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The Identified Method of Accident-prone Section Based on Principal Component -Gray Clustering Analysis

机译:基于主成分的群体聚类分析的事故易于剖面识别方法

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In order to study the rapid and efficient identified method of accident-prone section in montane highway, the method of principal component - gray clustering analysis has been proposed. By deep analysis of the characteristics of accident-prone section, the identified indexes of accident-prone section have been screened out, the reducing dimensionality of principal component analysis and incomplete information processing of gray clustering analysis have been organically integrated, and the clustering weight coefficients are creatively determined based on the information content. Based on data investigation and treatment, using the identified method of principal components - gray clustering analysis, the security level of sections is achieved by programming. The results show that this identified method has high precision and convenience in aspects of aggregative indicators selected and clustering value calculated. The identified method can effectively identify the security level of accident-prone section, and divide the section security level into 4-grade. Aiming at the identified results, the security measures are further researched. So the identified method has practical value.
机译:为了研究Montane公路中的事故易于切片的快速有效的识别方法,已经提出了主成分 - 灰色聚类分析方法。通过深入分析事故易于部分的特性,已经筛选出了事故易一部分的确定指标,还原了主要成分分析的维度和灰色聚类分析的不完全信息处理已经有机集成,并且聚类重量系数基于信息内容创造性地确定。基于数据调查和治疗,使用所识别的主要成分 - 灰色聚类分析方法,通过编程实现了部分的安全级别。结果表明,在所选择的聚集指标的方面和计算的聚类价值方面具有高精度和便利性。所识别的方法可以有效地识别事故易于部分的安全级别,并将部分安全级别划分为4级。旨在确定结果,进一步研究了安全措施。所以所识别的方法具有实用价值。

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