The skill of the state-of-the-art climate field reconstruction technique BARCAST (Bayesian Algorithm for Reconstructing Climate Anomalies in Space and Time) to reconstruct temperature with pronounced long-range memory (LRM) characteristics is tested. A novel technique for generating fields of target data has been developed and is used to provide ensembles of LRM stochastic processes with a prescribed spatial covariance structure. Based on different parameter setups, hypothesis testing in the spectral domain is used to investigate if the field and spatial mean reconstructions are consistent with either the fractional Gaussian noise (fGn) process null hypothesis used for generating the target data, or the autoregressive model of orde...
Statistical reconstructions of past climate variability based on climate indicators face several unc...
Part 1 presented a hierarchical Bayesian approach to reconstructing the spa-tial pattern of a climat...
Thesis (Master's)--University of Washington, 2016-06In this work we improve the skill of climate fie...
The skill of the state-of-the-art climate field reconstruction technique BARCAST (Bayesian Algorithm...
This study presents pseudo-proxy experiments to quantify the reconstruction skill of two climate fie...
This study presents pseudo-proxy experiments to quantify the reconstruction skill of two climate fie...
The spatial skill of four climate field reconstruction (CFR) methods is investigated using pseudopro...
The spatial skill of four climate field reconstruction (CFR) methods is investigated using pseudopro...
The spatial skill of four climate field reconstruction (CFR) methods is investigated using pseudopro...
The spatial skill of four climate field reconstruction (CFR) methods is investigated using pseudopro...
Part I presented a Bayesian algorithm for reconstructing climate anomalies in space and time (BARCAS...
We present results from continued investigations into the fidelity of covariance-based climate field...
We present results from continued investigations into the fidelity of covariance-based climate field...
This paper presents a comparison of principal component (PC) regression and regularized expectation ...
The performance of climate field reconstruction (CFR) and index reconstruction methods is evaluated ...
Statistical reconstructions of past climate variability based on climate indicators face several unc...
Part 1 presented a hierarchical Bayesian approach to reconstructing the spa-tial pattern of a climat...
Thesis (Master's)--University of Washington, 2016-06In this work we improve the skill of climate fie...
The skill of the state-of-the-art climate field reconstruction technique BARCAST (Bayesian Algorithm...
This study presents pseudo-proxy experiments to quantify the reconstruction skill of two climate fie...
This study presents pseudo-proxy experiments to quantify the reconstruction skill of two climate fie...
The spatial skill of four climate field reconstruction (CFR) methods is investigated using pseudopro...
The spatial skill of four climate field reconstruction (CFR) methods is investigated using pseudopro...
The spatial skill of four climate field reconstruction (CFR) methods is investigated using pseudopro...
The spatial skill of four climate field reconstruction (CFR) methods is investigated using pseudopro...
Part I presented a Bayesian algorithm for reconstructing climate anomalies in space and time (BARCAS...
We present results from continued investigations into the fidelity of covariance-based climate field...
We present results from continued investigations into the fidelity of covariance-based climate field...
This paper presents a comparison of principal component (PC) regression and regularized expectation ...
The performance of climate field reconstruction (CFR) and index reconstruction methods is evaluated ...
Statistical reconstructions of past climate variability based on climate indicators face several unc...
Part 1 presented a hierarchical Bayesian approach to reconstructing the spa-tial pattern of a climat...
Thesis (Master's)--University of Washington, 2016-06In this work we improve the skill of climate fie...