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首页> 外文期刊>IEEE sensors journal >Adaptive K-NN for the detection of air pollutants with a sensor array
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Adaptive K-NN for the detection of air pollutants with a sensor array

机译:自适应K-NN用于通​​过传感器阵列检测空气污染物

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摘要

The field of air-quality monitoring is gaining increasing interest, with regard to both indoor environment and air-pollution control in open space. This work introduces a pattern recognition technique based on adaptive K-nn applied to a multisensor system, optimized for the recognition of some relevant tracers for air pollution in outdoor environment, namely benzene, toluene, and xylene (BTX), NO2, and CO. The pattern-recognition technique employed aims at recognizing the target gases within an air sample of unknown composition and at estimating their concentrations. It is based on PCA and K-nn classification with an adaptive vote technique based on the gas concentrations of the training samples associated to the K-neighbors. The system is tested in a controlled environment composed of synthetic air with a fixed humidity rate (30%) at concentrations in the ppm range for BTX and NO2, in the range of 10 ppm for CO. The pattern recognition technique is experimented on a knowledge base composed of a limited number of samples (130), with the adoption of a leave-one-out procedure in order to estimate the classification probability. In these conditions, the system demonstrates the capability to recognize the presence of the target gases in controlled conditions with a high hit-rate. Moreover, the concentrations of the individual components of the test samples are successfully estimated for BTX and NO2 in more than 80% of the considered cases, while a lower hit-rate (69%) is reached for CO.
机译:在室内环境和开放空间中的空气污染控制方面,空气质量监测领域越来越引起人们的关注。这项工作介绍了一种基于自适应K-nn的模式识别技术,该模式识别技术已应用于多传感器系统,该技术已优化用于识别室外环境中一些相关的空气污染示踪剂,例如苯,甲苯和二甲苯(BTX),NO2和CO。所采用的模式识别技术旨在识别未知成分的空气样本中的目标气体并估算其浓度。它基于PCA和K-nn分类,并基于与K邻居相关的训练样本的气体浓度采用自适应投票技术。该系统在由固定湿度(30%)的合成空气组成的受控环境中进行了测试,其中BTX和NO2的浓度在ppm范围内,CO的浓度在10 ppm范围内。基本样本由有限数量的样本(130)组成,并采用了留一法程序以估计分类概率。在这些条件下,系统演示了在受控条件下以高命中率识别目标气体的能力。此外,在超过80%的考虑案例中,成功估算了BTX和NO2的测试样品中各个成分的浓度,而CO的命中率较低(69%)。

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