Seung Bae Jeon, Myeong-Hun Jeong, Tae-young Lee, Dooyong Cho
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期刊介绍:
Sensors and Materials is designed to provide a forum for people working in the multidisciplinary fields of sensing technology, and publishes contributions describing original work in the experimental and theoretical fields, aimed at understanding sensing technology, related materials, associated phenomena, and applied systems. Expository review papers and short notes are also acceptable.