Mathematical Model and Advance Control for Activated Sludge Process in Sequencing Batch Reactor

  • Ahmmed Ibrehem Department of Chemical Engineering, University of Malaysia, Kuala Lumpur, MALAYSIA
  • Mohammed Azlan Hussain Department of Chemical Engineering, University of Malaysia, Kuala Lumpur, MALAYSIA
Keywords: Sequencing batch reactor, Mathematical Model, Dynamic studies, control system

Abstract

This paper presents the results of a modeling and simulation study of an activated sludge process in a sequencing batch reactor (SBR), with emphasis on total nitrogen removal. This study focuses on the effect of dissolved oxygen (DO) and effluent chemical oxygen demand (COD). Neural-network based redictive controller (MPC) is implemented to control the system for the DO set point and give better and acceptable results when compared with the conventional PID controller

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Published
2009-12-31
How to Cite
Ibrehem, A., & Hussain, M. A. (2009). Mathematical Model and Advance Control for Activated Sludge Process in Sequencing Batch Reactor. ASEAN Journal of Chemical Engineering, 9(1), 32-46. Retrieved from https://jurnal.ugm.ac.id/v3/AJChE/article/view/7709
Section
Articles