An insight from homogeneity testing of long-term rainfall datasets over East Java, Indonesia

Heri Mulyanti, Istadi, Rahmat Gernowo
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Abstract

Robust, reliable, and trustworthy ground observation datasets are the preliminary requirement for assessing the impact of climate change over regions. Principal testing to assess the quality of ground observation rely on the missing data and homogeneity result. The study used 40 years of monthly rainfall documented from different topographical features in the monsoonal region of East Java, Indonesia. The test included annual rainfall, early rainy season (October-November-December), and primary rain season (January-February-March). The homogeneity of rainfall determined by absolute technique: Pettitt’s test, the Standard Normal Homogeneity Test, the Buishand Rank Test, and the von Neumann Ratio. Among the time series, October-November-December observation results in better homogeneity. However, the rainfall datasets during primary rainy season showed the worst homogeneity. By performing annual and seasonal homogeneity test from 67 rainfall stations: 5 stations out of data length required, 5% stations ‘rejected’, 11% ‘suspect’, 11% ‘doubtful’, and 73% were ‘trusted’. Therefore, a total of 45 stations can be used as metadata for relative comparison and 7 stations can be considered to be useful for analysis despite ‘doubtful’. The remaining 10 stations need careful consideration to be used for future water management.  Change point detected particularly between the year of 1997 through 2000. Pettitt’s test has outstanding results in the case of extreme climatic anomaly, but less sensitive of continuous abrupt change. The von Neumann test could detect abnormal data, but was not suitable for datasets containing few extreme values. The insights from homogeneity testing were: a) it is important to remove any outliers in the datasets before conducting homogeneity testing, b) both parametric and nonparametric homogeneity tests should be performed, and c) comparisons should be made with surrounding rainfall stations. Comparison with trusted long-term rainfall data is valuable for stations labeled as ‘doubtful’ or ‘suspect’ to mitigate false detections in individual homogeneity tests. The identified ‘useful’ rainfall data can then serve as reference stations for relative homogeneity tests. These findings suggest that reference stations should be assessed within similar rainfall zones.  
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印度尼西亚东爪哇岛长期降雨数据集的同质性测试启示
稳健、可靠和可信的地面观测数据集是评估气候变化对各地区影响的初步要求。评估地面观测质量的主要测试依赖于缺失数据和同质性结果。该研究使用了印度尼西亚东爪哇季风区不同地形特征记录的 40 年月降雨量。测试包括年降雨量、早期雨季(10 月-11 月-12 月)和主要雨季(1 月-2 月-3 月)。通过绝对技术确定降雨量的均匀性:佩蒂特检验、标准正态均匀性检验、布伊桑德等级检验和冯-诺依曼比率。在时间序列中,10 月-11 月-12 月的观测结果具有较好的同质性。然而,初雨季的降雨数据集显示出最差的同质性。通过对 67 个雨量站进行年度和季节同质性测试,结果表明5个站点的数据长度不符合要求,5%的站点被 "拒绝",11%的站点被 "怀疑",11%的站点被 "怀疑",73%的站点被 "信任"。因此,共有 45 个站点可用作相对比较的元数据,7 个站点尽管 "可疑",但仍可用于分析。其余 10 个站点需要仔细考虑是否可用于未来的水资源管理。 特别是在 1997 年至 2000 年期间发现的变化点。Pettitt 检验法在极端气候异常情况下效果显著,但对连续突变的敏感度较低。冯-诺依曼检验法可以检测出异常数据,但不适用于极端值较少的数据集。同质性检验的启示是:a) 在进行同质性检验之前,必须清除数据集中的异常值;b) 应同时进行参数和非参数同质性检验;c) 应与周边雨量站进行比较。对于标为 "可疑 "或 "疑似 "的雨量站,与可信的长期雨量数据进行比较对减少单个同质性检验中的误检很有价值。确定的 "有用 "降雨量数据可作为相对同质性测试的参考站。这些研究结果表明,参考站应在相似的降雨区内进行评估。
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