Models and monitoring designs for spatio-temporal climate data fields

In this thesis, we describe how appropriately modelling the spatio-temporal mean surface can help resolve complex patterns of nonstationarity and improve spatial prediction. Nonstationary fields are common in environmental science applications, and even more so in regions with complex terrain. Our a...

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Main Author: Casquilho Resende, Camila Maria
Language:English
Published: University of British Columbia 2016
Online Access:http://hdl.handle.net/2429/59293
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spelling ndltd-UBC-oai-circle.library.ubc.ca-2429-592932018-01-05T17:29:17Z Models and monitoring designs for spatio-temporal climate data fields Casquilho Resende, Camila Maria In this thesis, we describe how appropriately modelling the spatio-temporal mean surface can help resolve complex patterns of nonstationarity and improve spatial prediction. Nonstationary fields are common in environmental science applications, and even more so in regions with complex terrain. Our analyses focus on the Pacific Northwest, a region where rapid changes and localized weather are very common, and where the terrain plays an important role in separating often radically different climate and weather regimes. To this end, we introduce two comparable strategies for spatial prediction. The first is based on a Bayesian spatial prediction method, where an exploratory analysis was performed in order to better understand the localized weather regimes. The other is based on tackling the anomalies of expected climate in the Pacific Northwest region, based on the average values of temperature computed over a 30-year range obtained through a climate analysis system. Secondly, we focus on one of the recent challenges in spatial statistics applications, the data fusion problem. There has been an increased need for combining information from multiple sources that may be on different spatial scales. Ensemble modelling is referred to as a statistical post-processing technique based on combining multiple computer model outputs in a statistical model with the goal of obtaining probabilistic forecasts. We give an overview of some ensemble modelling strategies, by combining observed temperature measurements with outputs from an ensemble of deterministic climate models. We also provide a comparison between the Bayesian model averaging approach and a dynamic Bayesian ensemble strategy for forecasting. Finally, we introduce a novel strategy for the design of monitoring network, where the goal is to select a high-quality yet diverse set of locations. The idea of spatial repulsion is brought to this context via the theory of determinantal point processes. Our design strategy is not only able to yield spatially-balanced designs, but it also has the ability to assess similarity between the potential locations should there be extra sources of information related to the underlying process of interest. We explore its relationship to existing design methods, such as the entropy-based and space-filling designs. Science, Faculty of Statistics, Department of Graduate 2016-09-26T15:09:27Z 2016-09-27T02:02:00 2016 2016-11 Text Thesis/Dissertation http://hdl.handle.net/2429/59293 eng Attribution-ShareAlike 4.0 International http://creativecommons.org/licenses/by-sa/4.0/ University of British Columbia
collection NDLTD
language English
sources NDLTD
description In this thesis, we describe how appropriately modelling the spatio-temporal mean surface can help resolve complex patterns of nonstationarity and improve spatial prediction. Nonstationary fields are common in environmental science applications, and even more so in regions with complex terrain. Our analyses focus on the Pacific Northwest, a region where rapid changes and localized weather are very common, and where the terrain plays an important role in separating often radically different climate and weather regimes. To this end, we introduce two comparable strategies for spatial prediction. The first is based on a Bayesian spatial prediction method, where an exploratory analysis was performed in order to better understand the localized weather regimes. The other is based on tackling the anomalies of expected climate in the Pacific Northwest region, based on the average values of temperature computed over a 30-year range obtained through a climate analysis system. Secondly, we focus on one of the recent challenges in spatial statistics applications, the data fusion problem. There has been an increased need for combining information from multiple sources that may be on different spatial scales. Ensemble modelling is referred to as a statistical post-processing technique based on combining multiple computer model outputs in a statistical model with the goal of obtaining probabilistic forecasts. We give an overview of some ensemble modelling strategies, by combining observed temperature measurements with outputs from an ensemble of deterministic climate models. We also provide a comparison between the Bayesian model averaging approach and a dynamic Bayesian ensemble strategy for forecasting. Finally, we introduce a novel strategy for the design of monitoring network, where the goal is to select a high-quality yet diverse set of locations. The idea of spatial repulsion is brought to this context via the theory of determinantal point processes. Our design strategy is not only able to yield spatially-balanced designs, but it also has the ability to assess similarity between the potential locations should there be extra sources of information related to the underlying process of interest. We explore its relationship to existing design methods, such as the entropy-based and space-filling designs. === Science, Faculty of === Statistics, Department of === Graduate
author Casquilho Resende, Camila Maria
spellingShingle Casquilho Resende, Camila Maria
Models and monitoring designs for spatio-temporal climate data fields
author_facet Casquilho Resende, Camila Maria
author_sort Casquilho Resende, Camila Maria
title Models and monitoring designs for spatio-temporal climate data fields
title_short Models and monitoring designs for spatio-temporal climate data fields
title_full Models and monitoring designs for spatio-temporal climate data fields
title_fullStr Models and monitoring designs for spatio-temporal climate data fields
title_full_unstemmed Models and monitoring designs for spatio-temporal climate data fields
title_sort models and monitoring designs for spatio-temporal climate data fields
publisher University of British Columbia
publishDate 2016
url http://hdl.handle.net/2429/59293
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