Analisis Kesiapan BPBD Kota Binjai dalam Penerapan Kecerdasan Buatan untuk Sistem Peringatan Dini Bencana Banjir
DOI:
https://doi.org/10.62951/bridge.v3i3.596Keywords:
Artificial Intelligence, Binjai City, BPBD, Early Warning System, FloodAbstract
This research was conducted from June to July 2025 in Binjai City, with the primary focus being analyzing the readiness of the Binjai City Regional Disaster Management Agency (BPBD) to implement a flood early warning system utilizing artificial intelligence (AI). The data collection process was conducted through a literature review, which involved reviewing various theories and previous research results regarding the application of AI and Internet of Things (IoT) technology in the context of disaster mitigation. Based on the results of the study, it was found that the use of technologies such as ultrasonic sensors, microcontrollers, fuzzy logic, and automatic notification systems can provide real-time warnings with a high level of accuracy and a fast response. This system enables early detection of rising river levels through automatic measurements, intelligent data processing, and sending notifications to authorities and affected communities within seconds. By integrating historical data and machine learning-based predictions, this system is also able to depict potential flooding before it occurs, providing a longer response time for evacuation. However, the readiness of the Binjai City BPBD still faces various challenges, such as limited digital infrastructure, the need for human resource training in the technology field, and inadequate budget allocation. Therefore, cross-sector collaboration and ongoing policy support are needed for optimal implementation of this system. The use of AI and IoT in early warning systems is not only technically relevant but also urgent in the face of increasing climate change and flood risks. A strategy involving cross-sector collaboration between government, academia, and the private sector is needed to develop an adaptive and sustainable early warning system.
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Alimudin, E., Sumardiono, A., & Zaenurohman, Z. (2025). Implementation of fuzzy logic for early warning system for flood disaster in Cilacap District. Jurnal Ecotipe (Electronic, Control, Telecommunication, Information, and Power Engineering), 12(1), 1-10. https://doi.org/10.33019/jurnalecotipe.v12i1.4529
Astuti, I. F., Manoppo, A. N., & Arifin, Z. (2018). Sistem peringatan dini bahaya banjir kota Samarinda menggunakan sensor ultrasonic berbasis mikrokontroler dengan buzzer dan SMS. Sebatik, 22(1), 30-34. https://doi.org/10.46984/sebatik.v22i1.209
BPBD Kota Binjai. (2022). Laporan dampak kerugian banjir Kota Binjai. BPBD Kota Binjai.
BPBD Kota Binjai. (2023). Laporan dampak kerugian banjir Kota Binjai. BPBD Kota Binjai.
BPBD Kota Binjai. (2024). Laporan dampak kerugian banjir Kota Binjai. BPBD Kota Binjai.
Gani, A. R. F. (2021). Sistem peringatan dini banjir berbasis Arduino Uno dengan notifikasi SMS. Jurnal Teknologi, 9(1), 42-51. https://doi.org/10.31479/jtek.v9i1.90
Hambali, H., Akbar, A., & Yani, A. (2022). Early warning system for flood in Gunungsari District based on IoT with Telegram bot as a warning message sender. Jurnal Pilar Nusa Mandiri, 18(2), 173-178. https://doi.org/10.33480/pilar.v18i2.3711
Maharani, N. Z., Siregar, F. A., & Batubara, N. R. (2024). Peran teknologi edukasi digital dalam meningkatkan kesadaran mitigasi risiko bencana banjir di Indonesia. Innovative: Journal of Social Science Research, 4(6), 5710-5722.
Rahardi, G. A., Muldayani, W., Sumardi, S., & Wijaya, M. D. A. (2024). Perancangan early warning system bencana banjir menggunakan metode fuzzy logic control berbasis IoT. Jurnal Arus Elektro Indonesia, 10(1), 12-16. https://doi.org/10.19184/jaei.v10i1.33242
Riza, H., Santoso, E. W., Tejakusuma, I. G., & Prawiradisastra, F. (2020). Pemanfaatan kecerdasan artifisial untuk meningkatkan mitigasi bencana banjir. Jurnal Sains dan Teknologi Mitigasi Bencana, 15, 11. https://doi.org/10.29122/jstmb.v15i1.4145
Rusdi, M., Lestari, M. W., & Hulu, F. N. (2023). River flood early warning system based on Internet of Things in Binjai City. International Journal of Research in Vocational Studies (IJRVOCAS), 2(4), 42-47. https://doi.org/10.53893/ijrvocas.v2i4.161
Sagay, S. D. C., & Pangemanan, F. N. (2023). Efektivitas sistem peringatan dini untuk mitigasi bencana banjir di Kota Manado. Governance, 3(1), 1-10.
Wandi, I. A., & Ashari, A. (2023). Monitoring ketinggian air dan curah hujan dalam early warning system bencana banjir berbasis IoT. IJEIS (Indonesian Journal of Electronics and Instrumentations Systems), 13(1), 101-110. https://doi.org/10.22146/ijeis.83569
Widayaka, P. D., Hadi, S., Labib, R. P. M. D., & Marzuki, K. (2022). Komparasi performansi sensor sebagai perangkat pengukuran ketinggian air pada sistem notifikasi banjir. Jurnal Bumigora Information Technology (BITe), 4(1), 1-10. https://doi.org/10.30812/bite.v4i1.1997
Wikipedia. (n.d.). Artificial intelligence. Wikipedia. https://en.wikipedia.org/wiki/Artificial_intelligence
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