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http://dx.doi.org/10.7837/kosomes.2015.21.3.253

Estimating Suitable Probability Distribution Function for Multimodal Traffic Distribution Function  

Yoo, Sang-Lok (Graduate school of Mokpo National Maritime University)
Jeong, Jae-Yong (Mokpo National Maritime University)
Yim, Jeong-Bin (Mokpo National Maritime University)
Publication Information
Journal of the Korean Society of Marine Environment & Safety / v.21, no.3, 2015 , pp. 253-258 More about this Journal
Abstract
The purpose of this study is to find suitable probability distribution function of complex distribution data like multimodal. Normal distribution is broadly used to assume probability distribution function. However, complex distribution data like multimodal are very hard to be estimated by using normal distribution function only, and there might be errors when other distribution functions including normal distribution function are used. In this study, we experimented to find fit probability distribution function in multimodal area, by using AIS(Automatic Identification System) observation data gathered in Mokpo port for a year of 2013. By using chi-squared statistic, gaussian mixture model(GMM) is the fittest model rather than other distribution functions, such as extreme value, generalized extreme value, logistic, and normal distribution. GMM was found to the fit model regard to multimodal data of maritime traffic flow distribution. Probability density function for collision probability and traffic flow distribution will be calculated much precisely in the future.
Keywords
Probability distribution function; Multimodal; Gaussian mixture model; Normal distribution; Maritime traffic flow;
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Times Cited By KSCI : 2  (Citation Analysis)
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