Stochastic Precipitation Generation for the Chesapeake Bay Watershed using Hidden Markov Models with Variational Bayes Parameter Estimation

10/09/2022
by   Reetam Majumder, et al.
0

Stochastic precipitation generators (SPGs) are a class of statistical models which generate synthetic data that can simulate dry and wet rainfall stretches for long durations. Generated precipitation time series data are used in climate projections, impact assessment of extreme weather events, and water resource and agricultural management. We construct an SPG for daily precipitation data that is specified as a semi-continuous distribution at every location, with a point mass at zero for no precipitation and a mixture of two exponential distributions for positive precipitation. Our generators are obtained as hidden Markov models (HMMs) where the underlying climate conditions form the states. We fit a 3-state HMM to daily precipitation data for the Chesapeake Bay watershed in the Eastern coast of the USA for the wet season months of July to September from 2000–2019. Data is obtained from the GPM-IMERG remote sensing dataset, and existing work on variational HMMs is extended to incorporate semi-continuous emission distributions. In light of the high spatial dimension of the data, a stochastic optimization implementation allows for computational speedup. The most likely sequence of underlying states is estimated using the Viterbi algorithm, and we are able to identify differences in the weather regimes associated with the states of the proposed model. Synthetic data generated from the HMM can reproduce monthly precipitation statistics as well as spatial dependency present in the historical GPM-IMERG data.

READ FULL TEXT

page 7

page 18

page 19

page 20

research
10/23/2018

Bivariate modelling of precipitation and temperature using a non-homogeneous hidden Markov model

Aiming to generate realistic synthetic times series of the bivariate pro...
research
10/23/2017

Modeling rainfalls using a seasonal hidden markov model

In order to reach the supply/demand balance, electricity providers need ...
research
05/24/2021

Hidden Markov and semi-Markov models: When and why are these models useful to classify states in time series data?

Hidden Markov models (HMMs) and their extensions have proven to be power...
research
06/10/2019

A Comprehensive Hidden Markov Model for Hourly Rainfall Time Series

For hydrological applications, such as urban flood modelling, it is ofte...
research
07/18/2022

Analyzing trends in precipitation patterns using Hidden Markov model stochastic weather generators

We develop a flexible spline-based Bayesian hidden Markov model stochast...
research
07/05/2022

Stochastic Variational Methods in Generalized Hidden Semi-Markov Models to Characterize Functionality in Random Heteropolymers

Recent years have seen substantial advances in the development of biofun...

Please sign up or login with your details

Forgot password? Click here to reset