Self-repairing Classification Algorithms for Chemical Sensor Array
Gabriele Magna, Corrado Di Natale, Eugenio Martinelli

TL;DR
This paper introduces a Self-Repairing algorithm for classification models in chemical sensor arrays that repairs sensor failures without recalibration, improving long-term robustness and performance.
Contribution
The paper presents a novel Self-Repairing algorithm that repairs sensor failures in classification models without recalibration or additional reference data.
Findings
Self-Repairing improves model tolerance to sensor failures.
The algorithm performs well with k-NN, PLS-DA, and LDA classifiers.
Experimental results show superior performance over standard classifiers.
Abstract
Chemical sensors are usually affected by drift, have low fabrication reproducibility and can experience failure or breaking events over the long term. Albeit improvements in fabrication processes are often slow and inadequate for completely surmounting these issues, data analysis can be used as of now to improve the available device performances. The present paper illustrates an algorithm, called Self-Repairing (SR), developed for repairing classification models after the occurrences of failures in sensor arrays. The procedure considers replacing broken sensors with replicas and eventually Self-Repairing algorithm trains these blank elements. Unlike the habitual alternatives reported in literature, SR performs this operation without the need of a whole new recalibration, references gas measurements or transfer dataset and, at the same time, without interrupting the on-going procedure of…
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