Affiliation:
1. Universiti Sains Malaysia
Abstract
Acid mine drainage (AMD) is one of the major environmental problems the mining and mineral processing industries face. Treatment of AMD involves active and passive treatment. In the long term, passive treatment is the most effective way to treat acid mine drainage, but it can be expensive. if handled properly. Therefore, the study of flow rate in a passive treatment system is one of the important ways to identify optimum hydraulic retention time to ensure the maximum percentage of heavy metal removal can be achieved while keeping the cost to a minimum level. This study focused on developing and comparing the Response Surface Methodology (RSM) model and Artificial Neural Fuzzy Inference System (ANFIS) model to predict the outlet flow rate of the passive treatment system column based on three parameters inlet flow time, thickness of peat soil bed, and inlet flow rate. The RSM model was created by Design-Expert software whereas MATLAB created the ANFIS model with 80% of data used for the model training and 20% of the data for model testing. The models' performances were compared in terms of statistical errors (AAPE, RMSE, R2, STD, minimum error, and maximum error). It was found the ANFIS model has performed better in predicting the outlet flowrate with R2 value of 0.99 RSM model with the value of 0.97. The inlet flow rate was an insignificant parameter affecting the outlet flow rate of the passive treatment column. From the 3-D surface response plot, the highest outlet flow rate is predicted to be 524 mL/min.
Publisher
Trans Tech Publications, Ltd.
Reference13 articles.
1. Review of Passive Systems for Acid Mine Drainage Treatment;Skousen;Mine Water and the Environment,2016
2. Review of Remediation Solutions for Acid Mine Drainage Using the Modified Hill Framework;Thisani;Sustainability,2021
3. Statistical Modelling of Oil Removal from Surfactant/Polymer Flooding Produced Water by Using Flotation Column;Hani;Indonesian Journal of Chemistry,2020
4. M. A. Ayoub, S. N. Zainal, M. E. Elhaj, K. E. H. Ku Ishak, and Q. Ahmed, "Revisiting the coefficient of isothermal oil compressibility below bubble point pressure and formulation of a new model using adaptive neuro-fuzzy inference system technique," 2020.
5. Application of neural network techniques to predict the heavy metals in acid mine drainage from South African mines;Kabuba;Water Science and Technology,2021