JACIII Vol.22 No.5 pp. 699-703
doi: 10.20965/jaciii.2018.p0699


Fuzzy Logic Implementation for Power Efficiency, Reliable Irrigation, and Temperature Control of Smart Farm

Francisco B. Culibrina and Elmer P. Dadios

De La Salle University
2401 Taft Avenue, Manila 0922, Philippines

March 12, 2018
June 15, 2018
September 20, 2018
irrigation system, fuzzy logic, temperature control, motor speed control, smart farm

This paper presents fuzzy logic algorithm for Power Efficiency, Reliable Irrigation, and Temperature Control (PERITC) of Smart Farm. The desired motor speed for pump irrigation and required temperature inside the plant chamber is obtained using fuzzy logic system. The fuzzy logic inputs are data from the water reservoir, plant water requirements, power optimization control, inside temperature, and outside temperature of the plant chamber. The results of this study show that the controller using fuzzy algorithm are reliable, efficient and robust.

Cite this article as:
F. Culibrina and E. Dadios, “Fuzzy Logic Implementation for Power Efficiency, Reliable Irrigation, and Temperature Control of Smart Farm,” J. Adv. Comput. Intell. Intell. Inform., Vol.22, No.5, pp. 699-703, 2018.
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