Integration of neural network and fuzzy logic decision making compared
with bilayered neural network in the simulation of daily dew point
temperature
- URL: http://arxiv.org/abs/2202.12256v1
- Date: Wed, 23 Feb 2022 14:25:13 GMT
- Title: Integration of neural network and fuzzy logic decision making compared
with bilayered neural network in the simulation of daily dew point
temperature
- Authors: Guodao Zhang, Shahab S. Band, Sina Ardabili, Kwok-Wing Chau, Amir
Mosavi
- Abstract summary: dew point temperature (DPT) is simulated using the data-driven approach.
Various input patterns, namely T min, T max, and T mean, are utilized for training the architecture.
- Score: 0.8808021343665321
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: In this research, dew point temperature (DPT) is simulated using the
data-driven approach. Adaptive Neuro-Fuzzy Inference System (ANFIS) is utilized
as a data-driven technique to forecast this parameter at Tabriz in East
Azerbaijan. Various input patterns, namely T min, T max, and T mean, are
utilized for training the architecture whilst DPT is the model's output. The
findings indicate that, in general, ANFIS method is capable of identifying data
patterns with a high degree of accuracy. However, the approach demonstrates
that processing time and computer resources may substantially increase by
adding additional functions. Based on the results, the number of iterations and
computing resources might change dramatically if new functionalities are
included. As a result, tuning parameters have to be optimized inside the method
framework. The findings demonstrate a high agreement between results by the
data-driven technique (machine learning method) and the observed data. Using
this prediction toolkit, DPT can be adequately forecasted solely based on the
temperature distribution of Tabriz. This kind of modeling is extremely
promising for predicting DPT at various sites. Besides, this study thoroughly
compares the Bilayered Neural Network (BNN) and ANFIS models on various scales.
Whilst the ANFIS model is extremely stable for almost all numbers of membership
functions, the BNN model is highly sensitive to this scale factor to predict
DPT.
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