Forecasting natural gas demand : a primary concern for natural gas pipeline companies /

A backpropagation neural network and a Box-Jenkins model are

Bibliographic Details
Main Author: Stricklin, Claude
Format: Thesis Book
Language:English
Published: [Place of publication not identified] : [publisher not identified] ; 1996.
Subjects:
Online Access:http://proxy.library.tamu.edu/login?url=http://proquest.umi.com/pqdweb?did=743267411&sid=1&Fmt=2&clientId=2945&RQT=309&VName=PQD
Description
Summary:A backpropagation neural network and a Box-Jenkins model are
developed to forecast natural gas demand for a local gas
company, also called a local distribution company, LDC.
Natural gas rates, utilized by 84 local distribution
companies for the year December 1, 1993 to November 30, 1994,
are available for study. In addition to the natural gas
rates, temperature and other weather data are also at hand.
Preliminary plots of the natural gas r ates and temperature
data for all 84 local gas,companies indicate that almost half
of the LDC's natural gas rates are directly related to
temperature; i.e., as temperature gets colder, gas rates
increase. In other words, the majority of the 84 local gas
companies supply natural gas for home, office, and business
heating. Although some of the LDC's natural gas rates
indicate a marginal relationship to temperature, other
unidentified factors are also obvious. A small number of
LDC's natural gas rates show no relationship to temperature
whatsoever. The neural network and Box-Jenkins model
mentioned above are designed for one of the local
distribution companies whose natural gas rates show a strong
and direct relationship to temperature. Although both
techniques prove to be quite effective at forecasting natural
gas demand for the LDC under investigation, the neural
network has a lower mean absolute error in forecasting
accuracy than the Box-Jenkins model. The major factor
affecting demand for natural gas from local distribution
companies considered in this study is temperature. Other
important variables, not considered, are those that deal with
the economics of supply and demand for natural gas; in
particular, price and regulation and their potential effect
on sales of natural gas. These economic issues may well need
to be evaluated and included in neural
network forecasting techniques designed to predict natural
gas demand on a local
level.
Item Description:Vita.
"Major Subject: Petroleum Engineering".
Physical Description:xiii, 80 leaves : illustrations ; 28 cm.
Issued also on microfiche from University Microfilms Inc.
Bibliography:Includes bibliographical references.