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A genetic algorithm-based artificial neural network model for the optimization of machining processes

机译:基于遗传算法的人工神经网络模型优化加工工艺

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摘要

Artificial intelligent tools like genetic algorithm, artificial neural network (ANN) and fuzzy logic are found to be extremely useful in modeling reliable processes in the field of computer integrated manufacturing (for example, selecting optimal parameters during process planning, design and implementing the adaptive control systems). When knowledge about the relationship among the various parameters of manufacturing are found to be lacking, ANNs are used as process models, because they can handle strong nonlinearities, a large number of parameters and missing information. When the dependencies between parameters become noninvertible, the input and output configurations used in ANN strongly influence the accuracy. However, running of a neural network is found to be time consuming. If genetic algorithm-based ANNs are used to construct models, it can provide more accurate results in less time. This article proposes a genetic algorithm-based ANN model for the turning process in manufacturing Industry. This model is found to be a time-saving model that satisfies all the accuracy requirements.
机译:人们发现,诸如遗传算法,人工神经网络(ANN)和模糊逻辑之类的人工智能工具在计算机集成制造领域中对可靠流程进行建模方面非常有用(例如,在流程规划,设计和实施自适应控制过程中选择最佳参数)系统)。当发现缺乏有关制造的各种参数之间的关系的知识时,将人工神经网络用作过程模型,因为它们可以处理强非线性,大量参数和缺少信息。当参数之间的依赖关系变为不可逆时,ANN中使用的输入和输出配置会严重影响精度。但是,发现神经网络的运行很耗时。如果使用基于遗传算法的人工神经网络来构建模型,则可以在更短的时间内提供更准确的结果。本文为制造业的车削过程提出了一种基于遗传算法的人工神经网络模型。发现该模型是一种节省时间的模型,可以满足所有精度要求。

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