Sequential Bayesian inference for spatio-temporal models of temperature and humidity data
Applications
2018-06-15 v1 Computation
Abstract
We develop a spatio-temporal model to forecast sensor output at five locations in North East England. The signal is described using coupled dynamic linear models, with spatial effects specified by a Gaussian process. Data streams are analysed using a stochastic algorithm which sequentially approximates the parameter posterior through a series of reweighting and resampling steps. An iterated batch importance sampling scheme is used to circumvent particle degeneracy through a resample-move step. The algorithm is modified to make it more efficient and parallisable. The model is shown to give a good description of the underlying process and provide reasonable forecast accuracy.
Cite
@article{arxiv.1806.05424,
title = {Sequential Bayesian inference for spatio-temporal models of temperature and humidity data},
author = {Yingying Lai and Andrew Golightly and Richard Boys},
journal= {arXiv preprint arXiv:1806.05424},
year = {2018}
}
Comments
25 pages