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Structural design of the danger model immune algorithm

机译:危险模型免疫算法的结构设计

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摘要

The traditional immune algorithm (IA) is based on a self-nonself biological immunity mechanism. Recently, a novel immune theory called the danger model theory has provided more suitable biological information for data handling compared with the self-nonself mechanism. According to the danger model theory and based on past experiences of the genetic and artificial IA, we present the Danger Model Immune Algorithm (DMIA) that differs from the traditional IA in terms of the self-nonself biological immunity mechanism. We define a danger area and a danger signal in DMIA. We use the selection, mutation, and specific danger operators to update the population. The algorithm can achieve complex problem optimization. Simulation studies demonstrate that DMIA exhibits a higher efficiency than traditional genetic algorithms and other algorithms when considering a number of complicated functions.
机译:传统的免疫算法(IA)基于自非生物生物学免疫机制。近来,与自我-非自我机制相比,一种称为危险模型理论的新型免疫理论为数据处理提供了更合适的生物学信息。根据危险模型理论并基于遗传和人工IA的以往经验,我们提出了在自我-非自身生物免疫机制方面不同于传统IA的危险模型免疫算法(DMIA)。我们在DMIA中定义了危险区域和危险信号。我们使用选择,变异和特定危险运算符来更新种群。该算法可以实现复杂问题的优化。仿真研究表明,在考虑许多复杂功能时,DMIA的效率要高于传统遗传算法和其他算法。

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