Harnessing the power of machine learning for carbon capture, utilisation, and storage (CCUS) – A state-of-the-art review
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Borhani, Tohid N.
Subraveti, Sai Gokul
Pai, Kasturi Nagesh
Prasad, Vinay
Rajendran, Arvind
Nkulikiyinka, Paula
Asibor, Jude Odianosen
Zhang, Zhien
Shao, Ding
Wang, Lijuan
Zhang, Wenbiao
Yan, Yong
Ampomah, William
You, Junyu
Wang, Meihong
Anthony, Edward J.
Manovic, Vasilije
Clough, Peter T.
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Abstract
Carbon capture, utilisation and storage (CCUS) will play a critical role in future decarbonisation efforts to meet the Paris Agreement targets and mitigate the worst effects of climate change. Whilst there are many well developed CCUS technologies there is the potential for improvement that can encourage CCUS deployment. A time and cost-efficient way of advancing CCUS is through the application of machine learning (ML). ML is a collective term for high-level statistical tools and algorithms that can be used to classify, predict, optimise, and cluster data. Within this review we address the main steps of the CCUS value chain (CO2 capture, transport, utilisation, storage) and explore how ML is playing a leading role in expanding the knowledge across all fields of CCUS. We finish with a set of recommendations for further work and research that will develop the role that ML plays in CCUS and enable greater deployment of the technologies.