Signal lock optimization algorithm for engineering benchmark problems

Authors

  • Saman M. Almufti Department of Information Technology, Technical College of Duhok, Duhok Polytechnic University Iraq.
  • Helen Grace D. Felix Department of Technology and Livelihood Education, College of Education, Pampanga State Agricultural University, Magalang, Pampanga, Philippines.
  • Jorge Isaac Torres Manrique Praeeminentia Iustitia Interdisciplinary School of Fundamental Rights, Catolica Santa Maria University, Peru, Peru.
  • Aruna Pavate Information Technology, Thakur Collegeof Engineering and Technology, University Of Mumbai, Mumbai, India.

Keywords:

Signal Lock Optimization Algorithm, Metaheuristic Algorithms, Engineering Design Optimization, Constrained Optimization, Swarm and Evolutionary, Computing.

Abstract

The increasing complexity of constrained engineering design problems has intensified the demand for metaheuristic optimization algorithms that are both computationally efficient and robust against premature convergence and search stagnation. This paper presents the Signal Lock Optimization Algorithm (SLOA), a novel population-based metaheuristic founded on the dual mechanisms of confidence reinforcement and noise suppression. The core principle of SLOA lies in identifying high-confidence solution components-referred to as signal locks-and reinforcing them during the search process while dynamically filtering stochastic perturbations that may mislead exploration in multimodal and highly constrained landscapes. The proposed algorithm incorporates adaptive parameter updating and an effective constraint-handling strategy to maintain a balanced exploration–exploitation trade-off. SLOA is extensively evaluated on a suite of widely adopted engineering benchmark problems, including Welded Beam Design, Pressure Vessel Design, Tension/Compression Spring Design, and Car Side-Impact Design. Comparative experimental results and statistical analyses demonstrate that SLOA consistently achieves superior or highly competitive solution quality, faster convergence rates, and high feasibility compared to several state-of-the-art metaheuristic algorithms. The findings confirm that the signal lock mechanism provides a reliable and scalable optimization framework for solving complex real-world engineering design problems.

Published

2026-02-04

How to Cite

Saman M. Almufti, Helen Grace D. Felix, Jorge Isaac Torres Manrique, & Aruna Pavate. (2026). Signal lock optimization algorithm for engineering benchmark problems. Journal of Electronics, Computer Networking and Applied Mathematics , 6(1), 1–12. Retrieved from https://journal.hmjournals.com/index.php/JECNAM/article/view/6052

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