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Novel estimation of aerosol processes with particle size distribution measurements: a case study with the TOMAS algorithm v1.0.0

机译:粒度分布测量气溶胶过程的新型估计 - 以汤姆斯算法v1.0.0为例

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Atmospheric aerosol microphysical processes are a significant source of uncertainty in predicting climate change. Specifically, aerosol nucleation, emissions, and growth rates, which are simulated in chemical transport models to predict the particle size distribution, are not understood well. However, long-term size distribution measurements made at several ground-based sites across Europe implicitly contain information about the processes that created those size distributions. This work aims to extract that information by developing and applying an inverse technique to constrain aerosol emissions as well as nucleation and growth rates based on hourly size distribution measurements. We developed an inverse method based upon process control theory into an online estimation technique to scale aerosol nucleation, emissions, and growth so that the model–measurement bias in three measured aerosol properties exponentially decays. The properties, which are calculated from the measured and predicted size distributions, used to constrain aerosol nucleation, emission, and growth rates are the number of particles with a diameter between 3 and 6?nm, the number with a diameter greater than 10?nm, and the total dry volume of aerosol ( N 3–6 , N 10 , V dry ), respectively. In this paper, we focus on developing and applying the estimation methodology in a zero-dimensional “box” model as a proof of concept before applying it to a three-dimensional simulation in subsequent work. The methodology is first tested on a dataset of synthetic and perfect measurements that span diverse environments in which the true particle emissions, growth, and nucleation rates are known. The inverse technique accurately estimates the aerosol microphysical process rates with an average and maximum error of 2?% and 13?%, respectively. Next, we investigate the effect that measurement noise has on the estimated rates. The method is robust to typical instrument noise in the aerosol properties as there is a negligible increase in the bias of the estimated process rates. Finally, the methodology is applied to long-term datasets of in situ size distribution measurements in western Europe from May?2006 through June?2007. At Melpitz, Germany, and Hyyti?l?, Finland, the average diurnal profiles of estimated 3?nm particle formation rates are reasonable, having peaks near noon local time with average peak values of 1 and 0.15?cm ?3 ?s ?1 , respectively. The normalized absolute error in estimated N 3–6 , N 10 , and V dry at three European measurement sites is less than 15?%, showing that the estimation framework developed here has potential to decrease model–measurement bias while constraining uncertain aerosol microphysical processes.
机译:大气气溶胶微药物过程是预测气候变化的重要性的重要来源。具体而言,在化学传输模型中模拟的气溶胶成核,排放和生长速率,以预测粒度分布,不会很好地理解。然而,在欧洲的多个基于地基站点的长期大小分布测量隐含地包含有关创建这些大小分布的进程的信息。这项工作旨在通过开发和应用逆技术来提取该信息来限制气溶胶排放以及基于每小时尺寸分布测量的成核和生长速率。我们开发了一种基于过程控制理论的逆方法,进入了在线估计技术,以规模气溶胶成核,排放和生长,使三种测量的气溶胶属性中的模型测量偏压指数衰减。由测量的和预测的尺寸分布计算的性质,用于限制气溶胶成核,发射和生长速率是直径在3和6Ω·nm之间的颗粒的数量,该数量大于10≤nm ,以及气溶胶的总干燥体积(N 3-6,N 10,D干)。在本文中,我们专注于在零维“框”模型中的估算方法作为概念证明,然后在后续工作中将其应用于概念之前。首先在合成和完美测量的数据集上测试方法,该数据集跨越各种环境,其中已知真正的粒子排放,生长和成核率。逆技术可以分别精确地估计气溶胶微手理过程率,平均值和最大误差分别为2〜%和13Ω%。接下来,我们研究了测量噪声对估计速率的影响。该方法对气溶胶特性的典型仪器噪声具有稳健,因为估计的过程速率的偏差易忽略了不计。最后,该方法应用于5月至6月至6月2006年5月的西欧原位尺寸分布测量的长期数据集2006年?2007年。在Melpitz,德国和Hyyti?L?,芬兰,估计3?NM粒子形成率的平均昼夜曲线是合理的,在中午局部时间附近具有峰值,平均峰值为1和0.15Ω·厘米?3?S?1 , 分别。在三个欧洲测量部位的估计N 3-6,N 10和V干燥中的归一化绝对误差小于15?%,表明这里开发的估计框架具有降低模型测量偏差的可能性,同时限制曝气气泡微手术过程的不确定。

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