Sistem Monitoring Lebah Lanceng Menggunakan QR Code Berbasis Website untuk Mendukung Smart Farming

Zahrotun Nisa’ Zidan Al Fitri, Dafian Ilham Pratama, Slamet Riyanto, Muh Nur Lutfi Azis

Abstract


Penelitian ini bertujuan untuk membuat perancangan sistem monitoring lebah lanceng berbasis QR code dan website dalam mendukung aktivitas smart farming, dengan studi kasus pada Kelompok Tani Hutan di desa Kradinan Madiun Jawa Timur. Metodologi penelitian ini lebih mengarah pada penelitian terapan dengan mengangkat kasus yang ada di lokasi penelitian dan diharapkan dapat memberikan solusi dari permasalahan yang dihadapi kelompok tani hutan. Perancangan dan pembuatan aplikasi sistem monitoring lebah lanceng yang dikembangkan dengan metode RAD (Rapid Applicatioan Development). Hasil penelitian menunjukkan bahwa sistem monitoring lebah lanceng mampu memberikan informasi kepada petani lebah untuk memperoleh data terkait dengan data koloni lebah, data perawatan koloni, data panen dan data laporan perkembangan koloni lebah lanceng. Bagi peneliti selanjutnya, sistem monitoring ini perlu dikembangkan dengan memanfaatkan internet of thing yang mampu mengimplementasikan smart farming untuk ternak lebah lanceng yang dikelola dengan cara modern

Full Text:

PDF

References


Aji, W. W., & Supriyono, H. (2020). Sistem Penampilan Informasi Koleksi Tanaman Berbasis QR-Code. Jurnal Emitor, 20(01), 07–12.

Bohušík, M., Císar, M., Bulej, V., Bartoš, M., Stenchlák, V., & Wiecek, D. (2023). Design of a beehive monitoring system with GPS location tracking. Transportation Research Procedia, 74, 916–923. https://doi.org/10.1016/j.trpro.2023.11.225

BPS. (2023). Hasil Pencacahan Lengkap Sensus Pertanian 2023 - Tahap I. Badan Pusat Statistik. https://www.bps.go.id/id/pressrelease/2023/12/04/2050/hasil-pencacahan-lengkap-sensus-pertanian-2023---tahap-i.html

Bui, H. T., Aboutorab, H., Mahboubi, A., Gao, Y., Sultan, N. H., Chauhan, A., Parvez, M. Z., Bewong, M., Islam, R., Islam, Z., Camtepe, S. A., Gauravaram, P., Singh, D., Ali Babar, M., & Yan, S. (2024). Agriculture 4.0 and beyond: Evaluating cyber threat intelligence sources and techniques in smart farming ecosystems. Computers and Security, 140(January), 103754. https://doi.org/10.1016/j.cose.2024.103754

Choruma, D. J., Dirwai, T. L., Mutenje, M. J., Mustafa, M., Chimonyo, V. G. P., Jacobs-Mata, I., & Mabhaudhi, T. (2024). Digitalisation in agriculture: A scoping review of technologies in practice, challenges, and opportunities for smallholder farmers in sub-saharan africa. Journal of Agriculture and Food Research, 18(June), 101286. https://doi.org/10.1016/j.jafr.2024.101286

Durai, S. K. S., & Shamili, M. D. (2022). Smart farming using Machine Learning and Deep Learning techniques. Decision Analytics Journal, 3(December 2021), 100041. https://doi.org/10.1016/j.dajour.2022.100041

Erekalo, K. T., Pedersen, S. M., Christensen, T., Denver, S., Gemtou, M., Fountas, S., & Isakhanya, G. (2024). Review on the contribution of farming practices and technologies towards climate-smart agricultural outcomes in a European context. Smart Agricultural Technology, 7(December 2023). https://doi.org/10.1016/j.atech.2024.100413

Hamza, A. S., Tashakkori, R., Underwood, B., O’Brien, W., & Campell, C. (2023). BeeLive: The IoT platform of Beemon monitoring and alerting system for beehives. Smart Agricultural Technology, 6(July), 100331. https://doi.org/10.1016/j.atech.2023.100331

Huriati, P., Erianda, A., Rozi, F., Sc, M., Informasi, J. T., & Padang, N. (2020). Aplikasi Monitoring Perkembangan Ayam Peterlur Berbasis Android. Jurnal Pengabdian Dan Pengembangan Masyarakat PNP, 2(1), 4–10. http://ejournal2.pnp.ac.id/index.php/jppm

Ivanochko, I., Greguš, M. jr., & Melnyk, O. (2024). Smart Farming System Based on Cloud Computing Technologies. Procedia Computer Science, 238, 857–862. https://doi.org/10.1016/j.procs.2024.06.103

Kim, D., Yagi, H., & Kiminami, A. (2023). Exploring information uses for the successful implementation of farm management information system: A case study on a paddy rice farm enterprise in Japan. Smart Agricultural Technology, 3(September 2022), 100119. https://doi.org/10.1016/j.atech.2022.100119

Koutridi, E., & Christopoulou, O. (2023). “The importance of integrating Smart Farming Technologies into Rural Policies (Aiming at sustainable rural development)- Stakeholders’ views”. Smart Agricultural Technology, 4(February), 100206. https://doi.org/10.1016/j.atech.2023.100206

Krisnawijaya, N. N. K., Tekinerdogan, B., Catal, C., & van der Tol, R. (2024). Reference architecture design for developing data management systems in smart farming. Ecological Informatics, 81(April), 102613. https://doi.org/10.1016/j.ecoinf.2024.102613

Mathi, S., Akshaya, R., & Sreejith, K. (2022). An Internet of Things-based Efficient Solution for Smart Farming. Procedia Computer Science, 218(2022), 2806–2819. https://doi.org/10.1016/j.procs.2023.01.252

Metta, M., Ciliberti, S., Obi, C., Bartolini, F., Klerkx, L., & Brunori, G. (2022). An integrated socio-cyber-physical system framework to assess responsible digitalisation in agriculture: A first application with Living Labs in Europe. Agricultural Systems, 203(February), 103533. https://doi.org/10.1016/j.agsy.2022.103533

Mouratiadou, I., Lemke, N., Chen, C., Wartenberg, A., Bloch, R., Donat, M., Gaiser, T., Basavegowda, D. H., Helming, K., Hosseini Yekani, S. A., Krull, M., Lingemann, K., Macpherson, J., Melzer, M., Nendel, C., Piorr, A., Shaaban, M., Zander, P., Weltzien, C., & Bellingrath-Kimura, S. D. (2023). The Digital Agricultural Knowledge and Information System (DAKIS): Employing digitalisation to encourage diversified and multifunctional agricultural systems. Environmental Science and Ecotechnology, 16, 100274. https://doi.org/10.1016/j.ese.2023.100274

Quan, T., Zhang, H., Quan, T., & Yu, Y. (2024). Unveiling the impact and mechanism of digital technology on agricultural economic resilience. Chinese Journal of Population Resources and Environment, 22(2), 136–145. https://doi.org/10.1016/j.cjpre.2024.06.004

Robustillo, M. C., Pérez, C. J., & Parra, M. I. (2022). Predicting internal conditions of beehives using precision beekeeping. Biosystems Engineering, 221, 19–29. https://doi.org/10.1016/j.biosystemseng.2022.06.006

Srijani, N., Riyanto, S., & Hasanah, K. (2021). Menjadi Digital Entrepreneurship. Madiun: CV AE Media Grafika.

Uthoff, C., Homsi, M. N., & von Bergen, M. (2023). Acoustic and vibration monitoring of honeybee colonies for beekeeping-relevant aspects of presence of queen bee and swarming. Computers and Electronics in Agriculture, 205(December 2022), 107589. https://doi.org/10.1016/j.compag.2022.107589

Wardhany, V. A., Hidayat, A., & Subono. (2021). IoT system terpadu untuk pengelolaan sarang lebah. Jurnal Eltek, 10(1), 9–17. https://doi.org/10.33795/eltek.v19i1.277

Wardhany, V. A., Hidayat, A., Subono, Panduardi, F., Habibi, R., & Nugroho, A. S. (2020). Monitoring Hasil Panen Dan Posisi Kandang Lebah Madu Menggunakan Gps Geo Location Berbasis Arduino Dan Notifikasi Telegram Messenger. Prosiding Seminar Nasional Terapan Riset Inovatif (SENTRINOV), 6(1), 1048–1056. https://proceeding.isas.or.id/index.php/sentrinov/article/view/585


Refbacks

  • There are currently no refbacks.



 
PANDUAN SUBMITE ARTIKEL
 


Kantor Sekertariat:
Universitas PGRI Madiun
Jl. Auri No. 14-16  Kota Madiun 63118
Lt 3 Kantor Program Studi Teknik Informatika
email :  [email protected]
 
 

Lisensi Creative Commons
Ciptaan disebarluaskan di bawah Lisensi Creative Commons Atribusi-BerbagiSerupa 4.0 Internasional.