Intelligent industrial cleaning: A multi-sensor approach utilising machine learning-based regression

Author

Escrig, Josep

Simeone, Alessandro

Watson, Nicholas

Wooley, E.

Publication date

2020-06-29



Abstract

Effectively cleaning equipment is essential for the safe production of food but requires a significant amount of time and resources such as water, energy, and chemicals. To optimize the cleaning of food production equipment, there is the need for innovative technologies to monitor the removal of fouling from equipment surfaces. In this work, optical and ultrasonic sensors are used to monitor the fouling removal of food materials with different physicochemical properties from a benchtop rig. Tailored signal and image processing procedures are developed to monitor the cleaning process, and a neural network regression model is developed to predict the amount of fouling remaining on the surface. The results show that the three dissimilar food fouling materials investigated were removed from the test section via different cleaning mechanisms, and the neural network models were able to predict the area and volume of fouling present during cleaning with accuracies as high as 98% and 97%, respectively. This work demonstrates that sensors and machine learning methods can be effectively combined to monitor cleaning processes.

Document Type

Article
Published version

Language

English

CDU Subject

621.3 Electrical engineering

Subject

Distributed Artificial Intelligence; Industry; Artificial Intelligence & Big Data

Pages

20 p.

Publisher

MDPI

Collection

Sensors 2020; 20(13), 3642

Version of

Sensors

Documents

sensors-20-03642-v2.pdf

4.732Mb

 

Rights

L'accés als continguts d'aquest document queda condicionat a l'acceptació de les condicions d'ús establertes per la següent llicència Creative Commons:http://creativecommons.org/licenses/by-nc-nd/4.0/

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