Title
A probabilistic methodology for quantifying, diagnosing and reducing model structural and predictive errors in short term water demand forecasting.
Abstract
Accurate forecasts of water demand are required for real-time control of water supply systems under normal and abnormal conditions. A methodology is presented for quantifying, diagnosing and reducing model structural and predictive errors for the development of short term water demand forecasting models. The methodology (re-)emphasises the importance of posterior predictive checks of modelling assumptions in model development, and to account for inherent demand uncertainty, quantifies model performance probabilistically through evaluation of the sharpness and reliability of model predictive distributions. The methodology, when applied to forecast demand for three District Meter Areas in the UK, revealed the inappropriateness of simplistic Gaussian residual assumptions in demand forecasting. An iteratively revised, parsimonious model using a formal Bayesian likelihood function that accounts for kurtosis and heteroscedasticity in the residuals led to sharper yet reliable predictive distributions that better quantifies the time varying nature of demand uncertainty across the day in water supply systems. Display Omitted A new methodology is presented for development of water demand forecasting models.An iterative Bayesian method is used to diagnose and reduce model structural error.Statistical coverage of the prediction bounds is used to evaluate model performance.Heavy tailed error model better captures time varying nature of demand uncertainty.The methodology is suitable for use in real-time management of water supply systems.
Year
DOI
Venue
2015
10.1016/j.envsoft.2014.12.021
Environmental Modelling and Software
Keywords
Field
DocType
uncertainty,forecast,bayesian,real time
Econometrics,Residual,Heteroscedasticity,Likelihood function,Demand forecasting,Computer science,Probabilistic logic,Kurtosis,Water supply,Bayesian probability
Journal
Volume
Issue
ISSN
66
C
1364-8152
Citations 
PageRank 
References 
3
0.40
4
Authors
2
Name
Order
Citations
PageRank
Christopher J. Hutton130.40
Zoran Kapelan2867.02