首页> 外文期刊>Journal of Geophysical Research, C. Oceans: JGR >Understanding dynamic of biogeochemical properties in the northern Adriatic Sea by using self-organizing maps and k-means clustering
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Understanding dynamic of biogeochemical properties in the northern Adriatic Sea by using self-organizing maps and k-means clustering

机译:通过自组织图和k-均值聚类了解亚得里亚海北部生物地球化学性质的动态

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摘要

The dynamic of biogeochemical properties in a coastal area of the northern Adriatic Sea (Gulf of Trieste) is analyzed through (1) identification of a small number of water typology classes and classification of samples, obtained by means of a novel multivariate classification procedure based on a combination of Artificial Neural Networks (ANN) and “traditional” clusterization algorithms, (2) interpretation of each class based on biogeochemical properties and ecological phenomena likely to occur in the water body, and (3) discussion of time evolution and spatial distribution of water classes which summarized and provided indications on the system's space and time evolution. Basing itself on a multivariate comparison, the Self-Organizing Map (SOM) grouped 1292 samples collected in a 3-year-long monitoring program in 187 sets and identified a representative synthetic sample for each group. These groups were further classified in seven clusters, which identified the water typology. The complexity of the space and time coevolution of 12 variables was so reduced to variation of one categorical variable. Results included an objectively derived typology of water masses and their typical temporal succession, a spatial dividing based on biogeochemical processes, a conceptual scheme of biogeochemistry in the Gulf. Results clearly indicated the importance of river input in triggering plankton blooms and pointed out that trophodynamics followed current paradigms of marine ecosystem functioning, with shifts from conditions dominated by classical food chain to situations in which most of the energy flowed through the autotrophic and heterotrophic parts of the microbial food web.
机译:通过(1)识别少量水类型分类和样品分类来分析亚得里亚海北部沿海地区(的里雅斯特湾)的生物地球化学特性的动态,该方法通过基于结合了人工神经网络(ANN)和“传统”聚类算法,(2)根据生物地​​球化学性质和可能在水体中发生的生态现象对每个类别进行解释,以及(3)讨论时间演化和空间分布水类,总结并提供系统时空演变的指示。基于多变量比较,自组织图(SOM)将在3年的监测程序中收集的1292个样本分为187组,并为每组确定了代表性的合成样本。这些组被进一步分为七个类别,确定了水的类型。这样,将12个变量的时空协同演化的复杂性降低为一个分类变量的变化。结果包括客观得出的水团类型及其典型的时间演替,基于生物地球化学过程的空间划分,海湾生物地球化学的概念方案。结果清楚地表明了河流输入在触发浮游生物开花方面的重要性,并指出对流动力学遵循当前海洋生态系统功能的范式,从经典食物链占主导的条件转变为大部分能量流经浮游生物自养和异养部分的情况。微生物食物网。

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