论文标题
使用K-最近的邻居的废水管道条件评级模型
Wastewater Pipe Condition Rating Model Using K- Nearest Neighbors
论文作者
论文摘要
基于风险的评估在管道状态下主要集中于通过评估管道故障的风险来确定最关键的资产。本文的目的是根据一系列针对所提出的方法确定的一系列管道物理,外部和液压特征来对综合的管道评级模型进行分类。评估污水结构条件的传统手动方法需要很长时间。通过使用K-Nearest邻居(K-NN)构建自动化过程,本研究提出了一种有效的技术,可以使用管道维修数据自动识别管道缺陷等级。首先,我们对路易斯安那州什里夫波特(Shreveport)的工程与环境服务部的1240个数据进行了Shapiro Wilks测试,并使用了12个变量,以确定是否可以将因素纳入最终评级。然后,我们开发了一个K-Nearthent邻居模型,以从Shapiro Wilks测试中确定的具有统计学意义的因素分类最终评级。此分类过程允许识别需要立即更换废水管道的最坏情况。这种综合模型是根据所接受的和使用指南来估计整体状况的。最后,出于验证目的,提出的模型应用于路易斯安那州什里夫波特的美国废水收集系统的一小部分。关键词:管道评级,夏皮罗·威尔克斯测试,k-nearest邻居(KNN),失败,风险分析
Risk-based assessment in pipe condition mainly focuses on prioritizing the most critical assets by evaluating the risk of pipe failure. This paper's goal is to classify a comprehensive pipe rating model which is obtained based on a series of pipe physical, external, and hydraulic characteristics that are identified for the proposed methodology. The traditional manual method of assessing sewage structural conditions takes a long time. By building an automated process using K-Nearest Neighbors (K-NN), this study presents an effective technique to automate the identification of the pipe defect rating using the pipe repair data. First, we performed the Shapiro Wilks Test for 1240 data from the Dept. of Engineering & Environmental Services, Shreveport, Louisiana Phase 3 with 12 variables to determine if factors could be incorporated in the final rating. We then developed a K-Nearest Neighbors model to classify the final rating from the statistically significant factors identified in Shapiro Wilks Test. This classification process allows recognizing the worst condition of wastewater pipes that need to be replaced immediately. This comprehensive model is built according to the industry-accepted and used guidelines to estimate the overall condition. Finally, for validation purposes, the proposed model is applied to a small portion of a US wastewater collection system in Shreveport, Louisiana. Keywords: Pipe rating, Shapiro Wilks Test, K-Nearest Neighbors (KNN), Failure, Risk analysis