Skip to main content

Research Repository

Advanced Search

Big data architecture for construction waste analytics (CWA): A conceptual framework

Bilal, Muhammad; Oyedele, Lukumon O.; Akinade, Olugbenga O.; Ajayi, Saheed O.; Alaka, Hafiz A.; Owolabi, Hakeem A.; Qadir, Junaid; Pasha, Maruf; Bello, Sururah A.

Big data architecture for construction waste analytics (CWA): A conceptual framework Thumbnail


Authors

Muhammad Bilal Muhammad.Bilal@uwe.ac.uk
Associate Professor - Big Data Application

Lukumon Oyedele L.Oyedele@uwe.ac.uk
Professor in Enterprise & Project Management

Olugbenga Akinade Olugbenga.Akinade@uwe.ac.uk
Associate Professor - AR/VR Development with Artificial Intelligence

Saheed O. Ajayi

Hafiz A. Alaka

Hakeem Owolabi Hakeem.Owolabi@uwe.ac.uk
Associate Professor - Project Analytics and Digital Enterprise

Junaid Qadir

Maruf Pasha

Sururah A. Bello



Abstract

© 2016 Elsevier Ltd. All rights reserved. In recent times, construction industry is enduring pressure to take drastic steps to minimise waste. Waste intelligence advocates retrospective measures to manage waste after it is produced. Existing waste intelligence based waste management software are fundamentally limited and cannot facilitate stakeholders in controlling wasteful activities. Paradoxically, despite a great amount of effort, the waste being produced by the construction industry is escalating. This undesirable situation motivates a radical change from waste intelligence to waste analytics (in which waste is propose to be tackle proactively right at design through sophisticated big data technologies). This paper highlight that waste minimisation at design (a.k.a. designing-out waste) is data-driven and computationally intensive challenge. The aim of this paper is to propose a Big Data architecture for construction waste analytics. To this end, existing literature on big data technologies is reviewed to identify the critical components of the proposed Big Data based waste analytics architecture. At the crux, graph-based components are used: in particular, a graph database (Neo4J) is adopted to store highly voluminous and diverse datasets. To complement, Spark, a highly resilient graph processing system, is employed. Provision for extensions through Building Information Modelling (BIM) are also considered for synergy and greater adoption. This symbiotic integration of technologies enables a vibrant environment for design exploration and optimisation to tackle construction waste. The main contribution of this paper is that it presents, to the best of our knowledge, the first Big Data based architecture for construction waste analytics. The architecture is validated for exploratory analytics of 200,000 waste disposal records from 900 completed projects. It is revealed that existing waste management software classify the bulk of construction waste as mixed waste, which exposes poor waste data management. The findings of this paper will be of interest, more generally to researchers, who are seeking to develop big data based simulation tools in similar non-trivial applications.

Citation

Bilal, M., Oyedele, L. O., Akinade, O. O., Ajayi, S. O., Alaka, H. A., Owolabi, H. A., …Bello, S. A. (2016). Big data architecture for construction waste analytics (CWA): A conceptual framework. Journal of Building Engineering, 6, 144-156. https://doi.org/10.1016/j.jobe.2016.03.002

Journal Article Type Article
Acceptance Date Mar 4, 2016
Online Publication Date Mar 8, 2016
Publication Date Jun 1, 2016
Deposit Date Mar 2, 2017
Publicly Available Date Mar 8, 2017
Journal Journal of Building Engineering
Electronic ISSN 2352-7102
Publisher Elsevier
Peer Reviewed Peer Reviewed
Volume 6
Pages 144-156
DOI https://doi.org/10.1016/j.jobe.2016.03.002
Keywords construction waste, big data analytics, building information modelling (BIM), design optimisation, construction waste analytics, waste prediction and minimisation
Public URL https://uwe-repository.worktribe.com/output/910436
Publisher URL https://doi.org/10.1016/j.jobe.2016.03.002

Files






You might also like



Downloadable Citations