Accounting for high-order correlations in probabilistic characterization of environmental variables, and evaluation

被引:0
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作者
Kasemsan Manomaiphiboon
Sun-Kyoung Park
Armistead G. Russell
机构
[1] Georgia Institute of Technology,School of Civil and Environmental Engineering
[2] King Mongkut’s University of Technology Thonburi (KMUTT),Joint Graduate School of Energy and Environment (JGSEE)
[3] North Central Texas Council of Governments,Transportation Department
关键词
Bootstrap; Goodness of fit; High-order correlation; Probability distribution; Product moment;
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学科分类号
摘要
Probabilistic characterization of environmental variables or data typically involves distributional fitting. Correlations, when present in variables or data, can considerably complicate the fitting process. In this work, effects of high-order correlations on distributional fitting were examined, and how they are technically accounted for was described using two multi-dimensional formulation methods: maximum entropy (ME) and Koehler–Symanowski (KS). The ME method formulates a least-biased distribution by maximizing its entropy, and the KS method uses a formulation that conserves specified marginal distributions. Two bivariate environmental data sets, ambient particulate matter and water quality, were chosen for illustration and discussion. Three metrics (log-likelihood function, root-mean-square error, and bivariate Kolmogorov–Smirnov statistic) were used to evaluate distributional fit. Bootstrap confidence intervals were also employed to help inspect the degree of agreement between distributional and sample moments. It is shown that both methods are capable of fitting the data well and have the potential for practical use. The KS distributions were found to be of good quality, and using the maximum likelihood method for the parameter estimation of a KS distribution is computationally efficient.
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页码:159 / 168
页数:9
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