PeerJ (Mar 2023)

Usability and acceptance of crowd-based early warning of harmful algal blooms

  • Lindung Parningotan Manik,
  • Hatim Albasri,
  • Reny Puspasari,
  • Aris Yaman,
  • Shidiq Al Hakim,
  • Al Hafiz Akbar Maulana Siagian,
  • Siti Kania Kushadiani,
  • Slamet Riyanto,
  • Foni Agus Setiawan,
  • Lolita Thesiana,
  • Meuthia Aula Jabbar,
  • Ramadhona Saville,
  • Masaaki Wada

DOI
https://doi.org/10.7717/peerj.14923
Journal volume & issue
Vol. 11
p. e14923

Abstract

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Crowdsensing has become an alternative solution to physical sensors and apparatuses. Utilizing citizen science communities is undoubtedly a much cheaper solution. However, similar to other participatory-based applications, the willingness of community members to be actively involved is paramount to the success of implementation. This research investigated factors that affect the continual use intention of a crowd-based early warning system (CBEWS) to mitigate harmful algal blooms (HABs). This study applied the partial least square-structural equation modeling (PLS-SEM) using an augmented technology acceptance model (TAM). In addition to the native TAM variables, such as perceived ease of use and usefulness as well as attitude, other factors, including awareness, social influence, and reward, were also studied. Furthermore, the usability factor was examined, specifically using the System Usability Scale (SUS) score as a determinant. Results showed that usability positively affected the perceived ease of use. Moreover, perceived usefulness and awareness influenced users’ attitudes toward using CBEWS. Meanwhile, the reward had no significant effects on continual use intention.

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