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Data-Driven Virtual Sensing for Electrochemical Sensors

Lucia Sangiorgi, Veronica Sberveglieri, Claudio Carnevale, S. De Nardi, Estefanía Núñez-Carmona, Sara Raccagni

2024Sensors10 citationsDOIOpen Access PDF

Abstract

In recent years, the application of machine learning for virtual sensing has revolutionized the monitoring and management of information. In particular, electrochemical sensors generate large amounts of data, allowing the application of complex machine learning/AI models able to (1) reproduce the measured data and (2) predict and manage faults in the measuring sensor. In this work, data-driven models based on an autoregressive model and an artificial neural network have been identified and used to (i) evaluate sensor redundancy and (ii) predict and manage faults in the context of electrochemical sensors for the measurement of ethanol. The approach shows encouraging results in terms of both performance and sensitivity analyses, allowing for the reconstruction of the values measured by two sensors in a series of six sensors with different dopant levels and to reproduce their values after a fault.

Topics & Concepts

Redundancy (engineering)Artificial neural networkComputer scienceContext (archaeology)Sensitivity (control systems)Autoregressive modelReal-time computingData miningMachine learningArtificial intelligenceEngineeringElectronic engineeringPaleontologyOperating systemEconomicsEconometricsBiologyAdvanced Chemical Sensor TechnologiesAnalytical Chemistry and SensorsFault Detection and Control Systems
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