PENGEMBANGAN SISTEM MONITORING PERAIRAN BERBASIS CCTV JARAK JAUH (4 KM) TERINTEGRASI EARLY WARNING TSUNAMI DENGAN NOTIFIKASI OTOMATIS SIRENE, SMS DAN EMAIL (STUDI KASUS : PT INDORAMA PETROCHEMICALS)

Authors

  • Anju STTIKOM nsan Unggul Cilegonl
  • Anita Megayanti
  • Helmi STTIKOM nsan Unggul Cilegonl

Keywords:

CCTV Monitoring, Early Warning Tsunam, IoT Monitoring, Disater System

Abstract

Indonesia memiliki tingkat risiko tsunami tinggi karena berada pada pertemuan lempeng tektonik aktif. Kawasan industri pesisir membutuhkan sistem monitoring real-time yang mampu memberikan peringatan dini secara cepat dan akurat. Penelitian ini bertujuan mengembangkan sistem monitoring perairan berbasis CCTV jarak jauh hingga 4 KM yang terintegrasi dengan sistem early warning tsunami dan notifikasi otomatis berupa sirene, SMS, dan email.

Metode penelitian menggunakan Research and Development (R&D) meliputi analisis kebutuhan, perancangan sistem, implementasi, dan pengujian sistem. Sistem memanfaatkan CCTV outdoor, wireless long range communication, server monitoring berbasis web dan sistem notifikasi otomatis.

Hasil penelitian menunjukkan sistem mampu monitoring hingga 4 KM dan mengirim notifikasi dalam waktu kurang dari 10 detik setelah deteksi bahaya.

Author Biographies

Anju, STTIKOM nsan Unggul Cilegonl

Ilmu Komputer

Helmi, STTIKOM nsan Unggul Cilegonl

Ilmu Komputer

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Published

01-04-2026

How to Cite

Parapat, A., Megayanti, A., & Ilham, H. (2026). PENGEMBANGAN SISTEM MONITORING PERAIRAN BERBASIS CCTV JARAK JAUH (4 KM) TERINTEGRASI EARLY WARNING TSUNAMI DENGAN NOTIFIKASI OTOMATIS SIRENE, SMS DAN EMAIL (STUDI KASUS : PT INDORAMA PETROCHEMICALS). Jurnal Insan Unggul, 14(1), 52–66. Retrieved from http://www.sttikom-iu.ac.id:8081/jurnaliu/index.php/01/article/view/193

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