基于机器视觉的疫苗生产过程人工智能监测研究

    Research on Artificial Intelligence Monitoring of Vaccine Production Process Based on Machine Vision

    • 摘要:
      目的 对疫苗生产过程的关键阶段进行人工智能视觉识别下的机器监控应用研究。
      方法 选取毒种领取和灭活剂添加2个场景,分别设计相应的算法流程,并利用深度学习模型进行训练。
      结果 机器视觉技术可以有效监测疫苗生产过程中的关键环节。通过大量数据训练和优化,算法的平均准确率>90%,可有效减少人为差错或偏差,提高生产效率和产品质量水平。
      结论 本研究为机器视觉技术在疫苗超大规模生产过程中的应用提供了参考,也为疫苗产业未来智能化数字化发展提供了有前景的应用路径。

       

      Abstract:
      OBJECTIVE To research on the application of machine monitoring under artificial intelligence visual recognition for key stages of the vaccine production process is conducted.
      METHODS Selected two scenarios: the receipt of the virus strain and the addition of the inactivating agent, and designed corresponding algorithmic processes. Deep learning models were utilized for training.
      RESULTS Machine vision technology could effectively monitor key steps in the vaccine production process. Through extensive data training and optimization, the average accuracy of the algorithms achieved over 90%, effectively reducing human errors or deviations while enhancing production efficiency and product quality levels.
      CONCLUSION This research provides a reference for the application of machine vision technology in the vaccine production process and supports the intelligent development of the vaccine industry.

       

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