Bayesian modeling and forecasting of intraday electricity load
成果类型:
Article
署名作者:
Cottet, R; Smith, M
署名单位:
University of Sydney
刊物名称:
JOURNAL OF THE AMERICAN STATISTICAL ASSOCIATION
ISSN/ISSBN:
0162-1459
DOI:
10.1198/016214503000000774
发表日期:
2003
页码:
839-849
关键词:
neural-network
longitudinal data
run forecasts
temperature
demand
sales
摘要:
The advent of wholesale electricity markets has brought renewed focus on intraday electricity load forecasting. This article proposes a multiequation regression model with a diagonal first-order stationary vector autoregresson (VAR) for modeling and forecasting intraday electricity load. The correlation structure of the disturbances to the VAR and the appropriate subset of regressors are explored using Bayesian model selection methodology. The full spectrum of finite-sample inference is obtained using a Bayesian Markov chain Monte Carlo sampling scheme. This includes the predictive distribution of load and the distribution of the time and level of daily peak load, something that is difficult to obtain with other methods of inference. The method is applied to several multiequation models of half-hourly total system load in New South Wales, Australia. A detailed model based on 3 years of data reveals trend, seasonal, bivariate temperature/humidity, and serial correlation components that all vary intraday, justifying the assumption of a multiequation approach. Short-term forecasts from simple models highlight the gains that can be made if accurate temperature predictions are exploited. Bayesian predictive means for half-hourly load compare favorably with point forecasts obtained using iterated generalized least squares estimation of the same models.