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Sampling errors in rawinsonde-array budgets

机译:Rawinsonde阵列预算中的抽样误差

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Rawinsonde data used for sounding-array budget computations have random errors, both instrumental errors and errors of representativeness ( here called sampling errors). The latter are associated with the fact that radiosondes do not measure large-scale mean winds and state variables, but are contaminated by small-scale variations as well. Data from the western Pacific and the summer monsoon of southeast Asia are used to estimate these random errors, and to propagate them through budget computations to assign error bars to derived quantities. The statistics of sampling errors in directly measured variables are estimated from station pair analysis, in which variance is partitioned into contributions by resolved and unresolved scales. Resolved scales contribute the portion that is contained in averages of adjacent sounding stations and/or adjacent launch times (6-h intervals), while the rest of the total variance is defined as unresolved. Magnitudes of unresolved variability for typical rawinsonde-array spacings are similar to0.5 K for temperature; similar to5% for relative humidity at low levels, rising to nearly 15% in the middle-upper troposphere; and similar to2 m s(-1) for winds, rising to 3 m s(-1) in the upper troposphere. These are much larger than random instrumental errors, as estimated from pairs of simultaneous rawinsondes launched very close together. Vertical correlation scales of unresolved variability are 100 - 200 hPa. Up to 50% of the variance of humidity is unresolved, while for zonal wind the unresolved portion is only a few percent. Spatial and temporal sampling errors become about equal for 6-hourly rawinsondes similar to200 km apart. The effects of sampling errors on budget computations are estimated by a perturbed- observation ensemble approach. All computations are repeated 20 times, with random realizations of unresolved variability added to the rawinsonde data entering the analysis. The ensemble standard deviation serves as an estimate of sampling error, which naturally decreases as the results are averaged over larger areas and longer time periods. For example, rainfall estimates on similar to500 km scales have sampling errors of similar to5 mm day(-1) in daily means, and similar to1 mm day(-1) in monthly means. The ensemble spread of 120-day time integrations of the vertically averaged moist enthalpy equation with rawinsonde-array-derived advective sources exceeds 20 K, implying that sampling error could be responsible for substantial biases in column models forced with such source terms. [References: 26]
机译:用于探测阵列预算计算的Rawinsonde数据具有随机误差,包括仪器误差和代表性误差(以下称为采样误差)。后者与以下事实有关:无线电探空仪不测量大型平均风和状态变量,但也受到小型变化的污染。来自西太平洋和东南亚夏季风的数据用于估计这些随机误差,并通过预算计算进行传播,以将误差线分配给导出的数量。直接测得的变量中抽样误差的统计量是根据测站对分析估算出来的,在该分析中,方差按可分辨和不可分辨的尺度分为贡献。已解决的标度贡献了包含在相邻探测站和/或相邻发射时间(6小时间隔)的平均值中的部分,而其余的总方差定义为未解决。典型的rawinsonde阵列间距的未解决变异幅度类似于温度的0.5 K;低水平的相对湿度接近5%,对流层中上层上升到接近15%;类似于风的2 m s(-1),在对流层上部上升到3 m s(-1)。这些误差远大于随机的仪器误差,这是根据非常紧密地同时发射的成对同时发生的Rawinsondes估算得出的。未解决的变异的垂直相关标度为100-200 hPa。高达50%的湿度变化尚未解决,而对于纬向风,未解决的部分仅占百分之几。对于间隔200 km的6小时原始信噪比而言,空间和时间采样误差大约相等。抽样误差对预算计算的影响是通过扰动观测合奏法估计的。所有计算重复20次,将未解决的可变性的随机实现添加到进入分析的原始信德数据中。整体标准偏差可作为采样误差的估计值,随着结果在较大区域和较长时间段内的平均化,该误差自然会减小。例如,在类似的500 km尺度上的降雨估计,其日均采样误差接近5 mm day(-1),而月均采样误差接近1 mm day(-1)。垂直平均湿焓方程与Rawinsonde阵列推导的对流源的120天时间积分的整体分布超过20 K,这意味着采样误差可能是造成采用这种源项的列模型中较大偏差的原因。 [参考:26]

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