Zhou Jingwen, Chang Howard H, Fuentes Montserrat
Department of Statistics, North Carolina State University, Raleigh, NC, 27695.
J Agric Biol Environ Stat. 2012 Sep 1;17(3):377-394. doi: 10.1007/s13253-012-0105-y.
Studies on the health impacts of climate change routinely use climate model output as future exposure projection. Uncertainty quantification, usually in the form of sensitivity analysis, has focused predominantly on the variability arise from different emission scenarios or multi-model ensembles. This paper describes a Bayesian spatial quantile regression approach to calibrate climate model output for examining to the risks of future temperature on adverse health outcomes. Specifically, we first estimate the spatial quantile process for climate model output using nonlinear monotonic regression during a historical period. The quantile process is then calibrated using the quantile functions estimated from the observed monitoring data. Our model also down-scales the gridded climate model output to the point-level for projecting future exposure over a specific geographical region. The quantile regression approach is motivated by the need to better characterize the tails of future temperature distribution where the greatest health impacts are likely to occur. We applied the methodology to calibrate temperature projections from a regional climate model for the period 2041 to 2050. Accounting for calibration uncertainty, we calculated the number of of excess deaths attributed to future temperature for three cities in the US state of Alabama.
关于气候变化对健康影响的研究通常将气候模型输出用作未来暴露预测。不确定性量化通常以敏感性分析的形式进行,主要集中于不同排放情景或多模型集合所产生的变异性。本文描述了一种贝叶斯空间分位数回归方法,用于校准气候模型输出,以检验未来气温对不良健康结果的风险。具体而言,我们首先在历史时期使用非线性单调回归估计气候模型输出的空间分位数过程。然后使用从观测监测数据估计的分位数函数对分位数过程进行校准。我们的模型还将网格化的气候模型输出降尺度到点级别,以预测特定地理区域的未来暴露情况。分位数回归方法的动机是需要更好地刻画未来温度分布的尾部,而最大的健康影响可能就发生在那里。我们应用该方法校准了2041年至2050年期间区域气候模型的温度预测。考虑到校准不确定性,我们计算了美国阿拉巴马州三个城市未来气温导致的超额死亡人数。