Abstract

The prediction of sediment levels in combined sewer system (CSS) would result in enormous savings in resources for their maintenance as a reduced number of inspections would be needed. In this paper, we benchmark different machine learning (ML) methodologies to improve the maintenance schedules of the sewerage and reduce the number of cleanings using historical sediment level and inspection data of the combined sewer system in the city of Barcelona. Two ML methodologies involve the use of spatial features for sediment prediction at critical sections of the sewer, where the cost of maintenance is high because of the dangerous access; one uses a regression model to predict the sediment level of a section, and the other one a binary classification model to identify whether or not a section needs cleaning. The last ML methodology is a short-term forecast of the possible sediment level in future days to improve the ability of operators to react and solve an imminent sediment level increase. Our study concludes with three different models. The spatial and short-term regression methodologies accomplished the best results with Artificial Neural Networks (ANN) with 0.76 and 0.61 R2 scores, respectively. The classification methodology resulted in a Gradient Boosting (GB) model with an accuracy score of 0.88 and an area under the curve (AUC) of 0.909.

Highlights

  • A combined sewer system (CSS) collects domestic sewage, industrial wastewater, and rainwater runoff in the same pipe. These systems will convey the total volume of sewage to a wastewater treatment plant (WWTP) for treatment

  • The models with the worst performance are Linear Regression, Ridge, and K-nearest neighbors (KNN). Their R2 is too low, and their Mean Absolute Error (MAE) and Mean Squared Error (MSE) are higher than the other models

  • A model trained to predict the occupied percentage in a short-term period requires the use of data in a small-time interval, meaning the increase of the number of inspections to do in a section, having to invest more money and resources

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Summary

Introduction

A combined sewer system (CSS) collects domestic sewage, industrial wastewater, and rainwater runoff in the same pipe. These systems will convey the total volume of sewage to a wastewater treatment plant (WWTP) for treatment. Deposits and flash flooding constitute major problems in terms of blockages, reduction of sewer capacity [1,2] and in terms of pollutant discharge to receiving water bodies during wet weather periods through combined sewer overflow structures [3]. Water utilities could better invest resources by taking a proactive maintenance approach, which involves periodic inspections in multiple points of the CSS and jetting whenever sediment levels are high to prevent blockages to happen. Several mechanistic models based on the Sustainability 2021, 13, 4013.

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