MERIAM ZRIBI

Dottoressa di ricerca

ciclo: XXXVII


supervisore: Francesca Pitolli

Titolo della tesi: Monitoring the Production of Plastic Consumables for Laboratories: an Artificial Intelligence Approach to Balance Efficiency and Sustainability

This thesis addresses the use of Artificial Intelligence algorithms to improve the accuracy and efficiency of a production process. The application is based on a real-world scenario, driven by the need of a company in the consumable plastics manufacturing sector. The company aims to automate one of their quality control system, which is currently performed by human operators. To automate the control process, an electronic device equipped with AI algorithms has been developed. This device will be integrated into various stages of the production line in order to make the process more efficient and sustainable. The focus of the investigation is on plastic laboratory vials containing a transparent anticoagulant substance. The goal of the automated control process is to verify the actual presence of the substance inside the vials. These vials can vary in shape, and the anticoagulant may be present either as a droplet or in a nebulized form. In light of this, two different approaches to control the manufacturing process will be investigated: detecting the presence or the absence of the anticoagulant regardless of the size of the test tube (referred as 2-output-labels case); and determining whether the anticoagulant is present or absent while also identifying the size of the test tube (either large or small, termed as 4-output-labels case). To address these challenges, we opted for Computer Vision (CV) and Artificial Intelligence (AI) techniques. Several studies have demonstrated the positive impact of CV and AI-based monitoring systems on Industrial sector. Computer Vision systems offer a faster, more objective solution and can continuously inspect thousands of vials per minute. When fine-tuned, these systems provide more accurate results than human operators. By implementing CV systems, manufacturers can reduce errors, enhance production efficiency, and ensure regulatory compliance, ultimately lowering costs and increasing profitability. Moreover, these techniques enable real-time monitoring and proactive detection of anomalies or defects, allowing for timely interventions and minimizing costly errors or delays. As far as we know, the problem addressed in this thesis has not been explored in the literature, and two different strategies will be presented to investigate it. The first involves creating a Convolutional Neural Network (CNN) from scratch. The second is the Transfer Learning technique, which uses a pre-trained network and re-trains only the last layer with the data from the application of interest. The pre-trained models considered include both CNNs and the current state-of-the-art, Transformers (specifically Vision Transformers). The results obtained are extremely promising. However, since we needed to optimize the monitoring process, we also conducted an analysis of the resources consumed by the models. A comparison of the various AI frameworks will be presented, followed by the introduction of the optimal solution that balances accuracy and sustainability in the monitoring process. Finally, as attention to AI model explainability continues to grow, and given its importance when discussing the certification of the quality of the monitoring process, an explainability analysis will be presented to illustrate the reasoning behind the models’ decisions (both in the simple two-output case and in the more complex scenario).

Produzione scientifica

11573/1724774 - 2024 - Automated monitoring in In vitro diagnostics: enhancing precision with machine learning and computer vision
Tufo, Giulia; Zribi, Meriam - 04f Poster
congresso: Sharescience: Multidisciplinarietà e Trasferimento Tecnologico (Rome, Italy)
libro: Sharescience - ()

11573/1724742 - 2024 - An explainable convolutional neural network for the detection of drug abuse
Tufo, Giulia; Zribi, Meriam; Pagliuca, Paolo; Pitolli, Francesca - 04b Atto di convegno in volume
congresso: First Workshop on Explainable Artificial Intelligence for the medical domain - EXPLIMED (Santiago de Compostela, Spain)
libro: An Explainable Convolutional Neural Network for the Detection of Drug Abuse - ()

11573/1724820 - 2024 - Enhancing production efficiency and sustainability with ai-based monitoring in plastic consumables manufacturing
Zribi, Meriam - 04f Poster
congresso: 2nd Workshop on MAThematical CHallenges to and from new technologiES (Rome, Italy)
libro: MATCHES 2024 - ()

11573/1716688 - 2024 - A computer vision-based quality assessment technique for the automatic control of consumables for analytical laboratories
Zribi, Meriam; Pagliuca, Paolo; Pitolli, Francesca - 01a Articolo in rivista
rivista: EXPERT SYSTEMS WITH APPLICATIONS (Oxford, United Kingdom: Elsevier Science Limited) pp. - - issn: 0957-4174 - wos: WOS:001286722800001 (0) - scopus: 2-s2.0-85200204616 (1)

11573/1724761 - 2024 - Enhancing industrial quality control efficiency: an innovative deep learning approach for sustainable process monitoring
Zribi, Meriam; Pagliuca, Paolo; Pitolli, Francesca - 04b Atto di convegno in volume
congresso: 9th European Congress on Computational Methods in Applied Sciences and Engineering (Lisboa, Portugal)
libro: Enhancing industrial quality control efficiency: an innovative deep learning approach for sustainable process monitoring - ()

11573/1693252 - 2023 - Advanced computer Vision techniques for drug abuse detection
Tufo, Giulia; Zribi, Meriam; Pitolli, Francesca; Pagliuca, Paolo - 04d Abstract in atti di convegno
congresso: 21st IMACS World Congress (Rome, Italy)
libro: Advanced computer vision techniques for drug abuse detection - ()

11573/1724786 - 2023 - Ai-based monitoring system for enhacing industrial processes: a focus on vials inspection
Zribi, Meriam - 04f Poster
congresso: International Computer Vision Summer School 2023 (Catania, Italy)
libro: Icvss 2023 - ()

11573/1693047 - 2023 - Convolutional neural networks for the automatic control of consumables for analytical laboratories
Zribi, Meriam; Pagliuca, Paolo; Pitolli, Francesca - 04d Abstract in atti di convegno
congresso: BUILD-IT Workshop 2023 – BUILding a DIgital Twin: requirements, methods, and applications (Rome, Italy)
libro: Convolutional neural networks for the automatic control of consumables for analytical laboratories - ()

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