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首页> 外文期刊>Journal of limnology >Coastal waters monitoring data: frequency distributions of the principal water quality variables
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Coastal waters monitoring data: frequency distributions of the principal water quality variables

机译:沿海水域监测数据:主要水质变量的频率分布

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摘要

Examining the results of the Italian national programme of marine coastal monitoring, the old problem has arisen about the choice of the most appropriate procedures and methods to validate data and screen preliminary data. Therefore, statistical distributions of water quality parameters have been taken into consideration, in order to assign appropriate frequency distributions to all the routinely measured variables. Each sample distribution has been analysed and defined by a probability density function (p.d.f.), by means of a powerful method of data analysis (Johnson 1949) that allows for the computation of statistical parameters of a wide variety of non-normal distributions. The resulting Johnson distributions are then classified depending on four fundamental categories of frequency distributions: normal, log-normal, bounded and unbounded. Theoretical aspects of the method are explained and discussed in an adequate way, so as to allow for practical applications. The shape and nature of these curves require further consideration, in order to understand the behaviour of water quality variables and to make comparison among different coastal zones. To this end, two coastal systems were considered in this work: the Emilia-Romagna coastal area of the NW Adriatic Sea and the Tuscany littoral of the Northern Tyrrhenian Sea. There are notable advantages to the adopted approach. First it offers the possibility to overcome severe constraints requested by the normality assumption, and avoids the troublesome search for the most appropriate transformation function (i.e. for ensuring normality). Second, it avoids searching for other kinds of theoretical distributions that are appropriate for the data. In our approach, the density functions are opportunely integrated, in such a way that, for whatever value assumed by a given variable, the corresponding expected percentage point value under the respective frequency curve, can be calculated, and vice versa. We believe that the Johnson method, although tested with coastal monitoring data, can be usefully adopted whenever we have to analyse environmental data and try to understand how an aquatic system works (e.g. large lakes). In the Appendix specific details about the Johnson classification criterion are reported and highlight the case of bimodal distributions. Finally, an example of data analysis is provided, by using the R (V. 2.11) software, with both graphical and numerical outputs.
机译:在审查意大利国家海洋沿海监测国家计划的结果时,出现了一个老问题,即如何选择最合适的程序和方法来验证数据和筛选初步数据。因此,已经考虑了水质参数的统计分布,以便为所有常规测量变量分配适当的频率分布。每个样本分布已经通过概率密度函数(p.d.f.)进行了分析,并通过一种强大的数据分析方法(Johnson 1949)进行了定义,该方法可以计算各种非正态分布的统计参数。然后根据频率分布的四个基本类别对得到的Johnson分布进行分类:正态,对数正态,有界和无界。以适当的方式解释和讨论了该方法的理论方面,以便于实际应用。这些曲线的形状和性质需要进一步考虑,以便了解水质变量的行为并在不同沿海地区之间进行比较。为此,在这项工作中考虑了两个沿海系统:西北亚得里亚海的艾米利亚—罗马涅沿海地区和北第勒尼安海的托斯卡纳沿海地区。采用的方法具有明显的优势。首先,它提供了克服正态性假设所要求的严格约束的可能性,并且避免了寻找最合适的变换函数(即,确保正态性)的麻烦。其次,它避免搜索适合于数据的其他类型的理论分布。在我们的方法中,密度函数可以适当地进行积分,这样,对于给定变量假定的任何值,都可以计算出相应频率曲线下的相应预期百分比值,反之亦然。我们认为,尽管约翰逊(Johnson)方法已通过沿海监测数据进行了测试,但只要我们必须分析环境数据并试图了解水生系统的工作原理(例如大湖),就可以有效地采用。在附录中报告了有关Johnson分类标准的特定详细信息,并突出了双峰分布的情况。最后,通过使用R(V.2.11)软件提供了数据分析的示例,同时具有图形和数字输出。

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