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Design of a high performance predictive tool for forging operation

机译:锻造操作高性能预测工具的设计

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This paper presents a comparative study of different artificial intelligence techniques to map a input-output relationship of a manufacturing process and optimize the desired responses. More in detail, these techniques were tested to model and optimize the impression the forging process. The present work aims to reduce energy, load and material consumption satisfying at the same time product quality constraints. A flywheel is considered as specific case study for the investigation. The size of the billet used in the forging process will be optimized so that the molds are correctly filled, and waste, forging load and energy absorbed by the process are minimized. The shape of the initial billet is a hollow cylinder and the parameters to be optimized are the billet dimensions (inner diameter, outer diameter and height) and the friction coefficient. The analytical relationship between input and output parameters was identified in order to choose the optimal process configuration to obtain the desired output. The input-output relation was mapped with different techniques. First of all a Genetic Algorithm-Neural Network and a Taguchi-Neural Network approach are described where genetic algorithm and Taguchi are used to optimize the neural network architecture. The other techniques are support vector regression, fuzzy logic and response surface. Finally, a support vector machine approach was used to check the final product quality.
机译:本文介绍了不同人工智能技术的对比研究,以映射制造过程的输入输出关系并优化所需的响应。更详细地,测试这些技术以模拟并优化锻造过程的印象。目前的作品旨在减少满足同时产品质量约束的能量,负荷和材料消耗。飞轮被认为是对调查的具体案例研究。将优化在锻造过程中使用的坯料的尺寸,使得模具被正确地填充,并且通过该过程吸收的浪费,锻造负载和能量被最小化。初始坯料的形状是中空圆柱,并且优化的参数是坯料尺寸(内径,外径和高度)和摩擦系数。识别输入和输出参数之间的分析关系,以便选择最佳过程配置以获得所需的输出。输入输出关系以不同的技术映射。首先,描述了遗传算法和Taguchi的遗传算法 - 神经网络和Taguchi-Neural网络方法,用于优化神经网络架构。其他技术是支持向量回归,模糊逻辑和响应表面。最后,使用支持向量机方法来检查最终产品质量。

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