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Assessment of Machine Learning Techniques for Monthly Flow Prediction

Authors
Alizadeh, ZahraYazdi, JafarKim, Joong HoonAl-Shamiri, Abobakr Khalil
Issue Date
11월-2018
Publisher
MDPI
Keywords
Gaussian process regression; grasshopper optimization algorithm; K-nearest neighbor regression; neural network; support vector machine
Citation
WATER, v.10, no.11
Indexed
SCIE
SCOPUS
Journal Title
WATER
Volume
10
Number
11
URI
https://scholar.korea.ac.kr/handle/2021.sw.korea/72025
DOI
10.3390/w10111676
ISSN
2073-4441
Abstract
Monthly flow predictions provide an essential basis for efficient decision-making regarding water resource allocation. In this paper, the performance of different popular data-driven models for monthly flow prediction is assessed to detect the appropriate model. The considered methods include feedforward neural networks (FFNNs), time delay neural networks (TDNNs), radial basis neural networks (RBFNNs), recurrent neural network (RNN), a grasshopper optimization algorithm (GOA)-based support vector machine (SVM) and K-nearest neighbors (KNN) model. For this purpose, the performance of each model is evaluated in terms of several residual metrics using a monthly flow time series for two real case studies with different flow regimes. The results show that the KNN outperforms the different neural network configurations for the first case study, whereas RBFNN model has better performance for the second case study in terms of the correlation coefficient. According to the accuracy of the results, in the first case study with more input features, the KNN model is recommended for short-term predictions and for the second case with a smaller number of input features, but more training observations, the RBFNN model is suitable.
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