Tang Hao, Cai Yunfei, Gao Song, Sun Jin, Ning Zhukai, Yu Zhenghao, Pan Jun, Zhao Zhuohui
NHC Key Laboratory of Health Technology Assessment, Key Laboratory of Public Health Safety of the Ministry of Education, Department of Environmental Health, School of Public Health, Fudan University, Shanghai 200032, China.
Department of General Management and Statistics, Shanghai Environment Monitoring Center, Shanghai 200235, China.
Sensors (Basel). 2024 May 27;24(11):3448. doi: 10.3390/s24113448.
The aim was to evaluate and optimize the performance of sensor monitors in measuring PM and PM under typical emission scenarios both indoors and outdoors.
Parallel measurements and comparisons of PM and PM were carried out between sensor monitors and standard instruments in typical indoor (2 months) and outdoor environments (1 year) in Shanghai, respectively. The optimized validation model was determined by comparing six machining learning models, adjusting for meteorological and related factors. The intra- and inter-device variation, measurement accuracy, and stability of sensor monitors were calculated and compared before and after validation.
Indoor particles were measured in a range of 0.8-370.7 μg/m and 1.9-465.2 μg/m for PM and PM, respectively, while the outdoor ones were in the ranges of 1.0-211.0 μg/m and 0.0-493.0 μg/m, correspondingly. Compared to machine learning models including multivariate linear model (ML), K-nearest neighbor model (KNN), support vector machine model (SVM), decision tree model (DT), and neural network model (MLP), the random forest (RF) model showed the best validation after adjusting for temperature, relative humidity (RH), PM/PM ratios, and measurement time lengths (months) for both PM and PM, in indoor (R: 0.97 and 0.91, root-mean-square error (RMSE) of 1.91 μg/m and 4.56 μg/m, respectively) and outdoor environments (R: 0.90 and 0.80, RMSE of 5.61 μg/m and 17.54 μg/m, respectively), respectively.
Sensor monitors could provide reliable measurements of PM and PM with high accuracy and acceptable inter and intra-device consistency under typical indoor and outdoor scenarios after validation by RF model. Adjusting for both climate factors and the ratio of PM/PM could improve the validation performance.
旨在评估和优化传感器监测器在室内和室外典型排放场景下测量细颗粒物(PM)和可吸入颗粒物(PM)的性能。
分别在上海典型的室内环境(2个月)和室外环境(1年)中,对传感器监测器和标准仪器进行PM和PM的平行测量与比较。通过比较六种机器学习模型,并对气象及相关因素进行调整,确定优化的验证模型。在验证前后,计算并比较传感器监测器的设备内和设备间差异、测量准确性及稳定性。
室内PM的测量范围为0.8 - 370.7μg/m³,PM为1.9 - 465.2μg/m³,而室外相应范围分别为1.0 - 211.0μg/m³和0.0 - 493.0μg/m³。与包括多元线性模型(ML)、K近邻模型(KNN)、支持向量机模型(SVM)、决策树模型(DT)和神经网络模型(MLP)在内的机器学习模型相比,随机森林(RF)模型在针对温度、相对湿度(RH)、PM/PM比率及测量时长(月)进行调整后,对室内(PM的R值为0.97,PM为0.91,均方根误差(RMSE)分别为1.91μg/m³和4.56μg/m³)和室外环境(PM的R值为0.90,PM为0.80,RMSE分别为5.61μg/m³和17.54μg/m³)的PM和PM均显示出最佳验证效果。
经RF模型验证后,传感器监测器在典型的室内和室外场景下,能够高精度且设备间及设备内一致性可接受地提供可靠的PM和PM测量值。对气候因素和PM/PM比率进行调整可提高验证性能。