Identifying the effect of public holidays on daily demand for gas
Sarah E. Heaps, Malcolm Farrow, Kevin J. Wilson

TL;DR
This paper introduces a novel Bayesian hidden Markov model to accurately identify and model the proximity effect of public holidays on daily gas demand, improving forecasting without fixed assumptions about affected days.
Contribution
The paper presents a new non-homogeneous hidden Markov model that dynamically detects the proximity effect of holidays on gas demand, unlike traditional fixed-window approaches.
Findings
Model effectively identifies holiday-related demand patterns
Application to UK gas demand data shows improved forecasting accuracy
Preliminary deployment by a UK gas network demonstrates practical utility
Abstract
To reduce operational costs, gas distribution networks require accurate forecasts of the demand for gas. Amongst domestic and commercial customers, demand relates primarily to the weather and patterns of life and work. Public holidays have a pronounced effect which often spreads into neighbouring days. We call this spread the "proximity effect". Traditionally, the days over which the proximity effect is felt are pre-specified in fixed windows around each holiday, allowing no uncertainty in their identification. We are motivated by an application to modelling daily gas demand in two large British regions. We introduce a novel model which does not fix the days on which the proximity effect is felt. Our approach uses a four-state, non-homogeneous hidden Markov model, with cyclic dynamics, where the classification of days as public holidays is observed, but the assignment of days as…
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