Applications of physics-informed scientific machine learning in
subsurface science: A survey
- URL: http://arxiv.org/abs/2104.04764v2
- Date: Tue, 13 Apr 2021 12:09:57 GMT
- Title: Applications of physics-informed scientific machine learning in
subsurface science: A survey
- Authors: Alexander Y. Sun, Hongkyu Yoon, Chung-Yan Shih, Zhi Zhong
- Abstract summary: Geosystems are geological formations altered by humans activities such as fossil energy exploration, waste disposal, geologic carbon sequestration, and renewable energy generation.
The responsible use and exploration of geosystems are thus critical to the geosystem governance, which in turn depends on the efficient monitoring, risk assessment, and decision support tools for practical implementation.
Fast advances in machine learning algorithms and novel sensing technologies in recent years have presented new opportunities for the subsurface research community to improve the efficacy and transparency of geosystem governance.
- Score: 64.0476282000118
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Geosystems are geological formations altered by humans activities such as
fossil energy exploration, waste disposal, geologic carbon sequestration, and
renewable energy generation. Geosystems also represent a critical link in the
global water-energy nexus, providing both the source and buffering mechanisms
for enabling societal adaptation to climate variability and change. The
responsible use and exploration of geosystems are thus critical to the
geosystem governance, which in turn depends on the efficient monitoring, risk
assessment, and decision support tools for practical implementation. Fast
advances in machine learning (ML) algorithms and novel sensing technologies in
recent years have presented new opportunities for the subsurface research
community to improve the efficacy and transparency of geosystem governance.
Although recent studies have shown the great promise of scientific ML (SciML)
models, questions remain on how to best leverage ML in the management of
geosystems, which are typified by multiscality, high-dimensionality, and data
resolution inhomogeneity. This survey will provide a systematic review of the
recent development and applications of domain-aware SciML in geosystem
researches, with an emphasis on how the accuracy, interpretability,
scalability, defensibility, and generalization skill of ML approaches can be
improved to better serve the geoscientific community.
Related papers
- Recent Advances on Machine Learning for Computational Fluid Dynamics: A Survey [51.87875066383221]
This paper introduces fundamental concepts, traditional methods, and benchmark datasets, then examine the various roles Machine Learning plays in improving CFD.
We highlight real-world applications of ML for CFD in critical scientific and engineering disciplines, including aerodynamics, combustion, atmosphere & ocean science, biology fluid, plasma, symbolic regression, and reduced order modeling.
We draw the conclusion that ML is poised to significantly transform CFD research by enhancing simulation accuracy, reducing computational time, and enabling more complex analyses of fluid dynamics.
arXiv Detail & Related papers (2024-08-22T07:33:11Z) - GeoAI Reproducibility and Replicability: a computational and spatial perspective [3.46924652750064]
This paper aims to provide an in-depth analysis of this topic from both computational and spatial perspectives.
We first categorize the major goals for reproducing GeoAI research, namely, validation (repeatability), learning and adapting the method for solving a similar or new problem (reproducibility), and examining the generalizability of the research findings (replicability)
We then discuss the factors that may cause the lack of R&R in GeoAI research, with an emphasis on (1) the selection and use of training data; (2) the uncertainty that resides in the GeoAI model design, training, deployment, and inference processes;
arXiv Detail & Related papers (2024-04-15T19:43:16Z) - When Geoscience Meets Generative AI and Large Language Models:
Foundations, Trends, and Future Challenges [4.013156524547072]
Generative Artificial Intelligence (GAI) represents an emerging field that promises the creation of synthetic data and outputs in different modalities.
This paper explores the potential applications of generative AI and large language models in geoscience.
arXiv Detail & Related papers (2024-01-25T12:03:50Z) - Challenges in data-based geospatial modeling for environmental research
and practice [19.316860936437823]
Data-based geospatial modelling using machine learning (ML) has gained popularity in environmental research.
This survey reviews common nuances in geospatial modelling, such as imbalanced data, spatial autocorrelation, prediction errors, model generalisation, domain specificity, and uncertainty estimation.
arXiv Detail & Related papers (2023-11-18T12:30:49Z) - When Geoscience Meets Foundation Models: Towards General Geoscience Artificial Intelligence System [6.445323648941926]
Geoscience foundation models (GFMs) are a paradigm-shifting solution, integrating extensive cross-disciplinary data to enhance the simulation and understanding of Earth system dynamics.
The unique strengths of GFMs include flexible task specification, diverse input-output capabilities, and multi-modal knowledge representation.
This review offers a comprehensive overview of emerging geoscientific research paradigms, emphasizing the untapped opportunities at the intersection of advanced AI techniques and geoscience.
arXiv Detail & Related papers (2023-09-13T08:44:09Z) - A Critical Review of Physics-Informed Machine Learning Applications in
Subsurface Energy Systems [0.0]
Physics-informed machine learning (PIML) techniques integrate physics principles into data-driven models.
PIML improves the generalization of the model, abidance by the governing physical laws, and interpretability.
This paper reviews PIML applications related to subsurface energy systems, mainly in the oil and gas industry.
arXiv Detail & Related papers (2023-08-06T18:20:24Z) - A General Purpose Neural Architecture for Geospatial Systems [142.43454584836812]
We present a roadmap towards the construction of a general-purpose neural architecture (GPNA) with a geospatial inductive bias.
We envision how such a model may facilitate cooperation between members of the community.
arXiv Detail & Related papers (2022-11-04T09:58:57Z) - Machine Learning in Nano-Scale Biomedical Engineering [77.75587007080894]
We review the existing research regarding the use of machine learning in nano-scale biomedical engineering.
The main challenges that can be formulated as ML problems are classified into the three main categories.
For each of the presented methodologies, special emphasis is given to its principles, applications, and limitations.
arXiv Detail & Related papers (2020-08-05T15:45:54Z) - A Survey on Deep Learning for Localization and Mapping: Towards the Age
of Spatial Machine Intelligence [48.67755344239951]
We provide a comprehensive survey, and propose a new taxonomy for localization and mapping using deep learning.
A wide range of topics are covered, from learning odometry estimation, mapping, to global localization and simultaneous localization and mapping.
It is our hope that this work can connect emerging works from robotics, computer vision and machine learning communities.
arXiv Detail & Related papers (2020-06-22T19:01:21Z) - Leveraging traditional ecological knowledge in ecosystem restoration
projects utilizing machine learning [77.34726150561087]
Community engagement throughout the stages of ecosystem restoration projects could contribute to improved community well-being.
We suggest that adaptive and scalable practices could incentivize interdisciplinary collaboration during all stages of ecosystemic ML restoration projects.
arXiv Detail & Related papers (2020-06-22T16:17:48Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.