Brain Emotional Learning Based Intelligent Decoupler for Nonlinear Multi-Input Multi-Output Distillation Columns

作者:El Saify M H*; El Garhy A M; El Sheikh G A
来源:Mathematical Problems in Engineering, 2017, 2017: 8760351.
DOI:10.1155/2017/8760351

摘要

The distillation process is vital in many fields of chemical industries, such as the two-coupled distillation columns that are usually highly nonlinearMulti-InputMulti-Output (MIMO) coupled processes. The control of MIMO process is usually implemented via a decentralized approach using a set of Single-Input Single-Output (SISO) loop controllers. Decoupling the MIMO process into group of single loops requires proper input-output pairing and development of decoupling compensator unit. This paper proposes a novel intelligent decoupling approach for MIMO processes based on new MIMO brain emotional learning architecture. A MIMO architecture of Brain Emotional Learning Based Intelligent Controller (BELBIC) is developed and applied as a decoupler for 4 input/4 output highly nonlinear coupled distillation columns process. Moreover, the performance of the proposed Brain Emotional Learning Based IntelligentDecoupler (BELBID) is enhanced using Particle SwarmOptimization (PSO) technique. The performance is compared with the PSO optimized steady state decoupling compensationmatrix. Mathematicalmodels of the distillation columns and the decouplers are built and tested in simulation environment by applying the same inputs. The results prove remarkable success of the BELBID in minimizing the loops interactions without degrading the output that every input has been paired with.

  • 出版日期2017