Mahajan Sachit, Helbing Dirk
Computational Social Science, ETH Zurich, Zurich, Switzerland.
NPJ Clim Atmos Sci. 2025;8(1):257. doi: 10.1038/s41612-025-01145-2. Epub 2025 Jul 5.
Low-cost particulate matter (PM) sensors enable high-resolution urban air quality monitoring but face challenges from offsets, scaling mismatches, and drift. We propose an trust-based calibration framework that first corrects systematic errors and then dynamically adjusts model complexity based on sensor reliability. Extensive simulations and real-world deployment in Zurich, Switzerland validate the approach. Each sensor's trust score integrates four indicators: accuracy, stability, responsiveness, and consensus alignment. High-trust sensors receive minimal correction, preserving baseline accuracy, while low-trust sensors leverage expanded wavelet-based features and deeper models. Results show mean absolute error (MAE) reductions of up to 68% for poorly performing sensors and 35-38% for reliable ones, outperforming conventional calibration methods. By using trust-weighted consensus, the framework reduces dependence on large training datasets and frequent re-calibrations, ensuring scalability. These findings demonstrate that dynamic, trust-driven calibration can substantially enhance low-cost sensor network accuracy across both controlled scenarios and complex real-world environments.
低成本颗粒物(PM)传感器能够实现高分辨率的城市空气质量监测,但面临着偏移、比例失配和漂移等挑战。我们提出了一种基于信任的校准框架,该框架首先校正系统误差,然后根据传感器可靠性动态调整模型复杂度。在瑞士苏黎世进行的广泛模拟和实际部署验证了该方法。每个传感器的信任分数整合了四个指标:准确性、稳定性、响应性和一致性对齐。高信任度的传感器接受的校正最少,从而保持基线准确性,而低信任度的传感器则利用基于小波的扩展特征和更深的模型。结果表明,性能较差的传感器的平均绝对误差(MAE)降低了68%,可靠传感器的平均绝对误差降低了35%-38%,优于传统校准方法。通过使用信任加权共识,该框架减少了对大型训练数据集和频繁重新校准的依赖,确保了可扩展性。这些发现表明,动态的、信任驱动的校准可以在受控场景和复杂的现实世界环境中大幅提高低成本传感器网络的准确性。