Javascript must be enabled to continue!
Applications of physics-informed neural networks in geosciences: From basic seismology to comprehensive environmental studies
View through CrossRef
Abstract
Physics-informed neural networks (PINNs) have emerged as a powerful tool in the intersection of machine learning and physical sciences, offering novel approaches to solve complex differential equations inherent in geoscientific phenomena. Despite their growing application, a review of their applications and potential within geosciences remains missing. This review systematically examines the utilization of PINNs in various geosciences such as hydrology, seismology, atmospheric sciences, geophysics, and others, highlighting their ability to integrate physical laws into neural network training processes. It describes the potential of PINNs to improve predictive modeling accuracy, reduce computational costs, and overcome the limitations of traditional numerical methods. The importance of this research lies in its assessment of PINNs’ contributions to geosciences, offering valuable insights for researchers and practitioners seeking to use these advanced methodologies. The findings underscore the versatility and efficiency of PINNs, enhancing a deeper understanding of their role in advancing geoscientific research and applications. Ultimately, this review aims to bridge the current knowledge gap, promote the wider adoption and development of PINNs in geosciences, drive innovation, and enhance the accuracy and reliability of geoscientific models and predictions.
Title: Applications of physics-informed neural networks in geosciences: From basic seismology to comprehensive environmental studies
Description:
Abstract
Physics-informed neural networks (PINNs) have emerged as a powerful tool in the intersection of machine learning and physical sciences, offering novel approaches to solve complex differential equations inherent in geoscientific phenomena.
Despite their growing application, a review of their applications and potential within geosciences remains missing.
This review systematically examines the utilization of PINNs in various geosciences such as hydrology, seismology, atmospheric sciences, geophysics, and others, highlighting their ability to integrate physical laws into neural network training processes.
It describes the potential of PINNs to improve predictive modeling accuracy, reduce computational costs, and overcome the limitations of traditional numerical methods.
The importance of this research lies in its assessment of PINNs’ contributions to geosciences, offering valuable insights for researchers and practitioners seeking to use these advanced methodologies.
The findings underscore the versatility and efficiency of PINNs, enhancing a deeper understanding of their role in advancing geoscientific research and applications.
Ultimately, this review aims to bridge the current knowledge gap, promote the wider adoption and development of PINNs in geosciences, drive innovation, and enhance the accuracy and reliability of geoscientific models and predictions.
Related Results
Fuzzy Chaotic Neural Networks
Fuzzy Chaotic Neural Networks
An understanding of the human brain’s local function has improved in recent years. But the cognition of human brain’s working process as a whole is still obscure. Both fuzzy logic ...
On the role of network dynamics for information processing in artificial and biological neural networks
On the role of network dynamics for information processing in artificial and biological neural networks
Understanding how interactions in complex systems give rise to various collective behaviours has been of interest for researchers across a wide range of fields. However, despite ma...
ACM SIGCOMM computer communication review
ACM SIGCOMM computer communication review
At some point in the future, how far out we do not exactly know, wireless access to the Internet will outstrip all other forms of access bringing the freedom of mobility to the way...
Artificial neural network for the recognition of human emotions under a backpropagation algorithm
Artificial neural network for the recognition of human emotions under a backpropagation algorithm
The era of the technological revolution increasingly encourages the development of technologies that facilitate in one way or another people's daily activities, thus generating a g...
Memorization capacity and robustness of neural networks
Memorization capacity and robustness of neural networks
Machine learning, and deep learning in particular, has recently undergone rapid advancements. To contribute to a rigorous understanding of deep learning, this thesis explores two d...
E-071 Organization of a Neurointerventional Fellowship Curriculum
E-071 Organization of a Neurointerventional Fellowship Curriculum
Introduction
The field of Neurointervention has attracted some of the very best physicians across the world. Given the interdisciplinary nature of this specialty,...
SOC Reconfigurable Architecture for Software-Trained Neural Networks on FPGA
SOC Reconfigurable Architecture for Software-Trained Neural Networks on FPGA
Neural networks are extensively used in software and hardware applications. In hardware applications, it is necessary to
implement a small, accelerated, and configurable...
Integrating quantum neural networks with machine learning algorithms for optimizing healthcare diagnostics and treatment outcomes
Integrating quantum neural networks with machine learning algorithms for optimizing healthcare diagnostics and treatment outcomes
The rapid advancements in artificial intelligence (AI) and quantum computing have catalyzed an unprecedented shift in the methodologies utilized for healthcare diagnostics and trea...

