Treffer: Introduction to Analysis Methods for Big Earth Data
Title:
Introduction to Analysis Methods for Big Earth Data
Authors:
Source:
Big Data Analytics in Earth, Atmospheric, and Ocean Sciences.
Publisher Information:
United States: NASA Center for Aerospace Information (CASI), 2022.
Publication Year:
2022
Subject Terms:
Document Type:
Report
Report
Language:
English
ISBN:
978-1-119-46757-1
1-119-46757-8
1-119-46757-8
Access URL:
Notes:
656052.04.05.01
Accession Number:
edsnas.20210021086
Database:
NASA Technical Reports
Weitere Informationen
Big Earth Data are too big to be tractable to simple data inspection. Thus, they typically require models to make sense of all the data. Useful models for Big Earth Data may be physical, statistical, or machine learning based. While physical models are ideal for understanding the data, they are not always feasible, particularly when our ability to observe at finer scales exceeds our ability to incorporate the physics. Statistical models are more generalized, but computationally intensive for many Earth Observation datasets. Machine Learning models generally scale well but are sometimes limited in the physical understanding they can offer. Hybrid models combine attributes—and advantages—of two or more of these types.