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Knowledge-based interval modeling method for efficient global optimization and process tuning.

机译:基于知识的区间建模方法,可实现高效的全局优化和过程调整。

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A Knowledge-Based Interval Modeling (KBIM) Method is introduced for global optimization and process tuning. A novel feature of the KBIM Method is its ability to take advantage of the a priori knowledge of the system by incorporating the linear/nonlinear sensitivity information between the objective function/constraints and the system variables in the form of an interval model. The interval model is then used to estimate the feasible/plausible region within the input space as the basis of search for the global optimum. The noted features of the KBIM Method are that (1) initial trials are not required to construct the interval model, (2) the interval model produces bounds for the objective function and constraints so that it may not be trapped into the local optima, and (3) learning is incorporated to update the interval model based on new input-output data that become available during the search. The updated interval model is shown to lead to more accurate estimates of the feasible/plausible region.; The utility of the KBIM Method is demonstrated in three different fields: global optimization, injection molding process tuning, and helicopter track and balance. In global optimization, the KBIM Method is used to search for the global optimum of both unconstrained and constrained benchmark problems. In tuning of injection molding, the method is used as an on-line tuning method to define the feasible region (process window) of the process and to search for a set of feasible machine setpoints in order to improve the production yield. In helicopter track and balance, the KBIM Method selects a set of blade modifications so as to reduce the vibration of the aircraft within the specification limits. The application results indicate that the method provides a viable means of incorporating the a priori knowledge for global optimization and process tuning.
机译:引入了基于知识的时间间隔建模(KBIM)方法,用于全局优化和过程调整。 KBIM方法的一个新功能是通过将目标函数/约束与系统变量之间的线性/非线性敏感性信息合并为形式,从而能够利用系统的先验知识。间隔模型。然后,将区间模型用于估计输入空间内的可行/合理区域,作为搜索全局最优值的基础。 KBIM方法的突出特点是(1)不需要进行初始试验就可以构建区间模型;(2)区间模型会为目标函数和约束条件生成边界,以使它不会陷入局部最优值;以及(3)集成了学习功能,可根据在搜索过程中可用的新输入输出数据更新间隔模型。示出了更新的间隔模型可以导致对可行/合理区域的更准确的估计。 KBIM方法的效用在三个不同领域得到了证明:全局优化,注塑过程调整和直升机跟踪与平衡。在全局优化中,KBIM方法用于搜索不受约束和受约束的基准问题的全局最优。在注塑成型的调整中,该方法用作在线调整方法,以定义过程的可行区域(过程窗口)并搜索一组可行的机器设定点,以提高生产良率。在直升机的跟踪和平衡中,KBIM方法选择一组叶片修改,以将飞机的振动降低到规格范围内。应用结果表明,该方法为整合先验知识提供了可行的手段,以进行全局优化和过程调整。

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