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Classifying continuous, real-time e-nose sensor data using a bio-inspired spiking network modelled on the insect olfactory system

机译:使用以昆虫嗅觉系统为模型的生物激发尖峰网络对连续实时电子鼻传感器数据进行分类

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In many application domains, conventional e-noses are frequently outperformed in both speed and accuracy by their biological counterparts. Exploring potential bio-inspired improvements, we note a number of neuronal network models have demonstrated some success in classifying static datasets by abstracting the insect olfactory system. However, these designs remain largely unproven in practical settings, where sensor data is real-time, continuous, potentially noisy, lacks a precise onset signal and accurate classification requires the inclusion of temporal aspects into the feature set. This investigation therefore seeks to inform and develop the potential and suitability of biomimetic classifiers for use with typical real-world sensor data. Taking a generic classifier design inspired by the inhibition and competition in the insect antennal lobe, we apply it to identifying 20 individual chemical odours from the timeseries of responses of metal oxide sensors. We show that four out of twelve available sensors and the first 30 s (10%) of the sensors' continuous response are sufficient to deliver 92% accurate classification without access to an odour onset signal. In contrast to previous approaches, once training is complete, sensor signals can be fed continuously into the classifier without requiring discretization. We conclude that for continuous data there may be a conceptual advantage in using spiking networks, in particular where time is an essential component of computation. Classification was achieved in real time using a GPU-accelerated spiking neural network simulator developed in our group.
机译:在许多应用领域中,传统的电子鼻在速度和准确性上通常都比它们的生物学对应物好。在探索潜在的生物启发性改进方法时,我们注意到许多神经元网络模型已通过对昆虫嗅觉系统进行抽象,证明在分类静态数据集方面取得了一些成功。但是,这些设计在实际设置中仍未得到充分验证,在这些设置中,传感器数据是实时的,连续的,可能有噪声的,缺少精确的开始信号,并且准确的分类要求将时间方面包括在特征集中。因此,本研究旨在了解和开发仿生分类器与典型现实世界传感器数据一起使用的潜力和适用性。受到昆虫触角叶的抑制和竞争的启发,我们采用了通用的分类器设计,将其应用于从金属氧化物传感器的响应时间序列中识别20种单独的化学气味。我们表明,十二个可用传感器中的四个传感器以及传感器的连续30秒钟(10%)的连续响应足以提供92%的准确分类,而无需获取气味发生信号。与以前的方法相比,一旦训练完成,就可以将传感器信号连续输入分类器,而无需离散化。我们得出结论,对于连续数据,使用尖峰网络可能具有概念上的优势,特别是在时间是计算的重要组成部分的情况下。使用我们小组开发的GPU加速尖峰神经网络模拟器实时实现分类。

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