TITLE

An Improved Particle Swarm Optimization (IPSO) Approach for Identification and Control of Stable and Unstable Systems

AUTHOR(S)
El Gmili, Nada; Mjahed, Mostafa; El Kari, Abdeljalil; Ayad, Hassan
PUB. DATE
May 2017
SOURCE
International Review of Automatic Control;May2017, Vol. 10 Issue 3, p229
SOURCE TYPE
Academic Journal
DOC. TYPE
Article
ABSTRACT
In this paper, an Improved Particle Swarm Optimization (IPSO) technique is generalized to identify and control four systems of different types of behaviors. This was possible thanks to the use of a new initialization strategy of partitioning of particles, which helps PSO to converge faster to the correct region in the research space. The choice of an enhanced fitness function consisting of the weighted sum of the objectives gives better performances compared to those found using four other commonly used performance indices (ISE, IAE, ITAE, and ITSE). The validity of the model chosen for identifying these four types of behaviors is proved, and the control of these systems using IPSO and many conventional optimization methods such as Ziegler-Nichols, Graham-Lathrop, and Reference Model has been compared and confirmed that IPSO generates a high-quality solution with a short calculation time and a stable convergence feature. Moreover, results confirmed that the IPSO optimized PID is the best as it has good performance and good robustness and it is insensitive to perturbations.
ACCESSION #
125749398

 

Related Articles

  • Fuzzy Satisfied Multiobjective Distribution Network Reconfiguration: an Application of Adaptive Weighted Improved Discrete Particle Swarm Optimization. S., Manikandan; S., Sasidharan; J., Viswanatharao; V., Moorthy // International Review on Modelling & Simulations;Aug2017, Vol. 10 Issue 4, p247 

    In this paper, a multiobjective framework for distribution network reconfiguration (DNR) is developed in the fuzzy domain to minimize power loss and improve load balancing. Since it is a nonlinear and combinatorial optimization problem a new fangled adaptive weighted improved discrete particle...

  • An Optimized K-Harmonic Means Algorithm Combined with Modified Particle Swarm Optimization and Cuckoo Search Algorithm. Bouyer, Asgarali // Foundations of Computing & Decision Sciences;Jun2016, Vol. 41 Issue 2, p99 

    Among the data clustering algorithms, k-means (KM) algorithm is one of the most popular clustering techniques due to its simplicity and efficiency. However, k-means is sensitive to initial centers and it has the local optima problem. K-harmonic-means (KHM) clustering algorithm solves the...

  • Michigan Particle Swarm Optimization for Prototype Reduction in Classification Problems. Cervantes, Alejandro; Galván, Inés; Isasi, Pedro // New Generation Computing;2009, Vol. 27 Issue 3, p239 

    This paper presents a new approach to Particle Swarm optimization, called Michigan Approach PSO (MPSO), and its application to continuous classification problems as a Nearest Prototype (NP) classifier. In Nearest Prototype classifiers, a collection of prototypes has to be found that accurately...

  • Constructing composite search directions with parameters in quadratic interpolation models. Qinghua Zhou; Yan Li; Minghu Ha // Journal of Global Optimization;Oct2011, Vol. 51 Issue 2, p313 

    In this paper, we introduce the weighted composite search directions to develop the quadratic approximation methods. The purpose is to make fully use of the information disclosed by the former steps to construct possibly more promising directions. Firstly, we obtain these composite directions...

  • A multi-start opposition-based particle swarm optimization algorithm with adaptive velocity for bound constrained global optimization. Kaucic, Massimiliano // Journal of Global Optimization;Jan2013, Vol. 55 Issue 1, p165 

    In this paper we present a multi-start particle swarm optimization algorithm for the global optimization of a function subject to bound constraints. The procedure consists of three main steps. In the initialization phase, an opposition learning strategy is performed to improve the search...

  • A crossbreed quantum evolutionary algorithm. Khalafi, H. K. // Journal of Advanced Research in Computer Science;2010, Vol. 2 Issue 1, p1 

    Quantum Clonal Algorithms (QCAs) are based on the automatic self-protective behavior of the quantum evolutionary algorithms (QEAs). QCAs have high effective parallelism and replacing clone operator by mutation and selection of the traditional evolutionary algorithms, which can increase the...

  • PSO Algorithm for IPD Game. Xiaoyang Wang; Yibin Lin // International Journal of Computer Science & Information Technolo;Aug2012, Vol. 4 Issue 4, p23 

    Mechanisms promoting the evolution of cooperation in two-player, two-strategy evolutionary games have been discussed in great detail over the past decades. Understanding the effects of repeated interactions in multi-player with multi-choice is a formidable challenge. This paper presents and...

  • DESIGN OF A FULLY DIGITAL CONTROLLED RECONFIGURABLE SWITCHED BEAM CONCENTRIC RING ARRAY ANTENNA USING FIREFLY AND PARTICLE SWARM OPTIMIZATION ALGORITHM. Chatterjee, A.; Mahanti, G. K.; Chatterjee, Arindam // Progress in Electromagnetics Research B;2012, Vol. 36, p113 

    Reconfigurable antenna arrays are often capable of radiating multiple patterns by modifying the excitation phases of the elements. In this paper a method based on Firefly Algorithm (FA) has been proposed to obtain dual radiation pattern from a concentric ring array of isotropic elements, by...

  • Adjusted permutation method for multiple attribute decision making with meta-heuristic solution approaches. Karimi, Hossein; Rezaeinia, Alireza // International Journal of Industrial Engineering Computations;Apr2011, Vol. 2 Issue 2, p369 

    The permutation method of multiple attribute decision making has two significant deficiencies: high computational time and wrong priority output in some problem instances. In this paper, a novel permutation method called adjusted permutation method (APM) is proposed to compensate deficiencies of...

Share

Read the Article

Courtesy of THE LIBRARY OF VIRGINIA

Sorry, but this item is not currently available from your library.

Try another library?
Sign out of this library

Other Topics