Spatial Analysis in Geology Using R Spatial Analysis in Geology Using R
Chapman & Hall/CRC The R Series

Spatial Analysis in Geology Using R

    • $1,449.00
    • $1,449.00

Descripción editorial

The integration of geology with data science disciplines, such as spatial statistics, remote sensing, and geographic information systems (GIS), has given rise to a shift in many natural sciences schools, pushing the boundaries of knowledge and enabling new discoveries in geological processes and earth systems. Spatial analysis of geological data can be used to identify patterns and trends in data, to map spatial relationships, and to model spatial processes. R is a consolidated and yet growing statistical programming language with increasing value in spatial analysis often replacing, with advantage, GIS tools. By providing a comprehensive guide for geologists to harness the power of spatial analysis in R, Spatial Analysis in Geology Using R serves as a tool in addressing real-world problems, such as natural resource management, environmental conservation, and hazard prediction and mitigation.

Features:
Provides a practical and accessible overview of spatial analysis in geology using R Organised in three independent and complementary parts: Introduction to R, Spatial Analysis with R, and Spatial Statistics and Modelling Applied approach with many detailed examples and case studies using real geological data Presents a collection of R packages that are useful in many geological situations Does not assume any prior knowledge of R; all code are explained in detail Supplemented by a website with all data, code, and examples
Spatial Analysis in Geology Using R will be useful to any geological researcher who has acquired basic spatial analysis skills, often using GIS, and is interested in deepening those skills through the use of R. It could be used as a reference by applied researchers and analysts in public, private, or third-sector industries. It could also be used to teach a course on the topic to graduate students or for self-study.

GÉNERO
Ciencia y naturaleza
PUBLICADO
2024
1 de julio
IDIOMA
EN
Inglés
EXTENSIÓN
452
Páginas
EDITORIAL
CRC Press
VENDEDOR
Taylor & Francis Group
TAMAÑO
15.9
MB
Reproducible Finance with R Reproducible Finance with R
2018
Hands-On Machine Learning with R Hands-On Machine Learning with R
2019
Computational Actuarial Science with R Computational Actuarial Science with R
2014
Distributions for Modeling Location, Scale, and Shape Distributions for Modeling Location, Scale, and Shape
2019
Introduction to Political Analysis in R Introduction to Political Analysis in R
2025
Displaying Time Series, Spatial, and Space-Time Data with R Displaying Time Series, Spatial, and Space-Time Data with R
2025