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首页> 外文期刊>International Journal of Biometeorology: Journal of the International Society of Biometeorology >Using Self-Organising Maps (SOMs) to assess synchronies: an application to historical eucalypt flowering records. (Special Issue: Phenology 2010: Climate change impacts and adaptations)
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Using Self-Organising Maps (SOMs) to assess synchronies: an application to historical eucalypt flowering records. (Special Issue: Phenology 2010: Climate change impacts and adaptations)

机译:使用自组织映射(SOM)评估同步性:在历史桉树开花记录中的应用。 (特刊:2010年物候:气候变化的影响和适应)

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摘要

Self-Organising Map (SOM) clustering methods applied to the monthly and seasonal averaged flowering intensity records of eight Eucalypt species are shown to successfully quantify, visualise and model synchronisation of multivariate time series. The SOM algorithm converts complex, nonlinear relationships between high-dimensional data into simple networks and a map based on the most likely patterns in the multiplicity of time series that it trains. Monthly- and seasonal-based SOMs identified three synchronous species groups (clusters): E. camaldulensis, E. melliodora, E. polyanthemos; E. goniocalyx, E. microcarpa, E. macrorhyncha; and E. leucoxylon, E. tricarpa. The main factor in synchronisation (clustering) appears to be the season in which flowering commences. SOMs also identified the asynchronous relationship among the eight species. Hence, the likelihood of the production, or not, of hybrids between sympatric species is also identified. The SOM pattern-based correlation values mirror earlier synchrony statistics gleaned from Moran correlations obtained from the raw flowering records. Synchronisation of flowering is shown to be a complex mechanism that incorporates all the flowering characteristics: flowering duration, timing of peak flowering, of start and finishing of flowering, as well as possibly specific climate drivers for flowering. SOMs can accommodate for all this complexity and we advocate their use by phenologists and ecologists as a powerful, accessible and interpretable tool for visualisation and clustering of multivariate time series and for synchrony studies.Digital Object Identifier http://dx.doi.org/10.1007/s00484-011-0427-4
机译:自组织图(SOM)聚类方法应用于八个桉树物种的月度和季节平均开花强度记录,显示成功量化,可视化和建模多元时间序列的同步。 SOM算法将高维数据之间复杂的非线性关系转换为简单的网络,并根据其训练的多个时间序列中最有可能的模式绘制地图。基于月度和季节的SOM确定了三个同步物种组(集群): E。 camaldulensis , E。 melliodora , E。聚蒽; E。角ni , E。小果皮, E。 macrorhyncha ;和 E。白索龙, E。 carp果。同步(聚簇)的主要因素似乎是开花开始的季节。 SOM还确定了八个物种之间的异步关系。因此,还确定了同胞种之间产生或不产生杂种的可能性。基于SOM 模式的相关值反映了从原始开花记录获得的Moran相关中收集的早期同步统计数据。开花同步显示是一个复杂的机制,其中包含了所有开花特征:开花持续时间,高峰开花时间,开花开始和结束以及开花的特定气候驱动因素。 SOM可以适应所有这些复杂性,我们建议物候学家和生态学家使用它们作为一种功能强大,易于访问且可解释的工具,用于对多元时间序列进行可视化和聚类以及进行同步研究。Digital Object Identifier http://dx.doi.org/ 10.1007 / s00484-011-0427-4

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