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房彩丽, 张书亮. 面向地下管线空间数据匹配的概念语义相似性方法[J]. 计算机辅助设计与图形学学报, 2017, 29(4): 720-727.
引用本文: 房彩丽, 张书亮. 面向地下管线空间数据匹配的概念语义相似性方法[J]. 计算机辅助设计与图形学学报, 2017, 29(4): 720-727.
Fang Caili, Zhang Shuliang. A Concept Semantic Similarity Method for Underground Pipeline Spatial Data Matching[J]. Journal of Computer-Aided Design & Computer Graphics, 2017, 29(4): 720-727.
Citation: Fang Caili, Zhang Shuliang. A Concept Semantic Similarity Method for Underground Pipeline Spatial Data Matching[J]. Journal of Computer-Aided Design & Computer Graphics, 2017, 29(4): 720-727.

面向地下管线空间数据匹配的概念语义相似性方法

A Concept Semantic Similarity Method for Underground Pipeline Spatial Data Matching

  • 摘要: 正针对城市地下综合管线和专业管线空间数据匹配中语义表达不足、语义相似性计算方法简单及匹配质量不高等问题,提出一种顾及管线空间特征的概念语义相似性方法.首先列举管线概念属性项以表达概念语义,分析管线实体拓扑特征确定实体空间关联情况,融合其他特征建立管线本体;然后从管线信息概念内涵出发,提出基于概念语义的管线空间数据匹配模型,其中利用概念属性、空间特征及本体层次结构匹配指标,结合权重信息计算管线实体相似度大小确定匹配实体.实验结果表明,该方法能更合理地计算管线实体间的相似度,明显提升管线空间数据匹配的质量.

     

    Abstract: Considering the shortcomings in the current methods for spatial data matching between urban underground integrated and professional pipelines, such as insufficient semantic expression, rough calculation method for semantic similarity and low matching quality, this study proposed a novel conceptual semantic similarity method that takes account of pipeline spatial feature. Firstly, the conceptual semantics were expressed by listing the pipeline conceptual attributes, and the entity spatial association of the pipeline was determined by entity topological characteristics. The pipeline ontologies were built with other characteristics. Secondly, a matching model was proposed based on the pipeline conceptual semantics, which takes advantages of matching metrics including conceptual attributes, spatial features and ontology hierarchical structure. More importantly, the matching entity in the model is determined by calculating the similarity degree of the pipeline entity with the weight information. The experimental results showed that this method can reasonably calculate the similarity of pipeline entities, and significantly improve the quality of pipeline spatial data matching.

     

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