2020
DOI: 10.1016/bs.agph.2020.08.002
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70 years of machine learning in geoscience in review

Abstract: This review gives an overview of the development of machine learning in geoscience. A thorough analysis of the codevelopments of machine learning applications throughout the last 70 years relates the recent enthusiasm for machine learning to developments in geoscience. I explore the shift of kriging toward a mainstream machine learning method and the historic application of neural networks in geoscience, following the general trend of machine learning enthusiasm through the decades. Furthermore, this chapter e… Show more

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Cited by 183 publications
(89 citation statements)
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“…There are many approaches to estimating missing values which range from simple mean or median estimates, to regression models. More recently machine learning algorithms have been gaining in popularity in the geosciences (Dramsch, 2020). The efficacy of any method depends upon the type of data being imputed, the quality and distribution of the known values and the complexity of the imputation model.…”
Section: Data Imputation and Predictionmentioning
confidence: 99%
See 1 more Smart Citation
“…There are many approaches to estimating missing values which range from simple mean or median estimates, to regression models. More recently machine learning algorithms have been gaining in popularity in the geosciences (Dramsch, 2020). The efficacy of any method depends upon the type of data being imputed, the quality and distribution of the known values and the complexity of the imputation model.…”
Section: Data Imputation and Predictionmentioning
confidence: 99%
“…The recent explosion in data science methods and availability of large amounts of well log data present an opportunity to use a more automated statistics based approach which simplifies the imputation process, improving both accuracy and turnaround. The application of machine learning methods to well log imputation or prediction and with geosciences in general is not new (Dramsch, 2020). For example, commercial applications of earlier machine learning algorithms (artificial neural networks (ANN) and radial basis functions) have been used to predict logs from seismic data and attributes (Hampson et al, 2001;Russell et al, 2003) have existed for nearly 20 years.…”
Section: Introductionmentioning
confidence: 99%
“…The confluence of new ML algorithms, fast and inexpensive graphical processing units and tensor processing units, and the availability of massive, often continuous datasets has driven this revolution in data-driven analysis. This rapid expansion has seen application of existing and new ML tools to a suite of geoscientific problems ( 33 36 ) that span seismic wave detection and phase identification and location ( 34 , 37 45 ), geological formation identification ( 46 , 47 ), earthquake early warning ( 48 ), volcano monitoring ( 49 51 ), denoising Interferometric Synthetic Aperture Radar (InSAR) ( 50 , 52 , 53 ), tomographic imaging ( 54 57 ), reservoir characterization ( 58 – 60 ), and more. Of particular note is that, over the past 5 y, considerable effort has been devoted to using these approaches to characterize fault physics and forecast fault failure ( 1 3 , 13 , 35 , 61 63 ).…”
Section: Recent Applications Of ML In Earthquake Sciencementioning
confidence: 99%
“…Machine learning comprises a plethora of numerical methods that can learn from available data and make predictions in unseen data (process called generalization, e.g., Abu‐Mostafa et al., 2012; Goodfellow, Bengio, et al., 2016). Machine learning is not a new domain of research, with the first landmark works having emerged in the 50–60's (see Figure 1 in Dramsch (2020) and references therein). However, its demands for large quantities of data and computational resources required by the learning process have only been met over the last two decades or so (e.g., Bishop, 1995; Carbonell et al., 1983; Devilee et al., 1999; Ermini et al., 2005; Goodfellow, Bengio, et al., 2016; LeCun, Bengio, & Hinton, 2015; MacKay, 2003; Meier et al., 2007; Mjolsness & DeCoste, 2001; Van der Baan & Jutten, 2000).…”
Section: Introductionmentioning
confidence: 99%