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Development of a normalized multi-sensors system for low cost on-line atmospheric pollution detection

机译:开发用于低成本在线大气污染检测的标准化多传感器系统

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摘要

Air Pollution monitoring and measurement are generally done using sampling techniques and analysis equipment often heavy, complex and expensive. Although these methods offer a high measurement precision which is essential to answer standards requirements, they are not adapted for quality oriented applications where simple information with low precision can be sufficient. The use of semiconductor gas sensors networks can provide the answer for a "low cost" system intended for such applications in air pollution detection fields. Three identical portable autonomous sensors arrays were built, each containing nine commercial semiconductor sensors especially chosen to detect a large range of pollutants usually encountered in ambient air and for a large part of them regulated. In order to overcome the temporal instability and the lack of reproducibility of these sensors, a calibration and normalisation procedure was developed. The obtained systems were used for on-site pollution monitoring in association with the French National Network of Accredited Associations for Air Quality Monitoring (AASQA). Gathered data from sensors systems and network data (NO, NO_2, CO, PM2,5,...) were treated using nonlinear regression algorithms like Neural Networks with an original "fuzzy logic" type pre-treatment in order to compute a model able to predict the membership degree for three predefined pollution categories: traffic, urban and photochemical pollution, along with a pollution index describing the severity of the predominant pollution. The prediction rate was estimated system per system, and site per site for six sites. It has been shown that it was possible to obtain a quasi-universal model with a success rate over 80%.
机译:空气污染监测和测量通常使用采样技术和分析设备进行,这些设备通常很笨重,复杂且昂贵。尽管这些方法提供了很高的测量精度,这对于满足标准要求必不可少,但它们不适用于以质量为导向的应用,在这些应用中,低精度的简单信息就足够了。半导体气体传感器网络的使用可以为旨在在空气污染检测领域进行此类应用的“低成本”系统提供答案。构建了三个相同的便携式自主传感器阵列,每个阵列包含九个商用半导体传感器,这些传感器特别选择用于检测通常在环境空气中遇到的各种污染物,并且对其中的大部分进行了监管。为了克服这些传感器的时间不稳定性和可重复性的不足,开发了一种校准和归一化程序。所获得的系统与法国国家空气质量监测认可协会网络(AASQA)一起,用于现场污染监测。使用非线性回归算法(如神经网络)对传感器系统和网络数据(NO,NO_2,CO,PM2、5等)收集的数据进行了原始“模糊逻辑”类型的预处理,以便计算出能够预测三种预定污染类别的隶属度:交通,城市和光化学污染,以及描述主要污染严重程度的污染指数。预测率是每个系统的估计系统,以及六个站点的每个站点的站点。已经证明有可能获得成功率超过80%的准通用模型。

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