AI Algorithm for Mode Classification of PCF SPR Sensor Design
Prasunika Khare, Mayank Goswami

TL;DR
This paper presents an AI-based algorithm that automates mode classification in PCF SPR sensor design, significantly reducing design time and improving accuracy using machine learning models, especially SVM.
Contribution
The study introduces a novel AI algorithm that automatically selects the optimal mode in PCF SPR sensor design, enhancing efficiency and accuracy over manual methods.
Findings
Support Vector Machine (SVM) achieved 96% accuracy.
The algorithm reduced design time by approximately 75 minutes.
The proposed sensor has a sensitivity of 5500 nm/RIU.
Abstract
Photonic Crystal Fiber design based on surface plasmon resonance phenomenon (PCF SPR) is optimized before it is fabricated for a particular application. An artificial intelligence algorithm is evaluated here to increase the ease of the simulation process for common users. COMSOL MultiPhysics is used. The algorithm suggests best among eight standard machine learning and one deep learning model to automatically select the desired mode, chosen visually by the experts otherwise. Total seven performance indices: namely Precision, Recall, Accuracy, F1-Score, Specificity, Matthew correlation coefficient, are utilized to make the optimal decision. Robustness towards variations in sensor geometry design is also considered as an optimal parameter. Several PCF-SPR based Photonic sensor designs are tested, and a large range optimal (based on phase matching) design is proposed. For this design…
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Taxonomy
TopicsAdvanced Fiber Optic Sensors · Color Science and Applications
