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Calibration Model of a Low-Cost Air Quality Sensor Using an Adaptive Neuro-Fuzzy Inference System

机译:使用自适应神经模糊推理系统的低成本空气质量传感器的校准模型

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摘要

Conventional air quality monitoring systems, such as gas analysers, are commonly used in many developed and developing countries to monitor air quality. However, these techniques have high costs associated with both installation and maintenance. One possible solution to complement these techniques is the application of low-cost air quality sensors (LAQSs), which have the potential to give higher spatial and temporal data of gas pollutants with high precision and accuracy. In this paper, we present DiracSense, a custom-made LAQS that monitors the gas pollutants ozone (O3), nitrogen dioxide (NO2), and carbon monoxide (CO). The aim of this study is to investigate its performance based on laboratory calibration and field experiments. Several model calibrations were developed to improve the accuracy and performance of the LAQS. Laboratory calibrations were carried out to determine the zero offset and sensitivities of each sensor. The results showed that the sensor performed with a highly linear correlation with the reference instrument with a response-time range from 0.5 to 1.7 min. The performance of several calibration models including a calibrated simple equation and supervised learning algorithms (adaptive neuro-fuzzy inference system or ANFIS and the multilayer feed-forward perceptron or MLP) were compared. The field calibration focused on O3 measurements due to the lack of a reference instrument for CO and NO2. Combinations of inputs were evaluated during the development of the supervised learning algorithm. The validation results demonstrated that the ANFIS model with four inputs (WE OX, AE OX, T, and NO2) had the lowest error in terms of statistical performance and the highest correlation coefficients with respect to the reference instrument (0.8 < r < 0.95). These results suggest that the ANFIS model is promising as a calibration tool since it has the capability to improve the accuracy and performance of the low-cost electrochemical sensor.
机译:常规的空气质量监测系统,例如气体分析仪,在许多发达国家和发展中国家通常用于监测空气质量。但是,这些技术具有与安装和维护相关的高成本。补充这些技术的一种可能解决方案是应用低成本空气质量传感器(LAQS),该传感器有可能以较高的精度和准确度提供较高的气体污染物时空数据。在本文中,我们介绍了DiracSense,这是一种定制的LAQS,用于监视气体污染物臭氧(O3),二氧化氮(NO2)和一氧化碳(CO)。这项研究的目的是基于实验室校准和现场实验研究其性能。开发了几种模型校准,以提高LAQS的准确性和性能。进行实验室校准以确定每个传感器的零偏移和灵敏度。结果表明,该传感器与参考仪器具有高度线性相关性,响应时间范围为0.5至1.7分钟。比较了包括校准简单方程和监督学习算法(自适应神经模糊推理系统或ANFIS和多层前馈感知器或MLP)在内的几种校准模型的性能。由于缺乏用于CO和NO2的参考仪器,现场校准的重点是O3的测量。在监督学习算法的开发过程中评估了输入的组合。验证结果表明,相对于参考仪器,具有四个输入(WE OX,AE OX,T和NO2)的ANFIS模型具有最低的统计性能误差和最高的相关系数(0.8

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