2024
DOI: 10.1002/for.3153
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A study and development of high‐order fuzzy time series forecasting methods for air quality index forecasting

Sushree Subhaprada Pradhan,
Sibarama Panigrahi

Abstract: The endless adverse effects of air pollution incidents have raised significant public concerns in the past few decades. The measure of air pollution, that is, the air quality index (AQI), is highly volatile and associated with different kinds of uncertainties. Following this, the study and development of accurate fuzzy time series forecasting (TSF) methods for predicting the AQI have a significant role in air pollution control and management. Motivated by this, in this paper, a systematic study is made to eval… Show more

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