Abstract

Side weirs have been widely used since ancient times in many hydraulic works. Their operation can be analyzed following different approaches. However, almost all possible analysis approaches require knowledge of the discharge coefficient, which depends on several geometric and hydraulic parameters. An effective methodology for predicting discharge coefficient can be based on machine learning algorithms. In this research, experimental data obtained from tests carried out on a side weir in a circular channel and supercritical flow have been used to build predictive models of the equivalent discharge coefficient, by which the lateral outflow can be estimated by referring only to the flow depth upstream of the side weir. Four models, different in the input variables, have been developed. Each model has been proposed in 5 variants, depending on the applied algorithm. The focus is mainly on two lazy machine learning algorithms: k Nearest Neighbor and K-Star. The 5-input variables Model 1 and the 4-input variables Model 2 noticeably outperform the 3-input variables Model 3 and Model 4, showing that a suitable characterization of the side weir geometry is essential for a good accuracy of the prediction model. In addition, under models 1 and 2, k Nearest Neighbor and K-Star, despite the simpler structure, provide comparable or better performance than more complex algorithms such as Random Forest and Support Vector Regression.

Highlights

  • Side weirs are probably one of the most used hydraulic devices to separate flows in open channels.They have been widely used since ancient times in irrigation, drainage, flood regulation, water treatment and in several other areas of hydraulic and environmental engineering

  • The main purpose of this work is to show the effectiveness of two lazy machine learning algorithms in predicting the discharge coefficient of a side weir in supercritical flow and circular channel

  • In which Qs is the lateral outflow, L is the length of the weir, w is the height of the weir crest, and Kc is aincorrection coefficient

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Summary

Introduction

Side weirs are probably one of the most used hydraulic devices to separate flows in open channels. They have been widely used since ancient times in irrigation, drainage, flood regulation, water treatment and in several other areas of hydraulic and environmental engineering. They have been studied for almost a hundred years [1,2,3,4,5,6,7,8], side weirs represent a still open and worthy of investigation topic, especially in the case of supercritical flow. Traditional approaches to the analysis of side weirs may lead to unsatisfactory results

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