The Tangent Search Algorithm for Solving Optimization Problems
Abdesslem Layeb

TL;DR
The Tangent Search Algorithm (TSA) is a new, simple, and efficient population-based optimization method that balances exploration and exploitation using tangent functions, with novel escape and adaptive step size techniques, showing promising results on benchmarks.
Contribution
This paper introduces the TSA, a novel optimization algorithm utilizing tangent functions for improved search balance and convergence, with innovative escape and adaptive step size mechanisms.
Findings
TSA achieves competitive results on benchmark functions.
TSA effectively balances exploration and exploitation.
TSA demonstrates efficiency with few user parameters.
Abstract
This article proposes a new population-based optimization algorithm called the Tangent Search Algorithm (TSA) to solve optimization problems. The TSA uses a mathematical model based on the tangent function to move a given solution toward a better solution. The tangent flight function has the advantage to balance between the exploitation and the exploration search. Moreover, a novel escape procedure is used to avoid to be trapped in local minima. Besides, an adaptive variable step size is also integrated in this algorithm to enhance the convergence capacity. The performance of TSA is assessed in three classes of tests: classical tests, CEC benchmarks, and engineering optimization problems. Moreover, several studies and metrics have been used to observe the behavior of the proposed TSA. The experimental results show that TSA algorithm is capable to provide very promising and competitive…
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