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Discrete Cosine Transform Based Causal Convolutional Neural Network for Drift Compensation in Chemical Sensors

机译:基于离散余弦变换的化学传感器漂移补偿的因果卷积神经网络

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Sensor drift is a major problem in chemical sensors that requires addressing for reliable and accurate detection of chemical analytes. In this paper, we develop a causal convolutional neural network (CNN) with a Discrete Cosine Transform (DCT) layer to estimate the drift signal. In the DCT module, we apply soft-thresholding nonlinearity in the transform domain to denoise the data and obtain a sparse representation of the drift signal. The soft-threshold values are learned during training. Our results show that DCT layer-based CNNs are able to produce a slowly varying baseline drift signal. We train the CNN on synthetic data and test it on real chemical sensor data. Our results show that we can have an accurate and smooth drift estimate even when the observed sensor signal is very noisy.
机译:传感器漂移是化学传感器中的主要问题,需要寻址可靠和准确地检测化学分析物。 在本文中,我们开发了一种因果卷积神经网络(CNN),具有离散余弦变换(DCT)层来估计漂移信号。 在DCT模块中,我们在变换域中应用软阈值非线性,以便数据并获得漂移信号的稀疏表示。 在培训期间汲取软阈值值。 我们的结果表明,基于DCT层的CNN能够产生缓慢变化的基线漂移信号。 我们在合成数据上培训CNN并在真实化学传感器数据上测试。 我们的结果表明,即使观察到的传感器信号非常嘈杂,我们也可以具有准确顺畅的漂移估计。

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