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Artificial Immune Network Approach with Beta Differential Operator Applied to Optimization of Heat Exchangers

机译:用β差分操作者应用于换热器的人工免疫网络方法

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The artificial immune systems combine these strengths have been gaining significant attention due to its powerful adaptive learning and memory capabilities. A meta-heuristic approach called opt-aiNET (artificial immune network for optimization) algorithm, a well-known immune inspired algorithm for function optimization, is adopted in this paper. The opt-aiNET algorithm evolves a population, which consists of a network of antibodies (considered as candidate solutions to the function being optimized). These undergo a process of evaluation against the objective function, clonal expansion, mutation, selection and interaction between themselves. In this paper, a proposed modified opt-aiNET approach using based on mutation operator inspired in differential evolution and beta probability distribution (opt-BDaiNET) is described and validated to three benchmark functions and to shell and tube heat exchanger optimization based on the minimization from economic view point. Simulations are conducted to verify the efficiency of proposed opt-BDaiNET algorithm and the results obtained for two case studies are compared with those obtained by using genetic algorithm and particle swarm optimization. In this application domain, the opt-aiNET and opt-BDaiNET were found to outperform the previously best-known solutions available in the recent literature.
机译:由于其强大的自适应学习和记忆能力,人工免疫系统结合了这些优点,这一强度越来越大。采用了一种称为OINET(用于优化的人工免疫网络)算法,识字免疫激发算法的荟萃启发式方法,采用了本文的众所周知的免疫激发算法。 OPT-AINET算法演变的群体由抗体网络组成(被认为是优化的功能的候选解决方案)。这些经历了对目标函数,克隆扩张,突变,选择和互动的评估过程。本文描述了一种基于差分演化和β概率分布(OPT-BDAINET)的突变算子的所提出的修改的选择性选择方法方法,并验证到三个基准功能,并基于最小化的壳牌和管热交换器优化经济观点。进行仿真以验证所提出的Opt-BDaInet算法的效率,并将两种情况研究获得的结果与使用遗传算法和粒子群优化获得的结果进行比较。在该应用领域中,发现OINET和OPT-BDainet以最近的文献中可用的先前最着名的解决方案优于前面的最着名的解决方案。

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