Research of the space clustering method for the airport noise data minings

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[1] [1,Xie, Jiwen
[2] 1,Xu, Tao
[3] Yang, Guoqing
来源
| 1600年 / International Frequency Sensor Association卷 / 167期
关键词
Airport noise - Distribution patterns - Dual distance - Geographic information - Noise distribution - Pollution problems - Similarity measure function - Traditional clustering;
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摘要
Mining the distribution pattern and evolution of the airport noise from the airport noise data and the geographic information of the monitoring points is of great significance for the scientific and rational governance of airport noise pollution problem. However, most of the traditional clustering methods are based on the closeness of space location or the similarity of non-spatial features, which split the duality of space elements, resulting in that the clustering result has difficult in satisfying both the closeness of space location and the similarity of non-spatial features. This paper, therefore, proposes a spatial clustering algorithm based on dual-distance. This algorithm uses a distance function as the similarity measure function in which spatial features and non-spatial features are combined. The experimental results show that the proposed algorithm can discover the noise distribution pattern around the airport effectively. © 2014 IFSA Publishing, S. L
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