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文章摘要
基于改进K-means算法的排水管网监测点位优化
Optimization of Monitoring Points in Drainage Pipe Network Based on Improved K-means Algorithm
  
DOI:
中文关键词: 监测点位优化  BIRCH聚类分析  K means聚类分析  排水管网
英文关键词: Monitoring point optimization  BIRCH cluster analysis  K-means cluster analysis  Drainage pipe network
基金项目:安徽省重点研究与开发计划“面向水污染防治的城市排水管网风险评估诊断关键技术研发及应用示范”基金资助项目(202104i07020012)
作者单位
赵文涓 安徽建筑大学环境与能源学院清华大学合肥公共安全研究院 
程雨涵 清华大学合肥公共安全研究院 
李梅 清华大学合肥公共安全研究院 
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中文摘要:
      为切实提高工程监测成效,合理利用资源,提出基于改进K-means算法的排水管网监测点布置优化方法。以华东区域H市排水管网为案例,以23个原始监测点的监测数据为基础,通过原始数据处理,BIRCH预聚类确定优化监测点个数和初步优化监测点,再用K-means聚类确定最终优化监测点后,输出16个保留监测点位。经验证,监测点优化后对H市排水管网的数据输出无影响。
英文摘要:
      In order to effectively improve the effectiveness of engineering monitoring and rational utilization of resources,an optimization method for setting monitoring points of drainage pipe network was established based on improved K-means algorithm. Taking the drainage pipe network in H City in East China region as an example, based on the monitoring data of 23 original monitoring points, the monitoring points were preliminary optimized through raw data processing and BIRCH pre-clustering, then the final optimized monitoring points were determined by K-means clustering, and 16 retained monitoring points were output. It was proved that the optimized monitoring points had no influence on the data output of the drainage pipe network in H city.
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