2024
DOI: 10.1021/acsaenm.4c00117
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A Machine Learning Aided Yield Prediction Model for the Preparation of Cellulose Nanocrystals

Deepa Sreedev,
Subila Kurukkal Balakrishnan,
Nandakumar Kalarikkal

Abstract: Machine learning is one of the most innovative tools that has entered the materials science toolkit in recent years. This work employs a machine learning strategy to develop a yield prediction model for producing cellulose nanocrystals (CNCs). It analyses the critical factors affecting the yield from CNCs by optimizing reaction conditions and reducing experiments. First, a data set of CNCs is established, including cellulose sources and reaction conditions. The Weighted Average Ensemble (WAE) approach is appli… Show more

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“…Using AI can help substantially simplify chores and produce better results with less repetition and effort. Although little is known about the integration of AI with CNCs and their stimuli-responsive behavior, there are several ways to include AI for best outcomes like yield prediction and method optimization. , …”
Section: Anticounterfeit Approaches Using Stimuli-responsive Cncsmentioning
confidence: 99%
“…Using AI can help substantially simplify chores and produce better results with less repetition and effort. Although little is known about the integration of AI with CNCs and their stimuli-responsive behavior, there are several ways to include AI for best outcomes like yield prediction and method optimization. , …”
Section: Anticounterfeit Approaches Using Stimuli-responsive Cncsmentioning
confidence: 99%