Statistical Methods for Trend Detection and Analysis in the Environmental Sciences
Statistical methodology itself has made some significant
developments in areas that are highly relevant to the problems
faced by environmentalists; thus this book fills a gap in the
market in which there is currently a lot of interest.Split into two
parts, part 1 - Theory and methods - introduces the basis for and
scope of the book, and covers amongst others the chief topics of
exploratory analysis, non-parametric estimation and testing, and
parametric modeling. Part 2 - Case Studies - introduces a number of
co-authors, specialists in their own areas of environmental
science, to illustrate the application of the theory and methods in
practice. The accompanying website develops the practical aspects
raised in the book, and provides a useful complementary tool.
The need to understand and quantify change is fundamental
throughout the environmental sciences. This might involve
describing past variation, understanding the mechanisms underlying
observed changes, making projections of possible future change, or
monitoring the effect of intervening in some environmental system.
This book provides an overview of modern statistical techniques
that may be relevant in problems of this nature.
Practitioners studying environmental change will be familiar with
many classical statistical procedures for the detection and
estimation of trends. However, the ever increasing capacity to
collect and process vast amounts of environmental information has
led to growing awareness that such procedures are limited in the
insights that they can deliver. At the same time, significant
developments in statistical methodology have often been widely
dispersed in the statistical literature and have therefore received
limited exposure in the environmental science community. This book
aims to provide a thorough but accessible review of these
developments. It is split into two parts: the first provides an
introduction to this area and the second part presents a collection
of case studies illustrating the practical application of modern
statistical approaches to the analysis of trends in real
studies.
Key Features:
- Presents a thorough introduction to the practical application and
methodology of trend analysis in environmental science.
- Explores non-parametric estimation and testing as well as
parametric techniques.
- Methods are illustrated using case studies from a variety of
environmental application areas.
- Looks at trends in all aspects of a process including mean,
percentiles and extremes.
- Supported by an accompanying website featuring datasets and R
code.
The book is designed to be accessible to readers with some basic
statistical training, but also contains sufficient detail to serve
as a reference for practising statisticians. It will therefore be
of use to postgraduate students and researchers both in the
environmental sciences and in statistics.
"The book is well written and I strongly recommend the book to the users. I have no doubt that many applied statisticians will benefit by the wide coverage of topics in the book." (Journal of Time Series Analysis, 9 May 2011)
"The book is well written and I strongly recommend the book to the users. I have no doubt that many applied statisticians will benefit by the wide coverage of topics in the book." (Journal of Time Series Analysis, 9 May 2011)
Inhaltsangabe
Preface. Contributing authors. Part I METHODOLOGY. 1 Introduction. 1.1 What is a trend? 1.2 Why analyse trends? 1.3 Some simple examples. 1.4 Considerations and Difficulties. 1.5 Scope of the book. 1.6 Further reading. References. 2 Exploratory analysis. 2.1 Data visualisation. 2.2 Simple smoothing. 2.3 Linear filters. 2.4 Classical test procedures. 2.5 Concluding comments. References. 3 Parametric modelling - deterministic trends. 3.1 The Linear trend. 3.2 Multiple regression techniques. 3.3 Violations of assumptions. 3.4 Nonlinear trends. 3.5 Generalized linear models. 3.6 Inference with small samples. References. 4 Nonparametric trend estimation. 4.1 An introduction to nonparametric regression. 4.2 Multiple covariates. 4.3 Other nonparametric estimation techniques. 4.4 Parametric or nonparametric? References. 5 Stochastic trends. 5.1 Stationary time series models and their properties. 5.2 Trend removal via differencing. 5.3 Long memory models. 5.4 Models for irregularly spacedseries. 5.5 State space and structural models. 5.6 Nonlinear models. References. 6 Other issues. 6.1 Multisite data. 6.2 Multivariate series. 6.3 Point process data. 6.4 Trends in extremes. 6.5 Censored data. References. Part II CASE STUDIES. 7 Additive models for sulphur dioxide pollution in Europe (Marco Giannitrapani, Adrian Bowman, E. Marian Scott and Ron Smith) 7.1 Introduction. 7.2 Additive models with correlated errors. 7.3 Models for the SO2 data. 7.4 Conclusions. References. 8 Rainfall trends in southwest Western Australia (Richard E. Chandler, Bryson C. Bates and Stephen P. Charles). 8.1 Motivation. 8.2 The study region. 8.3 Data used in the study. 8.4 Modelling methodology. 8.5 Results. 8.6 Summary and conclusions. References. 9 Estimation of Common tends for tropical index series (Alain F. Zuur, Elena N. Ieno, Christina Mazziotti, Giuseppe Montanari, Attilio Rinaldi and Carla Rita Ferrari). 9.1 Introduction. 9.2 Data exploration. 9.3 Common trends and additive modelling. 9.4 Dynamic factor analysis to estimate common trends. 9.5 Discussion. Acknowledgement. References. 10 A Space-time study on forest health (Thomas Kneib and Ludwig Fahrmeir). 10.1 Forest health: survey and data. 10.2 Regression models for longitudinal data with ordinal responses. 10.3 Spatiotemporal models. 10.4 Spatiotemporal modelling and analysis of forest health data. Acknowledgements. References. Index.
Sitemap: 1 | 2 | 3 | 4 | 5 | 6 | 7 | 8 | 9 | 10 | 11 | 12 | 13 | 14 | 15 | 16 | 17 | 18 | 19 | 20