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http://dx.doi.org/10.5389/KSAE.2005.47.7.013

Reservoir Classification using Data Mining Technology for Survivor Function  

Park, Mee-Jeong (Research Institute for Agriculture and Life Science)
Lee, Joon-Gu (KARICO)
Lee, Jeong-Jae (Department of Agriculture Engeering, Seoul National University)
Publication Information
Journal of The Korean Society of Agricultural Engineers / v.47, no.7, 2005 , pp. 13-22 More about this Journal
Abstract
Main purpose of this article is to classify reservoirs corresponding to their physical characteristics, for example, dam height, dam width, age, repair-works history. First of all, data set of 13,976 reservoirs was analyzed using k means and self organized maps. As a result of these analysis, lots of reservoirs have been classified into four clusters. Factors and their critical values to classify the reservoirs into four groups have been founded by generating a decision tree. The path rules to each group seem reasonable since their survivor function showed unique pattern.
Keywords
Classification; Cluster; Life time; Probability;
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  • Reference
1 MAF, KARICO, The annual statistics report of agricultural infrastructure development & improvement project
2 The data of the safety diagnosis for irrigation facilities during 12 years. KARICO
3 jHan iawei and Micheline Kamber, 2001, Data mining concepts and techniques, Morgan Kaufmann
4 Lee, Joon--gu, 2003, Prediction model of remaining service life concrete with carbonation, Jounal of the Korea Concrete Institute 15 (4)
5 Kim, Han Joong, Lee, Jeong Jae, and Im, Sang Joon, 2003, Life reliability analysis of irrigation system, Journal of the Korean Society of Agricultural Engineers 45 (2)