Enhancing Aquaculture Efficiency through IoT-Based Monitoring of Solar PV Systems

Authors

  • Catur Rakhmad Handoko Politeknik Perkapalan Negeri Surabaya
  • Imam Sutrisno Politeknik Perkapalan Negeri Surabaya
  • Pranowo Sidi Politeknik Perkapalan Negeri Surabaya
  • Ardiansyah Sekolah Tinggi Ilmu Pelayaran

DOI:

https://doi.org/10.55927/fjcis.v4i1.14139

Keywords:

IoT Monitoring, Solar PV System, Aquaculture Efficiency, Smart Shrimp Farming, Renewable Energy

Abstract

This research presents the design and implementation of an IoT-based monitoring system for solar photovoltaic (PV) performance in shrimp aquaculture ponds. The system aims to optimize the use of solar energy for powering critical operations such as water pumps and aerators in off-grid environments. It integrates sensors, a microcontroller, and cloud-based data visualization to track parameters including panel voltage, current, temperature, and power output. A prototype was deployed in a shrimp farm over a two-week period, with continuous data logging and real-time monitoring. The results indicate improved energy management and system reliability, supporting operational efficiency and sustainability in aquaculture. This study contributes to smart aquaculture practices by introducing a scalable and low-cost renewable energy monitoring solution

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References

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Published

2025-03-26

How to Cite

Handoko, C. R., Sutrisno, I. ., Sidi, P. ., & Ardiansyah. (2025). Enhancing Aquaculture Efficiency through IoT-Based Monitoring of Solar PV Systems. Formosa Journal of Computer and Information Science, 4(1), 93–100. https://doi.org/10.55927/fjcis.v4i1.14139

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Articles