Author:
Wu Zhengmin,Huang Yangyang,Ouyang Tengyu,Luo Kun,Qin Kuan,Sun Yan,Cao Chengmao
Abstract
Conventional winnowing machines rely on manual operation and adjust their parameter settings based on experience. These problems have led to poor wind sorting results. In order to improve the sorting accuracy and efficiency of the tea winnowing machine, a double-layer automatically controlled winnowing machine has been designed in this study. Firstly, an automatic control system based on a programmable logic controller is established. Secondly, the AC motor control technology is used to achieve the automatic adjustment of the baffle position. The prototype tests show that the control input voltage of the vibrating feeder is 2 V for Lan tea and 1.5 V for pan-fried green tea material. The frequencies of the upper fan are 30 Hz and 25 Hz, respectively, while those of the lower fan are 35 Hz and 30 Hz, respectively. For Lan tea, the No. 3 baffle moves to the right by 5 cm, and the positions of the No. 5 and No. 6 baffles remain unchanged. The main outlet of the double-layer winnowing machine contains 3.72% impurities. As for pan-fried green tea, the position of the No. 3 baffle remains unchanged, the No. 5 baffle moves 5 cm to the right, and the No. 6 baffle moves 4.5 cm to the right. The main outlet of the winnowing machine contains 4.28% impurities. The experiments indicate that the double-layer winnowing machine is more effective than the single-layer one and can provide a reference for an efficient and accurate winnowing machine.
Funder
Yan Sun,Major Science and Technology projects of Anhui Province
Subject
Plant Science,Agronomy and Crop Science,Food Science
Reference23 articles.
1. Effects of Extreme Temperature on China’s Tea Production;Yan;Environ. Res. Lett.,2021
2. Research Progress and Prospect of Tea Machinery in China;Zhang;Chin. Tea Proc.,2021
3. Automated Production Line Technology Applied on Refined Tea Screening;Huang;Chin. Tea Proc.,2016
4. Research on sorting algorithm of tea based on color linear CCD;Li;Chin. J. Agric. Mech.,2015
5. Intelligent Fresh-tea-leaves Sorting System Research Based on Convolution Neural Network;Gao;Trans. Chin. Soc. Agric. Mach.,2017
Cited by
2 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献