Abstract

The slope of sewer pipes is a major factor for transporting sewage at designed flow rates. However, the gradient inside the sewer pipe changes locally for various reasons after construction. This causes flow disturbances requiring investigation and appropriate maintenance. This study extracted the internal elevation fluctuation from closed-circuit television investigation footage, which is required for sanitary sewers. The principle that a change in water level in sewer pipes indirectly indicates a change in elevation was applied. The sewage area was detected using a convolutional neural network, a type of deep learning technique, and the water level was calculated using the geometric principles of circles and proportions. The training accuracy was 98%, and the water level accuracy compared to random sampling was 90.4%. Lateral connections, joints, and outliers were removed, and a smoothing method was applied to reduce data fluctuations. Because the target sewer pipes are 2.5 m concrete reinforced pipes, the joint elevation was determined every 2.5 m so that the internal slope of the sewer pipe would consist of 2.5 m linear slopes. The investigative method proposed in this study is effective with high economic feasibility and sufficient accuracy compared to the existing sensor-based methods of internal gradient investigation.

Highlights

  • Congestion occurs in the deflected part during rainfall, and as the water fills upstream, a surcharge occurs in the manhole or storm drain. Because this internal irregularity is not revealed in the sewer pipe drawings or closed-circuit television (CCTV) survey reports, it is suspected to be one of the causes that induce flooding in some areas of the city where the sewer is designed properly and no abnormalities are found in the sewer pipe drawing

  • The image processing of sewer pipe footage is difficult owing to the dark environment and contamination, Ji et al [17] proposed a method for extracting water level and flow rate from videos taken inside sewer pipes; this method automatically recognizes the water level using deep learning and calculates the flow rate based on geometrical principles and Manning’s equation

  • This study demonstrated the process of quantitatively estimating the gradient inside the sewer pipe from CCTV footage using the aforementioned principle

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Summary

Introduction

Publisher’s Note: MDPI stays neutral with regard to jurisdictional claims in published maps and institutional affiliations. Congestion occurs in the deflected part during rainfall, and as the water fills upstream, a surcharge occurs in the manhole or storm drain Because this internal irregularity is not revealed in the sewer pipe drawings or closed-circuit television (CCTV) survey reports, it is suspected to be one of the causes that induce flooding in some areas of the city where the sewer is designed properly and no abnormalities are found in the sewer pipe drawing. The image processing of sewer pipe footage is difficult owing to the dark environment and contamination, Ji et al [17] proposed a method for extracting water level and flow rate from videos taken inside sewer pipes; this method automatically recognizes the water level using deep learning and calculates the flow rate based on geometrical principles and Manning’s equation. This study demonstrated the process of quantitatively estimating the gradient inside the sewer pipe from CCTV footage using the aforementioned principle

Materials and Methods
Process to determine sanitary sewer
Results and Discussion
Full Text
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