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首页> 外文期刊>Artificial Intelligence for Engineering Design, Analysis & Manufacturing >An explicit methodology for manufacturing cost–tolerance modeling and optimization using the neural network integrated with the genetic algorithm
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An explicit methodology for manufacturing cost–tolerance modeling and optimization using the neural network integrated with the genetic algorithm

机译:使用与遗传算法集成的神经网络的制造成本容忍建模和优化的明确方法

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The objective of the paper is to develop a new method to model the manufacturing cost-tolerance and to optimize the tolerance values along with its manufacturing cost. A cost-tolerance relation has a complex nonlinear correlation among them. The property of a neural network makes it possible to model the complex correlation, and the genetic algorithm (GA) is integrated with the best neural network model to optimize the tolerance values. The proposed method used three types of neural network models (multilayer perceptron, backpropagation network, and radial basis function). These network models were developed separately for prismatic and rotational parts. For the construction of network models, part size and tolerance values were used as input neurons. The reference manufacturing cost was assigned as the output neuron. The qualitative production data set was gathered in a workshop and partitioned into three files for training, testing, and validation, respectively. The architecture of the network model was identified based on the best regression coefficient and the root-mean-square-error value. The best network model was integrated into the GA, and the role of genetic operators was also studied. Finally, two case studies from the literature were demonstrated in order to validate the proposed method. A new methodology based on the neural network model enables the design and process planning engineers to propose an intelligent decision irrespective of their experience.
机译:本文的目的是开发一种模拟制造成本容忍度的新方法,并优化公差值及其制造成本。成本容忍关系在它们之间具有复杂的非线性相关性。神经网络的特性使得可以模拟复杂的相关性,并且遗传算法(GA)与最佳神经网络模型集成,以优化公差值。所提出的方法使用了三种类型的神经网络模型(多层的Perceptron,BackProjagation网络和径向基函数)。这些网络模型是分开开发的棱柱形和旋转部件。对于网络模型的构建,零件尺寸和公差值用作输入神经元。参考制造成本被分配为输出神经元。定性生产数据集在研讨会中收集在车间中,并分别分为三个文件以分别进行培训,测试和验证。基于最佳回归系数和根均方误差值来识别网络模型的架构。最好的网络模型被整合到GA中,还研究了遗传算子的作用。最后,证明了来自文献的两种案例研究以验证提出的方法。基于神经网络模型的新方法使设计和过程规划工程师能够提出智能决策,而不管他们的经验如何。

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