TY - JOUR UR - https://doi.org/10.7717/peerj-cs.1007 DO - 10.7717/peerj-cs.1007 TI - An adaptive dimension differential evolution algorithm based on ranking scheme for global optimization AU - Sung,Tien-Wen AU - Zhao,Baohua AU - Zhang,Xin A2 - Yu,Lisu DA - 2022/06/17 PY - 2022 KW - Global optimization KW - Differential evolution KW - Swarm intelligence KW - Adaptive dimension KW - Ranking scheme AB - In recent years, evolutionary algorithms based on swarm intelligence have drawn much attention from researchers. This kind of artificial intelligent algorithms can be utilized for various applications, including the ones of big data information processing in nowadays modern world with heterogeneous sensor and IoT systems. Differential evolution (DE) algorithm is one of the important algorithms in the field of optimization because of its powerful and simple characteristics. The DE has excellent development performance and can approach global optimal solution quickly. At the same time, it is also easy to get into local optimal, so it could converge prematurely. In the view of these shortcomings, this article focuses on the improvement of the algorithm of DE and proposes an adaptive dimension differential evolution (ADDE) algorithm that can adapt to dimension updating properly and balance the search and the development better. In addition, this article uses the elitism to improve the location update strategy to improve the efficiency and accuracy of the search. In order to verify the performance of the new ADDE, this study carried out experiments with other famous algorithms on the CEC2014 test suite. The comparison results show that the ADDE is more competitive. VL - 8 SP - e1007 T2 - PeerJ Computer Science JO - PeerJ Computer Science J2 - PeerJ Computer Science SN - 2376-5992 ER -