Parikshit Kishor Singh

Work place: Dept. of Electronics & Instrumentation, BITS Pilani, Pilani Campus, India

E-mail: parikshit_singh@pilani.bits-pilani.ac.in

Website:

Research Interests: Artificial Intelligence

Biography

Parikshit Kishor Singh was born in Kolkata, India in 1977. He received the B.E. (Electronics Engineering) and M.Tech. (Electronics and Instrumentation) degrees from Sardar Vallabhbhai National Institute of Technology (SVNIT) Surat and National Institute of Technology (NIT) Warangal, in 2003 and 2005, respectively. In 2005, he joined the Vignan’s Institute of Information Technology (VIIT) Vishakhapatnam as Assistant Professor, under Early Faculty Induction Programme (EFIP) of All India Council of Technical Education (AICTE). In 2007, he joined Birla Institute of Technology and Science (BITS) Pilani as Assistant Lecture. From 2009 onwards, he is designated as Lecturer at BITS Pilani. From 2008 onwards, he is pursuing his doctoral research in the area of applications of artificial intelligence in process control.

Author Articles
Optimized and Self-Organized Fuzzy Logic Controller for pH Neutralization Process

By Parikshit Kishor Singh Surekha Bhanot Hare Krishna Mohanta

DOI: https://doi.org/10.5815/ijisa.2013.12.09, Pub. Date: 8 Nov. 2013

To conform to strict environmental safety regulations, pH control is used in many industrial applications. For this purpose modern process industries are increasingly relying on intelligent and adaptive control strategies. On one hand intelligent control strategies try to imitate human way of thinking and decision making using artificial intelligence (AI) based techniques such as fuzzy logic whereas on the other hand adaptive mechanism ensures adjusting of the controller parameters. A self-organized fuzzy logic controller (SOFLC) is intelligent in nature and adapts its performance to meet the figure of merit. This paper presents an optimized SOFLC for pH control using performance correction table. The fuzzy adaptation mechanism basically involves a penalty for the output membership functions if the controller performance is poor. The evolutionary genetic algorithm (GA) is used for optimization of input-output scaling factors of the conventional fuzzy logic controller (FLC) as well as elements of the fuzzy performance correction table. The resulting optimized SOFLC is compared with optimized FLC for servo and regulatory control. Comparison indicate superior performance of SOFLC over FLC in terms of much reduced integral of squared error (ISE), maximum overshoot and undershoot, and increased speed of response.

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