Artificial Intelligence X-ray Imaging for Sustainable Metal Manufacturing (AIXISuMM)
Lead Research Organisation:
University of Oxford
Department Name: Materials
Abstract
Metal manufacturing is responsible for 8% of global CO2 emissions and if carbon neutrality is to be achieved by 2050, we critically need to transition to more sustainable processes. In this project we address the underlying science and understanding to allow a higher utilisation of low embedded-carbon, higher impurity recycled metal as a feedstock for metal manufacturing.
Current manufacturing approaches are highly dependent on energy-intensive primary metal as they rely on tightly controlled compositions with very low impurity contents to provide the required materials properties. We believe that the new understanding needed to provide transformative and efficient methods to manufacture high grade metal alloys using a much higher fraction of lower embedded-carbon recycled material as a feedstock can be delivered by leveraging the combined power of multi-modal X-ray imaging and in-line artificial intelligence.
We will develop a new wholistic characterisation system comprising both newly developed hardware and AI algorithms named Artificial Intelligence X-ray Imaging (AIXI) as an intelligent tool to investigate the solidification of impurity-rich alloys in experimental conditions comparable to those found in industrial processes such as continuous casting, direct chill casting, shape casting and additive manufacturing for a wide range of aluminium and steel alloy compositions.
AIXI will provide a significant advantage over existing approaches as AI will be embedded in the data acquisition system and used to interpret raw data in real-time, drastically reducing the complexity and time required for data analysis and significantly increasing the analytical power of the system. The new knowledge will allow us to finally understand the role that impurities and minor alloy additions play in the developing solidification microstructure, and to develop methodologies to mitigate their deleterious effects. It will also promote a shift to a more holistic approach for alloy design in which the solidification microstructure is engineered to both provide enhanced properties and to facilitate subsequent downstream processes with minimised environmental impact.
The newly acquired knowledge will foster the development of science for `sustainable' alloys, which will: enhance metal recyclability by reducing the need for dilution of recycled scrap with energy intensive primary metal; encourage greater use of lower-grade scrap, widely available in the UK but currently exported; decrease the number of downstream processing steps (process intensification), especially heat treatment practices; simplify component recoverability by reducing the reliance on tight compositions specifications; and enhance materials properties by improving control over the final microstructure. We will uncover and apply the missing science to control phase transformations to create more benign and impurity tolerant microstructures and allow more efficient use of expensive and potentially scarce alloy additions, which will substantially cut resource use in the CO2-intensive metal industries. Furthermore, we envisage that the application of the developed hardware/AI analysis could potentially facilitate rapid scientific development in many fields of materials science and beyond where efficient, rapid collection and analysis of complex and large multi-modal datasets is critical to unlock the necessary understanding
Current manufacturing approaches are highly dependent on energy-intensive primary metal as they rely on tightly controlled compositions with very low impurity contents to provide the required materials properties. We believe that the new understanding needed to provide transformative and efficient methods to manufacture high grade metal alloys using a much higher fraction of lower embedded-carbon recycled material as a feedstock can be delivered by leveraging the combined power of multi-modal X-ray imaging and in-line artificial intelligence.
We will develop a new wholistic characterisation system comprising both newly developed hardware and AI algorithms named Artificial Intelligence X-ray Imaging (AIXI) as an intelligent tool to investigate the solidification of impurity-rich alloys in experimental conditions comparable to those found in industrial processes such as continuous casting, direct chill casting, shape casting and additive manufacturing for a wide range of aluminium and steel alloy compositions.
AIXI will provide a significant advantage over existing approaches as AI will be embedded in the data acquisition system and used to interpret raw data in real-time, drastically reducing the complexity and time required for data analysis and significantly increasing the analytical power of the system. The new knowledge will allow us to finally understand the role that impurities and minor alloy additions play in the developing solidification microstructure, and to develop methodologies to mitigate their deleterious effects. It will also promote a shift to a more holistic approach for alloy design in which the solidification microstructure is engineered to both provide enhanced properties and to facilitate subsequent downstream processes with minimised environmental impact.
The newly acquired knowledge will foster the development of science for `sustainable' alloys, which will: enhance metal recyclability by reducing the need for dilution of recycled scrap with energy intensive primary metal; encourage greater use of lower-grade scrap, widely available in the UK but currently exported; decrease the number of downstream processing steps (process intensification), especially heat treatment practices; simplify component recoverability by reducing the reliance on tight compositions specifications; and enhance materials properties by improving control over the final microstructure. We will uncover and apply the missing science to control phase transformations to create more benign and impurity tolerant microstructures and allow more efficient use of expensive and potentially scarce alloy additions, which will substantially cut resource use in the CO2-intensive metal industries. Furthermore, we envisage that the application of the developed hardware/AI analysis could potentially facilitate rapid scientific development in many fields of materials science and beyond where efficient, rapid collection and analysis of complex and large multi-modal datasets is critical to unlock the necessary understanding
Organisations
- University of Oxford (Lead Research Organisation)
- Archangel Autonomy (Collaboration)
- Science and Technologies Facilities Council (STFC) (Collaboration)
- Sigma (Collaboration)
- Dr Fritsch (Collaboration)
- Rio Tinto Alcan (Collaboration)
- University of Kassel (Collaboration)
- Innoval Technology Ltd (Project Partner)
- Novelis Inc (Project Partner)
- European Synchrotron Radiation Facility (ESRF) (Project Partner)
- Quantum Detectors (Project Partner)
- Constellium UK Limited (Project Partner)
- Diamond Light Source (Project Partner)
- Novit.AI (Project Partner)
- Grainger & Worrall Ltd (Project Partner)
- UK Astronomy Technology Centre (Project Partner)
- Tata Group UK (Project Partner)
- IBM (United Kingdom) (Project Partner)
Publications
Shen X
(2024)
Atomic-Scale Study on Core-Shell Cu Precipitation in Steels: Atom Probe Tomography and Ab Initio Calculations
in steel research international
| Description | Artificial Intelligence X-ray Imaging |
| Amount | £617,830 (GBP) |
| Funding ID | EP/X038157/1 |
| Organisation | Engineering and Physical Sciences Research Council (EPSRC) |
| Sector | Public |
| Country | United Kingdom |
| Start | 08/2024 |
| End | 09/2028 |
| Description | Enabling sustainable fusion and other power generation technologies by novel manufacturing |
| Amount | £130,000 (GBP) |
| Funding ID | 2925895 |
| Organisation | Engineering and Physical Sciences Research Council (EPSRC) |
| Sector | Public |
| Country | United Kingdom |
| Start | 08/2024 |
| End | 09/2028 |
| Description | Enabling sustainable fusion and other power generation technologies by novel manufacturing |
| Amount | £130,000 (GBP) |
| Funding ID | 2888120 |
| Organisation | Engineering and Physical Sciences Research Council (EPSRC) |
| Sector | Public |
| Country | United Kingdom |
| Start | 08/2023 |
| End | 09/2027 |
| Description | Archangel Imaging - AI |
| Organisation | Archangel Autonomy |
| Country | United Kingdom |
| Sector | Private |
| PI Contribution | Supervision of PhD student |
| Collaborator Contribution | Funding towards studentship + access to GPU cluster tokens |
| Impact | AI model for materials science |
| Start Year | 2024 |
| Description | Data-driven inverse design for enhanced tramp elements tolerance in scrap-based steelmaking |
| Organisation | University of Kassel |
| Country | Germany |
| Sector | Academic/University |
| PI Contribution | Carrying out X-ray imaging experiment on steel samples. Providing support on machine learning for vision applications Manufacturing bulk samples |
| Collaborator Contribution | - Providing guidance on steelmaking reserach - Provide support on ex-situ characterization and MD and DFT modelling |
| Impact | One funding proposal |
| Start Year | 2024 |
| Description | FAST sintering |
| Organisation | Dr Fritsch |
| Country | Germany |
| Sector | Private |
| PI Contribution | Supervision to PhD student |
| Collaborator Contribution | Access to advance facilities at Dr Fritsch in Germany |
| Impact | Novel manufacturing method for W-Steel joining for nuclear fusion applications |
| Start Year | 2023 |
| Description | Novel manufacturing methods for scintillator materials |
| Organisation | Science and Technologies Facilities Council (STFC) |
| Country | United Kingdom |
| Sector | Public |
| PI Contribution | Provide supervision to student working on scintillator material development |
| Collaborator Contribution | Provide supervision to student working on scintillator material development |
| Impact | Not yet, just started. |
| Start Year | 2024 |
| Description | Oxford Sigma - Fusion science |
| Organisation | Sigma |
| Country | Poland |
| Sector | Private |
| PI Contribution | Supervise PhD student |
| Collaborator Contribution | Provide funds towards studentship |
| Impact | Novel methodology for first wall fusion components |
| Start Year | 2024 |
| Description | Rio Tinto |
| Organisation | Rio Tinto Alcan |
| Country | Canada |
| Sector | Private |
| PI Contribution | Characterization of samples both in0situ and ex-situ |
| Collaborator Contribution | Raw materials |
| Impact | Knowledge on increasing recirculation of materials |
| Start Year | 2023 |
