Activity Number:
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169
- Advanced Bayesian Topics (Part 2)
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Type:
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Contributed
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Date/Time:
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Tuesday, August 10, 2021 : 10:00 AM to 11:50 AM
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Sponsor:
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Section on Bayesian Statistical Science
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Abstract #317986
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Title:
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Stochastic Variational Bayes Estimation for Multi-Site Daily Precipitation Data
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Author(s):
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Reetam Majumder* and Nagaraj K Neerchal and Amita Mehta and Matthias K Gobbert
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Companies:
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University of Maryland, Baltimore County and University of Maryland, Baltimore County and University of Maryland, Baltimore County and University of Maryland, Baltimore County
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Keywords:
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Variational Bayes;
Spatio-Temoral Modeling;
Hidden Markov Models;
Stochastic Optimization;
Gaussian Copula;
Semi-continuous Mixture Modeling
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Abstract:
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Hidden Markov models (HMM) are a common approach to precipitation modeling, wherein multi-site daily precipitation is assumed to be driven by a latent first-order Markov chain representing underlying weather states. Daily precipitation is specified as a semi-continuous distribution with a point mass at zero for no rainfall and a mixture of Exponential distributions for positive rainfall. We implement variational Bayes as an alternative to the conventionally used Baum-Welch algorithm for parameter estimation in HMMs. Stochastic gradient ascent with block bootstrapping is used to optimize the variational posterior, and a Gaussian copula is constructed to capture the spatial correlations between locations. We test this model using daily precipitation data for the Chesapeake Bay watershed, a large estuarine ecosystem in Eastern USA, for the rainy season months of July to September. Remote sensing data from GPM-IMERG is used for our study, which covers the watershed with 1927 grid points at a 0.1° x 0.1° resolution. Synthetic data generated from the fitted model is able to replicate key spatial and temporal characteristics of historical precipitation data.
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Authors who are presenting talks have a * after their name.
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