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Mathematical and Computer Modelling of Dynamical Systems
Methods, Tools and Applications in Engineering and Related Sciences
Volume 30, 2024 - Issue 1
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Research Article

An iterative approach for deriving and solving an accurate regression equation

, &
Pages 73-90 | Received 04 Sep 2023, Accepted 25 Jan 2024, Published online: 03 Mar 2024

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