Pengolahan Citra Digital Kamera Multispektral Berbasis Drone dengan Artificial Neural Network (ANN) untuk Identifikasi Cekaman Air pada Tanaman Padi

Authors

  • Shahiban Muzaki Universitas Padjadjaran

DOI:

https://doi.org/10.61132/prosemnasproit.v2i2.208

Keywords:

Artificial neural network, Water Stress, Multispectral Drone, Vegetation Indices, Rice

Abstract

Improper water management in rice cultivation can lead to water stress, which reduces productivity. Conventional monitoring has limitations on large-scale lands, necessitating more efficient remote sensing technologies. This study aims to develop a water stress identification system for rice plants in the late vegetative phase using multispectral drone imagery integrated with an Artificial neural network (ANN). The research method employs an experimental approach with six water availability levels in Karyamukti Village, Sumedang. Field reference data were obtained through soil moisture sensors converted into Available Water (AW) values. Image processing stages included orthomosaic reconstruction, leaf object segmentation, and transformation of vegetation indices (NDVI, NDRE, GNDVI, etc.) as model inputs. The results show that the ANN model with a four-hidden-layer architecture achieved training and validation accuracies of 94–95%. In the independent testing phase, the model produced an accuracy of 94.60% with an F1-Score of 93.33%. Spatial visualization of the prediction results indicates a consistent water condition distribution across rice plots. In conclusion, the integration of multispectral drones and ANN provides an accurate non-destructive solution for spatial monitoring of water availability in rice plants.

References

Adhiguna, R. T., & Rejo, A. (2018). Teknologi Irigasi Tetes dalam Mengoptimalkan Efisiensi Penggunaan Air di Lahan Pertanian. Prosiding Seminar Nasional Hari Air Dunia 2018, 1(1).

Darma, S. (2022). Kesesuaian Lahan Padi Sawah di Desa Bumi Rapak dan Desa Selangkau Kabupaten Kutai Timur. Jurnal Ilmu Tanah Dan Lingkungan, 24(1). https://doi.org/10.29244/jitl.24.1.32-38

Fuadi, N. A., Purwanto, M. Y. J., & Tarigan, S. D. (2016). Kajian Kebutuhan Air dan Produktivitas Air Padi Sawah dengan Sistem Pemberian Air Secara SRI dan Konvensional Menggunakan Irigasi Pipa. Jurnal Irigasi, 11(1). https://doi.org/10.31028/ji.v11.i1.23-32

Gulo, D. K., & Nurhayati, N. (2022). Proses Fisiologis Pembentukan Protein Kedelai pada Kondisi Tanaman Mengalami Cekaman Kekeringan. Tabela Jurnal Pertanian Berkelanjutan, 1(1). https://doi.org/10.56211/tabela.v1i1.167

Ismai. (2021). Machine learning: Teori, Studi Kasus, dan Implementasi Menggunakan Phyton.

Nina, A. (2023). Efektifitas Drone Sebagai Media Penginderaan Jauh Untuk Pemantauan Kesehatan Tanaman. Jurnal Technopreneur (JTech), 11(2). https://doi.org/10.30869/jtech.v11i2.1186

Nio Song, A., & Banyo, Y. (2011). Konsentrasi Klorofil Daun Sebagai Indikator Kekurangan Air Pada Tanaman. Jurnal Ilmiah Sains, 15(1). https://doi.org/10.35799/jis.11.2.2011.202

Prasasti, I., Carolita, I., Ramdani, A. E., Risdiyanto, I., Pemanfaatan Penginderaan Jauh, P., & Geofisika dan Meteorologi, J. (2012). Kajian Pemanfaatan Data Alospalsardalam Pemetaan Kelembaban Tanah (The Study of Alos Palsar Data Application For Soil Moisture Estimation). In Jurnal Penginderaan Jauh (Vol. 9, Issue 2).

Ratna, S. (2020). Pengolahan Citra Digital Dan Histogram Dengan Phyton Dan Text Editor Phycharm. Technologia: Jurnal Ilmiah, 11(3). https://doi.org/10.31602/tji.v11i3.3294

Roihan, A., Hasanudin, M., Sunandar, E., & Pratama, S. R. (2020). Perancangan Purwarupa Bird Repellent Device Sebagai Optimasi Panen Padi Di Bidang Pertanian Berbasis Internet of Things. Simetris: Jurnal Teknik Mesin, Elektro Dan Ilmu Komputer, 11(1). https://doi.org/10.24176/simet.v11i1.3752

Wardani, M., & Kurniati, E. (2022). Analisis Kebutuhan Air Irigasi Untuk Tanaman Padi Di Desa Berora Kecamatan Lopok. Jurnal Kacapuri: Jurnal Keilmuan Teknik Sipil, 5(1). https://doi.org/10.31602/jk.v5i1.7565

Wijaya, W., & Astuti, L. C. (2023). Kajian Literatur Hubungan Karakteristik Petani dengan Adopsi Inovasi Budidaya Padi Sawah. Paradigma Agribisnis, 5(2). https://doi.org/10.33603/jpa.v5i2.7833

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Published

2026-02-21

How to Cite

Shahiban Muzaki. (2026). Pengolahan Citra Digital Kamera Multispektral Berbasis Drone dengan Artificial Neural Network (ANN) untuk Identifikasi Cekaman Air pada Tanaman Padi. Prosiding Seminar Nasional Ilmu Teknik, 2(2), 416–429. https://doi.org/10.61132/prosemnasproit.v2i2.208