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NEW MODULES LAUNCH PLANNING FOR EVOLVING MODULAR PRODUCT FAMILIES

机译:新模块推出规划规划,用于不断发展模块化产品系列

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This paper presents a systematic methodology to optimize the module instance configuration of an evolving product family (PF). The proposed methodology seeks to maximize the total profit of a PF for a given planning horizon by taking into account the interdependencies of modules at both the product level and the PF level. The module configuration optimization problem can be viewed as a stage-wise sequential decision process. Dynamic programming (DP) is suitable for modeling such problems. The DP-based methodology proposed in this paper breaks up the PF module instance configuration optimization problem into smaller DP optimization problems involving module groups based on the independence assumption of profit change due to the module replacement strategies. The aggregation concepts of independent module groups and module clusters are used to decrease the state space in the DP model. A module group is defined as a group of interacting modules linked by the replacement dependence relationships in a PF. A module cluster is defined as the modules within a module group that are strictly inter-dependent on each other in replacement actions. A DP model is established for each of the module groups to optimize the PF through individually optimizing the module configuration of the individual module groups. In the DP model, the time points with equal intervals during the planning horizon are considered as stages; the decision of module configuration strategies is defined as the control variable; the feasible combinations for the modules within one module group are selected as the states at each stage; and profit change (benchmarked with respect to profit without any module replacements) is treated as the contribution function that needs to be maximized. In the deterministic model, the expected change in profits and expected time of module instance availability are assumed to be deterministic. In the stochastic model, the profit change and the time of module instance availability are treated as uncertain events. The Monte Carlo method is used to simulate the total profit change distributions subjected to the uncertainties of data and module instance availabilities. We use an illustrative PF example to demonstrate how the suggested models can be used to optimize the PF architecture.
机译:本文提出了一种系统方法,可以优化不断发展的产品系列(PF)的模块实例配置。所提出的方法旨在通过考虑到产品水平和PF级别的模块的相互依赖性来最大限度地提高PF的总利润。模块配置优化问题可以被视为舞台上的顺序决策过程。动态编程(DP)适用于建模此类问题。本文提出的基于DP的方法将PF模块实例配置优化问题分解为涉及模块组的较小DP优化问题,这是根据模块更换策略由于模块替换策略的独立假设。独立模块组和模块群集的聚合概念用于减少DP模型中的状态空间。模块组被定义为由PF中的替换依赖关系链接的一组交互模块。模块群集被定义为模块组中的模块,该模块组中的严格依赖于替换操作。为每个模块组建立DP模型,以通过单独优化各个模块组的模块配置来优化PF。在DP模型中,规划地平线期间的间隔等间隔的时间点被视为阶段;模块配置策略的决定被定义为控制变量;一个模块组内的模块的可行组合被选为每个阶段的状态;和利润变更(在没有任何模块替代的利润的基准测试)被视为需要最大化的贡献函数。在确定性模型中,假定模块实例可用性的利润和预期时间的预期变化是确定性的。在随机模型中,利润变化和模块实例可用性的时间被视为不确定事件。 Monte Carlo方法用于模拟数据和模块实例可用性的不确定性的总利润变化分布。我们使用说明性的PF示例来演示所建议的模型如何用于优化PF架构。

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