Abstract
Recently, a new data-driven technique, i.e., deep learning (DL), has
attracted significantly increasing attention in the geophysical
community. The collision of DL and traditional methods has brought
opportunities as well as challenges. DL was proven to have the potential
to predict complex system states accurately and relieve the “curse of
dimensionality” in large temporal and spatial geophysical applications.
We address the basic concepts, state-of-the-art literature, and future
trends by reviewing DL approaches in various geosciences scenarios.
Exploration geophysics, earthquakes, and remote sensing are the main
focuses. More applications, including Earth structure, water resources,
atmospheric science, and space science, are also reviewed. Additionally,
the difficulties of applying DL in the geophysical community are
stressed. The trends of DL in geophysics in recent years are analyzed.
Several promising directions are provided for future research involving
DL in geophysics, such as unsupervised learning, transfer learning,
multimodal DL, federated learning, uncertainty estimation, and active
learning. A coding tutorial and a summary of tips for rapidly exploring
DL are presented for beginners and interested readers of geophysics.