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首页> 外文期刊>Neural computing & applications >Unknown odor recognition using Euclidean Fuzzy similarity-based Self-Organized Network inspired by Immune Algorithm
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Unknown odor recognition using Euclidean Fuzzy similarity-based Self-Organized Network inspired by Immune Algorithm

机译:利用基于免疫算法的基于欧氏模糊相似度的自组织网络进行未知气味识别

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摘要

To deal with unknown odor recognition problem for a developed artificial odor discrimination system, Euclidean Fuzzy similarity-based Self-Organized Network inspired by Immune Algorithm (EF-SONIA) is proposed. Euclidean fuzzy similarity enables a zero similarity calculation between an unknown odor vector and hidden unit vectors, so that the system can recognize the unknown odor. In addition, an elliptical approach for fuzziness determination is proposed. The elliptical approach can approximate an appropriate fuzziness, so that the unknown odor recognition accuracy is improved. Experiments on three datasets of three-mixture vegetal odors show that the recognition accuracy of the proposed method is 20% better than those of the conventional method. The system is very promising to be used for a real development of dog robot that enables localization and identification of dangerous natural gas.
机译:为解决已开发的人工气味识别系统的未知气味识别问题,提出了一种基于欧氏模糊相似度的自组织免疫网络启发式免疫算法。欧几里德模糊相似度使未知气味向量和隐藏单位向量之间的零相似度计算成为可能,因此系统可以识别未知气味。另外,提出了一种用于模糊度确定的椭圆方法。椭圆形方法可以使适当的模糊度近似,从而提高了未知气味识别的准确性。对三种混合植物气味的三个数据集进行的实验表明,该方法的识别精度比传统方法高20%。该系统非常有望用于狗机器人的真正开发,该狗机器人可以对危险的天然气进行定位和识别。

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