Addressing the issue of excessive manual intervention in discharging fermented grains from underground tanks in traditional brewing technology, this paper proposes an intelligent grains-out strategy based on a multi-degree-of-freedom hybrid robot. The robot's structure and control system are introduced, along with analyses of kinematics solutions for its parallel components and end-effector speeds. According to its structural characteristics and working conditions, a visual-perception-based motion control method of discharging fermented grains is determined. The enhanced perception of underground tanks' positions is achieved through improved Canny edge detection algorithms, and a YOLO-v7 neural network is employed to train an image segmentation model for fermented grains' surface, integrating depth information to synthesize point clouds. We then carry out the downsampling and three-dimensional reconstruction of these point clouds, then match the underground tank model with the fermented grain surface model to replicate the tank's interior space. Finally, a digging motion control method is proposed and experimentally validated for feasibility and operational efficiency.
Material Visual Perception and Discharging Robot Control for Baijiu Fermented Grains in Underground Tank.
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作者:Zhao Yan, Wang Zhongxun, Li Hui, Wang Chang, Zhang Jianhua, Zhu Jingyuan, Liu Xuan
| 期刊: | Sensors | 影响因子: | 3.500 |
| 时间: | 2024 | 起止号: | 2024 Dec 23; 24(24):8215 |
| doi: | 10.3390/s24248215 | ||
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