHARGE IN HO CHI MINH CITY AREA
IMPACT OF CLIMATE CHANGE ON GROUNDWATER RECHARGE IN HO CHI MINH CITY AREA
Groundwater is very important for the development of Ho Chi Minh City since it provides 32% of water supply, however, the groundwater level is decreasing dramatically in recent yea...
Karst hydrogeological characteristics of Jindong large coal basin, northern China
Karst hydrogeological characteristics of Jindong large coal basin, northern China
Abstract
Jindong coal basin is one of the 14 large coal basins planned and constructed by the state, and groundwater resources play an important role in supporting the sust...

