Template-Type: ReDIF-Article 1.0 Author-Name: J. Stuart McMenamin Author-Name: Frank A. Monforte Title: Short Term Energy Forecasting with Neural Networks Classification-JEL: F0 Pages: 43-61 Volume: Volume19 Issue: Number 4 Year: 1998 Abstract: Artificial neural networks are beginning to be used by electric utilities, to forecast hourly system loads on a day ahead basis. This paper discusses the neural network specification in terms of conventional econometric language, providing parallel concepts for terms such as training, learning, and nodes in the, hidden layer. It is shown that these models are flexible nonlinear equations that can be estimated using nonlinear least squares. It is argued that these models are especially well suited to hourly load forecasting, reflecting the presence of important nonlinearities and variable interactions. The paper proceeds to show how conventional statistics, such as the BIC and MAPE statistics can be used to select the number of nodes in the hidden layer. It is concluded that these models provide a powerful, robust and sensible approach to hourly load forecasting that will provide modest improvements in forecast accuracy relative to well-specified regression models. Handle: RePEc:aen:journl:1998v19-04-a02 File-URL: http://www.iaee.org/en/publications/ejarticle.aspx?id=1293 File-Format: text/html File-Restriction: Access to full text is restricted to IAEE members and subscribers.