Multidisciplinary Free Material Optimization of 2D and Laminate Structures Alemseged G Weldeyesus, PhD student Mathias Stolpe, Senior Scientist Stefanie.

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Presentation transcript:

Multidisciplinary Free Material Optimization of 2D and Laminate Structures Alemseged G Weldeyesus, PhD student Mathias Stolpe, Senior Scientist Stefanie Gaile WCSMO10, Orlando,USA, May 19-24,

DTU Wind Energy, Technical University of Denmark Add Presentation Title in Footer via ”Insert”; ”Header & Footer” FMO is a one of the different approaches to structural optimization. In FMO, the design variable is the full material tensor, can vary freely at each point of the design domain, necessary condition for physical attainability is the only requirement. Free Material Optimization (FMO) WCSMO10, Orlando,USA, May 19-24, 2013 M. P. Bendsøe, J. M. Guedes, R. B. Haber, P. Pedersen, and J. E. Taylor. An analytical model to predict optimal material properties in the context of optimal structural design. J. Appl. Mech. Trans. ASME, 61:930–937, M. Kočvara and M. Stingl. Free material optimization for stress constraints. Structural and Multidisciplinary Optimization, 33: , M. Kočvara, M. Stingl, and J. Zowe. Free material optimization: Recent progress. Optimization, 57(1):79–100,

DTU Wind Energy, Technical University of Denmark Add Presentation Title in Footer via ”Insert”; ”Header & Footer” Optimal solution Solution to FMO yields optimal distribution of the material as well as optimal local material properties. The obtained design can be considered as an ultimately best structure. Conceptual, since it is difficult (or actually impossible) to manufacture a structure such that its property varies at each point of the design. FMO can be used to generate benchmarks and to propose novel ideas for new design situations. WCSMO10, Orlando,USA, May 19-24,

DTU Wind Energy, Technical University of Denmark Add Presentation Title in Footer via ”Insert”; ”Header & Footer” The FMO problem formulation Mechanical assumptions static loads, linear elasticity, anisotropic material. The basic minimum compliance problem(Discrete) WCSMO10, Orlando,USA, May 19-24, D, 3D structures Additional structural requirements can also be included through constraints on local stresses on local strains on displacement Adding such constraints destroys suitable problem properties, e.g. convexity.

DTU Wind Energy, Technical University of Denmark Add Presentation Title in Footer via ”Insert”; ”Header & Footer” Goals Propose FMO model for laminate structures. Extend existing robust and efficient primal dual interior point method for nonlinear programming to FMO problems. ( second order method) WCSMO10, Orlando,USA, May 19-24,

DTU Wind Energy, Technical University of Denmark Add Presentation Title in Footer via ”Insert”; ”Header & Footer” WCSMO10, Orlando,USA, May 19-24, FMO for laminate structures Minimum compliance problem Based on FSDT

DTU Wind Energy, Technical University of Denmark Add Presentation Title in Footer via ”Insert”; ”Header & Footer” Optimization method All FMO problems are SemiDefinite Programs (SDP), an optimization problem with many matrix inequalities. On the extension of primal-dual interior point methods for nonlinear programming to FMO problems (SDP). FMO problems can be represented by Introducing slack variables, the associated barrier problem is WCSMO10, Orlando,USA, May 19-24, We solve problem (BP) for a sequence of barrier parameter  k 0.

DTU Wind Energy, Technical University of Denmark Add Presentation Title in Footer via ”Insert”; ”Header & Footer” Without stress constraints design variables, ~9600 nonlinear constraints, 4800 matrix inequalities Numerical results Design domain, bc, forces Optimal density distribution Optimal strain normsOptimal stress norms WCSMO10, Orlando,USA, May 19-24, iterations Higher stress concentration around the re-entrant corner 8

DTU Wind Energy, Technical University of Denmark Add Presentation Title in Footer via ”Insert”; ”Header & Footer” With stress constraints (max stress is decreased by 30%) design variables ~9600 nonlinear constraints 4800 matrix inequalities 4800 additional nonlinear constraints (stress constraints) Numerical results … Optimal strain normsOptimal stress norms WCSMO10, Orlando,USA, May 19-24, iterations Higher stress concentrations are distributed to negibhour regions M. Kočvara and M. Stingl. Free material optimization for stress constraints. Structural and Multidisciplinary Optimization, 33: , Optimal density distribution

DTU Wind Energy, Technical University of Denmark Add Presentation Title in Footer via ”Insert”; ”Header & Footer” WCSMO10, Orlando,USA, May 19-24, 2013 Numerical results … Design domain, bc and forces 4 layers No distinction between layers. Similar to 2D results. No out plane deformation. No material for D, min(trace( C))/max(trace(D))= Optimal density distribution

DTU Wind Energy, Technical University of Denmark Add Presentation Title in Footer via ”Insert”; ”Header & Footer” 47 iterations Symmetric laminate High material distribution on top and bottom layers WCSMO10, Orlando,USA, May 19-24, 2013 Numerical results … Design domain, bc and forces 4 layers design variables matrix inequalities 11 Optimal density distribution

DTU Wind Energy, Technical University of Denmark Add Presentation Title in Footer via ”Insert”; ”Header & Footer” In both cases, we have single layer, design variables, matrix inequalities. Numerical results … WCSMO10, Orlando,USA, May 19-24, 2013 Design domain, bc and forcesOptimal density distribution 47 iterations 44 iterations 12

DTU Wind Energy, Technical University of Denmark Add Presentation Title in Footer via ”Insert”; ”Header & Footer” Conclusion The extended primal dual interior point method solves FMO problems in a reasonable number of iterations. Number of iterations is almost independent to problem size. FMO has been extended to optimal design of laminate structures. WCSMO10, Orlando,USA, May 19-24,

DTU Wind Energy, Technical University of Denmark Add Presentation Title in Footer via ”Insert”; ”Header & Footer” WCSMO10, Orlando,USA, May 19-24, 2013 Thank you for your attention ! 14