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1. Predicting PM2.5 levels and exceedance days using machine learning methods.

2. Atmospheric dispersion prediction and source estimation of hazardous gas using artificial neural network, particle swarm optimization and expectation maximization.

3. Predicting changes of glass optical properties in polluted atmospheric environment by a neural network model

4. Machine learning based bias correction for numerical chemical transport models.