Machine Learning Approaches in Agile Manufacturing with Recycled
Materials for Sustainability
- URL: http://arxiv.org/abs/2303.08291v1
- Date: Wed, 15 Mar 2023 00:39:31 GMT
- Title: Machine Learning Approaches in Agile Manufacturing with Recycled
Materials for Sustainability
- Authors: Aparna S. Varde, Jianyu Liang
- Abstract summary: This research addresses environmental sustainability in materials science via decision support in agile manufacturing using recycled and reclaimed materials.
We propose to use data-driven methods in AI by applying machine learning models for predictive analysis to guide decision support in manufacturing.
- Score: 2.132096006921048
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: It is important to develop sustainable processes in materials science and
manufacturing that are environmentally friendly. AI can play a significant role
in decision support here as evident from our earlier research leading to tools
developed using our proposed machine learning based approaches. Such tools
served the purpose of computational estimation and expert systems. This
research addresses environmental sustainability in materials science via
decision support in agile manufacturing using recycled and reclaimed materials.
It is a safe and responsible way to turn a specific waste stream to value-added
products. We propose to use data-driven methods in AI by applying machine
learning models for predictive analysis to guide decision support in
manufacturing. This includes harnessing artificial neural networks to study
parameters affecting heat treatment of materials and impacts on their
properties; deep learning via advances such as convolutional neural networks to
explore grain size detection; and other classifiers such as Random Forests to
analyze phrase fraction detection. Results with all these methods seem
promising to embark on further work, e.g. ANN yields accuracy around 90\% for
predicting micro-structure development as per quench tempering, a heat
treatment process. Future work entails several challenges: investigating
various computer vision models (VGG, ResNet etc.) to find optimal accuracy,
efficiency and robustness adequate for sustainable processes; creating
domain-specific tools using machine learning for decision support in agile
manufacturing; and assessing impacts on sustainability with metrics
incorporating the appropriate use of recycled materials as well as the
effectiveness of developed products. Our work makes impacts on green technology
for smart manufacturing, and is motivated by related work in the highly
interesting realm of AI for materials science.
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