• Title of article

    Iterative learning control-based batch process controlt echnique for integrated controlof end product properties and transient profiles of process variables

  • Author/Authors

    K.S. Lee and J.H. Lee، نويسنده ,

  • Pages
    15
  • From page
    607
  • To page
    621
  • Abstract
    Importance of batch processes has grown recently with the increasing economic competition that has pushed the manufacturing industries to pursue small quantity production of diverse high value-added products. Accordingly, systems engineering research on advanced control and optimization of batch processes has proliferated. In this paper, we examine the potentials of ‘iterative learning control (ILC)’ as a framework for industrial batch process control and optimization. First, various ILC rules are reviewed to provide a historical perspective. Next it is shown how the concept of ILC can be fused with model predictive control (MPC) to build an integrated end product and transient profile control technique for industrial chemical batch processes. Possible extensions and modifications of the technique are also presented along with some numerical illustrations. Finally, other related techniques are introduced to note the similarities and contemplate the opportunities for synergistic integration with the current ILC framework.
  • Keywords
    Model predictive control , Iterative learning control , Batch process control
  • Journal title
    Astroparticle Physics
  • Record number

    401353