Robust low-rank learning multi-output regression for incipient sediment motion in sewer pipes

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Date

2023

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Elsevier B.V.

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Green Open Access

No

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Abstract

The existing incipient sediment motion models typically apply conventional regression methods considering either velocity or shear stress. In the current study incipient sediment motion is analyzed through a simultaneous and joint analysis of velocity and shear stress using the robust low-rank learning (RLRL) multi-output regression technique. Moreover the experimental data compiled from five different channels are utilized to develop a generic incipient sediment motion model valid for a channel of any cross-sectional shape. The efficiency of the developed method is examined and compared against the available conventional regression models. The experimental results indicate that the RLRL model yields better results than its counterparts. In particular while cross-section specific models fail to provide accurate estimates for shear stress or velocity for other cross sections the proposed model provides satisfactory results for all channel shapes. The better performance of the recommended approach can be attributed to the joint modeling of the shear stress and the velocity which is realized by capturing the correlation between these parameters in terms of a low rank output mixing matrix which enhances the prediction performance of the approach. © 2023 Elsevier B.V. All rights reserved.

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Keywords

Low-rank Learning, Multi-output Regression, Sediment Transport, Sewer Flow, Shear Stress Approach, Velocity Approach, Flow Velocity, Pipe Flow, Regression Analysis, Sediment Transport, Sewer Network, Shear Stress, flow velocity, pipe flow, regression analysis, sediment transport, sewer network, shear stress, Multi-Output Regression, Sediment Transport, Shear Stress Approach, Low-Rank Learning, Velocity Approach, Sewer Flow

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OpenCitations Citation Count
1

Source

International Journal of Sediment Research

Volume

38

Issue

6

Start Page

859

End Page

870
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2

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2

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