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Intelligent sensors for sustainable food and drink manufacturing

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journal contribution
posted on 2021-11-09, 13:50 authored by Nicholas Watson, Alexander Bowler, Ahmed Rady, Oliver Fisher, Alessandro Simeone, Josep Escrig, Elliot WoolleyElliot Woolley, Akinbode Adedeji
Food and drink is the largest manufacturing sector worldwide and has significant environmental impact in terms of resource use, emissions, and waste. However, food and drink manufacturers are restricted in addressing these issues due to the tight profit margins they operate within. The advances of two industrial digital technologies, sensors and machine learning, present manufacturers with affordable methods to collect and analyse manufacturing data and enable enhanced, evidence-based decision making. These technologies will enable manufacturers to reduce their environmental impact by making processes more flexible and efficient in terms of how they manage their resources. In this article, a methodology is proposed that combines online sensors and machine learning to provide a unified framework for the development of intelligent sensors that work to improve food and drink manufacturers' resource efficiency problems. The methodology is then applied to four food and drink manufacturing case studies to demonstrate its capabilities for a diverse range of applications within the sector. The case studies included the monitoring of mixing, cleaning and fermentation processes in addition to predicting key quality parameter of crops. For all case studies, the methodology was successfully applied and predictive models with accuracies ranging from 95 to 100% were achieved. The case studies also highlight challenges and considerations which still remain when applying the methodology, including efficient data acquisition and labelling, feature engineering, and model selection. This paper concludes by discussing the future work necessary around the topics of new online sensors, infrastructure, data acquisition and trust to enable the widespread adoption of intelligent sensors within the food and drink sector.

Funding

Innovate UK projects 103936 and 132205

Network Plus: Industrial Systems in the Digital Age

Engineering and Physical Sciences Research Council

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Connected Everything II: Accelerating Digital Manufacturing Research Collaboration and Innovation

Engineering and Physical Sciences Research Council

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DTP 2018-19 University of Nottingham

Engineering and Physical Sciences Research Council

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History

School

  • Mechanical, Electrical and Manufacturing Engineering

Published in

Frontiers in Sustainable Food Systems

Volume

5

Publisher

Frontiers Media S.A

Version

  • VoR (Version of Record)

Publisher statement

This is an Open Access Article. It is published by Frontiers Media under the Creative Commons Attribution 4.0 Unported Licence (CC BY). Full details of this licence are available at: http://creativecommons.org/licenses/by/4.0/

Acceptance date

2021-10-01

Publication date

2021-11-05

Copyright date

2021

eISSN

2571-581X

Language

  • en

Depositor

Dr Elliot Woolley. Deposit date: 8 November 2021

Article number

642786

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