首页|Study Findings from University of Sheffield Broaden Understanding of Machine Learning (Estimating Notch Fatigue Limits Via a Machine Learning-based Approach Structured According To the Classic Kf Formulas)

Study Findings from University of Sheffield Broaden Understanding of Machine Learning (Estimating Notch Fatigue Limits Via a Machine Learning-based Approach Structured According To the Classic Kf Formulas)

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Investigators discuss new findings in Machine Learning. According to news reporting originating from Sheffield, United Kingdom, by NewsRx editors, the research stated, “This paper deals with the problem of estimating notch fatigue limits via machine learning. The proposed strategy is based on those constitutive elements that were used by the pioneers like Peterson, Neuber, Heywood, and Topper to devise their well-known formulas.” Our news editors obtained a quote from the research from the University of Sheffield, “The machine learning algorithms being considered were trained and tested using a database containing 238 notch fatigue limits taken from the literature. The outcomes from this study confirm that machine learning is a promising approach for designing notched components against fatigue. In particular, the accuracy in the estimates can easily be increased by simply increasing size and quality of the calibration dataset. Further, since machine learning regression models are highly flexible and can handle highdimensional datasets with many input features, they can capture complex relationships between input features and the target variable. This means that the accuracy in estimating notch fatigue limit can be increased by including in the analyses further input features like, for instance, grain size or hardness.”

SheffieldUnited KingdomEuropeCyborgsEmerging TechnologiesMachine LearningUniversity of Sheffield.

2024

Robotics & Machine Learning Daily News

Robotics & Machine Learning Daily News

ISSN:
年,卷(期):2024.(Feb.6)
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