MODEL PREDIKSI LEVEL AIR DI LAHAN PERKEBUNAN KELAPA SAWIT DENGAN JARINGAN SARAF TIRUAN BERDASARKAN PENGUKURAN SENSOR RAIN GAUGE DAN ULTRASONIK

  • Hasan Al Banna
    Departemen Teknik Pertanian dan Biosistem, Universitas Gadjah Mada
  • Bayu Dwi Apri Nugroho
    Departemen Teknik Pertanian dan Biosistem, Universitas Gadjah Mada
DOI: https://doi.org/10.23960/jtep-l.v10i1.104-112
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Abstract

Monitoring and regulating water levels in oil palm swamps has an essential role in providing sufficient water for crops and conserving the land to not easily or quickly deteriorate. Presently, water level is still manual and has weaknesses, one of which is the accuracy of the data taken depending on the observer. Technology such as sensors integrated with artificial neural network is expected to observe and regulate water levels. This study aims to build a prediction model of water levels in oil palm plantations with artificial neural networks based on the rain gauge and ultrasonic sensors installed on Automatic Weather Station (AWS). The obtained results showed that the prediction model runs well with an R2 value of 0,994 and RMSE 1,16 cm. The water level prediction model in this research then tested for accuracy to prove the model's success rate. Testing the water level prediction model's accuracy in the dry season obtained an R2 value of 0,96 and an RMSE of 1,99 cm. Testing the water level prediction model's accuracy in the rainy season obtained an R2 value of 0,85 and an RMSE value of 4,2 cm.

 

Keywords : artificial neural network, automatic weather station, palm oil, water level

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References

Armin, H. N., Gunadi, I., & Widodo, C. E. 2017. Pengiriman Data Hasil Pengukuran Parameter Lingkungan Menggunakan Jaringan Seluler Dengan Raspberry Pi Sebagai Node. Youngster Physics Journal, 6(1): 48–61

.

Haryanto, A., Saputra, T. W., Telaumbanua, M., & Gita, A. C. 2020. Application of Artificial Neural Network to Predict Biodiesel Yield from Waste Frying Oil Transesterification. Indonesian Journal of Science & Technology, 5(1): 62–74.

Hermawan, A. 2006. Jaringan Syaraf Tiruan (Teori dan Aplikasi). Andi Offset. Yogyakarta.

Sumardi. 2005. Penakar Curah Hujan Otomatis Menggunakan Mikrokontrole ATMEGA 32. Jurnal Teknik Elektro, 11(2): 84-90.

Suriadikarta, D. A. 2005. Pengelolaan Lahan Sulfat Masam Untuk Usaha Pertanian. Jurnal Litbang Pertanian, 24(1): 36–45.

Minnesota Board of Water Level and Soil Resource. 2013. Hidrologic Monitoring of Wetlands, Supplemental Guidance. United States.

Naik, P., & Katti, K. 2018. Automatic Of Irrigation System Using IoT. International Journal of Engineering and Manufacturing Science, 8(1): 77-88.

Nugroho, B. D. A., & Aliwarga, H. K. 2019. RiTx; Integrating among Field Monitoring System (FMS), Internet of Things (IOT) and agriculture for precision agriculture. IOP Conference Series: Earth and Environmental Science, 335(1).

Rani, S., & Parekh, F. 2014. Application of Artificial Neural Network ( ANN ) for Reservoir Water Level Forecasting, 3(7): 1077–1082.

Siang,J.J. 2005. Jaringan Syaraf Tiruan dan Pemrogramannya menggunakan Matlab. Andi Offset. Yogyakarta.

Tukidi. 2010. Karakter Curah Hujan Di Indonesia. Jurnal Geografi 7(2): 136–145.

Winarna, Santoso, H., Yusuf, M. A., & Sutarta, E. S. (2014). Pertumbuhan Tanaman Kelapa Sawit di Lahan Pasang Surut (Oil Palm Growth on Tidal Land). Prosiding Seminar Nasional Lahan Subobtimal 2014, September: 1–10.

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Published
2021-03-25
How to Cite
Banna, H. A., & Apri Nugroho, B. D. (2021). MODEL PREDIKSI LEVEL AIR DI LAHAN PERKEBUNAN KELAPA SAWIT DENGAN JARINGAN SARAF TIRUAN BERDASARKAN PENGUKURAN SENSOR RAIN GAUGE DAN ULTRASONIK. Jurnal Teknik Pertanian Lampung (Journal of Agricultural Engineering), 10(1), 104–112. https://doi.org/10.23960/jtep-l.v10i1.104-112