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A High-Throughput Computational Screening Of Potential Adsorbents For A Thermal Compression Co2 Brayton Cycle

SUSTAINABLE ENERGY & FUELS(2021)

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Abstract
By employing heat rather than mechanical work to compress the working fluid, the thermal compression CO2 Brayton cycle (TC-CBC) has been considered as a promising pathway to the efficient utilization of low-grade thermal energy. However, finding reasonable adsorbents to efficiently realize the thermal compression process via the CO2 adsorption-desorption loop has become a significant challenge to the development of such an innovative system. To solve the dilemma, high-throughput computational screening based on grand canonical Monte Carlo (GCMC) simulations and machine learning (ML) have been conducted to identify promising adsorbents from 1625 metal-organic frameworks (MOFs) for the TC-CBC. Results demonstrate that the thermodynamic efficiency and output per unit mass adsorbent of the system with a low-temperature heat source at 393 K can reach up to 9.34% and 21.84 kJ kg(-1), respectively. MOFs with large surface area, pore volume, porosity, and moderate pore size have exhibited high thermodynamic performances. In addition to the low-temperature heat source, a high-temperature heat source is also considered in the analysis. The elevation of the thermodynamic performance is observed to be dependent on the structural properties of MOFs. With a random forest algorithm, a rapid and accurate prediction of thermodynamic performances for the innovative cycle is achieved.
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Key words
thermal compression computational,potential adsorbents,high-throughput
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