TY - EJOU AU - Zeidabadi, Fatemeh Ahmadi AU - Doumari, Sajjad Amiri AU - Dehghani, Mohammad AU - Montazeri, Zeinab AU - Trojovský, Pavel AU - Dhiman, Gaurav TI - MLA: A New Mutated Leader Algorithm for Solving Optimization Problems T2 - Computers, Materials \& Continua PY - 2022 VL - 70 IS - 3 SN - 1546-2226 AB - Optimization plays an effective role in various disciplines of science and engineering. Optimization problems should either be optimized using the appropriate method (i.e., minimization or maximization). Optimization algorithms are one of the efficient and effective methods in providing quasi-optimal solutions for these type of problems. In this study, a new algorithm called the Mutated Leader Algorithm (MLA) is presented. The main idea in the proposed MLA is to update the members of the algorithm population in the search space based on the guidance of a mutated leader. In addition to information about the best member of the population, the mutated leader also contains information about the worst member of the population, as well as other normal members of the population. The proposed MLA is mathematically modeled for implementation on optimization problems. A standard set consisting of twenty-three objective functions of different types of unimodal, fixed-dimensional multimodal, and high-dimensional multimodal is used to evaluate the ability of the proposed algorithm in optimization. Also, the results obtained from the MLA are compared with eight well-known algorithms. The results of optimization of objective functions show that the proposed MLA has a high ability to solve various optimization problems. Also, the analysis and comparison of the performance of the proposed MLA against the eight compared algorithms indicates the superiority of the proposed algorithm and ability to provide more suitable quasi-optimal solutions. KW - Optimization; metaheuristics; leader; benchmark; objective function DO - 10.32604/cmc.2022.021072