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Titlebook: Bio-Inspired Computing: Theories and Applications; 18th International C Linqiang Pan,Yong Wang,Jianqing Lin Conference proceedings 2024 The

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Berichte des German Chapter of the ACMigh-quality filaments and reduce energy consumption while reducing the switching cost of solutions. Experimental results show that DCMOEA-ND can obtain Pareto optimal set (POS) with better convergence and distribution, and the robust solutions obtained by DCROOT have better performance than other al
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https://doi.org/10.1007/978-3-322-87094-0e also a number of local optima in the search space. In addition, the CEC2013 test set contains composition functions that mix different characteristics of various basic functions, causing the search space to have a huge quantity of local optima and is very complex. Experimental results demonstrate
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Transfer Learning-Based Evolutionary Multi-task Optimizationsed evolutionary multi-task optimization algorithm (TLEMTO). To validate the effectiveness of the proposed algorithm, the experiment is conducted on CEC17 multi-task optimization problem benchmarks, the results show that TLEMTO is superior to the compared state-of-the-art algorithms.
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A Surrogate-Based Optimization Method for Solving Economic Emission Dispatch Problems with Green Cerons. On the other hand, a modified multi-objective gray wolf optimizer (MOGWO) is proposed to execute EED optimization accurately and quickly. This algorithm improves the search ability and convergence of the original MOGWO algorithm through improving the position update strategy and introducing the
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MODMOA: A Novel Multi-objective Optimization Algorithm for Unmanned Aerial Vehicle Path Planninghod has better performance and robustness in multi-target UAV path planning, and can effectively find high-quality non-inferior solution sets, which provides an effective solution for UAV path planning.
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