Int. J. Automation and Control, Vol. 14, No. 2, 2020 239
Copyright © 2020 Inderscience Enterprises Ltd.
Fuzzy rule-based auto-tuned internal model controller
for real-time experimentation on temperature and
level processes
Ujjwal Manikya Nath
Department of Instrumentation and Electronics Engineering,
Jadavpur University,
Salt Lake Campus, Kolkata, 700098, India
Email: um.nath@yahoo.com
Chanchal Dey*
Department of Applied Physics,
Instrumentation and Control Engineering,
University of Calcutta,
92 A.P.C. Road, Kolkata, 700009, India
Email: cdaphy@caluniv.ac.in
*Corresponding author
Rajani K. Mudi
Department of Instrumentation and Electronics Engineering,
Jadavpur University,
Salt Lake Campus, Kolkata, 700098, India
Email: rajanikanta.mudi@jadavpuruniversity.in
Abstract: Recently, internal model control (IMC) technique has been widely
employed for various industrial close-loop control applications. Rewarding
feature of IMC controller is that we need to tune only one parameter λ
(close-loop time constant) for achieving the desired close-loop response. But,
finding an appropriate value of λ is not an easy task. From the basic behaviour
of IMC-based close-loop responses, it is found that when the process variable is
moving very fast towards the desired value, relatively larger value of λ (smooth
control) is required to reduce the possible oscillations. In contrary, smaller
value of λ (tight control) is preferred when the process response is quickly
moving away from the set point to restrict its further deviation. Hence, to
mitigate the limitation of conventional IMC tuning with a fixed λ, a fuzzy
rule-based auto-tuning scheme is proposed here for IMC-proportional integral
derivative (IMC-PID) controller and its performance is validated through
real-time experimentation on temperature and level control loops.
Keywords: IMC-PID controller; fuzzy rule-based λ tuning; auto-tuning IMC;
real-time application; temperature control loop; level control loop.
Reference to this paper should be made as follows: Nath, U.M., Dey, C. and
Mudi, R.K. (2020) ‘Fuzzy rule-based auto-tuned internal model controller
for real-time experimentation on temperature and level processes’, Int. J.
Automation and Control, Vol. 14, No. 2, pp.239–256.