用人工神经网络确定验收抽样的封闭形式溶液。

D Vasudevan, V Selladurai, P Nagaraj
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引用次数: 7

摘要

表抽样方案,如MIL-STD-105D提供有限的灵活性,以设计抽样计划,以满足特定需求的质量控制工程师。本文描述了一种利用人工神经网络(ANN)确定AQL索引单采样计划的封闭解。为了确定样本量和验收数量,采用反向传播算法对具有s型神经函数的前馈神经网络进行了正常检查、收紧检查和简化检查的训练。从这些训练好的人工神经网络中,获得相关的权重和偏置值。利用这些值可以得到确定采样方案的封闭解。数值例子提供了使用这些封闭形式的解决方案,以确定正常,收紧和减少检查的抽样计划。所建议的方法不涉及表查找或复杂的计算。对于任何要求的可接受的质量水平和批量大小,可以使用此方法确定抽样计划。提出了一些建议,以复制这一思想,适用于其他标准抽样表方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Determination of closed form solution for acceptance sampling using ANN.

Tabled sampling schemes such as MIL-STD-105D offer limited flexibility to quality control engineers in designing sampling plans to meet specific needs. We describe a closed form solution to determine the AQL indexed single sampling plan using an artificial neural network (ANN). To determine the sample size and the acceptance number, feed-forward neural networks with sigmoid neural function are trained by a back propagation algorithm for normal, tightened, and reduced inspections. From these trained ANNs, the relevant weight and bias values are obtained. The closed form solutions to determine the sampling plans are obtained using these values. Numerical examples are provided for using these closed form solutions to determine sampling plans for normal, tightened, and reduced inspections. The proposed method does not involve table look-ups or complex calculations. Sampling plan can be determined by using this method, for any required acceptable quality level and lot size. Suggestions are provided to duplicate this idea for applying to other standard sampling table schemes.

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