Skip to main content

Research Repository

Advanced Search

Monitoring Mixing Processes Using Ultrasonic Sensors and Machine Learning

Bowler, Alexander L.; Bakalis, Serafim; Watson, Nicholas J.

Monitoring Mixing Processes Using Ultrasonic Sensors and Machine Learning Thumbnail


Authors

Alexander L. Bowler

Serafim Bakalis

Nicholas J. Watson



Abstract

Mixing is one of the most common processes across food, chemical, and pharmaceutical manufacturing. Real-time, in-line sensors are required for monitoring, and subsequently optimising, essential processes such as mixing. Ultrasonic sensors are low-cost, real-time, in-line, and applicable to characterise opaque systems. In this study, a non-invasive, reflection-mode ultrasonic measurement technique was used to monitor two model mixing systems. The two systems studied were honey-water blending and flour-water batter mixing. Classification machine learning models were developed to predict if materials were mixed or not mixed. Regression machine learning models were developed to predict the time remaining until mixing completion. Artificial neural networks, support vector machines, long short-term memory neural networks, and convolutional neural networks were tested, along with different methods for engineering features from ultrasonic waveforms in both the time and frequency domain. Comparisons between using a single sensor and performing multisensor data fusion between two sensors were made. Classification accuracies of up to 96.3% for honey-water blending and 92.5% for flour-water batter mixing were achieved, along with R2 values for the regression models of up to 0.977 for honey-water blending and 0.968 for flour-water batter mixing. Each prediction task produced optimal performance with different algorithms and feature engineering methods, vindicating the extensive comparison between different machine learning approaches.

Citation

Bowler, A. L., Bakalis, S., & Watson, N. J. (2020). Monitoring Mixing Processes Using Ultrasonic Sensors and Machine Learning. Sensors, 20(7), Article 1813. https://doi.org/10.3390/s20071813

Journal Article Type Article
Acceptance Date Mar 20, 2020
Online Publication Date Mar 25, 2020
Publication Date Mar 25, 2020
Deposit Date Mar 27, 2020
Publicly Available Date Mar 27, 2020
Journal Sensors
Electronic ISSN 1424-8220
Publisher MDPI
Peer Reviewed Peer Reviewed
Volume 20
Issue 7
Article Number 1813
DOI https://doi.org/10.3390/s20071813
Public URL https://nottingham-repository.worktribe.com/output/4210467
Publisher URL https://www.mdpi.com/1424-8220/20/7/1813

Files





Downloadable Citations