Reduced-Order Modelling Applied to the Multigroup Neutron Diffusion Equation Using a Nonlinear Interpolation Method for Control-Rod Movement
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Christopher C. Pain | Claire Heaney | A. G. Buchan | Simon Jewer | C. Pain | A. Buchan | C. Heaney | S. Jewer
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