Mixed-integer programming formulation of a data-driven solver in computational elasticity

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Abstract

This paper presents a mixed-integer quadratic programming formulation of an existing data-driven approach to computational elasticity. This formulation is suitable for application of a standard mixed-integer programming solver, which finds a global optimal solution. Therefore, the results obtained by the presented method can be used as benchmark instances for any other algorithm. Preliminary numerical experiments are performed to compare quality of solutions obtained by the proposed method and a heuristic conventionally used in the data-driven computational mechanics.

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Kanno, Y. (2019). Mixed-integer programming formulation of a data-driven solver in computational elasticity. Optimization Letters, 13(7), 1505–1514. https://doi.org/10.1007/s11590-019-01409-w

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