Integrating scientific knowledge with machine learning for engineering and environmental systems
There is a growing consensus that solutions to complex science and engineering problems
require novel methodologies that are able to integrate traditional physics-based modeling …
require novel methodologies that are able to integrate traditional physics-based modeling …
A transdisciplinary review of deep learning research and its relevance for water resources scientists
C Shen - Water Resources Research, 2018 - Wiley Online Library
Deep learning (DL), a new generation of artificial neural network research, has transformed
industries, daily lives, and various scientific disciplines in recent years. DL represents …
industries, daily lives, and various scientific disciplines in recent years. DL represents …
[PDF][PDF] Integrating physics-based modeling with machine learning: A survey
There is a growing consensus that solutions to complex science and engineering problems
require novel methodologies that are able to integrate traditional physics-based modeling …
require novel methodologies that are able to integrate traditional physics-based modeling …
[HTML][HTML] Improving streamflow prediction in the WRF-Hydro model with LSTM networks
Researchers have attempted to use machine learning algorithms to replace physically
based models for streamflow prediction. Although existing studies have contributed to …
based models for streamflow prediction. Although existing studies have contributed to …
Physics-guided machine learning for scientific discovery: An application in simulating lake temperature profiles
Physics-based models are often used to study engineering and environmental systems. The
ability to model these systems is the key to achieving our future environmental sustainability …
ability to model these systems is the key to achieving our future environmental sustainability …
Physics guided RNNs for modeling dynamical systems: A case study in simulating lake temperature profiles
This paper proposes a physics-guided recurrent neural network model (PGRNN) that
combines RNNs and physics-based models to leverage their complementary strengths and …
combines RNNs and physics-based models to leverage their complementary strengths and …
Machine learning for hydrologic sciences: An introductory overview
The hydrologic community has experienced a surge in interest in machine learning in recent
years. This interest is primarily driven by rapidly growing hydrologic data repositories, as …
years. This interest is primarily driven by rapidly growing hydrologic data repositories, as …
Parameter estimation and uncertainty analysis in hydrological modeling
PA Herrera, MA Marazuela… - Wiley Interdisciplinary …, 2022 - Wiley Online Library
Nowadays, mathematical models of hydrological systems are used routinely to guide
decision making in diverse subjects, such as: environmental and risk assessments, design …
decision making in diverse subjects, such as: environmental and risk assessments, design …
Simulation and forecasting of streamflows using machine learning models coupled with base flow separation
Efficient simulation of rainfall-runoff relationships is one of the most complex problems owing
to the high number of interrelated hydrological processes. It is well-known that machine …
to the high number of interrelated hydrological processes. It is well-known that machine …
Bayesian machine learning ensemble approach to quantify model uncertainty in predicting groundwater storage change
Agricultural water demand, groundwater extraction, surface water delivery and climate have
complex nonlinear relationships with groundwater storage in agricultural regions. As an …
complex nonlinear relationships with groundwater storage in agricultural regions. As an …