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Related Experiment Videos

A state-adaptive booby optimization algorithm for engineering design and medical data applications.

Idriss Dagal1, Alpaslan Demirci2, Umit Cali3,4,5

  • 1Department of Electrical-Electronics Engineering, Istanbul Beykent University, 34396, Istanbul, Türkiye.

Scientific Reports
|May 30, 2026
PubMed
Summary
This summary is machine-generated.

The novel Booby Optimization Algorithm (BOA) effectively balances exploration and exploitation for complex problems. BOA demonstrates superior performance in engineering and medical data analysis, achieving high accuracy and robustness.

Keywords:
Adaptive search strategiesBio-inspired algorithmsBooby optimization algorithmEngineering design optimizationMetaheuristic optimization

Related Experiment Videos

Area of Science:

  • Computational Intelligence
  • Optimization Algorithms
  • Metaheuristics

Background:

  • Balancing global exploration and local exploitation is a key challenge in metaheuristic optimization.
  • High-dimensional, nonlinear, and constrained problems are prevalent in engineering and medical data analysis.

Purpose of the Study:

  • To introduce the Booby Optimization Algorithm (BOA), a novel state-adaptive metaheuristic.
  • To evaluate BOA's effectiveness on benchmark functions, engineering design problems, and medical data analysis tasks.

Main Methods:

  • BOA utilizes an adaptive state variable to control search strategies and transitions.
  • The algorithm incorporates nonlinear dynamics, stochastic perturbations, and diversity preservation mechanisms.
  • BOA was tested on CEC benchmark functions, engineering design problems, and 14 real-world medical datasets.

Main Results:

  • BOA consistently outperformed state-of-the-art metaheuristics in convergence speed, solution accuracy, and robustness.
  • Near-optimal or best-known solutions were achieved with reduced mean error and variance.
  • In medical classification, BOA-based feature selection achieved 96.20% mean accuracy with high sensitivity and specificity.

Conclusions:

  • BOA is an efficient and robust adaptive optimization framework.
  • The algorithm is well-suited for complex engineering optimization and medical decision-support applications.
  • Rigorous statistical validation confirmed BOA's significant improvements.