An Adaptive Intelligent Type-2 Fuzzy Logic Model to Manage Uncertainty of Short and Long Time-Series in Covid-19 Patterns Prediction: A Case Study on Iran
Prediction with high reliability is very important in solving real-world problems, especially those that affect public health. The statistical properties of complex problems such as Covid-19 disease constantly change over time which makes modeling of such problems associated with high-level uncertainty. It has been proven that the type-2 fuzzy logic has the potential for modeling uncertainty to solve complex problems. In this research, for the first time, an intelligent method based on the capability of type-2 fuzzy logic was presented to manage uncertainty in predicting short-term and long-term time series in environmental crises such as the Covid-19 pandemic. The performance of the proposed model was evaluated using a real dataset collected from official sources. The results confirm the high efficiency of the proposed method on Covid-19 based on a ROC curve analysis. The obtained results showed an efficiency of 93.81% for short and 91.33% for long-term time series. This indicates the high efficiency and capability of the proposed model for managing uncertainty in predicting patterns of Covid-19 in comparison with similar methods. The proposed model can be useful to take strategic decisions and prevent the consequences of the Covid-19 epidemic in the short and long terms.
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An Interval Type-2 Fuzzy-Markov Model for Prediction of Urban Air Pollution
, Rahil Hosseini *, Mahdi Mazinani
Journal of Computer and Robotics, Winter and Spring 2024 -
A State-of-the-Art Survey of Deep Learning Techniques in Medical Pattern Analysis and IoT Intelligent Systems
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