Evaluation of calibration performance of a low-cost particulate matter sensor using collocated and distant NO2

IF 3.2 3区 地球科学 Q2 METEOROLOGY & ATMOSPHERIC SCIENCES Atmospheric Measurement Techniques Pub Date : 2024-05-31 DOI:10.5194/amt-17-3303-2024
Kabseok Ko, Seokheon Cho, Ramesh R. Rao
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Abstract

Abstract. Low-cost optical particle sensors have the potential to supplement existing particulate matter (PM) monitoring systems and to provide high spatial and temporal resolutions. However, low-cost PM sensors have often shown questionable performance under various ambient conditions. Temperature, relative humidity (RH), and particle composition have been identified as factors that directly affect the performance of low-cost PM sensors. This study investigated whether NO2, which creates PM2.5 by means of chemical reactions in the atmosphere, can be used to improve the calibration performance of low-cost PM2.5 sensors. To this end, we evaluated the PurpleAir PA-II, called PA-II, a popular air monitoring system that utilizes two low-cost PM sensors and that is frequently deployed near air quality monitoring sites of the Environmental Protection Agency (EPA). We selected a single location where 14 PA-II units have operated for more than 2 years, since July 2017. Based on the operating periods of the PA-II units, we then chose the period of January 2018 to December 2019 for study. Among the 14 units, a single unit containing more than 23 months of measurement data with a high correlation between the unit's two PMS sensors was selected for analysis. Daily and hourly PM2.5 measurement data from the PA-II unit and a BAM 1020 instrument, respectively, were compared using the federal reference method (FRM), and a per-month analysis was conducted against the BAM-1020 using hourly PM2.5 data. In the per-month analysis, three key features – namely temperature, relative humidity (RH), and NO2 – were considered. The NO2, called collocated NO2, was collected from the reliable instrument collocated with the PA-II unit. The per-month analysis showed that the PA-II unit had a good correlation (coefficient of determination R2>0.819) with the BAM-1020 during the months of November, December, and January in both 2018 and 2019, but their correlation intensity was moderate during other months, such as in July and September 2018 and August, September, and October 2019. NO2 was shown to be a key factor in increasing the value of R2 in the months when moderate correlation based on only PM2.5 was achieved. This study calibrated a PA-II unit using multiple linear regression (MLR) and random forest (RF) methods based on the same three features used in the analysis studies, as well as their multiplicative terms. The addition of NO2 had a much larger effect than that of RH when both PM2.5 and temperature were considered for calibration in both models. When NO2, temperature, and relative humidity were considered, the MLR method achieved similar calibration performance to the RF method. In addressing the feasibility of utilizing distant NO2 measurements for calibration in lieu of collocated data, the study highlights the effectiveness of distant NO2 when correlated strongly with collocated measurements. This finding offers a practical solution for situations where obtaining collocated NO2 data proves to be challenging or costly. We assessed the performance of different PA-II units to determine their efficacy. Our investigation reveals a significant enhancement in calibration performance across different PA-II units upon integrating NO2. Importantly, this improvement remains consistent even when employing models trained with different PA-II units within the same location. Overall, this investigation emphasizes the significance of NO2 in improving calibration for low-cost PM2.5 sensors and presents insights into leveraging distant NO2 measurements as a viable alternative for calibration in the absence of collocated data.
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使用同地和远距离 NO2 评估低成本颗粒物传感器的校准性能
摘要低成本光学颗粒物传感器有可能补充现有的颗粒物(PM)监测系统,并提供较高的空间和时间分辨率。然而,低成本颗粒物传感器在各种环境条件下的性能往往令人怀疑。温度、相对湿度(RH)和颗粒成分被认为是直接影响低成本可吸入颗粒物传感器性能的因素。二氧化氮通过大气中的化学反应生成 PM2.5,本研究调查了二氧化氮是否可用于改善低成本 PM2.5 传感器的校准性能。为此,我们对 PurpleAir PA-II(简称 PA-II)进行了评估,这是一种流行的空气监测系统,采用两个低成本 PM 传感器,经常部署在美国环保署(EPA)的空气质量监测点附近。我们选择了一个单一地点,那里的 14 台 PA-II 设备自 2017 年 7 月起已运行了两年多。根据 PA-II 装置的运行时间,我们选择了 2018 年 1 月至 2019 年 12 月期间进行研究。在这 14 台机组中,我们选择了一台包含超过 23 个月测量数据且机组的两个 PMS 传感器之间具有高度相关性的机组进行分析。使用联邦参考方法 (FRM) 对 PA-II 设备和 BAM 1020 仪器分别提供的每日和每小时 PM2.5 测量数据进行了比较,并使用每小时 PM2.5 数据对 BAM-1020 进行了每月分析。在按月分析中,考虑了三个关键特征,即温度、相对湿度 (RH) 和二氧化氮。NO2 称为同位 NO2,是从与 PA-II 设备同位的可靠仪器中收集的。按月分析表明,在 2018 年和 2019 年的 11 月、12 月和 1 月,PA-II 设备与 BAM-1020 具有良好的相关性(判定系数 R2>0.819),但在其他月份,如 2018 年 7 月和 9 月以及 2019 年 8 月、9 月和 10 月,它们的相关强度适中。在仅基于 PM2.5 实现中等相关性的月份,二氧化氮被证明是增加 R2 值的关键因素。本研究根据分析研究中使用的相同三个特征及其乘法项,使用多元线性回归(MLR)和随机森林(RF)方法校准了 PA-II 装置。当在两个模型中同时考虑 PM2.5 和温度进行校准时,增加 NO2 的影响要比增加相对湿度的影响大得多。当考虑二氧化氮、温度和相对湿度时,MLR 方法的校准性能与 RF 方法相似。在探讨利用远距离 NO2 测量值代替同位数据进行校准的可行性时,该研究强调了远距离 NO2 与同位测量值密切相关时的有效性。这一发现为获取同点 NO2 数据具有挑战性或成本高昂的情况提供了实用的解决方案。我们评估了不同 PA-II 装置的性能,以确定其功效。我们的调查显示,不同的 PA-II 单元在整合 NO2 后,校准性能都有显著提高。重要的是,即使在同一地点使用不同 PA-II 单元训练的模型,这种改进也是一致的。总之,这项研究强调了二氧化氮在改进低成本 PM2.5 传感器校准方面的重要性,并提出了在缺乏同地数据的情况下,利用远距离二氧化氮测量作为校准的可行替代方法的见解。
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来源期刊
Atmospheric Measurement Techniques
Atmospheric Measurement Techniques METEOROLOGY & ATMOSPHERIC SCIENCES-
CiteScore
7.10
自引率
18.40%
发文量
331
审稿时长
3 months
期刊介绍: Atmospheric Measurement Techniques (AMT) is an international scientific journal dedicated to the publication and discussion of advances in remote sensing, in-situ and laboratory measurement techniques for the constituents and properties of the Earth’s atmosphere. The main subject areas comprise the development, intercomparison and validation of measurement instruments and techniques of data processing and information retrieval for gases, aerosols, and clouds. The manuscript types considered for peer-reviewed publication are research articles, review articles, and commentaries.
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