@article{Safari_Hosseini_2023, title={An Interval Type-2 Fuzzy LSTM Algorithm for Modeling Environmental Time-Series Prediction}, volume={6}, url={https://oiccpress.com/anthropogenic-pollution/article/an-interval-type-2-fuzzy-lstm-algorithm-for-modeling-environmental-time-series-prediction/}, DOI={10.22034/ap.2022.1963124.1133}, abstractNote={The statistical attributes of the non-stationary problems such as air quality and other natural phenomena frequently changed. Type-2 fuzzy logic is a robust and capable model to cope with high-order uncertainties associated with non-stationary time-dependent features. This research’s main objective is to present a novel Fuzzy Deep LSTM (IT2FLSTM) model to predict air quality for Tehran and Beijing in a short and long time series scale. The proposed model has been evaluated on a real dataset that contains the one-decade information about outdoor pollutants from April 2011 to November 2020 in Tehran and Beijing. The IT2FLSTM model was evaluated using a ROC curve analysis and validated using 10-fold cross-validation. The results confirm the IT2FLSTM model’s superiority with an average area under the ROC curve (AUC) of 97 % and a 95% confidence interval of [95-98] %. The proposed IT2FLSTM model promises to predict complex problems to make strategic prevention decisions to save more lives.}, number={2}, journal={Anthropogenic Pollution}, publisher={OICC Press}, author={Safari, Aref and Hosseini, Rahil}, year={2023}, month={Nov.}, keywords={Air Pollution Prediction, Deep learning, Enviroment, LSTM network, Type-2 Fuzzy Logic} }