Authors :
Oluwatumininu A. Abayomi; Jemima O. Odiete; Cosby O. Oni; Brenda Togo
Volume/Issue :
Volume 10 - 2025, Issue 8 - August
Google Scholar :
https://tinyurl.com/4z5jrh4x
Scribd :
https://tinyurl.com/2u987928
DOI :
https://doi.org/10.38124/ijisrt/25aug1645
Note : A published paper may take 4-5 working days from the publication date to appear in PlumX Metrics, Semantic Scholar, and ResearchGate.
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Abstract :
The construction sector significantly contributes to global greenhouse gas (GHG) emissions, accounting for up to
20% of total global emissions while playing a major role in climate change. Rapid urbanization alongside resource-intensive
building practices exacerbates environmental challenges, which highlight the urgent need for net-zero carbon and
sustainable solutions. The study aims to critically examine how Digital Twin (DT) systems and Artificial Intelligence (AI)
can enhance environmental sustainability and support net-zero carbon goals in smart construction. Based on a
comprehensive literature review and recent scholarly works on sustainability, AI integration in the built environment, and
digital twin applications, findings show that AI-driven digital twin systems provide significant benefits ranging from
predictive energy optimization, real-time carbon monitoring, improved decision-making regarding material selection,
logistics, and waste reduction. Altogether, these systems facilitate resilience in smart cities through Internet of Things (IoT),
Building Information Modelling (BIM), and machine learning integration to optimize resource efficiency. Meanwhile,
challenges including data integration, cybersecurity, high costs of implementation, and ethical concerns are major barriers.
Despite this, the study contributes to the academic domain by advancing digital transformation knowledge in sustainable
construction and providing industry insights on practical ways to achieve zero-carbon goals. It highlights the need for future
research to focus on standardization, policy frameworks, and the use of scalable adoption strategies.
Keywords :
Environmental Sustainability, AI-Driven Digital Twin Systems, Net-Zero Carbon, Smart Construction, Artificial Intelligence, Internet of Things.
References :
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The construction sector significantly contributes to global greenhouse gas (GHG) emissions, accounting for up to
20% of total global emissions while playing a major role in climate change. Rapid urbanization alongside resource-intensive
building practices exacerbates environmental challenges, which highlight the urgent need for net-zero carbon and
sustainable solutions. The study aims to critically examine how Digital Twin (DT) systems and Artificial Intelligence (AI)
can enhance environmental sustainability and support net-zero carbon goals in smart construction. Based on a
comprehensive literature review and recent scholarly works on sustainability, AI integration in the built environment, and
digital twin applications, findings show that AI-driven digital twin systems provide significant benefits ranging from
predictive energy optimization, real-time carbon monitoring, improved decision-making regarding material selection,
logistics, and waste reduction. Altogether, these systems facilitate resilience in smart cities through Internet of Things (IoT),
Building Information Modelling (BIM), and machine learning integration to optimize resource efficiency. Meanwhile,
challenges including data integration, cybersecurity, high costs of implementation, and ethical concerns are major barriers.
Despite this, the study contributes to the academic domain by advancing digital transformation knowledge in sustainable
construction and providing industry insights on practical ways to achieve zero-carbon goals. It highlights the need for future
research to focus on standardization, policy frameworks, and the use of scalable adoption strategies.
Keywords :
Environmental Sustainability, AI-Driven Digital Twin Systems, Net-Zero Carbon, Smart Construction, Artificial Intelligence, Internet of Things.