Multiple genetic programming: a new approach to improve genetic-based month ahead rainfall forecasts
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Date
2020
Authors
Ali Danandeh Mehr
Mir Jafar Sadegh Safari
Journal Title
Journal ISSN
Volume Title
Publisher
Springer
Open Access Color
Green Open Access
Yes
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Publicly Funded
No
Abstract
It is well documented that standalone machine learning methods are not suitable for rainfall forecasting in long lead-time horizons. The task is more difficult in arid and semiarid regions. Addressing these issues the present paper introduces a hybrid machine learning model namely multiple genetic programming (MGP) that improves the predictive accuracy of the standalone genetic programming (GP) technique when used for 1-month ahead rainfall forecasting. The new model uses a multi-step evolutionary search algorithm in which high-performance rain-borne genes from a multigene GP solution are recombined through a classic GP engine. The model is demonstrated using rainfall measurements from two meteorology stations in Lake Urmia Basin Iran. The efficiency of the MGP was cross-validated against the benchmark models namely standard GP and autoregressive state-space. The results indicated that the MGP statistically outperforms the benchmarks at both rain gauge stations. It may reduce the absolute and relative errors by approximately up to 15% and 40% respectively. This significant improvement over standalone GP together with the explicit structure of the MGP model endorse its application for 1-month ahead rainfall forecasting in practice. © 2020 Elsevier B.V. All rights reserved.
Description
Keywords
Genetic Programming, Hybrid Models, Rainfall, Stochastic Modelling, Arid Regions, Genetic Algorithms, Machine Learning, Rain, Rain Gages, Stochastic Models, Stochastic Systems, Weather Forecasting, Arid And Semi-arid Regions, Evolutionary Search Algorithms, Hybrid Machine Learning, Hybrid Model, Machine Learning Methods, Predictive Accuracy, Rainfall Forecasting, Rainfall Measurements, Genetic Programming, Rain, Forecasting Method, Genetic Algorithm, Machine Learning, Modeling, Numerical Method, Precipitation Assessment, Rainfall, Stochasticity, Absolute Error, Analytical Error, Article, Artificial Neural Network, Autoregressive State Space, Controlled Study, Evolutionary Algorithm, Forecasting, Mathematical Model, Measurement Accuracy, Multigene Family, Multiple Genetic Programming, Predictive Value, Relative Error, Statistical Analysis, Stochastic Model, Time Series Analysis, Algorithm, Biological Model, Iran, Meteorology, Procedures, Lake Urmia, Algorithms, Forecasting, Meteorology, Models Genetic, Arid regions, Genetic algorithms, Machine learning, Rain, Rain gages, Stochastic models, Stochastic systems, Weather forecasting, Arid and semi-arid regions, Evolutionary search algorithms, Hybrid machine learning, Hybrid model, Machine learning methods, Predictive accuracy, Rainfall forecasting, Rainfall measurements, Genetic programming, rain, forecasting method, genetic algorithm, machine learning, modeling, numerical method, precipitation assessment, rainfall, stochasticity, absolute error, analytical error, Article, artificial neural network, autoregressive state space, controlled study, evolutionary algorithm, forecasting, mathematical model, measurement accuracy, multigene family, multiple genetic programming, predictive value, relative error, statistical analysis, stochastic model, time series analysis, algorithm, biological model, Iran, meteorology, procedures, Lake Urmia, Algorithms, Forecasting, Meteorology, Models Genetic, Genetic Programming, Hybrid Models, Rainfall, Stochastic Modelling, Meteorology, Models, Genetic, Rain, Iran, Algorithms, Forecasting
Fields of Science
0208 environmental biotechnology, 0207 environmental engineering, 02 engineering and technology
Citation
WoS Q
Scopus Q

OpenCitations Citation Count
11
Source
Environmental Monitoring and Assessment
Volume
192
Issue
1
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Citations
CrossRef : 5
Scopus : 14
PubMed : 1
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Mendeley Readers : 38
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