路网数据库中最优位置查询

Xiaokui Xiao, Bin Yao, Feifei Li
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引用次数: 104

摘要

最优位置(OL)查询是一种空间查询,对资源的战略规划特别有用。给定一组现有设施和一组客户,OL查询需要一个位置来建立一个优化特定成本度量(基于客户端和设施之间的距离定义)的新设施。已经提出了几种技术来处理OL查询,假设所有客户端和设施都位于Lp空间中。然而,在实践中,空间位置之间的移动通常受到底层道路网络的限制,因此,两个位置之间的实际距离可能与它们的Lp距离有很大不同。基于现有技术的不足,本文首次对道路网络中的OL查询进行了研究。我们提出了一个统一的框架,解决了在实践中发现重要应用的三种OL查询变体,并使用几种新的查询处理算法实例化了该框架。我们通过大量的真实数据实验证明了我们的解决方案的有效性。
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Optimal location queries in road network databases
Optimal location (OL) queries are a type of spatial queries particularly useful for the strategic planning of resources. Given a set of existing facilities and a set of clients, an OL query asks for a location to build a new facility that optimizes a certain cost metric (defined based on the distances between the clients and the facilities). Several techniques have been proposed to address OL queries, assuming that all clients and facilities reside in an Lp space. In practice, however, movements between spatial locations are usually confined by the underlying road network, and hence, the actual distance between two locations can differ significantly from their Lp distance. Motivated by the deficiency of the existing techniques, this paper presents the first study on OL queries in road networks. We propose a unified framework that addresses three variants of OL queries that find important applications in practice, and we instantiate the framework with several novel query processing algorithms. We demonstrate the efficiency of our solutions through extensive experiments with real data.
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