A Decision Tree Approach to the Risk Evaluation of Urban Water Distribution Network Pipes

To evaluate the risk of a pipe in the water supply network of Beijing, we used the accident records of the gridding urban management (GUM) system. In addition, road and building information derived from a three-dimensional (3D) electronic map was also employed. A machine learning algorithm, the deci...

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Main Authors: Yanying Yang, Yu Hu, Jianchun Zheng
Format: Article
Language:English
Published: MDPI AG 2020-07-01
Series:Safety
Subjects:
Online Access:https://www.mdpi.com/2313-576X/6/3/36
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spelling doaj-9284b743d921409c855b32b0bdf3a2f52020-11-25T03:45:12ZengMDPI AGSafety2313-576X2020-07-016363610.3390/safety6030036A Decision Tree Approach to the Risk Evaluation of Urban Water Distribution Network PipesYanying Yang0Yu Hu1Jianchun Zheng2Beijing Research Center of Urban Systems Engineering, Beijing 100035, ChinaSchool of Automation, Beijing Information Science and Technology University, Beijing 100192, ChinaBeijing Research Center of Urban Systems Engineering, Beijing 100035, ChinaTo evaluate the risk of a pipe in the water supply network of Beijing, we used the accident records of the gridding urban management (GUM) system. In addition, road and building information derived from a three-dimensional (3D) electronic map was also employed. A machine learning algorithm, the decision tree, was employed to train and evaluate the dataset. The results show that the contributions of the surrounding buildings and roads are neglectable, except for super-high-rise buildings, which have limited contributions. This finding is consistent with the results of other studies. The decision tree identifies dominant features and isolates the risk contribution of such features. The output tree structure indicated that the time since the last accident is a dominant factor, to which super-high-rise buildings contribute slightly. A cut-off value of 0.019 was chosen to predict high-risk regions. Approximately 0.4% of the data were predicted to be high risk, and the corresponding gain in risk rate was approximately 19.2. This model may be used in cities where detailed profiles of water supply pipes and maintenance records are not available or are expensive to achieve.https://www.mdpi.com/2313-576X/6/3/36decision treewater supply networkrisk assessmentwater loss control
collection DOAJ
language English
format Article
sources DOAJ
author Yanying Yang
Yu Hu
Jianchun Zheng
spellingShingle Yanying Yang
Yu Hu
Jianchun Zheng
A Decision Tree Approach to the Risk Evaluation of Urban Water Distribution Network Pipes
Safety
decision tree
water supply network
risk assessment
water loss control
author_facet Yanying Yang
Yu Hu
Jianchun Zheng
author_sort Yanying Yang
title A Decision Tree Approach to the Risk Evaluation of Urban Water Distribution Network Pipes
title_short A Decision Tree Approach to the Risk Evaluation of Urban Water Distribution Network Pipes
title_full A Decision Tree Approach to the Risk Evaluation of Urban Water Distribution Network Pipes
title_fullStr A Decision Tree Approach to the Risk Evaluation of Urban Water Distribution Network Pipes
title_full_unstemmed A Decision Tree Approach to the Risk Evaluation of Urban Water Distribution Network Pipes
title_sort decision tree approach to the risk evaluation of urban water distribution network pipes
publisher MDPI AG
series Safety
issn 2313-576X
publishDate 2020-07-01
description To evaluate the risk of a pipe in the water supply network of Beijing, we used the accident records of the gridding urban management (GUM) system. In addition, road and building information derived from a three-dimensional (3D) electronic map was also employed. A machine learning algorithm, the decision tree, was employed to train and evaluate the dataset. The results show that the contributions of the surrounding buildings and roads are neglectable, except for super-high-rise buildings, which have limited contributions. This finding is consistent with the results of other studies. The decision tree identifies dominant features and isolates the risk contribution of such features. The output tree structure indicated that the time since the last accident is a dominant factor, to which super-high-rise buildings contribute slightly. A cut-off value of 0.019 was chosen to predict high-risk regions. Approximately 0.4% of the data were predicted to be high risk, and the corresponding gain in risk rate was approximately 19.2. This model may be used in cities where detailed profiles of water supply pipes and maintenance records are not available or are expensive to achieve.
topic decision tree
water supply network
risk assessment
water loss control
url https://www.mdpi.com/2313-576X/6/3/36
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