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引用次数: 16
摘要
我们提出了一个电子鼻(ENose),旨在识别气体的类型和估计其浓度。我们的系统包含8个传感器,其中5个是气体传感器(来自FIGARO USA, INC.的TGS类,其传感元件是二氧化锡(SnOz)半导体),其余的是温度传感器(来自国家半导体公司的LM35),湿度传感器(来自霍尼韦尔的hi -3610)和压力传感器(来自Fujikura Ltd.的XFAM)。我们的集成硬件软件系统首先使用一些机器学习原理和最小二乘回归原理来识别新的气体样本,然后分别估计其浓度。特别地,我们采用一个使用支持向量机(SVM)方法的训练模型来教系统如何区分不同的气体,然后我们应用另一个使用最小二乘回归的训练模型,针对每种类型的气体,预测其浓度。
On the Use of the SVM Approach in Analyzing an Electronic Nose
We present an Electronic Nose (ENose) which is aimed both at identifying the type of gas and at estimating its concentration. Our system contains 8 sensors, 5 of them being gas sensors (of the class TGS from FIGARO USA, INC., whose sensing element is a tin dioxide (SnOz) semiconductor), the remaining being a temperature sensor (LM35 from National Semiconductor Corporation), a humidity sensor (HIH-3610 from Honeywell), and a pressure sensor (XFAM from Fujikura Ltd.). Our integrated hardware-software system uses some machine learning principles and least square regression principle to identify at first a new gas sample, and then to estimate its concentration, respectively. In particular we adopt a training model using the Support Vector Machine (SVM) approach to teach the system how discriminate among different gases, then we apply another training model using the least square regression, for each type of gas, to predict its concentration.