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首页> 外文期刊>Journal of robotics and mechatronics >An Electronic Nose Using Neural Networks with Effective Training Data Selection
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An Electronic Nose Using Neural Networks with Effective Training Data Selection

机译:使用神经网络的电子鼻和有效的训练数据选择

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摘要

An electronic nose developed from metal oxide gas sensors is applied to test smoke of three general household burning materials under different environments. Generally training data is randomly selected for a layered neural network with error back-propagation (BP). Randomized training data always contain redundant data that lengthen training time without improving classification performance. This paper proposes an effective method to select training data based on a similarity index (SI). The SI ensures that only the most valuable training data is included in the training data set. The proposed method is applied to remove redundant data from the training data set before being fed to the layered neural network based on BP. Results verified high classification performance by using a small number of training data from proposed method.
机译:由金属氧化物气体传感器开发的电子鼻被用于测试三种普通家用燃烧材料在不同环境下的烟雾。通常,对于具有误差反向传播(BP)的分层神经网络,随机选择训练数据。随机训练数据始终包含冗余数据,这些冗余数据会延长训练时间而不改善分类性能。提出了一种基于相似度指标(SI)的训练数据选择方法。 SI确保仅将最有价值的培训数据包含在培训数据集中。该方法适用于从训练数据集中删除冗余数据,然后再将其输入到基于BP的分层神经网络中。结果通过使用来自所提出方法的少量训练数据验证了高分类性能。

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