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[HTML][HTML] Machine learning for polymer composites process simulation–a review
Over the last 20 years Machine Learning (ML) has been applied to a wide variety of
applications in the fields of engineering and computer science. In the field of material …
applications in the fields of engineering and computer science. In the field of material …
Fiber reinforced composite manufacturing with the aid of artificial intelligence–a state-of-the-art review
Manufacturing of fiber reinforced polymer matrix composite materials is being done with
various methods in recent days. But controlling the accuracy of manufacturing and begetting …
various methods in recent days. But controlling the accuracy of manufacturing and begetting …
Comparison of k-nearest neighbor & artificial neural network prediction in the mechanical properties of aluminum alloys
M Arunadevi, M Rani, R Sibinraj, MK Chandru… - Materials Today …, 2023 - Elsevier
Discovery of new materials is increased after the introduction of high accuracy machine
learning techniques in the field of material science. Traditional way of discovering new …
learning techniques in the field of material science. Traditional way of discovering new …
Autonomous navigation of robots: optimization with DQN
Featured Application The application of “Autonomous Navigation of Robots: Optimization
with DQN” involves using reinforcement learning techniques to optimize the navigation of …
with DQN” involves using reinforcement learning techniques to optimize the navigation of …
[HTML][HTML] A two-step machine learning approach for dynamic model selection: a case study on a micro milling process
Generally, dynamic model selection is implemented using algorithms that need a feedback
from the system's output; but, in many real-world applications this feedback is not available …
from the system's output; but, in many real-world applications this feedback is not available …
Multi-scale neighborhood query graph convolutional network for multi-defect location in CFRP laminates
B Yang, W Xu, F Bi, Y Zhang, L Kang, L Yi - Computers in Industry, 2023 - Elsevier
This paper presents a novel deep learning architecture named multi-scale neighborhood
query graph convolutional network (MNQGN). In MNQGN, the spatial relationship between …
query graph convolutional network (MNQGN). In MNQGN, the spatial relationship between …
A perspective on biodegradable polymer biocomposites-from processing to degradation
Given the greater global awareness of environmental impacts of plastics and the need to
develop alternative materials from renewable natural resources, there has been an …
develop alternative materials from renewable natural resources, there has been an …
[HTML][HTML] Harvesting tacit knowledge for composites workforce development
J Summerscales - Composites Part A: Applied Science and …, 2024 - Elsevier
Explicit knowledge can often be shared through textbooks, technical papers, instruction
manuals, guides, and videos. It is normally objective, logical and technical. However, tacit …
manuals, guides, and videos. It is normally objective, logical and technical. However, tacit …
A review of machine learning for progressive damage modelling of fiber-reinforced composites
The accurate prediction of failure of load-bearing fiber-reinforced structures remains a
challenge due to the complex interacting failure modes at multiple length scales. In recent …
challenge due to the complex interacting failure modes at multiple length scales. In recent …
Smart manufacturing applications for inspection and quality assurance processes
M Galindo-Salcedo, A Pertúz-Moreno… - Procedia Computer …, 2022 - Elsevier
Smart manufacturing had a high impact in recent years within the inspection and quality
assurance processes, providing innovative technologies in machine learning …
assurance processes, providing innovative technologies in machine learning …