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首页> 外文期刊>Neural computing & applications >A fuzzy back-propagation network approach for planning actions to shorten the cycle time of a job in dynamic random access memory manufacturing
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A fuzzy back-propagation network approach for planning actions to shorten the cycle time of a job in dynamic random access memory manufacturing

机译:一种模糊反向传播网络方法,用于计划动作以缩短动态随机存取存储器制造中作业的周期时间

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摘要

Reducing cycle time is an essential task that enables dynamic random access memory (DRAM) manufactures to maintain sustainability and gain competitiveness. However, the uncertainty of cycle times makes this a challenging task. Overestimating or underestimating cycle times leads to an incorrect assessment of the effects of an action performed to reduce the cycle time. To address this problem, in this study, the uncertainty of the cycle time was considered and modeled using a fuzzy value. A fuzzy back-propagation network (FBPN) approach is proposed to estimate the cycle time of a job based on its attributes and factory conditions. The lower and upper bounds of the cycle time established using the FBPN approach are tight. In addition, an FBPN can be applied to assess the effects of a cycle time reduction action that shortens the cycle time of a job by improving control over factory conditions. The control action is flexible because the attitude of the managers is considered. Furthermore, a control mechanism for multiple consecutive jobs is established. To illustrate the applicability of the proposed methodology, a DRAM factory simulator was used to generate data. According to the experimental results, the ranges of cycle times, including the +/- 3 sigma range, determined using the FBPN approach were narrower than those determined using four existing methods. In addition, the relationship between the cycle time and attributes of a job was determined to be different when the upper (or lower) bound of the cycle time rather than the most likely value was considered.
机译:缩短周期时间是一项重要任务,它使动态随机存取存储器(DRAM)制造商能够维持可持续性并获得竞争力。但是,周期时间的不确定性使这成为一项艰巨的任务。高估或低估周期时间会导致对为减少周期时间而执行的操作的影响进行不正确的评估。为了解决这个问题,在本研究中,考虑了循环时间的不确定性,并使用模糊值对其进行了建模。提出了一种模糊反向传播网络(FBPN)方法,根据其属性和工厂条件估算作业的周期时间。使用FBPN方法建立的循环时间的上下限是紧密的。此外,FBPN可以用于评估减少周期时间的措施的效果,该措施通过改善对工厂条件的控制来缩短作业的周期时间。控制行动是灵活的,因为考虑了管理者的态度。此外,建立了用于多个连续作业的控制机制。为了说明所提出方法的适用性,使用了DRAM工厂模拟器来生成数据。根据实验结果,使用FBPN方法确定的循环时间范围(包括+/- 3 sigma范围)要比使用四种现有方法确定的范围要窄。另外,当考虑周期时间的上限(或下限)而不是最可能的值时,周期时间与作业属性之间的关系被确定为不同。

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