Enhancing simulated kalman filter algorithm using current optimum opposition-based learning

Kamil Zakwan, Mohd Azmi and Zuwairie, Ibrahim and Pebrianti, Dwi and Mohd Falfazli, Mat Jusof and Nor Hidayati, Abdul Aziz and Nor Azlina, Ab. Aziz (2019) Enhancing simulated kalman filter algorithm using current optimum opposition-based learning. Mekatronika - Journal of Intelligent Manufacturing & Mechatronics, 1 (1). pp. 1-13. ISSN 2637-0883. (Published)

[img]
Preview
Pdf
Enhancing simulated Kalman filter algorithm using current.pdf
Available under License Creative Commons Attribution Non-commercial.

Download (711kB) | Preview

Abstract

Simulated Kalman filter (SKF) is a new population-based optimization algorithm inspired by estimation capability of Kalman filter. Each agent in SKF is regarded as a Kalman filter. Based on the mechanism of Kalman filtering, the SKF includes prediction, measurement, and estimation process to search for global optimum. The SKF has been shown to yield good performance in solving benchmark optimization problems. However, the exploration capability of SKF could be further improved. From literature, current optimum opposition-based learning (COOBL) has been employed to increase the diversity (exploration) of search algorithm by allowing current population to be compared with an opposite population. By employing this concept, more potential agents are generated to explore more promising regions that exist in the solution domain. Therefore, this paper intends to improve the exploration capability of SKF through the application of COOBL. The COOBL is employed after the estimation process of SKF. Experimental results over the IEEE congress on evolutionary computation (CEC) 2014 benchmark functions indicate that current optimum opposition-based simulated Kalman filter (COOBSKF) improved the exploration capability of SKF significantly. The COOBSKF also has been compared with five other optimization algorithms and outperforms them all.

Item Type: Article
Uncontrolled Keywords: Simulated Kalman Filter; Opposition-Based Learning; Current Optimum
Subjects: T Technology > TK Electrical engineering. Electronics Nuclear engineering
T Technology > TS Manufactures
Faculty/Division: Faculty of Electrical & Electronic Engineering
Faculty of Manufacturing Engineering
Depositing User: Pn. Hazlinda Abd Rahman
Date Deposited: 10 Jun 2019 03:34
Last Modified: 21 Nov 2019 04:38
URI: http://umpir.ump.edu.my/id/eprint/24720
Download Statistic: View Download Statistics

Actions (login required)

View Item View Item