Air Quality Prediction Using LOESS-ARIMA and Multi-Scale CNN-BiLSTM with Residual-Gated Attention
Soham Pahari, Sandeep Chand Kumain

TL;DR
This paper introduces a hybrid air quality forecasting model combining statistical decomposition, deep learning, and optimization techniques, significantly improving prediction accuracy for urban pollutants in Indian megacities.
Contribution
It presents a novel hybrid framework integrating LOESS, ARIMA, and multi-scale CNN-BiLSTM with residual-gated attention, optimized by UAMMO, for superior AQI prediction.
Findings
Outperforms existing models with 5-8% lower MSE.
Achieves R^2 scores above 0.94 for all pollutants.
Demonstrates robustness during pollution spikes.
Abstract
Air pollution remains a critical environmental and public health concern in Indian megacities such as Delhi, Kolkata, and Mumbai, where sudden spikes in pollutant levels challenge timely intervention. Accurate Air Quality Index (AQI) forecasting is difficult due to the coexistence of linear trends, seasonal variations, and volatile nonlinear patterns. This paper proposes a hybrid forecasting framework that integrates LOESS decomposition, ARIMA modeling, and a multi-scale CNN-BiLSTM network with a residual-gated attention mechanism. The LOESS step separates the AQI series into trend, seasonal, and residual components, with ARIMA modeling the smooth components and the proposed deep learning module capturing multi-scale volatility in the residuals. Model hyperparameters are tuned via the Unified Adaptive Multi-Stage Metaheuristic Optimizer (UAMMO), combining multiple optimization…
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