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Structure and Infrastructure Engineering
Maintenance, Management, Life-Cycle Design and Performance
Volume 14, 2018 - Issue 10
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Articles

Pipe failure modelling for water distribution networks using boosted decision trees

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Pages 1402-1411 | Received 04 Jul 2017, Accepted 24 Nov 2017, Published online: 27 Feb 2018

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Sattar Salehi, Mohammadreza Jalili Ghazizadeh, Massoud Tabesh, Somayeh Valadi & Seyed Payam Salamati Nia. (2021) A risk component-based model to determine pipes renewal strategies in water distribution networks. Structure and Infrastructure Engineering 17:10, pages 1338-1359.
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Mohammed S. El-Abbasy, Tarek Zayed, Hisham El Chanati, Fadi Mosleh, Ahmed Senouci & Hassan Al-Derham. (2019) Simulation-based deterioration patterns of water pipelines. Structure and Infrastructure Engineering 15:7, pages 965-982.
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Z. Alizadeh, J. Yazdi, S. Mohammadiun, K. Hewage & R. Sadiq. (2019) Evaluation of data driven models for pipe burst prediction in urban water distribution systems. Urban Water Journal 16:2, pages 136-145.
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