Machine learning in geosciences and remote sensing

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Abstract

Learning incorporates a broad range of complex procedures. Machine learning (ML) is a subdivision of artificial intelligence based on the biological learning process. The ML approach deals with the design of algorithms to learn from machine readable data. ML covers main domains such as data mining, difficult-to-program applications, and software applications. It is a collection of a variety of algorithms (e.g. neural networks, support vector machines, self-organizing map, decision trees, random forests, case-based reasoning, genetic programming, etc.) that can provide multivariate, nonlinear, nonparametric regression or classification. The modeling capabilities of the ML-based methods have resulted in their extensive applications in science and engineering. Herein, the role of ML as an effective approach for solving problems in geosciences and remote sensing will be highlighted. The unique features of some of the ML techniques will be outlined with a specific attention to genetic programming paradigm. Furthermore, nonparametric regression and classification illustrative examples are presented to demonstrate the efficiency of ML for tackling the geosciences and remote sensing problems.

Figures

  • Figure 1. Steps of the classification process (dos Santos et al., 2010).
  • Figure 2. The 8329 PM2.5 measurement site locations from 55 coun
  • Figure 3. The monthly average ML PM2.5 product (mg/m 3) for August 2001 (Lary et al., 2014a).
  • Figure 4. The quality of the ML fits is always quantified by scatter diagrams of the observed “truth” plotted on the x-axis against the corresponding ML estimate plotted on the y-axis. A separate ML fits of PM2.5 is performed for each satellite data product using a given algorithm and instrument.
  • Figure 6. Examples of our ML approach correctly identifying very localized point sources around the edge of salt flats in Bolivia and Chile. Notice the narrow dust plumes originating from precisely the identified source regions that have been highlighted in blue and cyan.
  • Figure 5. Dust sources are typically localized point sources.

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CITATION STYLE

APA

Lary, D. J., Alavi, A. H., Gandomi, A. H., & Walker, A. L. (2016). Machine learning in geosciences and remote sensing. Geoscience Frontiers, 7(1), 3–10. https://doi.org/10.1016/j.gsf.2015.07.003

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