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Book Cover
E-book
Author Dietze, Michael Christopher, 1976- author.

Title Ecological forecasting / Michael C. Dietze
Published Princeton, New Jersey : Princeton University Press, [2017]
©2017

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Description 1 online resource (x, 270 pages) : illustrations
Contents Introduction -- From models to forecasts -- Data, large and small -- Scientific workflows and the informatics of model-data fusion -- Introduction to Bayes -- Characterizing uncertainty -- Case study : Biodiversity, populations, and endangered species -- Latent variables and state-space models -- Fusing data sources -- Case study : Natural resources -- Propagating, analyzing, and reducing uncertainty -- Case study : Carbon cycle -- Data assimilation 1 : analytical methods -- Data assimilation 2 : Monte Carlo methods -- Epidemiology -- Assessing model performance -- Projection and decision support -- Final thoughts
Summary Ecologists are being asked to respond to unprecedented environmental challenges. How can they provide the best available scientific information about what will happen in the future? Ecological Forecasting is the first book to bring together the concepts and tools needed to make ecology a more predictive science. Ecological Forecasting presents a new way of doing ecology. A closer connection between data and models can help us to project our current understanding of ecological processes into new places and times. This accessible and comprehensive book covers a wealth of topics, including Bayesian calibration and the complexities of real-world data; uncertainty quantification, partitioning, propagation, and analysis; feedbacks from models to measurements; state-space models and data fusion; iterative forecasting and the forecast cycle; and decision support. Features case studies that highlight the advances and opportunities in forecasting across a range of ecological subdisciplines, such as epidemiology, fisheries, endangered species, biodiversity, and the carbon cycle Presents a probabilistic approach to prediction and iteratively updating forecasts based on new dataDescribes statistical and informatics tools for bringing models and data together, with emphasis on:Quantifying and partitioning uncertaintiesDealing with the complexities of real-world dataFeedbacks to identifying data needs, improving models, and decision supportNumerous hands-on activities in R available online
Bibliography Includes bibliographical references (pages 245-259) and index
Notes Description based on print version record; title from resource title page (viewed August 8, 2022)
Subject Ecosystem health -- Forecasting
Ecological forecasting.
NATURE -- Ecology.
NATURE -- Ecosystems & Habitats -- Wilderness.
SCIENCE -- Environmental Science.
SCIENCE -- Life Sciences -- Ecology.
SCIENCE -- Life Sciences -- Biology.
Ecological forecasting
Form Electronic book
LC no. 2016044327
ISBN 1400885450
9781400885459