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基于支持向量机的中国石油安全分析 被引量:3

Analysis and Evaluation of Oil Security of China by Using Support Vector Machine
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摘要 由于中国未来的石油需求对中国石油安全来说至关重要,而建立起石油安全的评价体系对中国的石油安全极为关键。结合美国、日本、俄罗斯、德国、法国、韩国等6个国家石油方面相关数据及安全类别,按重要性筛选出代表性的核心指标,以支持向量机理论为基础建立了石油安全的评价体系,力图达到定量化评价中国石油安全的目的。 The future petroleum demands of China has significant effect on the petroleum security of China.Thus,it is very important to develop effective method to analyze and evaluate such a security.With the technology and security categorization in America,Japan,Russia,Germany,France,and South Korea as references,some core factors that significantly affect the crude oil security are identified.Then,a quantitative analysis method and evaluation system are presented by using support vector machine.
出处 《工业工程》 北大核心 2010年第4期40-47,52,共9页 Industrial Engineering Journal
关键词 支持向量机 石油安全预警 石油安全评价 support vector machine petroleum security evaluation of petroleum security
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