机器学习使微波传感器免受温度影响

M. Abdolrazzaghi, Nazli Kazemi, M. Daneshmand
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引用次数: 5

摘要

在本文中,一个平面微波传感器用于非接触式材料表征在~ 2.7 GHz。温度的外来影响会导致各种材料的交错数据(振幅)轨迹,从而导致传感器读出的潜在混淆。采用适当的单隐层人工神经网络设计可以解决这一问题。将不同浓度的丙酮水(0 - 50%,增量10%)置于25°C - 60°C的温升下。该系统的输出证实了对流动水溶液的成功识别,准确率高达91%。
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Machine Learning to Immune Microwave Sensors from Temperature Impact
In this paper a planar microwave sensor is used for contactless material characterization at∼2.7 GHz. The extraneous impact of temperature is shown to cause interleaved data (amplitude) traces for various material that leads to potential confusion for sensor readout. This issue is resolved with proper Artificial Neural Network (ANN) design with single hidden layer. Various concentrations of water in acetone (0 - 50% with 10% increments) are exposed to temperature rise of 25°C - 60°C. The output of the proposed system confirms successful discrimination of the flowing aqueous solutions up to 91% accuracy.
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