Publication | Open Access
Sewer Condition Prediction and Analysis of Explanatory Factors
84
Citations
42
References
2018
Year
EngineeringEnvironmental Impact AssessmentWastewater CollectionMining MethodsLeakage DetectionDecision AnalyticsWater Quality ForecastingData ScienceData MiningDecision TreeSewer Condition PredictionManagementDecision Tree LearningUrban Water ManagementRandom Forest AlgorithmStatisticsPredictive AnalyticsPredictive ModelingForecastingSewer ConditionWater ResourcesCivil EngineeringPredictive MaintenancePredictor VariablesFlood Risk ManagementData Modeling
Sewer condition is commonly assessed using closed-circuit television (CCTV) inspections. In this paper, we combine inspection results, pipe attributes, network data, and data on pipe environment to predict pipe condition and to discover which factors affect it. We apply the random forest algorithm to model pipe condition and assess the variable importance using the Boruta algorithm. We analyse the impact of predictor variables on poor condition using partial dependence plots, which are a valuable technique for this purpose. The results can be used in screening pipes for future inspections and provide insight into the dynamics between predictor variables and poor condition.
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