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Taste Bud-Inspired Single-Drop Multitaste Sensing for Comprehensive Flavor Analysis with Deep Learning Algorithms

Title
Taste Bud-Inspired Single-Drop Multitaste Sensing for Comprehensive Flavor Analysis with Deep Learning Algorithms
Author(s)
Jung, Han HeeYea, JunwooLee, HyunjongJung, Han NaJekal, JanghwanLee, HyeokjunHa, JeongdaeOh, SaehyuckSong, SoojeongSon, JieunYu, Tae SangJung, SeunggyeomLee, ChanheeKwak, JeonghoChoi, Jihwan P.Jang, Kyung-In
Issued Date
2023-09
Citation
ACS Applied Materials & Interfaces, v.15, no.39, pp.46041 - 46053
Type
Article
Author Keywords
bioinspiredflexible electronicselectrochemical sensorE-tongueartificial Intelligence
Keywords
ELECTRONIC TONGUESENSORRECOGNITIONBIOSENSORARRAY
ISSN
1944-8244
Abstract
The electronic tongue (E-tongue) system has emerged as a significant innovation, aiming to replicate the complexity of human taste perception. In spite of the advancements in E-tongue technologies, two primary challenges remain to be addressed. First, evaluating the actual taste is complex due to interactions between taste and substances, such as synergistic and suppressive effects. Second, ensuring reliable outcomes in dynamic conditions, particularly when faced with high deviation error data, presents a significant challenge. The present study introduces a bioinspired artificial E-tongue system that mimics the gustatory system by integrating multiple arrays of taste sensors to emulate taste buds in the human tongue and incorporating a customized deep-learning algorithm for taste interpretation. The developed E-tongue system is capable of detecting four distinct tastes in a single drop of dietary compounds, such as saltiness, sourness, astringency, and sweetness, demonstrating notable reversibility and selectivity. The taste profiles of six different wines are obtained by the E-tongue system and demonstrated similarities in taste trends between the E-tongue system and user reviews from online, although some disparities still exist. To mitigate these disparities, a prototype-based classifier with soft voting is devised and implemented for the artificial E-tongue system. The artificial E-tongue system achieved a high classification accuracy of ∼95% in distinguishing among six different wines and ∼90% accuracy even in an environment where more than 1/3 of the data contained errors. Moreover, by harnessing the capabilities of deep learning technology, a recommendation system was demonstrated to enhance the user experience. © 2023 American Chemical Society.
URI
http://hdl.handle.net/20.500.11750/47607
DOI
10.1021/acsami.3c09684
Publisher
American Chemical Society
Related Researcher
  • 곽정호 Kwak, Jeongho
  • Research Interests 클라우드 컴퓨팅; 엣지컴퓨팅; 네트워크 자원관리; 모바일 시스템
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Appears in Collections:
Department of Robotics and Mechatronics Engineering Bio-integrated Electronics Lab 1. Journal Articles
Department of Electrical Engineering and Computer Science Intelligent Computing & Networking Laboratory 1. Journal Articles

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