用ACMANT进行时间序列均匀化:两个最新版本在大型合成温度数据集上的比较测试

IF 3 Q2 METEOROLOGY & ATMOSPHERIC SCIENCES
Climate Pub Date : 2023-11-06 DOI:10.3390/cli11110224
Peter Domonkos
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引用次数: 0

摘要

气候时间序列均一化的目的是消除由气候观测技术变化引起的非气候偏差。西班牙MULTITEST项目(2015-2017)的方法对比测试表明,ACMANT可能是当时可用的最准确的均匀化方法,尽管测试的ACMANTv4版本在测试数据包含多个时间序列的同步中断时给出了次优结果。为了更好地处理这一特定问题,ACMANTv5引入了组合时间序列比较技术。最近执行的测试证实,ACMANTv5可以充分处理同步不均匀性,但在其他一些情况下,准确性略有下降。对美国4个地区的已知日温度测试数据集的结果表明,使用ACMANTv5进行均匀化后的残差可能大于ACMANTv4。我们执行了进一步的测试,以更多地了解ACMANTv4和ACMANTv5的效率,并为新版本出现的问题找到解决方案。本文介绍了ACMANTv5的计划变更以及相关的测试结果。总体结果表明,在ACMANT中可以保持组合时间序列比较,但该方法在自动组网过程中需要生成更小的网络。为了进一步改进均一化方法,获得更可靠、更扎实的准确性知识,需要更多模拟真实气候数据真实时空结构的综合测试数据集。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Time Series Homogenization with ACMANT: Comparative Testing of Two Recent Versions in Large-Size Synthetic Temperature Datasets
Homogenization of climatic time series aims to remove non-climatic biases which come from the technical changes in climate observations. The method comparison tests of the Spanish MULTITEST project (2015–2017) showed that ACMANT was likely the most accurate homogenization method available at that time, although the tested ACMANTv4 version gave suboptimal results when the test data included synchronous breaks for several time series. The technique of combined time series comparison was introduced to ACMANTv5 to better treat this specific problem. Recently performed tests confirm that ACMANTv5 adequately treats synchronous inhomogeneities, but the accuracy has slightly worsened in some other cases. The results for a known daily temperature test dataset for four U.S. regions show that the residual errors after homogenization may be larger with ACMANTv5 than with ACMANTv4. Further tests were performed to learn more about the efficiencies of ACMANTv4 and ACMANTv5 and to find solutions for the problems occurring with the new version. Planned changes in ACMANTv5 are presented in the paper along with related test results. The overall results indicate that the combined time series comparison can be kept in ACMANT, but smaller networks should be generated in the automatic networking process of the method. To improve further the homogenization methods and to obtain more reliable and more solid knowledge about their accuracies, more synthetic test datasets mimicking the true spatio-temporal structures of real climatic data are needed.
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来源期刊
Climate
Climate Earth and Planetary Sciences-Atmospheric Science
CiteScore
5.50
自引率
5.40%
发文量
172
审稿时长
11 weeks
期刊介绍: Climate is an independent, international and multi-disciplinary open access journal focusing on climate processes of the earth, covering all scales and involving modelling and observation methods. The scope of Climate includes: Global climate Regional climate Urban climate Multiscale climate Polar climate Tropical climate Climate downscaling Climate process and sensitivity studies Climate dynamics Climate variability (Interseasonal, interannual to decadal) Feedbacks between local, regional, and global climate change Anthropogenic climate change Climate and monsoon Cloud and precipitation predictions Past, present, and projected climate change Hydroclimate.
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