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摘要: 展示了模糊推理与神经网络结合在脉冲GTAW熔池动态过程智能控制中的应用研究 结果.建立了脉冲GTAW平板对接动态过程特征:正反面熔池的最大宽度、长度与面积等参数 的神经网络模型,基于实验数据采用模糊辨识方法提取焊接过程的模糊控制规则,进而设计了 具有自学习适应能力的模糊神经网络控制器.建立了脉冲GTAW熔池动态过程智能控制系统, 焊接实验验证了所设计的模糊神经网络控制器具有智能控制效果.Abstract: This paper investigates practical application of intelligent control of the pulsed GTAW pool dynamic process by fuzzy logic inference and neural networks. Firstly, the neural network models for the flat butt joint pool character in pulsed GTAW dynamic process is established, such as the maximum width, length, area parameter models. And based on the experimental data, the fuzzy control rules for the welding process are built up by fuzzy identification algorithm. And then, the fuzzyneural network controller with self-learning and adaptive ability is designed for the welding process. The experiment on the process shows that the fuzzy-neural network controller has effected some intelligent control results.
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Key words:
- Weld pool dynamic process /
- fuzzy neural networks /
- modeling and control
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