Cross-concentration calibration of low-cost sensors for effective dust monitoring at construction sites

IF 3.9 3区 环境科学与生态学 Q2 ENGINEERING, CHEMICAL
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Abstract

Building activities commonly generate substantial amounts of construction dust, adversely affecting the nearby environment and public health. Construction workers, in particular, face significant health hazards due to their prolonged exposure to elevated levels of this dust. Traditional method of monitoring individual exposure to construction dust, such as gravimetric samplers or high-end analytical instruments, are often expensive, cumbersome, and not suitable for real-time, widespread deployment. This study employs the low-cost sensors (PMS A003-G10) to measure dust concentrations in varied environments: first low, then high, and then once again low concentrations. In the first low-concentration environment, the G10 sensors showed strong correlation (R2 > 0.81) and acceptable error (RMSE<13.6 μg/m3). However, in high-concentration environment, the G10 sensor faced range limitation issues, yet maintained good correlation. Post high-concentration exposure, the G10 sensor exhibited increased NRMSE and MAPE, indicating adverse impacts on its measurement capability. To enhance the G10's performance in high concentrations, temperature and humidity were used as calibration factors. Four machine learning algorithms (MLR, RF, KNN, and XGBoost) were compared, with XGBoost demonstrating superior calibration (R2 > 0.96, RMSE<117.1 μg/m3). The model's generalizability was validated by integrating data from both low and high-concentration environments into the XGBoost training. Subsequent application to the second low-concentration dataset post high-concentration exposure assessed the model's generalizability and applicability. This study demonstrates that with appropriate calibration, low-cost sensors can effectively monitor individual exposure to construction dust across diverse concentration levels.

交叉浓度校准低成本传感器,有效监测建筑工地粉尘
建筑活动通常会产生大量建筑粉尘,对附近环境和公众健康造成不利影响。尤其是建筑工人,由于长期暴露在高浓度的粉尘中,他们的健康面临着巨大的威胁。传统的建筑粉尘个人暴露监测方法,如重力采样器或高端分析仪器,往往昂贵、笨重,不适合实时、广泛地使用。本研究采用低成本传感器(PMS A003-G10)来测量不同环境中的粉尘浓度:首先是低浓度,然后是高浓度,再次是低浓度。在第一个低浓度环境中,G10 传感器显示出较强的相关性(R2 > 0.81)和可接受的误差(RMSE <13.6 μg/m3)。然而,在高浓度环境中,G10 传感器面临范围限制问题,但仍保持良好的相关性。高浓度暴露后,G10 传感器的 NRMSE 和 MAPE 增加,表明其测量能力受到不利影响。为了提高 G10 在高浓度条件下的性能,使用了温度和湿度作为校准因子。对四种机器学习算法(MLR、RF、KNN 和 XGBoost)进行了比较,其中 XGBoost 的校准效果更优(R2 > 0.96,RMSE <117.1 μg/m3)。通过将低浓度和高浓度环境中的数据整合到 XGBoost 训练中,验证了该模型的通用性。随后对高浓度暴露后的第二个低浓度数据集的应用评估了该模型的普适性和适用性。这项研究表明,只要进行适当的校准,低成本传感器就能有效监测个人暴露于不同浓度水平的建筑粉尘的情况。
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来源期刊
Journal of Aerosol Science
Journal of Aerosol Science 环境科学-工程:化工
CiteScore
8.80
自引率
8.90%
发文量
127
审稿时长
35 days
期刊介绍: Founded in 1970, the Journal of Aerosol Science considers itself the prime vehicle for the publication of original work as well as reviews related to fundamental and applied aerosol research, as well as aerosol instrumentation. Its content is directed at scientists working in engineering disciplines, as well as physics, chemistry, and environmental sciences. The editors welcome submissions of papers describing recent experimental, numerical, and theoretical research related to the following topics: 1. Fundamental Aerosol Science. 2. Applied Aerosol Science. 3. Instrumentation & Measurement Methods.
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