Please use this identifier to cite or link to this item: http://hdl.handle.net/2122/16202
Authors: Woollam, Jack* 
Münchmeyer, Jannes* 
Tilmann, Frederik* 
Rietbrock, Andreas* 
Lange, Dietrich* 
Bornstein, Thomas* 
Diehl, Tobias* 
Giunchi, Carlo* 
Haslinger, Florian* 
Jozinović, Dario* 
Michelini, Alberto* 
Saul, Joachim* 
Soto, Hugo* 
Title: SeisBench—A Toolbox for Machine Learning in Seismology
Journal: Seismological Research Letters 
Series/Report no.: /93 (2022)
Publisher: Seismological Society of America
Issue Date: 16-Mar-2022
DOI: 10.1785/0220210324
Abstract: Machine‐learning (ML) methods have seen widespread adoption in seismology in recent years. The ability of these techniques to efficiently infer the statistical properties of large datasets often provides significant improvements over traditional techniques when the number of data are large (millions of examples). With the entire spectrum of seismological tasks, for example, seismic picking and detection, magnitude and source property estimation, ground‐motion prediction, hypocenter determination, among others, now incorporating ML approaches, numerous models are emerging as these techniques are further adopted within seismology. To evaluate these algorithms, quality‐controlled benchmark datasets that contain representative class distributions are vital. In addition to this, models require implementation through a common framework to facilitate comparison. Accessing these various benchmark datasets for training and implementing the standardization of models is currently a time‐consuming process, hindering further advancement of ML techniques within seismology. These development bottlenecks also affect “practitioners” seeking to deploy the latest models on seismic data, without having to necessarily learn entirely new ML frameworks to perform this task. We present SeisBench as a software package to tackle these issues. SeisBench is an open‐source framework for deploying ML in seismology—available via GitHub. SeisBench standardizes access to both models and datasets, while also providing a range of common processing and data augmentation operations through the API. Through SeisBench, users can access several seismological ML models and benchmark datasets available in the literature via a single interface. SeisBench is built to be extensible, with community involvement encouraged to expand the package. Having such frameworks available for accessing leading ML models forms an essential tool for seismologists seeking to iterate and apply the next generation of ML techniques to seismic data.
Appears in Collections:Article published / in press

Files in This Item:
File Description SizeFormat Existing users please Login
Woollam et al. - 2022 - SeisBench—A Toolbox for Machine Learning in Seismo.pdfRestricted Paper5.97 MBAdobe PDF
2111.00786(1).pdf10.07 MBAdobe PDFView/Open
Show full item record

Page view(s)

93
checked on Apr 24, 2024

Download(s)

23
checked on Apr 24, 2024

Google ScholarTM

Check

Altmetric