高级检索+

荞麦搓碾剥壳在线检测装置设计与剥出物分布均匀性研究

Design of an online detection device for buckwheat hulling and peeling and study on the uniformity of buckwheat hulling product distribution

  • 摘要: 荞麦检测过程主要依靠人工取样,并用肉眼对剥壳效果进行判断,这种传统检测方式效率极为低下,严重制约了荞麦产业的发展。针对上述荞麦取样困难的问题,该研究以6QB-150搓碾式荞麦剥壳机为研究对象,研发了一种荞麦在线检测装置。该装置由取样机构和图像采集机构两部分组成,通过取样机构对剥出物定时定量的采样,图像采集机构对其进行拍照,从而获得荞麦剥出物的图像;对荞麦取样机构的出料高度进行了EDEM虚拟仿真试验,EDEM虚拟仿真试验结果表明:出料高度在550~600 mm区间时,荞麦颗粒分布相对均匀。针对所设计的荞麦在线检测装置开展系统性试验研究,重点通过出料高度控制试验验证装置设计的合理性。试验设计以出料高度为关键控制变量(设定梯度为350~600 mm,步长50 mm),通过相机采集不同高度下样本的散落状态,量化分析取样装置作业过程中荞麦籽粒的空间分布均匀性指数(均值方差比)。研究旨在揭示出料高度参数与后续图像采集质量间的相关性,试验结果表明:当出料高度介于550~600 mm区间内,其荞麦图像的均值方差比相对较小(介于3~5),颗粒分布相对均匀。本文围绕荞麦在线检测装置展开研究,解决了传统荞麦取样方式效率低下的问题,为促进农民增收和推进农业现代化发展提供关键支撑。

     

    Abstract: Buckwheat hulling detection is a key process for improving both hulling efficiency and product quality, and it plays an essential role throughout the entire buckwheat processing chain. At present, the detection of hulling performance mainly relies on manual sampling combined with visual inspection by operators. This traditional approach is not only time-consuming and labor-intensive but also highly subjective and inefficient, which severely limits the standardization, automation, and large-scale development of the buckwheat processing industry. Therefore, it is of great practical significance to develop an efficient and reliable online detection method for buckwheat hulling. To address the problems associated with difficult sampling and low detection efficiency, this study selected a 6QB-150 rubbing-type buckwheat hulling machine as the research object and designed an online detection device for buckwheat hulling. The device is mainly composed of two functional modules: a sampling mechanism and an image acquisition system. The sampling mechanism is capable of performing timed and quantitative sampling of the hulled materials during operation, ensuring representative and stable sample collection. The image acquisition system captures high-resolution images of the sampled materials, thereby providing reliable visual data for subsequent analysis of hulling performance. In order to optimize the structural parameters of the sampling mechanism, especially the discharge height, EDEM-based discrete element method (EDEM) simulations were conducted to analyze the motion behavior and spatial distribution of buckwheat particles during the sampling process. The simulation results demonstrated that the discharge height has a significant influence on particle dispersion characteristics. When the discharge height was within the range of 550–600 mm, the buckwheat particles exhibited a relatively uniform distribution, which is favorable for improving the consistency and accuracy of image acquisition. On this basis, systematic experimental studies were carried out to further evaluate the performance and rationality of the designed online detection device. A series of discharge height control experiments were conducted, in which the discharge height was used as the key influencing factor. The experimental range was set from 350 mm to 600 mm with an interval of 50 mm. For each height level, the distribution states of buckwheat samples were captured using an industrial camera. The spatial distribution uniformity of the buckwheat grains during the sampling process was quantitatively evaluated using the mean-to-variance ratio as an index. The experimental results indicated that discharge height has a pronounced effect on both the spatial distribution of particles and the quality of the captured images. As the discharge height increased, the dispersion of buckwheat grains gradually improved, leading to more uniform spatial distribution. When the discharge height was controlled within the range of 550–600 mm, the mean-to-variance ratio of the captured buckwheat images ranged from 3 to 5, indicating relatively low variability and high uniformity. Under these conditions, particle overlap and clustering were effectively reduced, which significantly enhanced the clarity and reliability of image features used for subsequent detection and analysis. Overall, this study systematically investigated the design and performance of an online detection device for buckwheat hulling. The proposed system effectively overcomes the limitations of traditional manual sampling methods, significantly improves detection efficiency and objectivity, and provides stable and high-quality image data for intelligent analysis. The results not only reveal the relationship between discharge height and image acquisition quality but also provide a theoretical basis and technical support for the optimization of sampling parameters in online detection systems. Furthermore, the research outcomes contribute to the development of intelligent and automated equipment in agricultural processing, offering important support for improving processing efficiency, ensuring product quality, increasing farmers’ income, and promoting the modernization of agriculture.

     

/

返回文章
返回