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免疫系统模型的优化及其应用研究 被引量:3
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作者 余绍黔 李广琼 《计算机工程与应用》 CSCD 北大核心 2005年第16期39-41,共3页
通过免疫系统模型的介绍,文章提出多属性r连续位匹配规则来优化免疫系统模型并将其应用于图像识别中。实验表明,优化的免疫系统模型不仅提高了模式识别的效率,而且算法的时间复杂度和空间复杂度令人满意。
关键词 免疫系统模型 否定选择算法 多属性r连续位匹配规则 图像识别
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Immune modelling and programming of a mobile robot demo
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作者 龚涛 蔡自兴 贺汉根 《Journal of Central South University of Technology》 EI 2006年第6期694-698,共5页
An artificial immune system was modelled with self/non-self selection to overcome abnormity in a mobile robot demo. The immune modelling includes the innate immune modelling and the adaptive immune modelling. The self... An artificial immune system was modelled with self/non-self selection to overcome abnormity in a mobile robot demo. The immune modelling includes the innate immune modelling and the adaptive immune modelling. The self/non-self selection includes detection and recognition, and the self/non-self detection is based on the normal model of the demo. After the detection, the non-self recognition is based on learning unknown non-self for the adaptive immunization. The learning was designed on the neural network or on the learning mechanism from examples. The last step is elimination of all the non-self and failover of the demo. The immunization of the mobile robot demo is programmed with Java to test effectiveness of the approach. Some worms infected the mobile robot demo, and caused the abnormity. The results of the immunization simulations show that the immune program can detect 100% worms, recognize all known Worms and most unknown worms, and eliminate the worms. Moreover, the damaged files of the mobile robot demo can all be repaired through the normal model and immunization. Therefore, the immune modelling of the mobile robot demo is effective and programmable in some anti-worms and abnormity detection applications. 展开更多
关键词 artificial immune system normal model mobile robot WORMS
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