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RE: LeoThread 2024-08-24 02:36

in LeoFinance4 months ago

Self-improving AI can revolutionize 3D printing of biomedical devices, organs

The researchers first trained the computer program to print out a surgical rehearsal model of a prostate.

Researchers have found out that an artificial intelligence algorithm can help them use 3D printing more effectively.

The study carried out by Washington State University researchers proposes that the new AI algorithm can help them make everything from artificial organs to bendable electronics and wearable with ease.

To put the theory to test, researchers used the algorithm to identify and print various human organ models – such as kidneys and prostate.

#technology #3dprinting #ai

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Introducing AI to 3D printing

3D printing has become more popular in the recent years and it is an easy option over traditional time-consuming manufacturing process.

In today’s world sensors, organ models, bone implants, batteries, wearable devices, and more have been made using the process. 3D printing today is being looked at as a one-stop solution for the many complexities associated with fields such as aerospace, medicine, surgery and more.

However, the process of selecting appropriate parameters for 3D-printing remains a labor-intensive and inefficient process. The methods currently being used for methods for optimizing 3D-printing parameters have limitations.

They often concentrate on optimizing the printing’s overall performance or focus on one specific aspect of printing quality.

This is where the role of AI arises; with its help users can expedite the process of refining 3D-printing parameter settings while reducing time and cost.

“You can optimize the results, saving time, cost and labor,” said Kaiyan Qiu, co-corresponding author on the paper and Berry Assistant Professor in the WSU School of Mechanical and Materials Engineering.

Washington State University study

In this study, the researchers designed a principled methodology which aimed at identifying optimal direct ink writing (DIW) 3D printing input parameters for manufacturing different presurgical organs.

Bayesian optimization (BO) is a powerful machine learning technique for optimizing complex, expensive, black-box objective functions.

The process consists of four steps, the first of which is input generation through a BO algorithm which sets the input parameters for 3D printing. This is followed by the actual 3D printing of the organ.