@article{article_1536480, title={Predicting Air Quality in Izmir Using Artificial Intelligence and IoT}, journal={Journal of Computational Design}, volume={6}, pages={341–364}, year={2025}, DOI={10.53710/jcode.1536480}, author={Öztürk, Kübra and Can, Zuhal}, keywords={Air Quality, Artificial Intelligence, IoT, Weather Forecasting, xLSTM}, abstract={ir pollution is a significant concern in Izmir, the third-largest city in Turkey, and it has serious adverse effects on human health and the environment. The city faces air quality issues due to industrial activities and heavy traffic. The Internet of Things (IoT) technology enables continuous monitoring and measurement of factors that diminish air quality. Utilizing IoT to predict air pollution is crucial in mitigating potential adverse effects. In this study, air pollution predictions were conducted using machine learning, deep learning, and time series analysis methods. Data on PM10 and SO2 levels were collected from seven locations in Izmir from 1996 to 2024. The models used for evaluating PM10 and SO2 measurements included Support Vector Regression (SVR), Seasonal Autoregressive Integrated Moving Average (SARIMA), Long Short-Term Memory (LSTM), and Extended Long-Term Memory (xLSTM). Among these models, xLSTM demonstrated the best overall performance for predicting both PM10 and SO2 levels, achieving the lowest error metrics despite slightly lower R² scores than the LSTM model.}, number={2}, publisher={İstanbul Technical University}