Reprint

High Performance Computing and Artificial Intelligence for Geosciences

Edited by
July 2023
188 pages
  • ISBN978-3-0365-8180-4 (Hardback)
  • ISBN978-3-0365-8181-1 (PDF)

This book is a reprint of the Special Issue High Performance Computing and Artificial Intelligence for Geosciences that was published in

Biology & Life Sciences
Chemistry & Materials Science
Computer Science & Mathematics
Engineering
Environmental & Earth Sciences
Physical Sciences
Summary

In total, this Special Issue includes 11 papers. Firstly, Qi et al. conducted research on the large-scale non-uniform parallel solution of the two-dimensional Saint-Venant equations for flood behavior modeling. Zhang et al. proposed an efficient deep learning-based mineral identification method. Subsequently, Huang et al. proposed a named entity recognition method for geological news based on BERT model. Yang et al. proposed an automatic landslide identification method to solve the problem of the time-consuming nature and low efficiency of traditional landslide identification methods. Du et al. analyzed the potential of unsupervised machine learning methods for submarine landslide prediction. Wang et al. performed parallel computations on the inversion algorithm of the two-dimensional ZTEM. Xu et al. used the sliding window method and gray relational analysis to extract features from multi-source real-time monitoring data of landslides. Furthermore, Cao et al. proposed a new method called dual encoder transform (DualET) for the short-term prediction of photovoltaic power. Hao et al. conducted a series of parallel optimizations and large-scale parallel simulations on the high-resolution ocean model. Wang et al. proposed a time series prediction model for landslide displacements using mean-based low-rank autoregressive tensor completion. Finally, Yang et al. developed a measure of site-level gross primary productivity (GPP) using the GeoMAN model. 

Format
  • Hardback
License
© 2022 by the authors; CC BY-NC-ND license
Keywords
Saint-Venant equations; finite difference method; parallel computing; heterogeneous computing; deep learning; image enhancement; mineral identification; convolutional neural networks; BERT; named entity recognition; geological news; CRF; deep learning; semantic segmentation; PSPNet; landslide; submarine landslide; machine learning; hazard susceptibility; spatial distribution; ZTEM; 2D forward modeling; inversion; parallel algorithm; tipper; disaster precursor identification; early warning; association rule mining; particle swarm optimization; k-means clustering; Apriori algorithm; gray relation analysis; transformer; photovoltaic power forecasting; satellite images; deep learning; LICOM; meteorological model; parallel optimization; time series; missing data; tensor completion; autoregressive norm; displacement prediction; deep learning; GeoMAN model; gross primary productivity; attention mechanism; interdisciplinary; n/a