Kunić Zdravko, Mršić Leo, Đambić Goran, Ražov Tomislav
Department of Information Systems and Business Analytics, Algebra University, Gradišćanska 24, 10000 Zagreb, Croatia.
Rudolfovo-Science and Technology Centre, Podbreznik 15, 8000 Novo Mesto, Slovenia.
Sensors (Basel). 2024 Aug 23;24(17):5477. doi: 10.3390/s24175477.
Smart cities rely on a network of sensors to gather real-time data on various environmental factors, including air quality. This paper addresses the challenges of improving the accuracy of low-cost particulate matter sensors (LCPMSs) which can be compromised by environmental conditions, such as high humidity, which is common in many urban areas. Such weather conditions often lead to the overestimation of particle counts due to hygroscopic particle growth, resulting in a potential public concern, although most of the detected particles consist of just water. The paper presents an innovative design for an indicative air-quality measuring station that integrates the particulate matter sensor with a preconditioning subsystem designed to mitigate the impact of humidity. The preconditioning subsystem works by heating the incoming air, effectively reducing the relative humidity and preventing the hygroscopic growth of particles before they reach the sensor. To validate the effectiveness of this approach, parallel measurements were conducted using both preconditioned and non-preconditioned sensors over a period of 19 weeks. The data were analyzed to compare the performance of the sensors in terms of accuracy for PM, PM, and PM particles. The results demonstrated a significant improvement in measurement accuracy for the preconditioned sensor, especially in environments with high relative humidity. When the conditions were too severe and both sensors started measuring incorrect values, the preconditioned sensor-measured values were closer to the actual values. Also, the period of measuring incorrect values was shorter with the preconditioned sensor. The results suggest that the implementation of air preconditioning subsystems in LCPMSs deployed in smart cities can provide a cost-effective solution to overcome humidity-related inaccuracies, thereby improving the overall quality of measured air pollution data.
智慧城市依靠传感器网络来收集有关各种环境因素的实时数据,包括空气质量。本文探讨了提高低成本颗粒物传感器(LCPMS)准确性所面临的挑战,这类传感器可能会受到环境条件的影响,比如在许多城市地区普遍存在的高湿度。由于吸湿颗粒增长,这种天气状况常常导致颗粒计数被高估,尽管检测到的大多数颗粒仅由水组成,但这仍引发了潜在的公众担忧。本文提出了一种用于指示性空气质量测量站的创新设计,该设计将颗粒物传感器与一个旨在减轻湿度影响的预处理子系统集成在一起。预处理子系统通过加热进入的空气来工作,有效地降低相对湿度,并在颗粒到达传感器之前防止其吸湿增长。为了验证这种方法的有效性,在19周的时间内使用经过预处理和未经过预处理的传感器进行了并行测量。对数据进行分析,以比较传感器在PM、PM和PM颗粒准确性方面的性能。结果表明,经过预处理的传感器在测量准确性上有显著提高,尤其是在相对湿度较高的环境中。当条件过于恶劣且两个传感器都开始测量错误值时,经过预处理的传感器测量值更接近实际值。此外,经过预处理的传感器测量错误值的时间段更短。结果表明,在智慧城市中部署的LCPMS中实施空气预处理子系统可以提供一种经济高效的解决方案,以克服与湿度相关的测量不准确问题,从而提高所测空气污染数据的整体质量。