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首页> 外文期刊>International Journal of Climatology: A Journal of the Royal Meteorological Society >Statistical prediction of non‐Gaussian climate extremes in urban areas based on the first‐order difference method
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Statistical prediction of non‐Gaussian climate extremes in urban areas based on the first‐order difference method

机译:基于一阶差异方法的城市地区非高斯气候极端统计预测

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摘要

>Prediction of climate extremes is challenging, especially for non‐Gaussian extremes in urban areas where the majority of people live, since the Gaussian assumption used in linear regression is violated and the urbanization effect needs to be considered. In this study, the first‐order difference method is introduced to take these difficulties into account. Statistical prediction of the non‐Gaussian annual occurrence of hot days in downtown Hong Kong, which is highly urbanized, is used to illustrate this method. With the help of the first‐order difference of the annual occurrences, which follows a Gaussian distribution, the difference series is used as the predictant to find predictors and to construct a prediction model by using traditional linear regression. The difference is first predicted and is then added to the observed value at the preceding time to obtain the predicted annual occurrence. The historical urbanization effect is thus obtained directly from the observations at the preceding time. The prediction results are found desirable. The broad application potential and conditions in which this method should be used are also discussed.
机译: >气候极端的预测是具有挑战性的,特别是对于大多数人居住的城市地区的非高斯极端,由于侵犯了线性回归中使用的高斯假设,并且需要考虑城市化效果。在这项研究中,引入了一阶差分方法,以考虑这些困难。统计预测香港市中心的炎热天炎的非高斯每年发生的预测,高城市化,用于说明这种方法。借助于高斯分布的年度发生的一阶差异,差异系列被用作找到预测器的预测剂并通过使用传统的线性回归来构造预测模型。首先预测差异,然后将观察到的值添加到前一段以获得预测的年度发生。因此,历史城市化效果直接从前续时间的观察结果获得。发现预测结果是理想的。还讨论了这种方法的广泛应用势和条件。

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