Litcius/Paper detail

Defect Severity Assessment Model for Sewer Pipeline Based on Automated Pipe Calibration

Pengtao Jia, Yongqiang Liao, Qi Zhao, Min He, Muyuan Guo

2023Journal of Pipeline Systems Engineering and Practice13 citationsDOI

Abstract

To address the low-efficiency issue of the manual assessment method for sewer pipe defects, we propose a defect severity assessment model based on automated pipe calibration (DSA-APC), which can provide automated and quantitative assessments. First, the cross-section feature is extracted by automated pipe calibration. A pipe cross-section feature extraction algorithm based on restricted Hough gradient transform (RHGT) is proposed. Then, a fine-defect feature extraction method based on edge detection is proposed to extract the features of pipe defects more finely. Finally, according to the assessment standards of the sewer pipe defect, a defect severity assessment table is constructed, and the area ratio of the defect feature and cross-section feature is used to evaluate the severity. Experiments are carried out on the Songbai data set and Level-sewer10 data set. The average absolute deviation of the DSA-APC model is 2.008%, and the average accuracy is 86.73%. The experimental results show that the DSA-APC model can correctly evaluate the severity level of sewer pipe defects, which has a good practical application value.

Topics & Concepts

CalibrationPipeline transportPipeline (software)Feature (linguistics)Feature extractionSet (abstract data type)Hough transformPattern recognition (psychology)Computer scienceEngineeringData miningStructural engineeringArtificial intelligenceMathematicsStatisticsImage (mathematics)Mechanical engineeringProgramming languageLinguisticsPhilosophyInfrastructure Maintenance and MonitoringWater Systems and OptimizationGeotechnical Engineering and Underground Structures
Defect Severity Assessment Model for Sewer Pipeline Based on Automated Pipe Calibration | Litcius