Introduction to Environmental Data Science

Introduction to Environmental Data Science
Author: Jerry Davis
Publsiher: CRC Press
Total Pages: 492
Release: 2023-03-13
Genre: Business & Economics
ISBN: 9781000842418

Download Introduction to Environmental Data Science Book in PDF, Epub and Kindle

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.

Introduction to Environmental Data Science

Introduction to Environmental Data Science
Author: Jerry D. Davis
Publsiher: Unknown
Total Pages: 0
Release: 2023
Genre: Environmental sciences
ISBN: 1032330341

Download Introduction to Environmental Data Science Book in PDF, Epub and Kindle

"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 & 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. It 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"--

Introduction to Environmental Data Science

Introduction to Environmental Data Science
Author: William W. Hsieh
Publsiher: Cambridge University Press
Total Pages: 649
Release: 2023-03-31
Genre: Computers
ISBN: 9781107065550

Download Introduction to Environmental Data Science Book in PDF, Epub and Kindle

A comprehensive guide to machine learning and statistics for students and researchers of environmental data science.

Introduction to Environmental Data Analysis and Modeling

Introduction to Environmental Data Analysis and Modeling
Author: Moses Eterigho Emetere,Esther Titilayo Akinlabi
Publsiher: Springer Nature
Total Pages: 239
Release: 2020-01-03
Genre: Technology & Engineering
ISBN: 9783030362072

Download Introduction to Environmental Data Analysis and Modeling Book in PDF, Epub and Kindle

This book introduces numerical methods for processing datasets which may be of any form, illustrating adequately computational resolution of environmental alongside the use of open source libraries. This book solves the challenges of misrepresentation of datasets that are relevant directly or indirectly to the research. It illustrates new ways of screening datasets or images for maximum utilization. The adoption of various numerical methods in dataset treatment would certainly create a new scientific approach. The book enlightens researchers on how to analyse measurements to ensure 100% utilization. It introduces new ways of data treatment that are based on a sound mathematical and computational approach.

Environmental Data Analysis

Environmental Data Analysis
Author: Carsten Dormann
Publsiher: Springer Nature
Total Pages: 264
Release: 2020-12-20
Genre: Medical
ISBN: 9783030550202

Download Environmental Data Analysis Book in PDF, Epub and Kindle

Environmental Data Analysis is an introductory statistics textbook for environmental science. It covers descriptive, inferential and predictive statistics, centred on the Generalized Linear Model. The key idea behind this book is to approach statistical analyses from the perspective of maximum likelihood, essentially treating most analyses as (multiple) regression problems. The reader will be introduced to statistical distributions early on, and will learn to deploy models suitable for the data at hand, which in environmental science are often not normally distributed. To make the initially steep learning curve more manageable, each statistical chapter is followed by a walk-through in a corresponding R-based how-to chapter, which reviews the theory and applies it to environmental data. In this way, a coherent and expandable foundation in parametric statistics is laid, which can be expanded in advanced courses.The content has been “field-tested” in several years of courses on statistics for Environmental Science, Geography and Forestry taught at the University of Freiburg.

Introduction to Environmental Data Science

Introduction to Environmental Data Science
Author: William Wei Hsieh
Publsiher: Unknown
Total Pages: 0
Release: 2023
Genre: Environmental management
ISBN: 1107588499

Download Introduction to Environmental Data Science Book in PDF, Epub and Kindle

"Statistical and machine learning methods have many applications in the environmental sciences, including prediction and data analysis in meteorology, hydrology and oceanography; pattern recognition for satellite images from remote sensing; management of agriculture and forests; assessment of climate change; and much more. With rapid advances in machine learning in the last decade, this book provides an urgently needed, comprehensive guide to machine learning and statistics for students and researchers interested in environmental data science. It includes intuitive explanations covering the relevant background mathematics, with examples drawn from the environmental sciences. A broad range of topics are covered, including correlation, regression, classification, clustering, neural networks, random forests, boosting, kernel methods, evolutionary algorithms and deep learning, as well as the recent merging of machine learning and physics. End-of-chapter exercises allow readers to develop their problem-solving skills, and online datasets allow readers to practise analysis of real data. William W. Hsieh is a professor emeritus in the Department of Earth, Ocean and Atmospheric Sciences at the University of British Columbia. Known as a pioneer in introducing machine learning to environmental science, he has written over 100 peer-reviewed journal papers on climate variability, machine learning, atmospheric science, oceanography, hydrology and agricultural science. He is the author of the book Machine Learning Methods in the Environmental Sciences (2009, Cambridge University Press), the first single-authored textbook on machine learning for environmental scientists. Currently retired in Victoria, British Columbia, he enjoys growing organic vegetables"--

Introduction to Environmental Data Science

Introduction to Environmental Data Science
Author: Jerry Davis
Publsiher: CRC Press
Total Pages: 403
Release: 2023-03-13
Genre: Business & Economics
ISBN: 9781000842272

Download Introduction to Environmental Data Science Book in PDF, Epub and Kindle

• 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.

Modeling and Data Analysis An Introduction with Environmental Applications

Modeling and Data Analysis  An Introduction with Environmental Applications
Author: John B. Little
Publsiher: American Mathematical Soc.
Total Pages: 323
Release: 2019-03-28
Genre: Environmental sciences
ISBN: 9781470448691

Download Modeling and Data Analysis An Introduction with Environmental Applications Book in PDF, Epub and Kindle

Can we coexist with the other life forms that have evolved on this planet? Are there realistic alternatives to fossil fuels that would sustainably provide for human society's energy needs and have fewer harmful effects? How do we deal with threats such as emergent diseases? Mathematical models—equations of various sorts capturing relationships between variables involved in a complex situation—are fundamental for understanding the potential consequences of choices we make. Extracting insights from the vast amounts of data we are able to collect requires analysis methods and statistical reasoning. This book on elementary topics in mathematical modeling and data analysis is intended for an undergraduate “liberal arts mathematics”-type course but with a specific focus on environmental applications. It is suitable for introductory courses with no prerequisites beyond high school mathematics. A great variety of exercises extends the discussions of the main text to new situations and/or introduces new real-world examples. Every chapter ends with a section of problems, as well as with an extended chapter project which often involves substantial computing work either in spreadsheet software or in the R statistical package.