Title :
Data-Driven Optimization Control for Safety Operation of Hematite Grinding Process
Author :
Wei Dai ; Tianyou Chai ; Yang, Simon X.
Author_Institution :
State Key Lab. of Synthetical Autom. for Process Ind., Northeastern Univ., Shenyang, China
Abstract :
Grinding particle size (GPS) of a hematite grinding process (HGP) is characteristic of sensitivity to disturbances of ore hardness and size distribution, difficulty in establishing a mathematic model, and absence of measurement, which make the existing operational optimization and control approaches difficult to be applied. This leads to that it is always difficult to obtain a proper ore feed rate and water flow rate during process operation, and consequently, overload fault often occurs. To tackle this problem, based on characteristic analysis of GPS, a GPS prediction algorithm is first developed using an improved neural network (NN), and a data-driven optimization control approach for safety operation of HGP is proposed. The proposed method adopts a two-layer structure, the higher-level operational feedback control, and lower-level basic loop control. The operational feedback control consists of a cascade NN-based loop setpoint optimizer and an overload diagnosis and self-healing controller. The main advantage of the proposed method is that it requires only the available operating data, without knowing the process dynamics. Experiments have been carried out in a self-developed hardware-in-the-loop experiment system with actual data, demonstrating that the proposed method cannot only keep the HGP operation from mill overload fault but also achieve the optimization control with respect to the quadratic performance index of GPS deviation.
Keywords :
cascade control; fault tolerant control; feedback; grinding; minerals; neural nets; optimisation; particle size; process control; GPS deviation; GPS prediction algorithm; HGP; cascade NN-based loop setpoint optimizer; data-driven optimization control approach; disturbance sensitivity; grinding particle size distribution; hardware-in-the-loop experiment system; hematite grinding process; higher-level operational feedback control; improved neural network; lower-level basic loop control; mathematic model; mill overload fault; operating data; ore feed rate; ore hardness; overload diagnosis; overload fault; process operation; quadratic performance index; safety operation; self-healing controller; two-layer structure; water flow rate; Artificial neural networks; Global Positioning System; Optimization; Process control; Recycling; Safety; Slurries; Data-driven; hematite grinding process; hematite grinding process (HGP); neural networks; neural networks (NNs); optimization control; safety operation;
Journal_Title :
Industrial Electronics, IEEE Transactions on
DOI :
10.1109/TIE.2014.2362093