A hybrid gene expression programming model for discharge prediction
2023 (English)In: Proceedings of the Institution of Civil Engineers: Water Management, ISSN 1741-7589, E-ISSN 1751-7729, Vol. 176, no 5, p. 223-234Article in journal (Refereed) Published
Abstract [en]
The head–discharge relationship of an overflow weir is a prerequisite for flow measurement. Conventionally, it is determined by regression methods. With machine learning techniques, data-driven modelling becomes an alternative. However, a standalone model may be inadequate to generate satisfactory results, particularly for a complex system. With the intention of improving the performance of standard gene expression programming (GEP), a hybrid evolutionary scheme is proposed, which is coupled with grey system theory and probabilistic technique. As a gene filter, grey relational analysis (GRA) eliminates noise and simulated annealing (SA) reduces overfitting by optimising the gene weights. The proposed GEP-based model was developed and validated using experimental data of a submerged pivot weir. Compared with standalone GEP, the GRA–GEP–SA model was found to generate more accurate results. Its coefficients of determination and correlation were improved by 3.6% and 1.7%, respectively. The root mean square error was lowered by 24.8%, which is significant. The number of datasets with an error of less than 10% and 20% was increased by 15% and 12%, respectively. The proposed approach outperforms classic genetic programming and shows a comparative error level with the empirical formula. The hybrid procedure also provides a reference for applications in other hydraulic issues.
Place, publisher, year, edition, pages
Emerald , 2023. Vol. 176, no 5, p. 223-234
Keywords [en]
data-driven modelling, Flow measurement, gene expression programming, grey relational analysis, simulated annealing, Errors, Gene expression, Genetic algorithms, Genetic programming, Learning systems, Mean square error, Regression analysis, System theory, Weirs, Data-driven model, Discharge predictions, Gene-expression programming, Gray system theory, Machine learning techniques, Performance, Probabilistic technique, Programming models, Regression method
National Category
Building Technologies
Identifiers
URN: urn:nbn:se:kth:diva-313379DOI: 10.1680/jwama.21.00037ISI: 001083731900001Scopus ID: 2-s2.0-85119339277OAI: oai:DiVA.org:kth-313379DiVA, id: diva2:1664008
Note
QC 20250508
2022-06-032022-06-032025-05-08Bibliographically approved