Affiliation:
1. China University of Mining Technology: China University of Mining and Technology
2. Tianjin University
Abstract
Abstract
Acid Mine Drainage (AMD) poses a significant environmental challenge, frequently occurring at mining, smelting, and closed mine locations. This phenomenon arises when sulfide ores come into contact with oxygen and water, forming sulfuric acid. This acid subsequently dissolves in mine water, increasing its acidity. Sulfate (SO4) serves as a crucial indicator of acid mine water quality. Precise prediction of SO4 concentrations post-treatment is essential for achieving compliant and stable wastewater discharge, thereby mitigating environmental risks. In this paper, we introduce IPSO-GRU, a novel artificial intelligence algorithm designed to predict water quality accurately. Our IPSO-GRU model employs particle swarm optimization to enhance support vector regression for SO4 prediction. The performance indices of the model show a Root Mean Square Error (RMSE) of 0.104, a Mean Absolute Error (MAE) of 0.061, and a Coefficient of Determination (R²) of 0.79. Comparative evaluations with IPSO-RNN and IPSO-LSTM models reveal that IPSO-GRU outperforms these alternatives across RMSE, MAE, and R² metrics, confirming its efficacy as the most suitable model for predicting SO4 concentrations in mine wastewater.
Publisher
Research Square Platform LLC
Reference31 articles.
1. Energy consumption optimization in wastewater treatment plants: machine learning for monitoring incineration of sewage sludge;Adibimanesh B;Sustain Energy Technol Assess,2023
2. Machine learning methods for better water quality prediction;Ahmed AN;J Hydrol,2019
3. Acid mine drainage (amd): causes, treatment and case studies;Akcil A;J Clean Prod,2006
4. Aslan S, Zennaro F, Furlan E (2022) al., Recurrent neural networks for water quality assessment in complex coastal lagoon environments: a case study on the venice lagoon, vol 154. Environmental Modelling & Software, p 105403
5. A critical review of prevention, treatment, reuse, and resource recovery from acid mine drainage;Chen G;J Clean Prod,2021