Evaluation and calibration of low-cost off-the-shelf particulate matter sensors using machine learning techniques

IF 1.5 Q3 TELECOMMUNICATIONS
Mohammad Ghamari, Hamid Kamangir, Keyvan Arezoo, Khalil Alipour
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Abstract

The use of inexpensive, lightweight, and portable particulate matter (PM) sensors is increasingly becoming popular in air quality monitoring applications. As an example, these low-cost sensors can be used in surface or underground coal mines for monitoring of inhalable dust, and monitoring of inhalable particles in real-time can be beneficial as it can possibly assist in preventing coal mine related respiratory diseases such as black lung disease. However, commercially available PM sensors are not inherently calibrated, and as a result, they have vague and unclear measurement accuracy. Therefore, they must initially be evaluated and compared with standardised instruments to be ready to be deployed in the fields. In this study, three different types of inexpensive, light-scattering-based widely available PM sensors (Shinyei PPD42NS, Sharp GP2Y1010AU0F, and Laser SEN0177) are evaluated and calibrated with reference instruments. PM sensors are compared with reference instruments in a controlled environment. The calibration is done by means of different machine learning techniques. The results demonstrate that the calibrated response obtained by fusion of sensors has a higher accuracy in comparison to the calibrated response of each individual sensor.

Abstract Image

使用机器学习技术评估和校准低成本的现成颗粒物传感器
廉价、轻便、便携的颗粒物(PM)传感器在空气质量监测应用中越来越受欢迎。例如,这些低成本传感器可用于地面或地下煤矿监测可吸入粉尘,实时监测可吸入颗粒可能有助于预防与煤矿有关的呼吸系统疾病,如黑肺病。然而,商业上可用的PM传感器没有固有的校准,因此,它们具有模糊和不明确的测量精度。因此,必须首先对它们进行评价,并与标准化仪器进行比较,以便准备在外地部署。在本研究中,使用参考仪器对三种不同类型的廉价、基于光散射的PM传感器(Shinyei PPD42NS、Sharp GP2Y1010AU0F和Laser SEN0177)进行了评估和校准。在受控环境下,将PM传感器与参考仪器进行比较。校准是通过不同的机器学习技术来完成的。结果表明,与单个传感器的校准响应相比,传感器融合得到的校准响应具有更高的精度。
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来源期刊
IET Wireless Sensor Systems
IET Wireless Sensor Systems TELECOMMUNICATIONS-
CiteScore
4.90
自引率
5.30%
发文量
13
审稿时长
33 weeks
期刊介绍: IET Wireless Sensor Systems is aimed at the growing field of wireless sensor networks and distributed systems, which has been expanding rapidly in recent years and is evolving into a multi-billion dollar industry. The Journal has been launched to give a platform to researchers and academics in the field and is intended to cover the research, engineering, technological developments, innovative deployment of distributed sensor and actuator systems. Topics covered include, but are not limited to theoretical developments of: Innovative Architectures for Smart Sensors;Nano Sensors and Actuators Unstructured Networking; Cooperative and Clustering Distributed Sensors; Data Fusion for Distributed Sensors; Distributed Intelligence in Distributed Sensors; Energy Harvesting for and Lifetime of Smart Sensors and Actuators; Cross-Layer Design and Layer Optimisation in Distributed Sensors; Security, Trust and Dependability of Distributed Sensors. The Journal also covers; Innovative Services and Applications for: Monitoring: Health, Traffic, Weather and Toxins; Surveillance: Target Tracking and Localization; Observation: Global Resources and Geological Activities (Earth, Forest, Mines, Underwater); Industrial Applications of Distributed Sensors in Green and Agile Manufacturing; Sensor and RFID Applications of the Internet-of-Things ("IoT"); Smart Metering; Machine-to-Machine Communications.
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