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Evaluation of Statistical Downscaling Methods for Simulating Daily Precipitation Distribution, Frequency, and Temporal Sequence

机译:统计缩小方法评价用于模拟每日降水分布,频率和颞序

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Spatial discrepancy between global climate model (GCM) projections and the climate data input required by hydrological models is a major limitation for assessing the impact of climate change on soil erosion and crop production at local scales. Statistical downscaling techniques are widely used to correct biases of GCM projections. The objective of this study was to evaluate the ability of nine statistical downscaling methods from three available statistical downscaling categories to simulate daily precipitation distribution, frequency, and temporal sequence at four Oklahoma weather stations representing arid to humid climate regions. The three downscaling categories included perfect prognosis (PP), model output statistics (MOS), and stochastic weather generator (SWG). To minimize the effect of GCM projection error on downscaling quality, the National Centers for Environmental Prediction (NCEP) Reanalysis 1 data at a 2.5° grid spacing (treated as observed grid data) were downscaled to the four weather stations (representing arid, semi-arid, sub humid, and humid regions) using the nine downscaling methods. The station observations were divided into calibration and validation periods in a way that maximized the differences in annual precipitation means between the two periods for assessing the ability of each method in downscaling non-stationary climate changes. All methods were ranked with three metrics (Euclidean distance, sum of absolute relative error, and absolute error) for their ability in simulating precipitation amounts at daily, monthly, yearly, and annual maximum scales. After eliminating the poorest two performers in simulating precipitation mean, distribution, frequency, and temporal sequence, the top four remaining methods in ascending order were Distribution-based Bias Correction (DBC), Generator for Point Climate Change (GPCC), SYNthetic weather generaTOR (SYNTOR), andLO-Cal Intensity scaling (LOCI). DBC and LOCI are bias-correction methods, and GPCC and SYNTOR are generator-basedmethods. The differences in performances among the downscaling methods were smaller within each downscaling category than between the categories. The performance of each method varied with the climate conditions of each station. Overall results indicated that the SWG methods had certain advantages in simulating daily precipitation distribution, frequency, and temporal sequence for non-stationary climate changes.
机译:全球气候模型(GCM)预测和水文模型所需的气候数据输入之间的空间差异是评估气候变化对当地土壤侵蚀和作物生产影响的主要限制。统计降尺度技术被广泛用于纠正GCM预测的偏差。本研究的目的是评估来自三个可用统计降尺度类别的九种统计降尺度方法模拟俄克拉荷马州代表干旱至湿润气候地区的四个气象站的日降水分布、频率和时间序列的能力。三个降尺度类别包括完美预测(PP)、模型输出统计(MOS)和随机天气发生器(SWG)。为了尽量减少GCM投影误差对降尺度质量的影响,国家环境预测中心(NCEP)再分析1号数据以2.5°网格间距(视为观测网格数据)使用九种降尺度方法降尺度到四个气象站(代表干旱、半干旱、亚湿润和湿润地区)。台站观测分为校准期和验证期,以最大化两个期间的年降水量均值差异的方式,评估每种方法降低非平稳气候变化尺度的能力。所有方法都以三个指标(欧几里德距离、绝对相对误差和绝对误差)对其在日、月、年和年最大尺度上模拟降水量的能力进行了排名。在剔除了模拟降水平均值、分布、频率和时间序列中表现最差的两种方法后,剩下的四种方法依次为基于分布的偏差校正(DBC)、点气候变化发生器(GPCC)、合成天气发生器(SYNTOR)和局部强度标度(LOCES)。DBC和位点是偏差校正方法,GPCC和SYNTOR是基于生成器的方法。降尺度方法在每个降尺度类别内的表现差异小于不同类别之间的表现差异。每种方法的性能因每个站的气候条件而异。总体结果表明,SWG方法在模拟非平稳气候变化的日降水分布、频率和时间序列方面具有一定的优势。

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