The applicability of Generic Self-Evolving Takagi-Sugeno-Kang neuro-fuzzy model in modeling rainfall–runoff and river routing

Author:

Ashrafi Mohammad1,Chua Lloyd H. C.12,Quek Chai3

Affiliation:

1. School of Civil and Environmental Engineering, Nanyang Technological University, 50 Nanyang Avenue, Singapore 639798, Singapore

2. School of Engineering, Faculty of Science Engineering & Built Environment, Deakin University, 75 Pigdons Road, Waurn Ponds, VIC 3220, Australia

3. Computational Intelligence Laboratory, School of Computer Science and Engineering, Nanyang Technological University, 50 Nanyang Avenue, Block N4-02A-32, Singapore 639798, Singapore

Abstract

Abstract Recent advancements in neuro-fuzzy models (NFMs) have made possible the implementation of dynamic rule base systems. This is in comparison with static applications commonly seen in global NFMs such as the Adaptive-Network-Based Fuzzy Inference System (ANFIS) model widely used in hydrological modeling. This study underlines key differences between local and global NFMs with an emphasis on rule base dynamics, in the context of two common flow forecast applications. A global NFM, ANFIS, and two local NFMs, Dynamic Evolving Neural-Fuzzy Inference System (DENFIS) and Generic Self-Evolving Takagi-Sugeno-Kang (GSETSK), were tested. Results from all NFMs compared favorably when benchmarked against physically based models. Rainfall–runoff modeling is a complex process which benefits from the advanced rule generation and pruning mechanisms in GSETSK, resulting in a more compact rule base. Although ANFIS resulted in the same number of rules, this came about at the expense of having the need for a large training dataset. All NFMs generated a similar number of rules for the river routing application, although local NFMs yielded better results for forecasts at longer lead times. This is attributed to the fact that the routing procedure is less complex and can be adequately modeled by static NFMs.

Publisher

IWA Publishing

Subject

Water Science and Technology

Reference26 articles.

1. A comparative study of artificial neural networks and neuro-fuzzy in continuous modeling of the daily and hourly behaviour of runoff;Journal of Hydrology,2007

2. A fully-online neuro-fuzzy model for flow forecasting in basins with limited data;Journal of Hydrology,2017

3. Development of a conceptual deterministic rainfall-runoff model;Hydrology Research,1973

4. Carrol D. G. 2007 The Manual for URBS – A Rainfall Runoff Routing Model for Flood Forecasting and Design. http://www.urbs.com.au/.

5. A counterpropagation fuzzy-neural network modeling approach to real time streamflow prediction;Journal of Hydrology,2001

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