Genetic programming model for forecast of short and noisy data
Created by W.Langdon from
gp-bibliography.bib Revision:1.8051
- @Article{Sivapragasam2007266,
-
author = "C. Sivapragasam and P. Vincent and G. Vasudevan",
-
title = "Genetic programming model for forecast of short and
noisy data",
-
journal = "Hydrological Processes",
-
year = "2007",
-
volume = "21",
-
number = "2",
-
pages = "266--272",
-
month = "15 " # jan,
-
keywords = "genetic algorithms, genetic programming, Forecasting,
Mathematical models, Random processes, Rivers, Time
series analysis, Flow forecasting, Genetic programming,
Noise filtering, Flow of water, Flow of water,
Mathematical models, Random processes, Rivers, Time
series analysis, artificial neural network, forecasting
method, model, noise, river flow, Artificial neural
networks",
-
ISSN = "1099-1085",
-
URL = "http://onlinelibrary.wiley.com/doi/10.1002/hyp.6226/abstract",
-
DOI = "doi:10.1002/hyp.6226",
-
size = "7 pages",
-
abstract = "Though forecasting of river flow has received a great
deal of attention from engineers and researchers
throughout the world, this still continues to be a
challenging task owing to the complexity of the
process. In the last decade or so, artificial neural
networks (ANNs) have been widely applied, and their
ability to model complex phenomena has been clearly
demonstrated. However, the success of ANNs depends very
crucially on having representative records of
sufficient length. Further, the forecast accuracy
decreases rapidly with an increase in the forecast
horizon. In this study, the use of the Darwinian
theory-based recent evolutionary technique of genetic
programming (GP) is suggested to forecast fortnightly
flow up to 4-lead. It is demonstrated that short lead
predictions can be significantly improved from a short
and noisy time series if the stochastic (noise)
component is appropriately filtered out. The
deterministic component can then be easily modelled.
Further, only the immediate antecedent exogenous and/or
non-exogenous inputs can be assumed to control the
process. With an increase in the forecast horizon, the
stochastic components also play an important role in
the forecast, besides the inherent difficulty in
ascertaining the appropriate input variables which can
be assumed to govern the underlying process. GP is
found to be an efficient tool to identify the most
appropriate input variables to achieve reasonable
prediction accuracy for higher lead-period forecasts. A
comparison with ANNs suggests that though there is no
significant difference in the prediction accuracy, GP
does offer some unique advantages.",
-
affiliation = "Department of Civil Engineering, Mepco Schlenk
Engineering College, Sivakasi 626005 Tamilnadu State,
India",
-
correspondence_address1 = "Sivapragasam, C.; Department of Civil
Engineering, Mepco Schlenk Engineering College,
Sivakasi 626005 Tamilnadu State, India; email:
sivapragasam@yahoo.com",
-
language = "English",
-
document_type = "Article",
- }
Genetic Programming entries for
C Sivapragasam
P Vincent
G Vasudevan
Citations