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International Journal of Scientific & Technology Research

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IJSTR >> Volume 9 - Issue 2, February 2020 Edition



International Journal of Scientific & Technology Research  
International Journal of Scientific & Technology Research

Website: http://www.ijstr.org

ISSN 2277-8616



Preparation Of Papers For International Journal Of Scientific & Technology Research

[Full Text]

 

AUTHOR(S)

Hemendra Yadav, Khagesh Tanwar, Kamlesh Patel

 

KEYWORDS

Fuzzy Logic, Water Plant, Control, Temperature sensor, humidity sensor, D51, microcontroller.

 

ABSTRACT

The temperature and humidity of a plant are the main parameters that affect the amount of water it needs. The design of a control system that has non-linear inputs and with difficult transfer function equations requires a control system capable of making control decisions. This is because the control decisions issued by human logic have perfect control output in everything, both conventional and unconventional. Fuzzy Logic is a method of control system that can provide decisions that resemble human decisions. In this plant design process, the fuzzy logic control system development system is used by using the MCS51 microcontroller system in the DT51 Development Tools. This is intended for a design of water control plants in plants. This fuzzy control process is carried out by a microcontroller system with an additional interface which is an Analog Input Output add-on board for DT51, an LCD interface as a time display output, a temperature sensor and a soil moisture sensor as a fuzzy logic control input. From the results of experiments conducted, it shows that the fuzzy logic control system is easier to make the control system and more flexible in making its design by not requiring mathematical equations for the function of transfer over the plant, because the fuzzy system makes decisions from human logic placed on the knowledge base system fuzzy.

 

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