ABSTRACT

Introduction to Environmental Data Science focuses on data science methods in the R language applied to environmental research, with sections on exploratory data analysis in R including data abstraction, transformation, and visualization; spatial data analysis in vector and raster models; statistics and modelling ranging from exploratory to modelling, considering confirmatory statistics and extending to machine learning models; time series analysis, focusing especially on carbon and micrometeorological flux; and communication. Introduction to Environmental Data Science is an ideal textbook to teach undergraduate to graduate level students in environmental science, environmental studies, geography, earth science, and biology, but can also serve as a reference for environmental professionals working in consulting, NGOs, and government agencies at the local, state, federal, and international levels.

 

Features

• Gives thorough consideration of the needs for environmental research in both spatial and temporal domains.

• Features examples of applications involving field-collected data ranging from individual observations to data logging.

• Includes examples also of applications involving government and NGO sources, ranging from satellite imagery to environmental data collected by regulators such as EPA.

• Contains class-tested exercises in all chapters other than case studies. Solutions manual available for instructors.

• All examples and exercises make use of a GitHub package for functions and especially data.

chapter 1|10 pages

Background, Goals and Data

part I|110 pages

Exploratory Data Analysis

chapter 122|42 pages

Introduction to R

chapter 3|24 pages

Data Abstraction

chapter 4|28 pages

Visualization

chapter 5|14 pages

Data Transformation

part II|104 pages

Spatial

chapter 1226|40 pages

Spatial Data and Maps

chapter 7|24 pages

Spatial Analysis

chapter 8|18 pages

Raster Spatial Analysis

chapter 9|20 pages

Spatial Interpolation

part III|92 pages

Statistics and Modeling

chapter 22610|26 pages

Statistical Summaries and Tests

chapter 11|28 pages

Modeling

chapter 12|36 pages

Imagery and Classification Models

part IV|32 pages

Time Series

chapter 31813|30 pages

Time Series Visualization and Analysis

part V|24 pages

Communication and References

chapter 35014|22 pages

Communication with Shiny