首页> 外文期刊>Control Engineering Practice >Automatization of a penicillin production process with soft sensors and an adaptive controller based on neuro fuzzy systems
【24h】

Automatization of a penicillin production process with soft sensors and an adaptive controller based on neuro fuzzy systems

机译:利用软传感器和基于神经模糊系统的自适应控制器实现青霉素生产过程的自动化

获取原文
获取原文并翻译 | 示例
       

摘要

This paper addresses the automatization of a penicillin production process with the development of soft sensors as well as Internal Model Controllers (IMC) for a penicillin fermentation plant using modules based on FasArt and FasBack neuro-fuzzy systems. While soft sensors are intended to aid the human supervision of the process currently being conducted at pilot plants, the proposed controller will make the automatization feasible and eliminate the need for human operator. FasArt and FasBack feature fast stable learning and good MIMO identification, which makes them suitable for the development of adaptive controllers and soft sensors. In this paper, these modules are evaluated by training the neuro-fuzzy systems first on simulated data and then applying the resulting IMC controllers to a simulated plant. Moreover, training the systems on data coming from a real pilot plant, and evaluating the controller performance on the same real plant. Results show that the trend of reference is captured, thus allowing high penicillin production. Moreover, soft sensors derived for biomass, viscosity and penicillin are very accurate. In addition, on-line adaptive capabilities were implemented and tested with FasBack, since this system presents learning guided by error minimization as new data samples arrive. With these features, adaptive IMC controllers can be implemented and are helpful when dynamics have been poorly learned or the plant parameters vary with time, since the performance of static models and controllers can be improved through adaptation.
机译:本文通过使用基于FasArt和FasBack神经模糊系统的模块的软传感器以及用于青霉素发酵厂的内部模型控制器(IMC)的开发,解决了青霉素生产过程的自动化问题。尽管软传感器旨在帮助人工监督当前在中试工厂中进行的过程,但所提出的控制器将使自动化可行并消除了对人工操作员的需求。 FasArt和FasBack具有快速稳定的学习和良好的MIMO识别功能,使其适合于自适应控制器和软传感器的开发。在本文中,这些模块是通过首先在模拟数据上训练神经模糊系统,然后将所得的IMC控制器应用于模拟工厂来评估的。此外,对来自真实中试工厂的数据进行系统培训,并评估同一真实工厂中的控制器性能。结果表明,捕获了参考趋势,从而使青霉素产量高。此外,用于生物量,粘度和青霉素的软传感器非常精确。另外,由于该系统在新数据样本到达时以误差最小化为指导进行学习,因此使用FasBack实施并测试了在线自适应功能。借助这些功能,可以实现自适应IMC控制器,并且在动力学知识不充分或工厂参数随时间变化时会有所帮助,因为可以通过自适应来改善静态模型和控制器的性能。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号