Mingzhi Huang
Sun Yat-sen University
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Publication
Featured researches published by Mingzhi Huang.
Scientific Reports | 2017
Mingzhi Huang; Tao Zhang; Jujun Ruan; Xiaohong Chen
A new efficient hybrid intelligent approach based on fuzzy wavelet neural network (FWNN) was proposed for effectively modeling and simulating biodegradation process of Dimethyl phthalate (DMP) in an anaerobic/anoxic/oxic (AAO) wastewater treatment process. With the self learning and memory abilities of neural networks (NN), handling uncertainty capacity of fuzzy logic (FL), analyzing local details superiority of wavelet transform (WT) and global search of genetic algorithm (GA), the proposed hybrid intelligent model can extract the dynamic behavior and complex interrelationships from various water quality variables. For finding the optimal values for parameters of the proposed FWNN, a hybrid learning algorithm integrating an improved genetic optimization and gradient descent algorithm is employed. The results show, compared with NN model (optimized by GA) and kinetic model, the proposed FWNN model have the quicker convergence speed, the higher prediction performance, and smaller RMSE (0.080), MSE (0.0064), MAPE (1.8158) and higher R2 (0.9851) values. which illustrates FWNN model simulates effluent DMP more accurately than the mechanism model.
Waste Management | 2017
Jujun Ruan; Lipeng Dong; Jie Zheng; Tao Zhang; Mingzhi Huang; Zhenming Xu
Recovery of e-waste in China had caused serious pollutions. Eddy current separation is an environment-friendly technology of separating nonferrous metallic particles from crushed e-waste. However, due to complex particle characters, separation efficiency of traditional eddy current separator was low. In production, controllable operation factors of eddy current separation are feeding speed, (ωR-v), and Sp. There is little special information about influencing mechanism and critical parameters of these factors in eddy current separation. This paper provided the special information of these key factors in eddy current separation of recovering aluminum particles from crushed waste refrigerator cabinets. Detachment angles increased as the increase of (ωR-v). Separation efficiency increased with the growing of detachment angles. Aluminum particles were completely separated from plastic particles in critical parameters of feeding speed 0.5m/s and detachment angles greater than 6.61deg. Sp/Sm of aluminum particles in crushed waste refrigerators ranged from 0.08 to 0.51. Separation efficiency increased as the increase of Sp/Sm. This enlightened us to develop new separator to separate smaller nonferrous metallic particles in e-waste recovery. High feeding speed destroyed separation efficiency. However, greater Sp of aluminum particles brought positive impact on separation efficiency. Greater Sp could increase critical feeding speed to offer greater throughput of eddy current separation. This paper will guide eddy current separation in production of recovering nonferrous metals from crushed e-waste.
Journal of Environmental Science and Health Part A-toxic\/hazardous Substances & Environmental Engineering | 2017
Jujun Ruan; Xiaohong Chen; Mingzhi Huang; Tao Zhang
ABSTRACT This paper presents the development and evaluation of three fuzzy neural network (FNN) models for a full-scale anaerobic digestion system treating paper-mill wastewater. The aim was the investigation of feasibility of the approach-based control system for the prediction of effluent quality and biogas production from an internal circulation (IC) anaerobic reactor system. To improve FNN performance, fuzzy subtractive clustering was used to identify models architecture and optimize fuzzy rule, and a total of 5 rules were extracted in the IF-THEN format. Findings of this study clearly indicated that, compared to NN models, FNN models had smaller RMSE and MAPE as well as bigger R for the testing datasets than NN models. The proposed FNN model produced smaller deviations and exhibited a superior predictive performance on forecasting of both effluent quality and biogas (methane) production rates with satisfactory determination coefficients greater than 0.90. From the results, it was concluded that FNN modeling could be applied in IC anaerobic reactor for predicting the biodegradation and biogas production using paper-mill wastewater.
Journal of Environmental Management | 2017
Jujun Ruan; Chao Zhang; Ya Li; Peiyi Li; Zaizhi Yang; Xiaohong Chen; Mingzhi Huang; Tao Zhang
This work proposes an on-line hybrid intelligent control system based on a genetic algorithm (GA) evolving fuzzy wavelet neural network software sensor to control dissolved oxygen (DO) in an anaerobic/anoxic/oxic process for treating papermaking wastewater. With the self-learning and memory abilities of neural network, handling the uncertainty capacity of fuzzy logic, analyzing local detail superiority of wavelet transform and global search of GA, this proposed control system can extract the dynamic behavior and complex interrelationships between various operation variables. The results indicate that the reasonable forecasting and control performances were achieved with optimal DO, and the effluent quality was stable at and below the desired values in real time. Our proposed hybrid approach proved to be a robust and effective DO control tool, attaining not only adequate effluent quality but also minimizing the demand for energy, and is easily integrated into a global monitoring system for purposes of cost management.
Journal of Environmental Science and Health Part A-toxic\/hazardous Substances & Environmental Engineering | 2018
Chunshan Zhou; Chao Zhang; Di Tian; Ke Wang; Mingzhi Huang; Yanbiao Liu
ABSTRACT In order to manage water resources, a software sensor model was designed to estimate water quality using a hybrid fuzzy neural network (FNN) in Guangzhou section of Pearl River, China. The software sensor system was composed of data storage module, fuzzy decision-making module, neural network module and fuzzy reasoning generator module. Fuzzy subtractive clustering was employed to capture the character of model, and optimize network architecture for enhancing network performance. The results indicate that, on basis of available on-line measured variables, the software sensor model can accurately predict water quality according to the relationship between chemical oxygen demand (COD) and dissolved oxygen (DO), pH and NH4+–N. Owing to its ability in recognizing time series patterns and non-linear characteristics, the software sensor-based FNN is obviously superior to the traditional neural network model, and its R (correlation coefficient), MAPE (mean absolute percentage error) and RMSE (root mean square error) are 0.8931, 10.9051 and 0.4634, respectively.
Environmental Science & Technology | 2016
Tao Zhang; Jingchuan Xue; Chuanzi Gao; Rongliang Qiu; Yan-xi Li; Xiao Li; Mingzhi Huang; Kurunthachalam Kannan
Environment International | 2016
Shaoyou Lu; Yan-xi Li; Jianqing Zhang; Tao Zhang; Guihua Liu; Mingzhi Huang; Xiao Li; Jujun Ruan; Kurunthachalam Kannan; Rongliang Qiu
Environmental Science & Technology | 2017
Shaoyou Lu; Yan-xi Li; Tao Zhang; Dan Cai; Jujun Ruan; Mingzhi Huang; Lei Wang; Jianqing Zhang; Rongliang Qiu
Journal of Environmental Management | 2016
Tao Zhang; Zehua Huang; Xiaohong Chen; Mingzhi Huang; Jujun Ruan
ACS Sustainable Chemistry & Engineering | 2017
Jie Zheng; Jujun Ruan; Lipeng Dong; Tao Zhang; Mingzhi Huang; Zhenming Xu