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Handling Constraints and Raw Material Variability in Rotomolding through Data-Driven Model Predictive Control

机译:通过数据驱动的模型预测控制处理滚塑中的约束和原材料变化

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This work addresses the problems of uniquely specifying and robustly achieving user-specified product quality in a complex industrial batch process, which has been demonstrated using a lab-scale uni-axial rotational molding process. In particular, a data-driven modeling and control framework is developed that is able to reject raw material variation and achieve product quality which is specified through constraints on quality variables. To this end, a subspace state-space model of the rotational molding process is first identified from historical data generated in the lab. This dynamic model predicts the evolution of the internal mold temperature for a given set of input move trajectory (heater and compressed air profiles). Further, this dynamic model is augmented with a linear least-squares based quality model, which relates its terminal (states) prediction with key quality variables. For the lab-scale process, the chosen quality variables are sinkhole area, ultrasonic spectra amplitude, impact energy and shear viscosity. The complete model is then deployed within a model-based control scheme that facilitates specifying on-spec products via limits on the quality variables. Further, this framework is demonstrated to be capable of rejecting raw material variability to achieve the desired specifications. To replicate raw material variability observed in practice, in this work, the raw material is obtained by blending the matrix resin with a resin of slightly different viscosity at varying weight fractions. Results obtained from experimental studies demonstrate the capability of the proposed model predictive control (MPC) in meeting process specifications and rejecting raw material variability.
机译:这项工作解决了在复杂的工业批生产过程中唯一指定并稳固实现用户指定产品质量的问题,这已通过实验室规模的单轴旋转成型工艺得到了证明。特别是,开发了一种数据驱动的建模和控制框架,该框架能够拒绝原材料变化并获得通过对质量变量的约束而指定的产品质量。为此,首先从实验室中生成的历史数据中识别出滚塑工艺的子空间状态空间模型。该动态模型针对给定的一组输入运动轨迹(加热器和压缩空气曲线)预测内部模具温度的变化。此外,此动态模型还增加了基于线性最小二乘的质量模型,该模型将其最终(状态)预测与关键质量变量相关联。对于实验室规模的过程,选择的质量变量是下陷孔面积,超声光谱振幅,冲击能量和剪切粘度。然后,将完整模型部署在基于模型的控制方案中,该方案可通过限制质量变量来方便指定合格产品。此外,已证明该框架能够拒绝原材料变化以达到所需规格。为了复制实践中观察到的原材料可变性,在这项工作中,原材料是通过将基质树脂与粘度稍有不同的树脂以不同的重量分数混合而获得的。从实验研究中获得的结果证明了所提出的模型预测控制(MPC)在满足过程规范和拒绝原材料可变性方面的能力。

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