Spatial quality evaluation for drinking water based on GIS and ant colony clustering algorithm

被引:0
作者
侯景伟
米文宝
李陇堂
机构
[1] SchoolofResourceandEnvironment,NingxiaUniversity
关键词
geographical information system(GIS); ant colony clustering algorithm(ACCA); quality evaluation; drinking water; spatial analysis;
D O I
暂无
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
To develop a better approach for spatial evaluation of drinking water quality, an intelligent evaluation method integrating a geographical information system(GIS) and an ant colony clustering algorithm(ACCA) was used. Drinking water samples from 29 wells in Zhenping County, China, were collected and analyzed. 35 parameters on water quality were selected, such as chloride concentration, sulphate concentration, total hardness, nitrate concentration, fluoride concentration, turbidity, pH, chromium concentration, COD, bacterium amount, total coliforms and color. The best spatial interpolation methods for the 35 parameters were found and selected from all types of interpolation methods in GIS environment according to the minimum cross-validation errors. The ACCA was improved through three strategies, namely mixed distance function, average similitude degree and probability conversion functions. Then, the ACCA was carried out to obtain different water quality grades in the GIS environment. In the end, the result from the ACCA was compared with those from the competitive Hopfield neural network(CHNN) to validate the feasibility and effectiveness of the ACCA according to three evaluation indexes, which are stochastic sampling method, pixel amount and convergence speed. It is shown that the spatial water quality grades obtained from the ACCA were more effective, accurate and intelligent than those obtained from the CHNN.
引用
收藏
页码:1051 / 1057
页数:7
相关论文
共 23 条
[1]  
Spatial assessment for groundwater quality based on GIS and improved fuzzy comprehensive assessment with entropy weights[J]. Jingwei Hou.Chinese Journal of Population,Resources and Environment. 2013(02)
[2]   Optimal spatial allocation of water resources based on Pareto ant colony algorithm [J].
Hou, Jingwei ;
Mi, Wenbao ;
Sun, Jiulin .
INTERNATIONAL JOURNAL OF GEOGRAPHICAL INFORMATION SCIENCE, 2014, 28 (02) :213-233
[3]  
The development of a GIS methodology to assess the potential for water resource contamination due to new development in the 2012 Olympic Park site, London[J] . A.P. Marchant,V.J. Banks,K.R. Royse,S.P. Quigley.Computers and Geosciences . 2013
[4]   A new ECG beat clustering method based on kernelized fuzzy c-means and hybrid ant colony optimization for continuous domains [J].
Dogan, Berat ;
Korurek, Mehmet .
APPLIED SOFT COMPUTING, 2012, 12 (11) :3442-3451
[5]   Chaotic ant swarm approach for data clustering [J].
Wan, Miao ;
Wang, Cong ;
Li, Lixiang ;
Yang, Yixian .
APPLIED SOFT COMPUTING, 2012, 12 (08) :2387-2393
[6]  
GIS-based models for water quantity and quality assessment in the Júcar River Basin, Spain, including climate change effects[J] . Javier Ferrer,Miguel A. Pérez-Martín,Sara Jiménez,Teodoro Estrela,Joaquín Andreu.Science of the Total Environment . 2012
[7]  
Efficient ant colony optimization for image feature selection[J] . Bolun Chen,Ling Chen,Yixin Chen.Signal Processing . 2012
[8]  
Automatic shape independent clustering inspired by ant dynamics[J] . Aritra Chowdhury,Swagatam Das.Swarm and Evolutionary Computation . 2011
[9]  
Simultaneous feature selection and ant colony clustering[J] . Emre Akarsu,Adem Karahoca.Procedia Computer Science . 2011
[10]  
Ant clustering PHD filter for multiple-target tracking[J] . Benlian Xu,Huigang Xu,Jihong Zhu.Applied Soft Computing Journal . 2010 (1)