Improved Spatio-temporal Kringing and its Application to Regional Precipitation Prediction

Yan Liu, Ya-Di Hu, Haibo Wang, Can Jin, Dawei Dong
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引用次数: 1

Abstract

Precipitation is one of the most important elements in meteorological data. However, due to the limitation of resource conditions, the number of meteorological stations is limited, and interpolation is required to obtain the precipitation data in the observation area and other locations. Kriging interpolation whose core is to obtain the best variogram model is widely used in the prediction of regional precipitation. However, it is difficult to find perfect estimating model, and numerous approachs are utilized to handle this problem. In order to gain better parameters and model, an improved spatiotemporal Kriging interpolation method is proposed in this paper. The chaotic ant-lion algorithm (CALO) is employed to seek suitable parameters of the variogram both in the space domain and the time domain. This evolutionary algorithm whose performance has been validated in the literatures is not vulnerable to search the global solution. The experiment is conducted in terms of the fitting effect and interpolation effect, error analysis to demonstrate the superior performance of the proposed method, compared to other fitting methods such as Least square method. Several optimization algorithms are used to constitute the contrast experiment. The experimental results show that the proposed method prevails among other approachs as far as the precision, calculation cost and effectiveness.
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改进时空克林格及其在区域降水预测中的应用
降水是气象资料中最重要的要素之一。但由于资源条件的限制,气象站数量有限,需要插值获取观测区及其他位置的降水数据。Kriging插值在区域降水预报中得到了广泛的应用,其核心是获得最佳变差模型。然而,很难找到完美的估计模型,有许多方法被用来处理这个问题。为了获得更好的参数和模型,本文提出了一种改进的时空克里格插值方法。采用混沌蚁狮算法(CALO)在空间域和时间域寻找合适的变差函数参数。该进化算法不容易搜索全局解,其性能已被文献验证。从拟合效果、插值效果、误差分析等方面进行了实验,对比最小二乘法等其他拟合方法,验证了所提方法的优越性能。采用几种优化算法组成对比实验。实验结果表明,该方法在精度、计算成本和有效性方面优于其他方法。
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