Zeolite-Decorated Triboelectric Sensors for Heavy Metal Contaminant Detection

  • Rayyan Ali Shaukat
  • , Anjae Cha
  • , Ahmed Mahfuz Tamim
  • , Hyunseung Kim
  • , Geon Tae Hwang
  • , Han Eol Lee
  • , Zong Hong Lin
  • , Kyoungsoo Kim*
  • , Chang Kyu Jeong*
  • *Corresponding author for this work

Research output: Contribution to journalJournal articlepeer-review

Abstract

Environmental contamination by heavy metals has become a major health threat, exacerbated by rapid industrialization, thereby creating an urgent demand for highly efficient and sensitive detection devices. In this study, we introduce a highly sensitive triboelectric nanosensor (TENS) based on β-zeolite for multianalytic detection of heavy metal ions. β-Zeolite was spin-coated onto an indium tin oxide (ITO)-coated glass substrate, serving as the tribo-positive layer, while PDMS acted as the tribo-negative layer for self-powered triboelectric sensing signals. The fabricated triboelectric sensor was characterized by an open-circuit voltage of 18.3 V, short-circuit current of 306 nA, and a maximum power density of 602 nW cm-2 at a resistance of 6 MΩ. Notably, the TENS demonstrated excellent sensitivity in detecting Cd2+ (0.3302 ppm-1) and Hg2+ (0.216 ppm-1) within a detection range of 0.01 to 50 ppm, as well as high selectivity for Cd2+, Hg2+, and Pb2+ ions apart from alkali ions. This straightforward and cost-effective approach to fabricating highly sensitive and selective β-zeolite-based TENSs presents a promising pathway for advancing heavy metal-contaminant detection technologies.

Original languageEnglish
Pages (from-to)3439-3447
Number of pages9
JournalACS Applied Electronic Materials
Volume7
Issue number8
DOIs
StatePublished - 2025.04.22

Keywords

  • energy harvesting
  • heavy metals ions
  • nanogenerators
  • self-powered sensors
  • triboelectric
  • β-zeolites

Quacquarelli Symonds(QS) Subject Topics

  • Materials Science
  • Chemistry

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