Dogo E. M.

Work place: Federal University of Technology/Computer Engineering, Minna, Nigeria

E-mail: eustace.dogo@futminna.edu.ng

Website:

Research Interests: Computer systems and computational processes, Autonomic Computing, Computational Learning Theory, Neural Networks, Computer Graphics and Visualization, Computer Networks

Biography

Eustace M. Dogo holds B.Sc. and M.Eng. degrees in Electrical Engineering from Peter the Great St. Petersburg Polytechnic University, Russia. He is a lecturer at the Department of Computer Engineering, Federal University of Technology Minna, Nigeria. Currently, he is working towards his PhD degree at the Institute of Intelligence Systems, University of Johannesburg, South Africa.

His research interest includes Theoretical and Applied Machine Learning, Intelligent Systems, Computing Networks and Cloud Computing.

Author Articles
Nature-inspired Optimal Tuning of Scaling Factors of Mamdani Fuzzy Model for Intelligent Feed Dispensing System

By Christian A. Ameh Olaniyi O. M. Dogo E. M. Aliyu S Arulogun O. T.

DOI: https://doi.org/10.5815/ijisa.2018.09.07, Pub. Date: 8 Sep. 2018

The increasing trends in intelligent control systems design has provide means for engineers to evolve robust and flexible means of adapting them to diverse applications. This tendency would reduce the challenges and complexity in bringing about the appropriate controllers to effect stability and efficient operations of industrial systems. This paper investigates the effect of two nature inspired algorithms, Genetic Algorithm (GA) and Particle Swarm Optimization (PSO), on PID controller for optimum tuning of a Fuzzy Logic Controller for Poultry Feed Dispensing Systems (PFDS). The Fuzzy Logic Controller was used to obtain a desired control speed for the conceptualized intelligent PFDS model. Both GA and PSO were compared to investigate which of the two algorithms could permit dynamic PFDS model to minimize feed wastage and reduce the alarming human involvement in dispensing poultry feeds majorly in the tropics. The modelling and simulation results obtained from the study using discrete event simulator and computational programming environment showed that PSO gave a much desired results for the optimally tuned FLC-PID, for stable intelligent PFDS with fast system response, rise time, and settling time compared to GA.

[...] Read more.
Other Articles