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http://hdl.handle.net/10397/116405
| Title: | Turning waste into energy through a solar-powered multi-generation system with novel machine learning-based life cycle optimization | Authors: | Zhou, J Ren, J Zhu, L He, C |
Issue Date: | 15-Mar-2025 | Source: | Chemical engineering science, 15 Mar. 2025, v. 307, 121348 | Abstract: | This study presents an innovative solar-powered multi-generation system aiming at converting waste into diverse forms of energy, including dimethyl ether (DME), hydrogen, power, and heat. Concurrently, a systematic and computationally efficient optimization framework is developed to unlock the maximum potential of this complex waste-to-energy system. The system integrates plasma gasification, DME synthesis, combining heat and power generation, solar-driven electrolysis and desalination. Life cycle assessment and techno-economic assessment have been implemented for system comprehensive optimization which is formulated as a large-scale nonlinear program (NLP) model. Based on rigorous process simulation results, a machine learning-based framework is proposed to accelerate optimization. Using medical waste treatment as a case study, the solution of the NLP problem reveals optimal levelized costs per kWh energy range from $0.1064 to $0.1304, with total life cycle carbon emissions ranging from 0.2748 to 0.5083 kg CO<inf>2</inf>-eq/kWh energy. The findings demonstrate the proposed system's environmental sustainability and economic viability. | Keywords: | Comprehensive optimization Machine learning Medical waste Multi-generation system Waste-to-energy |
Publisher: | Pergamon Press | Journal: | Chemical engineering science | ISSN: | 0009-2509 | DOI: | 10.1016/j.ces.2025.121348 |
| Appears in Collections: | Journal/Magazine Article |
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