Robustness of Extreme Learning Machine in the prediction of hydrological flow series
Created by W.Langdon from
gp-bibliography.bib Revision:1.7906
- @Article{ATIQUZZAMAN:2018:CG,
-
author = "Md Atiquzzaman and Jaya Kandasamy",
-
title = "Robustness of Extreme Learning Machine in the
prediction of hydrological flow series",
-
journal = "Computer \& Geosciences",
-
volume = "120",
-
pages = "105--114",
-
year = "2018",
-
keywords = "genetic algorithms, genetic programming, Catchment,
Flow series, Prediction, Hydrology, Modeling, Extreme
learning machine",
-
URL = "http://www.sciencedirect.com/science/article/pii/S0098300417304867",
-
ISSN = "0098-3004",
-
DOI = "doi:10.1016/j.cageo.2018.08.003",
-
URL = "http://www.sciencedirect.com/science/article/pii/S0098300417304867",
-
abstract = "Prediction of hydrological flow series generated from
a catchment is an important aspect of water resources
management and decision making. The underlying process
underpinning catchment flow generation is complex and
depends on many parameters. Determination of these
parameters using a trial and error method or
optimization algorithm is time consuming. Application
of Artificial Intelligence (AI) based machine learning
techniques including Artificial Neural Network, Genetic
Programming (GP) and Support Vector Machine (SVM)
replaced the complex modeling process and at the same
time improved the prediction accuracy of hydrological
time-series. However, they still require numerous
iterations and computational time to generate optimum
solutions. This study applies the Extreme Learning
Machine (ELM) to hydrological flow series modeling and
compares its performance with GP and Evolutionary
Computation based SVM (EC-SVM). The robustness and
performance of ELM were studied using the data from two
different catchments located in two different climatic
conditions. The robustness of ELM was evaluated by
varying number of lagged input variables the number of
hidden nodes and input parameter (regularization
coefficient). Higher lead days prediction and
extrapolation capability were also investigated. The
results show that (1) ELM yields reasonable results
with two or higher lagged input variables (flows) for
1-day lead prediction; (2) ELM produced satisfactory
results very rapidly when the number of hidden nodes
was greater than or equal to 1000; (3) ELM showed
improved results when regularization coefficient was
fine-tuned; (4) ELM was able to extrapolate extreme
values well; (5) ELM generated reasonable results for
higher number of lead days (second and third)
predictions; (6) ELM was computationally much faster
and capable of producing better results compared to
other leading AI methods for prediction of flow series
from the same catchment. ELM has the potential for
forecasting real-time hydrological flow series",
- }
Genetic Programming entries for
Md Atiquzzaman
Jaya Kandasamy
Citations