2017
DOI: 10.3233/ica-170543
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Lightweight parametric design optimization for 4D printed parts

Abstract: 4D printing is a technology that combines the capabilities of 3D printing with materials that can transform its geometry after being produced (e.g. Shape Memory Polymers). These advanced materials allow shape change by applying different stimulus such as heating. A 4D printed part will usually have 2 different shapes: a programmed shape (before the stimulus is applied), and the original shape (which is recovered once the stimulus has been applied). Lightweight parametric optimization techniques are used to fin… Show more

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Cited by 24 publications
(13 citation statements)
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References 34 publications
(32 reference statements)
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“…The methodology presented in this work is based on a previous approach and inspired by the work of Heljak et al, reviewed in the previous section. The main novelty introduced is the use of metamodels to reduce the computational time needed for the evaluation of the fitness function of the individuals generated during the GA evolution.…”
Section: Methodsmentioning
confidence: 99%
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“…The methodology presented in this work is based on a previous approach and inspired by the work of Heljak et al, reviewed in the previous section. The main novelty introduced is the use of metamodels to reduce the computational time needed for the evaluation of the fitness function of the individuals generated during the GA evolution.…”
Section: Methodsmentioning
confidence: 99%
“…Although this methodology is based on the proposal depicted in Paz et al, some significant modifications were implemented to be able to deal with different time points, material assignation, user‐defined objective functions, and other requirements needed for this specific application. For example, in Paz et al, the GAs were coded for continuous variables, whereas in this case, the variables can be continuous, discrete, or a combination of both. Moreover, the design variables reserved for material assignation are not associated with design variables of the CAD model, but material properties that must be applied to the solids in the FEA.…”
Section: Methodsmentioning
confidence: 99%
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“…Some authors have been working in optimization of lattice structures when geometry is changing with the time. For example, Paz et al [35] optimized a 4D printing geometry, of shape memory part, for two different scenarios when an external stimuli deforms the part, based on genetic algorithm as method for optimization. Once the dynamic optimal solution is achieved, the 3D geometry is exported either to AMF or FAV and the slicer interface imports such an exchange format to define the routes, processing parameters and print heads, combining the graded materials to make the graded OC scaffold in a multi-head bioplotter.…”
Section: Proposed Methodology To Fabricate Functionally Graded Oc Scamentioning
confidence: 99%
“…Optimization techniques have been used widely for the solution of many engineering and real‐life problems such as the allocation of resources (Kyriklidis & Dounias, ), product design and development (Lostado, Fernandez, Mac Donald, & Villanueva, ; Paz, Pei, Monzón, Ortega, & Suárez, ), process planning and scheduling (X. X. Li, Li, Cai, & He, ), wind farm distribution network optimization (Cerveira, Baptista, & Solteiro Pires, ), vertical transportation optimization in skyscrapers (Koo, Hong, Yoon, & Jeong, ), railway line design and timetable optimization (Castillo, Grande, Moraga, & Sánchez‐Vizcaíno, ), freeway travel cost optimization (Shahabi, Unnikrishnan, & Boyles, ), sustainable road network design (Y. Wang & Szeto, ), bridge design optimization (Bisadi & Padgett, ), construction scheduling (Karim & Adeli, ), mountain railway alignment optimization (W. Li et al, ), road weather information system network optimization (Kwon, Fu, & Melles, ), cost optimization of concrete (Sirca & Adeli, ) and steel building structures (Tashakori & Adeli, ) and composite floors (Adeli & Kim, ), free‐form steel space‐frame roof design optimization (Kociecki & Adeli, ), freeway work zone traffic delay and cost optimization (Jiang & Adeli, ), optimal control of bridges (Adeli & Saleh, ) and buildings (Saleh & Adeli, ), and among others.…”
Section: Introductionmentioning
confidence: 99%