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A REACTOR-NETWORK FRAMEWORK TO MODEL PERFORMANCE AND EMISSIONS OF A LONGITUDINALLY-STAGED COMBUSTION SYSTEM FOR CARBON-FREE FUELS

Gopalakrishnan, HS and Maddipati, R and Gruber, A and Bothien, MR and Aditya, K (2024) A REACTOR-NETWORK FRAMEWORK TO MODEL PERFORMANCE AND EMISSIONS OF A LONGITUDINALLY-STAGED COMBUSTION SYSTEM FOR CARBON-FREE FUELS. In: 69th ASME Turbo Expo 2024: Turbomachinery Technical Conference and Exposition, GT 2024, 24 June 2024 through 28 June 2024, London.

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Official URL: https://doi.org/10.1115/GT2024-129095

Abstract

Hydrogen and ammonia are considered crucial carbon-free energy carriers optimally suited for seasonal chemical storage and balancing of the energy system. In this context, longitudinally-staged combustion systems represent an attractive technology in power generation for their capability of achieving low NOx emissions while conserving high load and, crucially, fuel flexibility at high thermal efficiency. Such two-stage combustion systems have been successfully implemented for natural gas firing of gas turbines and, more recently, have shown significant potential for clean and efficient hydrogen-firing operation. However, optimal operation with ammonia-based fuel mixtures is yet to be established. In a recent numerical modelling study (GT2023-103835), a novel Rich-Quench Lean (RQL) operational concept was proposed to burn a fuel-rich mixture of partially-decomposed ammonia and air (for equivalence ratios � � 1.1-1.2) in the first stage of a longitudinally-staged combustion system. Complete oxidation of the remaining (hydrogen) fuel is theoretically ensured by dilution-air addition downstream of the first stage combustor and it is confirmed by predictions from ongoing LES calculations (GT2024-128946). However, any operational concept based on these near-stoichiometric combustion conditions, while minimizing undesired prompt NOx and N2O formation by ammonia oxidation, can potentially result in significant, and certainly unpractical, thermal load on the first stage combustor liner that needs to be mitigated. In the present study, we exploit a newly developed reactors-network model to efficiently investigate the NOx-emissions performance of a longitudinally-staged combustion system fired with natural gas, hydrogen or ammonia. Firstly, the reactors network framework is validated with experimental, computational and other similar reactor network results in the literature. Secondly, the optimal air distribution within the longitudinally-staged combustion system is found for clean (low emissions) and efficient (complete fuel conversion) ammonia-firing operation. Thirdly, the consequences of such �ammonia-optimized� air distribution on flame stabilization and NOx emissions in more conventional natural gas- and hydrogen-firing operation are considered. Finally, an optimal air and fuel distribution is suggested for the longitudinally-staged combustion system on the basis that, while still ensuring robust flame stabilization and high turbine inlet temperature, it minimizes NOx emissions for all three fuels considered. Copyright © 2024 by ASME.

Item Type: Conference Paper
Publication: Proceedings of the ASME Turbo Expo
Publisher: American Society of Mechanical Engineers (ASME)
Additional Information: The copyright for this article belongs to the publishers.
Keywords: Antiknock compounds; Bioreactors; Coal; Combustors; Emission control; Gas turbines; Hydrogen fuels; Hydrogen storage; Ignition; Lunar surface analysis; Nanoreactors; Natural gas; Negative temperature coefficient; Nitrogen oxides; Peat; Positive temperature coefficient; Soaking pits; Steam, Air distribution; Carbon-free; Combustion systems; Firing operations; Flame stabilization; Network frameworks; NO x emission; Operational concepts; Reactor network; Staged combustion, Ammonia
Department/Centre: Division of Interdisciplinary Sciences > Computational and Data Sciences
Date Deposited: 06 Nov 2024 17:38
Last Modified: 06 Nov 2024 17:38
URI: http://eprints.iisc.ac.in/id/eprint/86732

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