Wildfires pose an increasingly severe threat to air quality, yet quantifying their causal impact remains challenging due to unmeasured meteorological and geographic confounders. Moreover, wildfire impacts on air quality may exhibit heterogeneous effects across pollution levels, which conventional mean-based causal methods fail to capture. To address these challenges, we develop a Quantile-based Latent Spatial Confounder Model (QLSCM) that substitutes conditional expectations with conditional quantiles, enabling causal analysis across the entire outcome distribution. We establish the causal interpretation of QLSCM theoretically, prove the identifiability of causal effects, and demonstrate estimator consistency under mild conditions. Simulations confirm the bias correction capability and the advantage of quantile-based inference over mean-based approaches. Applying our method to contiguous US wildfire and air quality data, we uncover important heterogeneous effects: fire radiative power exerts significant positive causal effects on aerosol optical depth at high quantiles in Western states like California and Oregon, while insignificant at lower quantiles. This indicates that wildfire impacts on air quality primarily manifest during extreme pollution events. Regional analyses reveal that Western and Northwestern regions experience the strongest causal effects during such extremes. These findings provide critical insights for environmental policy by identifying where and when mitigation efforts would be most effective.
翻译:野火对空气质量构成日益严重的威胁,但由于未测量的气象和地理混杂因素,量化其因果影响仍具挑战性。此外,野火对空气质量的影响可能在不同污染水平上表现出异质性效应,而传统的基于均值的因果方法无法捕捉这些差异。为应对这些挑战,我们开发了一种基于分位数的潜在空间混杂模型(QLSCM),该模型用条件分位数替代条件期望,从而能够对整个结果分布进行因果分析。我们从理论上建立了QLSCM的因果解释,证明了因果效应的可识别性,并在温和条件下证明了估计量的一致性。模拟实验证实了该方法的偏差校正能力以及基于分位数推断相对于基于均值方法的优势。将我们的方法应用于美国本土的野火和空气质量数据,我们发现了重要的异质性效应:在加利福尼亚州和俄勒冈州等西部州,火辐射功率在高分位数处对气溶胶光学厚度具有显著的正向因果效应,而在较低分位数处则不显著。这表明野火对空气质量的影响主要在极端污染事件期间显现。区域分析揭示,在极端污染事件期间,西部和西北部地区经历的因果效应最强。这些发现通过确定缓解措施在何时何地最为有效,为环境政策提供了关键见解。