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Main Authors: Azizi, Shayan, Asadi, Ehsan, Howard, Shaun, Muir, Benjamin W., O'Shea, Riley, Bab-Hadiashar, Alireza
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2402.11763
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author Azizi, Shayan
Asadi, Ehsan
Howard, Shaun
Muir, Benjamin W.
O'Shea, Riley
Bab-Hadiashar, Alireza
author_facet Azizi, Shayan
Asadi, Ehsan
Howard, Shaun
Muir, Benjamin W.
O'Shea, Riley
Bab-Hadiashar, Alireza
contents This paper addresses the gap between the capabilities and utilisation of robotics and automation in laboratory settings and builds upon the concept of Self Driving Labs (SDL). %to significantly impact laboratory operations. We introduce an innovative approach to the temporal characterisation of materials. The article discusses the challenges posed by manual methods involving established laboratory equipment and presents an automated hyperspectral characterisation station. This station integrates robot-aided hyperspectral imaging, complex material characterisation modeling, and automated data analysis, offering a non-destructive and comprehensive approach. This work explains how the proposed assembly can automatically measure the half-life of biodegradable polymers with higher throughput and accuracy than manual methods. The investigation explores the effect of pH, number of average molecular weight (Mn), end groups, and blends on the degradation rate of polylactic acid (PLA). The contributions of the paper lie in introducing an adaptable classification station for novel characterisation methods and presenting an innovative methodology for polymer degradation rate measurement. The proposed system has the potential to accelerate the development of high-throughput screening and characterisation methods in material and chemistry laboratories.
format Preprint
id arxiv_https___arxiv_org_abs_2402_11763
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Autonomous Hyperspectral Characterisation Station: Robotically Assisted Characterisation of Polymer Degradation
Azizi, Shayan
Asadi, Ehsan
Howard, Shaun
Muir, Benjamin W.
O'Shea, Riley
Bab-Hadiashar, Alireza
Systems and Control
This paper addresses the gap between the capabilities and utilisation of robotics and automation in laboratory settings and builds upon the concept of Self Driving Labs (SDL). %to significantly impact laboratory operations. We introduce an innovative approach to the temporal characterisation of materials. The article discusses the challenges posed by manual methods involving established laboratory equipment and presents an automated hyperspectral characterisation station. This station integrates robot-aided hyperspectral imaging, complex material characterisation modeling, and automated data analysis, offering a non-destructive and comprehensive approach. This work explains how the proposed assembly can automatically measure the half-life of biodegradable polymers with higher throughput and accuracy than manual methods. The investigation explores the effect of pH, number of average molecular weight (Mn), end groups, and blends on the degradation rate of polylactic acid (PLA). The contributions of the paper lie in introducing an adaptable classification station for novel characterisation methods and presenting an innovative methodology for polymer degradation rate measurement. The proposed system has the potential to accelerate the development of high-throughput screening and characterisation methods in material and chemistry laboratories.
title Autonomous Hyperspectral Characterisation Station: Robotically Assisted Characterisation of Polymer Degradation
topic Systems and Control
url https://arxiv.org/abs/2402.11763