IRMA-International.org: Creator of Knowledge
Information Resources Management Association
Advancing the Concepts & Practices of Information Resources Management in Modern Organizations

Meta-Heuristic Paradigms and Swarm-Based Models for Large-Scale Optimization

Meta-Heuristic Paradigms and Swarm-Based Models for Large-Scale Optimization
View Sample PDF
Author(s): D. Renuka Devi (Stella Maris College, India)and T. A. Swetha Margaret (Stella Maris College, India)
Copyright: 2025
Pages: 30
Source title: Harnessing AI for Control Engineering
Source Author(s)/Editor(s): Mohamed Arezki Mellal (M'Hamed Bougara University, Algeria)
DOI: 10.4018/979-8-3693-7812-0.ch011

Purchase

View Meta-Heuristic Paradigms and Swarm-Based Models for Large-Scale Optimization on the publisher's website for pricing and purchasing information.

Abstract

Swarm Intelligence and other metaheuristics have recently gained attention as optimization methods in large-scale data analytics, particularly in control engineering. With the increasing use of big data, IoT devices, and real-time processing, traditional techniques are facing challenges in dealing with high-dimensional and nonlinear problems. Swarm intelligence methods are based on the collective behavior of natural systems, providing robust and scalable solutions for optimizing control parameters, system identification, and fault detection in large environments. The combined use of swarm intelligence and metaheuristics will improve optimization for control engineering applications, focusing on large-scale analytics as discussed in this chapter. Case studies presented in this chapter demonstrate the effectiveness of these methods in optimizing complex control systems where traditional methods struggle due to size or complexity.

Related Content

R. N. Ravikumar, S. Aarthi, Yulduz Urazbaeva, Zamira Atamuratova, Sadullayeva Moxinur, Jakhongir Shaturaev. © 2026. 32 pages.
Arjun Bali, Siddharth Kashiramka, Anshuman Guha, Prashant Gupta. © 2026. 30 pages.
Vishal Jain, Archan Mitra, Sanchita Paul. © 2026. 32 pages.
Krithikaa Venket. © 2026. 26 pages.
Nuraisa Novia Hidayati, Agung Santosa, Elvira Nurfadhilah, Andi Djalal Latief, Kokoy Siti Komariah, Asril Jarin, Siska Pebiana, Yuyun Wabula, Radhiyatul Fajri, Tri Sampurno. © 2026. 50 pages.
Piyush Amol Bhosale, Shravani Kulkarni, Amna Kausar, Aditya Shrivastav, Susanta Das. © 2026. 26 pages.
Vishal Jain, Archan Mitra. © 2026. 22 pages.
Body Bottom