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A Novel Artificial Immune Algorithm for Spatial Clustering with Obstacle Constraint and Its Applications

机译:具有障碍约束的空间聚类的新型人工免疫算法及其应用

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摘要

An important component of a spatial clustering algorithm is the distance measure between sample points in object space. In this paper, the traditional Euclidean distance measure is replaced with innovative obstacle distance measure for spatial clustering under obstacle constraints. Firstly, we present a path searching algorithm to approximate the obstacle distance between two points for dealing with obstacles and facilitators. Taking obstacle distance as similarity metric, we subsequently propose the artificial immune clustering with obstacle entity (AICOE) algorithm for clustering spatial point data in the presence of obstacles and facilitators. Finally, the paper presents a comparative analysis of AICOE algorithm and the classical clustering algorithms. Our clustering model based on artificial immune system is also applied to the case of public facility location problem in order to establish the practical applicability of our approach. By using the clone selection principle and updating the cluster centers based on the elite antibodies, the AICOE algorithm is able to achieve the global optimum and better clustering effect.
机译:空间聚类算法的重要组成部分是对象空间中样本点之间的距离度量。本文将传统的欧几里德距离测度替换为创新的障碍物距离测度,以在障碍物约束下进行空间聚类。首先,我们提出一种路径搜索算法,以近似计算两点之间的障碍物距离,以处理障碍物和辅助因素。以障碍物距离为相似度量,我们随后提出了带有障碍物实体的人工免疫聚类(AICOE)算法,用于在存在障碍物和辅助因素的情况下对空间点数据进行聚类。最后,本文对AICOE算法和经典聚类算法进行了比较分析。我们基于人工免疫系统的聚类模型也适用于公共设施选址问题,以建立我们方法的实际适用性。通过使用克隆选择原理并基于精英抗体更新聚类中心,AICOE算法能够实现全局最优和更好的聚类效果。

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