Dick J Brus
Spatial Sampling with R
Dick J Brus
Spatial Sampling with R
- Gebundenes Buch
- Merkliste
- Auf die Merkliste
- Bewerten Bewerten
- Teilen
- Produkt teilen
- Produkterinnerung
- Produkterinnerung
Scientific research often starts with data collection. However, many researchers pay insufficient attention to this first step in their research. The author, researcher at Wageningen University and Research, often had to conclude that the data collected by fellow researchers were suboptimal, or in some cases even unsuitable for their aim.
Andere Kunden interessierten sich auch für
- Dale L ZimmermanSpatial Linear Models for Environmental Data109,99 €
- Uncertainty Modelling and Quality Control for Spatial Data204,99 €
- Peter J DiggleStatistical Analysis of Spatial and Spatio-Temporal Point Patterns113,99 €
- Christopher D LloydLocal Models for Spatial Analysis154,99 €
- Marc Aerts / Helena Geys (eds.)Topics in Modelling of Clustered Data227,99 €
- Barbel Finkenstadt / Leonhard Held / Valerie Isham (eds.)Statistical Methods for Spatio-Temporal Systems157,99 €
- Pedro M. NogueiraSpatial Analysis in Geology Using R98,99 €
-
-
-
Scientific research often starts with data collection. However, many researchers pay insufficient attention to this first step in their research. The author, researcher at Wageningen University and Research, often had to conclude that the data collected by fellow researchers were suboptimal, or in some cases even unsuitable for their aim.
Produktdetails
- Produktdetails
- Verlag: Taylor & Francis Ltd (Sales)
- Seitenzahl: 534
- Erscheinungstermin: 26. September 2022
- Englisch
- Abmessung: 234mm x 156mm x 41mm
- Gewicht: 1211g
- ISBN-13: 9781032193854
- ISBN-10: 1032193859
- Artikelnr.: 63428009
- Verlag: Taylor & Francis Ltd (Sales)
- Seitenzahl: 534
- Erscheinungstermin: 26. September 2022
- Englisch
- Abmessung: 234mm x 156mm x 41mm
- Gewicht: 1211g
- ISBN-13: 9781032193854
- ISBN-10: 1032193859
- Artikelnr.: 63428009
Dick J. Brus worked as a researcher and statistics teacher at the Wageningen University and Research (Netherlands) for 38 years. His main fields of interest are sampling theory and geostatistics. He has gathered rich research experience in developing and applying statistical methods for natural resources inventory and monitoring. In 2015, he was appointed Adjunct Professor at Nanjing Normal University, Nanjing, China. He has published about 100 papers in peer-reviewed, international journals. He is second co-author of the book 'Sampling for Natural Resource Monitoring', published in 2006 by Springer. This book is widely acclaimed in soil, earth, environmental, agricultural and statistical science. Since January 1, 2022 he is retired and lives a joyful life in the countryside, where he grows vegetables in the garden, goes on cycling tours and sings in a choir. Every now and then, during rainy days, he works as a private contractor for the sole proprietorship Spatial Sampling registered with the Chamber of Commerce in the Netherlands.
1 Introduction 2 Introduction to probability sampling 3 Simple random
sampling 4 Stratified simple random sampling 5 Systematic random sampling 6
Cluster random sampling 7 Two-stage cluster random sampling 8 Sampling with
probabilities proportional to size 9 Balanced and well-spread sampling 10
Model-assisted estimation 11 Two-phase random sampling 12 Computing the
required sample size 13 Model-based optimisation of probability sampling
designs 14 Sampling for estimating parameters of (small) domains 15
Repeated sample surveys for monitoring population parameters 16
Introduction to sampling for mapping 17 Regular grid and spatial coverage
sampling 18 Covariate space coverage sampling 19 Conditioned Latin
hypercube sampling 20 Spatial response surface sampling 21 Introduction to
kriging 22 Model-based optimisation of the grid spacing 23 Model-based
optimisation of the sampling pattern 24 Sampling for estimating the
semivariogram 25 Sampling for validation of maps 26 Design-based,
model-based, and model-assisted approach for sampling and inference
sampling 4 Stratified simple random sampling 5 Systematic random sampling 6
Cluster random sampling 7 Two-stage cluster random sampling 8 Sampling with
probabilities proportional to size 9 Balanced and well-spread sampling 10
Model-assisted estimation 11 Two-phase random sampling 12 Computing the
required sample size 13 Model-based optimisation of probability sampling
designs 14 Sampling for estimating parameters of (small) domains 15
Repeated sample surveys for monitoring population parameters 16
Introduction to sampling for mapping 17 Regular grid and spatial coverage
sampling 18 Covariate space coverage sampling 19 Conditioned Latin
hypercube sampling 20 Spatial response surface sampling 21 Introduction to
kriging 22 Model-based optimisation of the grid spacing 23 Model-based
optimisation of the sampling pattern 24 Sampling for estimating the
semivariogram 25 Sampling for validation of maps 26 Design-based,
model-based, and model-assisted approach for sampling and inference
1 Introduction 2 Introduction to probability sampling 3 Simple random
sampling 4 Stratified simple random sampling 5 Systematic random sampling 6
Cluster random sampling 7 Two-stage cluster random sampling 8 Sampling with
probabilities proportional to size 9 Balanced and well-spread sampling 10
Model-assisted estimation 11 Two-phase random sampling 12 Computing the
required sample size 13 Model-based optimisation of probability sampling
designs 14 Sampling for estimating parameters of (small) domains 15
Repeated sample surveys for monitoring population parameters 16
Introduction to sampling for mapping 17 Regular grid and spatial coverage
sampling 18 Covariate space coverage sampling 19 Conditioned Latin
hypercube sampling 20 Spatial response surface sampling 21 Introduction to
kriging 22 Model-based optimisation of the grid spacing 23 Model-based
optimisation of the sampling pattern 24 Sampling for estimating the
semivariogram 25 Sampling for validation of maps 26 Design-based,
model-based, and model-assisted approach for sampling and inference
sampling 4 Stratified simple random sampling 5 Systematic random sampling 6
Cluster random sampling 7 Two-stage cluster random sampling 8 Sampling with
probabilities proportional to size 9 Balanced and well-spread sampling 10
Model-assisted estimation 11 Two-phase random sampling 12 Computing the
required sample size 13 Model-based optimisation of probability sampling
designs 14 Sampling for estimating parameters of (small) domains 15
Repeated sample surveys for monitoring population parameters 16
Introduction to sampling for mapping 17 Regular grid and spatial coverage
sampling 18 Covariate space coverage sampling 19 Conditioned Latin
hypercube sampling 20 Spatial response surface sampling 21 Introduction to
kriging 22 Model-based optimisation of the grid spacing 23 Model-based
optimisation of the sampling pattern 24 Sampling for estimating the
semivariogram 25 Sampling for validation of maps 26 Design-based,
model-based, and model-assisted approach for sampling and inference