Articles | Open Access | DOI: https://doi.org/10.37547/ajast/Volume04Issue11-02

DEVELOPMENT OF A MECHATRONIC SYSTEM FOR A SILKWORM INCUBATOR

Nasirdinov Bahadyr Abdullajan oglu , Namangan Institute of Engineering and Technology, Uzbekistan
Sharibayev Nasir Yusupzhanovich , Namangan Institute of Engineering and Technology, Uzbekistan
Sharibayev Soli Yusupzhanovich , Namangan Institute of Engineering and Technology, Uzbekistan

Abstract

In this study, the effectiveness of using a mechatronic system in the incubation of silkworm eggs was studied. The incubator consists of an SCD41 sensor, an ESP32 microcontroller, a TES1-12706 air cooler, an electric heater and a ventilation systembo'lib, harorat, namlik va CO2, which provides automatic control of temperature, humidity and CO2 quantity2. The study showed that when using the new system, the level of egg viability increased by 4.1%, and the yield of cocoons-by 5.8%. However, the overall length of the silk fiber and the continuous length have also been improved. This innovative system can be of great importance for improving product quality and ensuring economic efficiency in the silk industry.

Keywords

Mechatronic system, mulberry silkworms, incubation

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Nasirdinov Bahadyr Abdullajan oglu, Sharibayev Nasir Yusupzhanovich, & Sharibayev Soli Yusupzhanovich. (2024). DEVELOPMENT OF A MECHATRONIC SYSTEM FOR A SILKWORM INCUBATOR. American Journal of Applied Science and Technology, 4(11), 7–13. https://doi.org/10.37547/ajast/Volume04Issue11-02