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A framework for multi-level modeling and optimization of modular hierarchical systems

机译:模块化分层系统多级模型和优化的框架

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Most products and manufacturing systems (MS) have an inherent hierarchical structure. They are composed of multiple subsystems, such as machines, process components, or resources. In order to optimize the control parameters of such systems, manufacturing planners often follow a global black-box approach. The optimization, thus, neglects the hierarchical structure encoded in the model. All subsystems and their components have to meet individual constraints and show specific uncertainty in their output. By extracting the information, which modules violate the constraints, the optimization algorithm could focus on the parameters of this specific module. Moreover, the planner can define objectives evaluating the robustness or sensitivity of a specific solution based on the knowledge of the hierarchical dependencies and about the uncertainty in the outputs. To accomplish this, the structure of the optimized system must be known to the respective methods applied. In this paper, the dependencies of the subsystems are defined by means of a tree structure. Based on this structure, different possibilities to define and solve the corresponding optimization problem are introduced. In addition, a concept for addressing the robustness of an MS with regard to the uncertainty of the components within the optimization model is proposed. As a practical example, a hot compaction process for manufacturing thermoplastic composites is formalized using the tree structure. Individual nonlinear empirical models simulate the input-output behavior of each subsystem. Based on this formalization, the results of single- and multi-objective optimization methods are compared and their strengths and weaknesses are discussed.
机译:大多数产品和制造系统(MS)具有固有的层次结构。它们由多个子系统组成,例如机器,流程组件或资源。为了优化这种系统的控制参数,制造规划人员通常遵循全球黑匣子方法。因此,优化忽略了模型中编码的分层结构。所有子系统及其组件必须满足各个约束,并在其输出中显示具体的不确定性。通过提取信息违反约束的信息,优化算法可以专注于该特定模块的参数。此外,该计划者可以根据分层依赖性的知识和输出中的不确定性来定义评估特定解决方案的鲁棒性或灵敏度的目标。为了实现这一点,必须通过应用的各个方法已知优化系统的结构。在本文中,子系统的依赖关系由树结构定义。基于这种结构,介绍了定义和解决相应优化问题的不同可能性。另外,提出了一种用于解决MS关于优化模型内的组件的不确定性的鲁棒性的概念。作为一个实际的例子,用于制造热塑性复合材料的热压缩方法使用树结构形式化。单个非线性实证模型模拟每个子系统的输入 - 输出行为。基于该形式化,比较了单一目标优化方法的结果,讨论了它们的优点和缺点。

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