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Optimization Control of the Color-Coating Production Process for Model Uncertainty

机译:模型不确定性的彩膜生产过程的优化控制

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摘要

Optimized control of the color-coating production process (CCPP) aims at reducing production costs and improving economic efficiency while meeting quality requirements. However, because optimization control of the CCPP is hampered by model uncertainty, a strategy that considers model uncertainty is proposed. Previous work has introduced a mechanistic model of CCPP based on process analysis to simulate the actual production process and generate process data. The partial least squares method is then applied to develop predictive models of film thickness and economic efficiency. To manage the model uncertainty, the robust optimization approach is introduced to improve the feasibility of the optimized solution. Iterative learning control is then utilized to further refine the model uncertainty. The constrained film thickness is transformed into one of the tracked targets to overcome the drawback that traditional iterative learning control cannot address constraints. The goal setting of economic efficiency is updated continuously according to the film thickness setting until this reaches its desired value. Finally, fuzzy parameter adjustment is adopted to ensure that the economic efficiency and film thickness converge rapidly to their optimized values under the constraint conditions. The effectiveness of the proposed optimization control strategy is validated by simulation results.
机译:对彩色涂料生产过程(CCPP)的优化控制旨在降低生产成本并提高经济效率,同时满足质量要求。但是,由于模型不确定性阻碍了CCPP的优化控制,因此提出了一种考虑模型不确定性的策略。先前的工作介绍了一种基于过程分析的CCPP机械模型,以模拟实际生产过程并生成过程数据。然后应用偏最小二乘方法开发薄膜厚度和经济效益的预测模型。为了管理模型不确定性,引入了鲁棒的优化方法以提高优化解决方案的可行性。然后,利用迭代学习控制来进一步完善模型不确定性。将约束的膜厚转换为跟踪目标之一,以克服传统的迭代学习控制无法解决约束的缺点。经济效率的目标设置会根据薄膜厚度设置不断更新,直到达到理想值为止。最后,采用模糊参数调整以确保在约束条件下经济效率和膜厚迅速收敛至最佳值。仿真结果验证了所提优化控制策略的有效性。

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