通过概率模型实现港口可持续性:贝叶斯网络

IF 0.4 4区 工程技术 Q4 CONSTRUCTION & BUILDING TECHNOLOGY
B. Molina, N. González, F. Soler
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引用次数: 3

摘要

基础设施的管理者必须了解变量之间的关系。使用贝叶斯网络,可以对变量进行分类、预测和诊断,能够在已知变量的基础上估计未知变量的后验概率。拟议的方法生成了一个包含港口变量的数据库,这些变量被归类为经济、社会、环境和体制变量,如西班牙所有港口系统中进行的智能港口研究所述。网络是使用非循环有向图开发的,它让我们知道了父母和儿子之间的关系。从概率角度来看,从构建的网络中可以得出结论,港口可持续性的最决定性变量是那些属于制度维度的变量。已经得出结论,贝叶斯网络允许对不确定性进行概率建模,即使在港口规划和开发中出现的变量数量很高时也是如此。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Hacia la sostenibilidad portuaria mediante modelos probabilísticos: redes bayesianas
It is necessary that a manager of an infrastructure knows relations between variables. Using Bayesian networks, variables can be classified, predicted and diagnosed, being able to estimate posterior probability of the unknown ones based on known ones. The proposed methodology has generated a database with port variables, which have been classified as economic, social, environmental and institutional, as addressed in of smart ports studies made in all Spanish Port System. Network has been developed using an acyclic directed graph, which have let us know relationships in terms of parents and sons. In probabilistic terms, it can be concluded from the constructed network that the most decisive variables for port sustainability are those that are part of the institutional dimension. It has been concluded that Bayesian networks allow modeling uncertainty probabilistically even when the number of variables is high as it occurs in port planning and exploitation.
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来源期刊
Informes De La Construccion
Informes De La Construccion 工程技术-结构与建筑技术
CiteScore
0.90
自引率
16.70%
发文量
49
审稿时长
6-12 weeks
期刊介绍: Founded in 1948 by the Instituto Técnico de la Construcción y del Cemento, Informes de la Construcción is a scientific journal issued quarterly. Its articles cover fields such as architecture, engineering, public works, environment, building services, rehabilitation, construction systems, testing techniques, results of research on building components and systems and so forth. Journal"s readership includes architects, engineers and construction companies, as well as researchers and professionals engaging in building construction and public works.
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