李光林,秦威,郭峰,等. 蚕蛹性腺图像在线采集与雌雄自动识别分选装置设计与优化[J]. 农业工程学报,2024,40(4):210-220. DOI: 10.11975/j.issn.1002-6819.202312056
    引用本文: 李光林,秦威,郭峰,等. 蚕蛹性腺图像在线采集与雌雄自动识别分选装置设计与优化[J]. 农业工程学报,2024,40(4):210-220. DOI: 10.11975/j.issn.1002-6819.202312056
    LI Guanglin, QIN Wei, GUO Feng, et al. Design and optimization of the online gonad images acquisition and automatic gender classification device for silkworm pupae[J]. Transactions of the Chinese Society of Agricultural Engineering (Transactions of the CSAE), 2024, 40(4): 210-220. DOI: 10.11975/j.issn.1002-6819.202312056
    Citation: LI Guanglin, QIN Wei, GUO Feng, et al. Design and optimization of the online gonad images acquisition and automatic gender classification device for silkworm pupae[J]. Transactions of the Chinese Society of Agricultural Engineering (Transactions of the CSAE), 2024, 40(4): 210-220. DOI: 10.11975/j.issn.1002-6819.202312056

    蚕蛹性腺图像在线采集与雌雄自动识别分选装置设计与优化

    Design and optimization of the online gonad images acquisition and automatic gender classification device for silkworm pupae

    • 摘要: 针对当前蚕蛹雌雄鉴别环节人工劳动强度大、蚕蛹雌雄识别分选装置准确率和效率不高、适用品种范围小等问题,根据雌雄蚕蛹性腺特征差异是区别不同品种蚕蛹雌雄的可靠依据,该研究设计了一种蚕蛹性腺图像在线采集与雌雄自动识别分选装置。首先,在对蚕蛹基本物理特性参数大量统计的基础上,对振动排序上料机、蚕蛹输送滑轨和蚕蛹翻转拍照装置进行了结构设计与理论分析。在识别方法和计算机硬件条件不变基础上,对装置中蚕蛹排序输送螺旋倾角、滑轨倾角和转动棒带动蚕蛹旋转转速进行了优化设计,以提高装置的识别分选速度。并设计了以SIEMENS-S7-200SMART-ST30为控制器,基于激光、光电传感器检测的信息融合控制系统。分选装置工作性能优化结果为:螺旋倾角为15.62°,滑轨倾角为31.77°,转速为21.09 r/min,单粒蚕蛹平均分选时间为5.13 s,准确率为95.97%,破损率为0.07%。样机试验结果表明,在最优参数下,利用卷积神经网络的全新轻量级雌雄识别分类模型,单粒蚕蛹平均分选时间为5.03 s,分选准确率为96.47%,破损率为0.09%,满足蚕蛹雌雄识别分选实际应用要求。该蚕蛹性腺图像在线采集与雌雄自动识别分选装置能够实现蚕蛹自动排序上料、蚕蛹带性腺图像在线采集、自动识别与雌雄自动分选的一体化,提高了蚕蛹雌雄自动识别分选的效率和准确率。研究结果可为雌雄蚕蛹自动识别分选装置的研发提供理论依据和技术支持。

       

      Abstract: Gender sorting silkworm pupae is a highly labor-intensive step in the agricultural industry nowadays. The existing sorting machine also suffers small applicable variety, low accuracy and low efficiency. Furthermore, gender sorting can depend mainly on the reliable difference in the gonad characteristics of male and female silkworm pupa. In this study, an online gonad image acquisition and automatic gender classification device was designed for silkworm pupae. The silkworm pupae were automatically flipped to capture the gonad feature image. Firstly, the vibration feeding, conveyor slide and rotation structures were analyzed using the physical parameters of silkworm pupae. The key influencing factors were determined in the automatic identification and sorting of male and female silkworm pupa: the spiral obliquity of vibration feeding, slideway obliquity and rotational speed. Then, the spiral obliquity of vibration feeding, slideway obliquity and rotational speed of silkworm pupae were optimized to improve the sorting speed under the same recognition and computer hardware conditions. Finally, an information fusion control system was designed using a laser and photoelectric sensor with SIEMENS-S7-200SMART-ST30 as the controller. The automatic opening and closing of the anti-congestion device were accurately controlled to realize the automatic moving and reset of the silkworm pupae pushing and receiving device, the automatic collection of image information, the automatic start and stop vibrating feeding system. The Box-Behnken test was carried out to improve the performance of the sorting device. The three-factor and three-level orthogonal experiments were conducted, in which the spiral obliquity, slideway obliquity, and rotational speed were taken as influencing factors, whereas, the average sorting time, sorting accuracy, and breakage rate of single silkworm pupa were as the response indexes. The results of variance and response surface showed that the best parameters were the spiral obliquity of 15.62°, slideway obliquity of 31.77° and rotational speed of 21.09 r/min, single silkworm pupae average sorting time of 5.13 s, sorting accuracy rate of 95.97%, and breakage rate of 0.07%. Under such optimal parameters, the prototype test showed that the sorting time, sorting accuracy, and breakage rate were 5.03 s, 96.47%, and 0.09%, respectively, which fully met the practical application requirements of the gender sorting for silkworm pupae. The developed device was achieved in the automatic feeding, online gonad image acquisition, automatic recognition and sorting of silkworm pupae, indicating the higher efficiency and accuracy of gender classification. Therefore, the finding can provide the theoretical basis and technical support to the automatic gender sorting device of silkworm pupae. It is of great significance in the automated breeding of the silkworm industry.

       

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