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An Odor Discrimination Approach Based on Mice Olfactory Neural Network

机译:基于小鼠嗅觉神经网络的气味识别方法

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Characteristic signals of the novelty volatile odor shed by equipments at abnormal state are often with higher dimension, and difficult to discriminate because of the complex background odorant noise in non-open space. An artificial olfactory neural network and its learning algorithm are introduced based on the anatomy of odor discrimination mechanism and olfactory neural model of mice. After the construction and training of an olfactory neural network for the discrimination of kerosene, gear oil and alcohol, it is verified through experiment data sets. The results indicate that the artificial neural network (ANN) based on mice olfactory model achieves a short time for training and the identification rate is feasible and effective.
机译:设备在非正常状态下散发出的新颖挥发性气味的特征信号通常具有较高的维数,并且由于非开放空间中复杂的背景气味噪声而难以区分。介绍了一种基于嗅觉辨别机理和小鼠嗅觉神经模型的人工嗅觉神经网络及其学习算法。在构造并训练了用于区分煤油,齿轮油和酒精的嗅觉神经网络后,通过实验数据集对其进行了验证。结果表明,基于小鼠嗅觉模型的人工神经网络训练时间短,识别率可行,有效。

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