Enhancing Olfactory Perception Through Large Language Models: Integrating Sensory Data for Advanced Odor Recognition
Ravirajan K, Arvind Sundararajan

TL;DR
This paper presents a bioinspired artificial olfactory system that integrates advanced sensor arrays, neural networks, and mathematical frameworks to improve real-time odor detection and classification.
Contribution
It introduces a novel combination of sensory, computational, and mathematical techniques inspired by biological olfaction for enhanced odor recognition.
Findings
Improved accuracy in odor classification.
Real-time adaptive odor detection capabilities.
Enhanced robustness against sensor drift.
Abstract
The integration of biological principles into artificial olfactory systems has led to significant advancements in odor detection and classification. Inspired by the intricate mechanisms of natural olfaction, researchers are developing sophisticated systems that mimic the functionality of biological olfactory pathways. These systems utilize high-density chemoresistive sensor arrays (HCSA) combined with advanced computational techniques, such as FPGA-accelerated glomerular convergence circuits (FGCC) and hierarchical graph neural networks (HGNN). This bioinspired approach enables real-time adaptive responses to volatile organic compounds (VOCs), enhancing the accuracy and efficiency of odor identification. At the core of these innovations is the multiparametric sigmoidal sensor activation (MPSA), which quantifies VOCs by leveraging the diverse responses of sensor arrays. The…
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Taxonomy
TopicsAdvanced Chemical Sensor Technologies · Olfactory and Sensory Function Studies · Insect Pheromone Research and Control
