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Sensor drift compensation using weighted neural networks

机译:使用加权神经网络的传感器漂移补偿

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In gas classification systems with multiple sensors, the individual sensor drift affects the system classification capacity over time. A model created to classify data at certain time, doesn't present the same efficiency to classify a sample in a future time. Depending on the problem, this time interval can be days, weeks or months. Chemical gas sensors suffer from drift problem because of the chemical process employed. In this investigation we developed a model that uses an ensemble of neural networks in a parallel way combining the weighted output of classifiers to compensate the drift. Another approach was to weight input data according to their recentness by repeating newer training values. Results show that performance of correct classifications of the gas samples using both methods improved when compared to classifiers trained with just recent data.
机译:在具有多个传感器的气体分类系统中,单个传感器的漂移会随时间影响系统分类能力。为在特定时间对数据进行分类而创建的模型在将来的时间中无法对样本进行分类。根据问题,此时间间隔可以是几天,几周或几个月。由于采用的化学过程,化学气体传感器存在漂移问题。在这项研究中,我们开发了一个模型,该模型以并行方式使用神经网络的集合,结合了分类器的加权输出以补偿漂移。另一种方法是通过重复输入较新的训练值来根据输入数据的最新性对输入数据进行加权。结果表明,与仅使用最新数据训练的分类器相比,使用这两种方法对气体样本进行正确分类的性能得到了改善。

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