Optimizing environmental sustainability in process engineering: leveraging quantum neural networks for energy efficient AI
| dc.contributor.author | Fernando, KJP | |
| dc.contributor.author | Renganathan, A | |
| dc.contributor.editor | Chathuranga, H | |
| dc.contributor.editor | Dissanayake, B | |
| dc.contributor.editor | Fernando, K | |
| dc.date.accessioned | 2026-02-17T05:25:45Z | |
| dc.date.issued | 2025 | |
| dc.description.abstract | The modern process engineering landscape is increasingly reliant on Artificial Intelligence (AI) and Machine Learning (ML) for optimizing complex systems, enhancing predictive maintenance, and enabling autonomous process control [1]. This wave of digitalization is critical for improving efficiency and maintaining a competitive edge. However, it introduces a significant challenge that runs counter to global sustainability mandates. The computational cost associated with training and deploying large-scale AI models is escalating at an unsustainable rate, creating a direct conflict between technological advancement and the decarbonization goals central to "Green IT" and sustainable engineering [1][2][3]. This tension is not merely academic; it represents a strategic risk for industries adopting AI. Data centers, the backbone of modern AI, accounted for approximately 2% of global electricity demand in 2022, a figure projected to grow substantially. Some estimates suggest that US data center consumption alone could exceed 9% by 2030.[4][5] The training of a single large language model can consume millions of kilowatt-hours and emit hundreds of metric tons of $CO_2$, an energy footprint comparable to the annual consumption of thousands of households[5][6] As process industries deploy ever more powerful AI to optimize operations and reduce direct (Scope 1) emissions, they risk simultaneously increasing their indirect (Scope 2) emissions from purchased electricity. This creates a sustainability paradox where operational efficiency is achieved at the expense of a larger environmental footprint. | |
| dc.identifier.conference | 2nd International Research Conference of Department of Chemical and Process Engineering | |
| dc.identifier.department | Department of Chemical and Process Engineering | |
| dc.identifier.faculty | Engineering | |
| dc.identifier.issn | 3030-783X | |
| dc.identifier.pgnos | pp. 76-82 | |
| dc.identifier.place | Moratuwa, Sri Lanka | |
| dc.identifier.proceeding | Proceedings of the 2nd International Research Conference of Department of Chemical and Process Engineering, University of Moratuwa | |
| dc.identifier.uri | https://dl.lib.uom.lk/handle/123/24878 | |
| dc.identifier.year | 2025 | |
| dc.language.iso | en | |
| dc.publisher | Department of Chemical and Process Engineering, University of Moratuwa | |
| dc.title | Optimizing environmental sustainability in process engineering: leveraging quantum neural networks for energy efficient AI | |
| dc.type | Conference-Full-text |
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