Sheaf theory, which is a complex but powerful tool supported by topological theory, offers more flexibility and precision than traditional graph theory when it comes to modeling relationships between multiple features. In the realm of air quality monitoring, this can be incredibly useful in detecting sudden changes in local dust particle density, which can be difficult to accurately measure using commercial instruments. Traditional methods for air quality measurement often rely on calibrating the measurement with public standard instruments or calculating the measurements moving average over a constant period. However, this can lead to an incorrect index at the measurement location, as well as an oversmoothing effect on the signal. In this study, we propose a compact device that uses sheaf theory to detect and count vehicles as a local air quality change-causing factor. By inferring the number of vehicles into the PM2.5 index and propagating it into the recorded PM2.5 index from low-cost air monitoring sensors such as PMS7003 and BME280, we can achieve self-correction in real-time. Plus, the sheaf-theoretic method allows for easy scaling to multiple nodes for further filtering effects. By implementing sheaf theory in air quality monitoring, we can overcome the limitations of traditional methods and provide more accurate and reliable results.
翻译:在空气质量监测领域,这在发现本地尘粒密度的突然变化方面可能非常有用,因为使用商业仪器很难准确测量。 空气质量测量的传统方法往往依靠用公共标准仪器校准测量方法,或计算在固定时期平均移动的测量方法。然而,这可能导致测量地点的指数不正确,并对信号产生过度吸附效应。在本研究中,我们提出了一个紧凑的装置,用沙夫理论探测和计数车辆,作为局部空气质量变化的促成因素。通过在PM2.5指数中推算车辆数量,并将其从PMS7003和BME280等低成本空气监测传感器中推入PM2.5指数,我们可以在实时实现自我校正。此外,沙夫理论方法可以很容易地缩到多个节点,以便进一步过滤效果。通过在空气质量监测中采用她af理论,我们可以克服传统质量监测方法的更准确性限制。