Quadratization of ODEs: Monomial vs. Non-Monomial
Foyez Alauddin

TL;DR
This paper investigates the efficiency of quadratization methods for scalar polynomial ODEs, showing that allowing non-monomial new variables can significantly reduce the number of variables needed compared to traditional monomial approaches.
Contribution
The paper provides theoretical conditions for quadratization with non-monomial variables and demonstrates that fewer variables are needed, improving upon existing monomial-based algorithms.
Findings
Scalar polynomial ODEs of degree ≥5 can be quadratized with one variable under specific conditions.
Two non-monomial variables suffice to quadratize all degree 6 scalar polynomial ODEs.
Non-monomial quadratizations can be significantly smaller than monomial ones.
Abstract
Quadratization is a transform of a system of ODEs with polynomial right-hand side into a system of ODEs with at most quadratic right-hand side via the introduction of new variables. It has been recently used as a pre-processing step for new model order reduction methods, so it is important to keep the number of new variables small. Several algorithms have been designed to search for a quadratization with the new variables being monomials in the original variables. To understand the limitations and potential ways of improving such algorithms, we study the following question: can quadratizations with not necessarily monomial new variables produce a model of substantially smaller dimension than quadratization with only monomial new variables? To do this, we restrict our attention to scalar polynomial ODEs. Our first result is that a scalar polynomial ODE…
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