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Improving the feel of 3D printed prototypes for new product development: A feasibility study of emulating mass properties by optimising infill structures and materials

Published online by Cambridge University Press:  24 July 2023

Harry Felton*
Affiliation:
Department of Mechanical Engineering, University of Bristol, Bristol, UK
Jason Yon
Affiliation:
Department of Mechanical Engineering, University of Bristol, Bristol, UK
Ben Hicks
Affiliation:
Department of Mechanical Engineering, University of Bristol, Bristol, UK
*
Corresponding author H. Felton harry.felton@bristol.ac.uk
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Abstract

Product prototypes and particularly those that are 3D printed will have mass properties that are significantly different from the product they represent. This affects both functional performance and stakeholder perception of the prototype. Within this work, computational emulation of mass properties for a primitive object (a cube) is considered, developing a baseline numerical method and parameter set with the aim of demonstrating the means of improving feel in 3D printed prototypes. The method is then applied and tuned for three case study products – a games controller, a hand drill and a laser pointer – demonstrating that product mass properties could be numerically emulated to within ~1% of the target values. This was achieved using typical material extrusion technology with no physical or process modification. It was observed that emulation accuracy is dependent on the relative offset of the centre of mass from the geometric centre. A sensitivity analysis is further undertaken to demonstrate that product-specific parameters can be beneficial. With tuning of these values, and with some neglect of practical limitations, emulation accuracy as high as ~99.8% can be achieved. This was shown to be a reduction in error of up to 99.6% relative to a conventional fabrication.

Information

Type
Research Article
Creative Commons
Creative Common License - CCCreative Common License - BY
This is an Open Access article, distributed under the terms of the Creative Commons Attribution licence (http://creativecommons.org/licenses/by/4.0), which permits unrestricted re-use, distribution and reproduction, provided the original article is properly cited.
Copyright
© The Author(s), 2023. Published by Cambridge University Press
Figure 0

Figure 1. Example definition of part in unit cells, cut-through to show that the shell is formed of a single layer of unit cells.

Figure 1

Figure 2. Flowchart outlining the directed optimisation approach.

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Figure 3. Directed optimisation methodology, broken down by step, to show the code function, in two dimensions. (a) The desired centre of mass position and geometric centre are identified. (b) The target centre of mass, to balance the geometric centre and provide the desired centre of mass position, is identified. (c) A probability distribution is formed around the target centre of mass position, providing each cell with a probability of having a higher density. (d) Several iterations of cell distributions (based on the prior probability distributions) are considered, and the actual centre of masses calculated. (e) The part level centre of mass position is found for the given iteration. (f) If the calculated iteration centre of mass for the part is out of acceptable limits, the target centre of mass is updated, and the process iterates from step (c).

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Figure 4. Effect of changing the maximum number of CoM search iterations on runtime and objective function value.

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Figure 5. CoM variability vs number of iterations for given beta. The box represents the interquartile range (IQR), with the inside line the median. The whiskers represent 1.5 times the IQR, with the outliers marked. The mean is shown as an “x”.

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Figure 6. β tolerance against objective function value and runtime.

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Figure 7. Objective function value, broken down into the mass component and average CoM component, for a range of material combinations. The secondary material density ratio is relative to PLA.

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Figure 8. The effect of changing relative minimum density on objective function value.

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Figure 9. (a) Relative minimum density for the proposed infill structure designs, (b) Test prints showing the effect on overhangs when using the proposed infill structures for different cell sizes (printed with PLA and copper-infused PLA) (c) Investigated infill structures to achieve minimum deposition volume and required support.

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Figure 10. The effect of mesh density/cell size on objective function value and runtime.

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Figure 11. Effect of MCO iterations on objective function value. The box represents the interquartile range (IQR), with the inside line the median. The whiskers represent 1.5 times the IQR.

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Figure 12. The three prototypical products considered within this work. Case A – a Nintendo Switch JoyCon, Case B – Bosch electric hand drill and Case C – laser pointer.

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Table 1. Objective function value and relative mass properties for each case (with respect to actual product properties) for conventional 3D printed fabrications and after emulation (marked*)

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Figure 13. Example results for products (left-to-right) A, B and C showing the location of the shell, minimum-density cells and high-density cells.

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Figure 14. Normalised (to first data point of each case) objective function value for the three products when considering various nozzle sizes.

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Figure 15. Normalised (to first data point of each case) objective function value for the three products when considering various secondary material configurations, presented using second material density relative to the PLA baseline. Case B’s required mass could not be achieved when using PLA alone, which led to a process error, and is therefore not plotted here.

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Figure 16. Normalised (to first data point of each case) objective function value for the three products when considering various β tolerances.

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Figure 17. Normalised (to first data point of each case) objective function value for the three products for various cell sizes. Issues arose when meshing case B with cell sizes of 2 mm due to imperfect geometry – generated from a laser scan of the product – and less than 1.25 mm due to memory limitations.

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Figure 18. Normalised (to first data point of each case) objective function value for the three products for various CoM iterations.

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Figure 19. Normalised (to first data point of each case) objective function value for the three products for various MCO iterations.

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Table 2. Tuned parameter settings

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Table 3. Tuned process results for the three prototypical products, relative to the desired mass properties for a nominal MEX fabrication