2023
DOI: 10.1038/s41524-023-00979-9
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A rapid and effective method for alloy materials design via sample data transfer machine learning

Abstract: One of the challenges in material design is to rapidly develop new materials or improve the performance of materials by utilizing the data and knowledge of existing materials. Here, a rapid and effective method of alloy material design via data transfer learning is proposed to efficiently design new alloys using existing data. A new type of aluminum alloy (E2 alloy) with ultra strength and high toughness previously developed by the authors is used as an example. An optimal three-stage solution-aging treatment … Show more

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Cited by 14 publications
(9 citation statements)
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“…Although conductive materials can be optimized by mixtures, there are major difficulties in obtaining the optimal triboelectric polarity and surface charge density due to the uncertainty of the key factors in compositions. [34,35] In addition, several technical challenges still need to be addressed to expand the implementation of TENGs. These challenges include ensuring their biocompatibility, enabling their operation in extreme conditions (such as high temperature, humidity, moisture, and varying excitation amplitudes and frequencies), and addressing the lack of sufficient experimental data in these domains.…”
Section: Technical Challenges In Design and Optimization Of Tengsmentioning
confidence: 99%
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“…Although conductive materials can be optimized by mixtures, there are major difficulties in obtaining the optimal triboelectric polarity and surface charge density due to the uncertainty of the key factors in compositions. [34,35] In addition, several technical challenges still need to be addressed to expand the implementation of TENGs. These challenges include ensuring their biocompatibility, enabling their operation in extreme conditions (such as high temperature, humidity, moisture, and varying excitation amplitudes and frequencies), and addressing the lack of sufficient experimental data in these domains.…”
Section: Technical Challenges In Design and Optimization Of Tengsmentioning
confidence: 99%
“…However, intuitive guideline is still insufficient to achieve desirable electrical response as the complex nature of TENGs results in the difficulty of characterizing all the factors and accurately obtaining the relationships only using traditionally statistical tools. Addressing these technical challenges, AI-based performance prediction and optimization have recently been reported to tailoring the micro-compositions of functional materials to obtain desirably electrical response, [34] and unveil the relationships between the inputs and outputs without quantitatively modeling. [35,36] Table 2 summarizes the existing AI models developed for the performance prediction and output data analysis of four modes of TENGs.…”
Section: Technical Challenges In Design and Optimization Of Tengsmentioning
confidence: 99%
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