Football helmet with components additively manufactured to manage impact forces
US-2020215415-A1 · Jul 9, 2020 · US
US12578703B2 · US · B2
| Field | Value |
|---|---|
| Publication number | US-12578703-B2 |
| Application number | US-202218047413-A |
| Country | US |
| Kind code | B2 |
| Filing date | Oct 18, 2022 |
| Priority date | Oct 20, 2021 |
| Publication date | Mar 17, 2026 |
| Grant date | Mar 17, 2026 |
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A computer-implemented method of making a semi-custom product for a user, includes the steps of: (a) providing a set of data files, each data file representing a distinct variant of the product; (b) providing personal data from the user, the personal data including at least first and second distinct user attributes; (c) providing product preference data from the user, the product preference data including at least first and second distinct product attributes; and then (d) ranking the set of data files with (i) the personal data and (ii) the product preference data to identify a best fit data file, the best fit data file representing a variant of the product that most closely meets the product preference data based on the personal data.
Opening claim text (preview).
We claim: 1 . A computer-implemented method of making a semi-custom product for a user, comprising the steps of: (a) providing a set of data files, each data file representing a distinct variant of said product; (b) providing personal data from the user, the personal data comprising at least first and second distinct user attributes; (c) providing product preference data from the user, the product preference data comprising at least first and second distinct product attributes; and then (d) ranking said set of data files with (i) said personal data and (ii) said product preference data to identify a best fit data file, said best fit data file representing a variant of said product that most closely meets said product preference data based on said personal data; and (e) additively manufacturing said product from said best fit data file, wherein: each data file in said set of data files of step (a) is validated for manufacture on a specific additive manufacturing apparatus type; and said additively manufacturing step (e) is carried out on an additive manufacturing apparatus of the type for which said best fit data file is validated, wherein said step of (c) providing product preference data includes weighting (or prioritizing) said distinct product attributes with respect to one another based on preferences of said user, and wherein: (i) said step of (c) providing product preference data includes bounding the most heavily weighted product attribute with a general tolerance range; (ii) said step (d) includes generating a stringent tolerance within said general tolerance range, and is carried out with said stringent tolerance range less than said general tolerance range; and then (iii) if no best fit data file is identified, repeating step (d) with a relaxed tolerance range greater than said stringent tolerance range but at or within said general tolerance range. 2 . The method of claim 1 , wherein: each data file in said set of data files of step (a) is validated for manufacture with a specific build material; and said additively manufacturing step (e) is carried out with a build material for which said best fit data file has been validated. 3 . The method of claim 2 , wherein: each data file in said set of data files of step (a) is validated for manufacture with a specific orientation of said product in said apparatus; and said additively manufacturing step (e) is carried out with said product oriented in said apparatus in the same orientation for which said best fit data file has been validated. 4 . A computer program product for operating an electronic device comprising a non-transitory computer readable storage medium having computer readable program code embodied in the medium that when executed by a processor causes the processor to perform operations comprising the method of claim 1 . 5 . A method of making a semi-custom product for a user, the product comprising a plurality of adjacent connected subsections, the method comprising the steps of: (a) providing a set of data files for at least one of said subsections, each data file representing a distinct variant of said subsection; (b) providing personal data from the user, the personal data comprising at least first and second distinct user attributes; (c) providing product subsection preference data from the user, the product subsection preference data comprising at least first and second distinct product subsection attributes; (d) ranking said set of data files with (i) said personal data and (ii) said product subsection preference data to identify a best fit data file, said best fit data file representing a variant of said subsection that most closely meets said product preference data based on said personal data; then (e) generating a consolidated data file for said semi-custom product from said best fit data file and at least one additional data file for the remaining subsections of said product; and (f) additively manufacturing said semi-custom product from said consolidated data file, wherein: each data file in said set of data files of step (a) is validated for manufacture with a specific build material; and said additively manufacturing step (f) is carried out with a build material for which said best fit data file has been validated, wherein said step of (c) providing product preference data includes weighting (or prioritizing) said distinct product attributes with respect to one another based on preferences of said user, and wherein: (i) said step of (c) providing product preference data includes bounding the most heavily weighted product attribute with a general tolerance range; (ii) said step (d) includes generating a stringent tolerance within said general tolerance range, and is carried out with said stringent tolerance range less than said general tolerance range; and then (iii) if no best fit data file is identified, repeating step (d) with a relaxed tolerance range greater than said stringent tolerance range but at or within said general tolerance range. 6 . The method of claim 5 , wherein: each data file in said set of data files of step (a) is validated for manufacture on a specific additive manufacturing apparatus type; and said additively manufacturing step (f) is carried out on an additive manufacturing apparatus of the type for which said best fit data file is validated. 7 . The method of claim 6 , wherein: each data file in said set of data files of step (a) is validated for manufacture with a specific orientation of said product in said apparatus; and said additively manufacturing step (f) is carried out with said product subsection oriented in said apparatus in the same orientation for which said best fit data file has been validated. 8 . The method of claim 5 , wherein said product comprises a saddle, footwear midsole, footwear innersole, orthotic insert, helmet liner pad, body pad, orthopedic appliance, prosthetic appliance, protective garment, protective glove, brassiere or component thereof. 9 . The method of claim 5 , wherein each said user attribute comprises: anatomical data; or performance, biometric, and/or behavioral data; or personal data. 10 . The method of claim 5 , wherein each said product attribute comprises weight, tightness, stiffness or elasticity, ventilation, body contact, and/or surface texture. 11 . The method of claim 5 , wherein said step of (b) providing personal data is carried out with a pressure sensor, imaging apparatus, automated measuring device, manual measuring device, or combination thereof. 12 . The method of claim 5 , wherein said additively manufacturing step is carried out with an apparatus selected from the group consisting of top-down stereolithography apparatus, bottom-up stereolithography apparatus, jet-fusion apparatus, selective laser sintering apparatus, or selective laser melting apparatus. 13 . The method of claim 5 , wherein said build material is selected from the group consisting of polymerizable liquid resins, sinterable particles, and fusible particles. 14 . A method of making a semi-custom product for a user, the product comprising a plurality of adjacent connected subsections, the method comprising the steps of: (a) providing a set of data files for at least one of said subsections, each data file representing a distinct variant of said subsection; (b) providing personal data from the user, the personal data comprising at least first and second distinct user attributes; (c) providing product subsection preference data from the user, the product subsection preference data comprising at least first and second distinct produc
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