Português

Artificial intelligence accelerates the process design of 3D printing of metal alloys

505
2024-02-27 17:00:47
Ver tradução

In order to successfully 3D print metal parts to meet the strict specifications required by many industries, it is necessary to optimize process parameters, including printing speed, laser power, and layer thickness of deposited materials.

However, in order to develop additive manufacturing process diagrams that ensure these optimal results, researchers have to rely on traditional methods, such as using off-site material characterization to test laboratory experiments on parts printed with various parameters. Testing so many parameter combinations to develop the best process may be time-consuming and expensive, especially considering the various metals and alloys available for additive manufacturing.

David Guirguis, Jack Beuth, and Conrad Tucker from the Department of Mechanical Engineering at Carnegie Mellon University have developed a system that utilizes ultra high speed in situ imaging and visual transformers. This system not only optimizes these process parameters, but also has scalability, making it applicable to various metal alloys.

Their research findings are published in the journal Nature Communications.
Visual converter is a form of machine learning that applies neural network architectures originally developed for natural language processing tasks to computer vision tasks, such as image classification. The video visual converter goes further by using video sequences instead of still images to capture spatial and temporal relationships, enabling the model to learn complex patterns and dependencies in video data.

The self attention mechanism allows natural language processing models to balance the importance of different words in a sequence, and allows models created by Guirguis to balance the importance of different parts of the input sequence to predict the occurrence of defects.

"We need to automate this process, but it cannot be achieved solely through computer programming," explained Guirguis, a postdoctoral researcher in mechanical engineering. To capture these patterns, we need to apply machine learning.

"We are pleased to have developed an artificial intelligence method that utilizes the temporal characteristics of additive manufacturing imaging data to detect different types of defects. This demonstrates the groundbreaking generalizability of AI methods using different AM metals and reveals that the same trained AI model can be used without the need for expensive retraining with additional data," commented Professor Tucker of Mechanical Engineering.

Guirguis said he is fortunate to have received such powerful machine learning training at Carnegie Mellon University because mechanical engineers know how to apply experimental and computational solutions to the problems they solve, which is more important than ever before.

In this case, Guirguis attempts to overcome the main limitations of in-situ imaging in laser powder bed melt additive manufacturing processes. This technology uses high-power laser as an energy source to melt and melt powder at specific locations to form certain shapes, then a new layer of powder is spread out by a recoating machine, and the process is repeated until a 3D object is formed.

However, during the printing process, the molten metal seen by the camera is saturated, so its physical characteristics cannot be seen, which can identify defects that may reduce mechanical performance and fatigue life of printed parts.

Source: Laser Net

Recomendações relacionadas
  • NASA Completely Transforms Laser Communication and Space Weather Research

    NASA is a pioneer in space research, once again attracting the attention of the world with fascinating insights. In a recent press release, NASA announced plans to test revolutionary laser communication systems and study the interaction between Earth and space weather.A Great Leap in Space Communication: ILLUMA-TThe SpaceX 29 mission, scheduled for November 5th, will conduct research and technical...

    2023-10-23
    Ver tradução
  • Application and Effect of Laser Cleaning

    Mold cleaning: Mold plays a very important role in industrial production. Currently, there are over a thousand mold related enterprises in China, driving the related output value to nearly 10 billion yuan. Among them, mold cleaning is an essential step in mold production. Laser can achieve contactless cleaning of molds, which is very safe for the surface of the mold, ensuring its accuracy, and can...

    2023-10-14
    Ver tradução
  • Blue Tile Lab, a company specializing in semiconductor backend process visual inspection and laser light sources, has received additional financing

    Recently, South Korean listed company APS has invested in Blue Tile Lab, a company engaged in semiconductor backend process visual inspection and laser light sources. Meanwhile, D&T, a subsidiary of APS specializing in the production of laser cutting equipment for secondary batteries, has also made its first investment in Blue Tile Lab.According to relevant information, APS made its first inve...

    2024-12-26
    Ver tradução
  • The market accounts for up to 70%! Meere is continuously expanding its market layout

    According to Korean media reports, Meere, a semiconductor and display equipment manufacturer from South Korea, is continuously expanding its presence in the high stack semiconductor market, including its HBM business.In fact, Meere itself is the world's top manufacturer of display edge grinding mechanisms, with a market share of up to 70%. It is based on its accumulation of display microfabricatio...

    2024-06-25
    Ver tradução
  • Scientists develop photo activated glass for clean energy production

    Japanese and Swiss scientists have collaborated to develop glass that can generate electricity under light, which may pave the way for sustainable energy production. Researchers from Tokyo Institute of Technology and the Swiss Federal Institute of Technology in Lausanne used femtosecond lasers to etch circuits on glass surfaces, resulting in the unexpected generation of semiconductor crystals.The ...

    2024-03-11
    Ver tradução