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Technical note: An improved Grassberger-Procaccia algorithm for analysis of climate system complexity

机译:技术说明:一种改进的草莓润脱算法,用于分析气候系统复杂性

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摘要

Understanding the complexity of natural systems, such as climate systems, is critical for various research and application purposes. A range of techniques have been developed to quantify system complexity, among which the Grassberger-Procaccia (G-P) algorithm has been used the most. However, the use of this method is still not adaptive and the choice of scaling regions relies heavily on subjective criteria. To this end, an improved G-P algorithm was proposed, which integrated the normal-based K-means clustering technique and random sample consensus (RANSAC) algorithm for computing correlation dimensions. To test its effectiveness for computing correlation dimensions, the proposed algorithm was compared with traditional methods using the classical Lorenz and Henon chaotic systems. The results revealed that the new method outperformed traditional algorithms in computing correlation dimensions for both chaotic systems, demonstrating the improvement made by the new method. Based on the new algorithm, the complexity of precipitation, and air temperature in the Hai River basin (HRB) in northeastern China was further evaluated. The results showed that there existed considerable regional differences in the complexity of both climatic variables across the HRB. Specifically, precipitation was shown to become progressively more complex from the mountainous area in the northwest to the plain area in the southeast, whereas the complexity of air temperature exhibited an opposite trend, with less complexity in the plain area. Overall, the spatial patterns of the complexity of precipitation and air temperature reflected the influence of the dominant climate system in the region.
机译:了解自然系统的复杂性,例如气候系统,对于各种研究和应用来说都至关重要。已经开发了一系列技术以量化系统复杂性,其中GrassBerger-Procaccia(G-P)算法最多使用。然而,使用这种方法仍然没有自适应,并且缩放区域的选择大量依赖于主观标准。为此,提出了一种改进的G-P算法,其集成了基于正常的K-Means聚类技术和随机采样共识(RANSAC)算法来计算相关尺寸。为了测试其计算相关尺寸的有效性,将所提出的算法与使用经典Lorenz和Henon混沌系统的传统方法进行了比较。结果表明,新方法在计算两种混沌系统的相关尺寸下表现出传统算法,证明了新方法所做的改进。基于新算法,进一步评估了中国东北地区海河流域(HRB)的降水复杂性和空气温度。结果表明,在HRB上都存在相当大的区域差异。具体地,显示沉淀从西北部的山区到东南部的普通区域逐渐变得更加复杂,而空气温度的复杂性表现出相反的趋势,在平原区域的复杂性较小。总的来说,降水和空气温度复杂性的空间模式反映了该地区主要气候系统的影响。

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