Expeditionary Additive Manufacturing (ExAM) Method
20230211416 · 2023-07-06
Assignee
Inventors
- Christopher Paul Eonta (Los Gatos, CA, US)
- ANDREW VanOs LaTOUR (Hayward, CA, US)
- Matthew Charles (Cloverdale, CA, US)
- TOM REED (HOPLAND, CA, US)
- KAI PRAGER (HUNTINGTON BEACH, CA, US)
Cpc classification
B33Y10/00
PERFORMING OPERATIONS; TRANSPORTING
B22F12/82
PERFORMING OPERATIONS; TRANSPORTING
B33Y50/00
PERFORMING OPERATIONS; TRANSPORTING
B22F10/85
PERFORMING OPERATIONS; TRANSPORTING
B22F2999/00
PERFORMING OPERATIONS; TRANSPORTING
B22F10/00
PERFORMING OPERATIONS; TRANSPORTING
B33Y40/20
PERFORMING OPERATIONS; TRANSPORTING
B22F3/24
PERFORMING OPERATIONS; TRANSPORTING
Y02W30/50
GENERAL TAGGING OF NEW TECHNOLOGICAL DEVELOPMENTS; GENERAL TAGGING OF CROSS-SECTIONAL TECHNOLOGIES SPANNING OVER SEVERAL SECTIONS OF THE IPC; TECHNICAL SUBJECTS COVERED BY FORMER USPC CROSS-REFERENCE ART COLLECTIONS [XRACs] AND DIGESTS
B22F10/34
PERFORMING OPERATIONS; TRANSPORTING
B22F8/00
PERFORMING OPERATIONS; TRANSPORTING
B22F12/84
PERFORMING OPERATIONS; TRANSPORTING
B33Y50/02
PERFORMING OPERATIONS; TRANSPORTING
B22F3/24
PERFORMING OPERATIONS; TRANSPORTING
B22F2009/0848
PERFORMING OPERATIONS; TRANSPORTING
B33Y30/00
PERFORMING OPERATIONS; TRANSPORTING
B22F8/00
PERFORMING OPERATIONS; TRANSPORTING
B22F10/85
PERFORMING OPERATIONS; TRANSPORTING
B22F10/28
PERFORMING OPERATIONS; TRANSPORTING
B33Y40/00
PERFORMING OPERATIONS; TRANSPORTING
B22F2999/00
PERFORMING OPERATIONS; TRANSPORTING
Y02P10/25
GENERAL TAGGING OF NEW TECHNOLOGICAL DEVELOPMENTS; GENERAL TAGGING OF CROSS-SECTIONAL TECHNOLOGIES SPANNING OVER SEVERAL SECTIONS OF THE IPC; TECHNICAL SUBJECTS COVERED BY FORMER USPC CROSS-REFERENCE ART COLLECTIONS [XRACs] AND DIGESTS
International classification
B22F12/82
PERFORMING OPERATIONS; TRANSPORTING
B22F10/28
PERFORMING OPERATIONS; TRANSPORTING
B22F10/34
PERFORMING OPERATIONS; TRANSPORTING
B33Y10/00
PERFORMING OPERATIONS; TRANSPORTING
B33Y30/00
PERFORMING OPERATIONS; TRANSPORTING
B33Y40/00
PERFORMING OPERATIONS; TRANSPORTING
Abstract
An expeditionary additive manufacturing (ExAM) system [10] for manufacturing metal parts [20] includes a mobile foundry system [12] configured to produce an alloy powder [14] from a feedstock [16], and an additive manufacturing system [18] configured to fabricate a part using the alloy powder [14]. The additive manufacturing system [18] includes a computer system [50] having parts data and machine learning programs in signal communication with a cloud service. The parts data [56] can include material specifications, drawings, process specifications, assembly instructions, and product verification requirements for the part [20]. An expeditionary additive manufacturing (ExAM) method for making metal parts [20] includes the steps of transporting the mobile foundry system [12] and the additive manufacturing system [18] to a desired location; making the alloy powder [14] at the location using the mobile foundry system; and building a part [20] at the location using the additive manufacturing system [18].
Claims
1. An expeditionary additive manufacturing ExAM method for manufacturing metal parts comprising: providing a mobile foundry system configured to produce an alloy powder from a feedstock, the mobile foundry comprising a cold hearth mixing system for melting the feedstock and a gas atomization system for forming the alloy powder; providing an additive manufacturing system configured to fabricate a part using the alloy powder, the additive manufacturing system including a computing system having a plurality of computer programs including stored parts data in signal communication with a cloud service; transporting the mobile foundry system and the additive manufacturing system to a desired location; making the alloy powder at the location using the mobile foundry system; and building the part at the location using the additive manufacturing system.
2. The ExAM method of claim 1 further comprising providing a machining system controlled by the computing system and the building step includes the step of machining the part at the location using the machining system.
3. The ExAM method of claim 1 wherein the additive manufacturing system includes a laser powder bed fusion LPBF system having layer-by-layer powder bed monitoring with a negative feedback control loop.
4. The method of claim 1 further comprising performing composition correction of the alloy powder using the mobile foundry system.
5. The method of claim 1 wherein the feedstock comprises scrap metal.
6. The method of claim 1 further comprising filtering the parts data using a search function of the computer programs.
7. The method of claim 1 wherein the additive manufacturing system includes a 3-D printer controllable by the computer system.
8. An expeditionary additive manufacturing ExAM method for manufacturing metal parts comprising: providing a mobile foundry system configured to produce an alloy powder from a feedstock, the mobile foundry comprising a cold hearth mixing system for melting the feedstock and a gas atomization system for forming the alloy powder; providing an additive manufacturing system configured to fabricate a part using the alloy powder, the additive manufacturing system including a computing system having a plurality of programs configured to access parts data including material specification, drawings, process specifications, assembly instructions and product verification requirements on a top 100 field requested parts; transporting the mobile foundry system, the additive manufacturing system and the machining system to a desired location; making the alloy powder at the location using the mobile foundry system; and building the part at the location using the additive manufacturing system.
9. The method of claim 8 wherein the transporting step comprises providing a first container containing the mobile foundry, and providing a second container containing the additive manufacturing system, and transporting the mobile foundry using the first container, and transporting the additive manufacturing system using the second container.
10. The method of claim 8 further comprising providing a machining system controllable by the computer system and configured to machine the part using the parts data, and machining the part at the location using the machining system.
11. The method of claim 8 wherein the additive manufacturing system includes a laser powder bed fusion LPBF system having layer-by-layer powder bed monitoring with a negative feedback control loop.
12. The method of claim 8 wherein the machining system includes machinery selected from the group consisting of lathes, milling tools, torches, cutting saws, power tools and measuring devices controlled by the computer system.
13. The method of claim 8 further comprising performing composition correction using the mobile foundry system.
14. The method of claim 8 wherein the feedstock comprises scrap metal.
15. The method of claim 8 further comprising filtering the parts data using a search function of the computer programs.
16. The method of claim 8 wherein the additive manufacturing system includes a 3-D printer controllable by the computer system.
Description
BRIEF DESCRIPTION OF THE DRAWINGS
[0009] Exemplary embodiments are illustrated in the referenced figures of the drawings. It is intended that the embodiments and the figures disclosed herein to be considered illustrative rather than limiting.
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DETAILED DESCRIPTION
[0029] “Expeditionary” means relating to an expedition particularly a military expedition abroad. Expeditionary warfare is the deployment of a state's military to fight abroad, especially away from established bases. “Cloud service” means the on-demand availability of computer system resources, especially data storage and computing power, without direct active management by the user. An exemplary cloud service is Amazon Web Services Inc., Seattle, Wash. 98109. “Machine learning” means an application of artificial intelligence (AI) that provides systems the ability to automatically learn and improve from experience without being explicitly programmed. In the present application, machine learning includes computer programs that can access parts data and use it to control additive manufacturing and machining systems to make parts.
[0030] Referring to
[0031] The mobile foundry system 12 includes a container 22 sized to contain the necessary equipment. For example, the container 22 can comprise a standard sized metal shipping container that can be easily transported by truck, rail or ship. Exemplary sizes include 8′×20′ and 8′×40′. The container 22 can include access openings, such as doors or hatches, sized to allow people, raw materials, equipment, and metal parts into and out of the containers 22. As shown in
[0032] The mobile foundry system 12 is configured to produce the alloy powder 14 at the desired location using a cold hearth mixing and atomization process. In the illustrative embodiment, the mobile foundry system 12 includes a cold hearth mixing system 24 (
[0033] As shown in
[0034] Referring to
[0035] As shown in
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Example
[0044] A manufacturing data package can be developed for each part, including data for all aspects of production (i.e. material specifications, drawings, process specifications, assembly instructions, and product verification requirements such as dimensional inspection, non-destructive testing, test coupons, and layer-by-layer inspection). By way of example, a digital inventory of the top 100 field requested parts from TARDEC can be established. MolyWare, proprietary database software developed by MolyWorks, 238 North Santa Cruz Avenue, Suite 106B, Los Gatos, Calif. 95030, contain all written digital threads for the top 100 parts. Each printing step has an associated log in MolyWare for data collection.
[0045] In order to access digital threads, the U.S. Army Research, Development, and Engineering Command (RDECOM) developed a database called the Repository of Additive Parts for Tactical & Operational Readiness (RAPTOR). It is easy-to-use, already in-service, and equipped with a powerful search function that can filter through parts with options such as material, system type, and National Stock Number.
[0046] MolyWorks has partnered with Amazon Web Services (AWS) in order to provide petabyte-scale data transport with on-board storage and compute capabilities.
[0047] Amazon's Snowball Edge can undertake local processing and edge-computing workloads in addition to transferring data between your local environment and the AWS Cloud. Tamper resistant enclosures, 256-bit encryption, and industry-standard Trusted Platform Modules (TPM) provide the necessary security and full chain of custody when deployed. Finally, the Snowball is ruggedly designed to withstand a fall from a 5-story building. The Snowball Edge has a local 100 TB storage which can be scaled by connecting multiple Snowball Edges together. Amazon's S3 cloud storage system will be used for storage management, RAPTOR digital thread backup, and integration with Amazon Forecast.
[0048] Forecast is Amazon's predictive machine learning system. Users upload data to the encryption-protected Forecast servers, which then transmit a forecasting model. In the context of RAPTOR, predictive maintenance will be explored utilizing the growing number of data points. Scrap availability, past part demand, forward-deployed manufacturing capacity, and part-life data will all be taken into account.
[0049] The systems developed in the Mobile Foundry and ExAM require control. AWS Robomaker is a service to develop and deploy intelligent robotics. MolyWorks is working directly with developers to create and fine tune applications for this service. Robomaker is appealing due to its machine learning and monitoring services. When ExAM is scaled, Robomaker will enable fleet management of the robotic system.
[0050] Producing the part from drawing to post-processing requires various file formats and software. Table 1 lists all software and files written, drawn, and programmed for the part modeling, 3D printing, and post processing.
TABLE-US-00001 TABLE 1 Name Extension Software Description Solid Part .sldprt solidworks 3D image format used by SolidWorks CAD software. It contains a 3D object or “part” that may be combined with other parts into a single assembly. Solid Drawing .slddrw solidworks Two-dimensional drawing created with SolidWorks CAD software; saves image data in vector format using lines instead of pixels. Slice Files .sli 3DXpert The part is broken down layer by layer into specified thicknesses for printing. Event List Text File .elt 3DXpert 3D Systems proprietary extension used when saving and opening 3DXpert printing files. EOS Job Data .eosjob EOS Print Job file containing laser scan path data. EOS Job Zip .eosjz EOS Print Zip file containing job data as well as laser parameters, .sli files, and other relevant data necessary for recreating the exact print. masterCAM .mcam masterCAM File created by masterCAM from .stl; contains a part's 3D drawing for the user to input machining instructions in masterCAM program. Numerical Control .NC masterCAM File created by masterCAM as an export from .mcam; contains numerical controls for directing a machining tool such as a mill and a lathe. Portable Document .pdf MolyWare, The PDF format is commonly used for saving Format Microsoft documents and publications in a standard Word format that can be viewed on multiple platforms. Solidworks drawing is converted to PDF for the part report and linked to in MolyWare so people without SolidWorks can open it. Also used for quality checking relevant dimensions. Portable Network .png MolyWare, A PNG file is an image file stored in the Portable Graphic Microsoft Network Graphic (PNG) format. It contains a Word bitmap of indexed colors and uses lossless compression. Used for displaying the sprocket machining, printing, and screenshots of 3D modeling in reports.
[0051] While a number of exemplary aspects and embodiments have been discussed above, those of skill in the art will recognize certain modifications, permutations, additions and subcombinations thereof. It is therefore intended that the following appended claims and claims hereafter introduced are interpreted to include all such modifications, permutations, additions and sub-combinations as are within their true spirit and scope.