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基于多智能体的TE过程扩展仿真系统设计与实现

Journal of Chemical Engineering of Chinese Universities(2019)

Cited 4|Views9
Abstract
针对智能制造对生产过程仿真工具提出的新需求,提出了一种基于多智能体的TE过程扩展仿真方法.首先对传统TE过程仿真模型进行扩展设计,得到扩展TE生产过程的过程控制系统(PCS)层仿真模型.进一步,建立扩展TE生产过程的多层次闭环管控工作流模型,采用多智能体仿真技术开发了扩展TE过程仿真系统原型.智能制造典型生产场景仿真案例表明,该原型系统不仅保留了原TE仿真系统对PCS层故障的细致刻画和模拟,而且给出了包含生产计划指标完成率、生产成本等一系列管控指标的仿真结果.此外,通过配置管控智能体的性能参数,可以模拟分析化工过程管控体系数字化为企业升级带来的效益.
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