自组织模糊语言控制及其在弧焊中的应用

Gholamreza Langari, M. Tomizuka
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引用次数: 33

摘要

根据过程输出与给定参考模型输出的偏差程度,提出一种基于在线修改控制规则的自组织模糊语言控制策略。因此,基于爬坡方法的学习/自适应算法修改描述控制规则的模糊子集的参数化特征函数,使得每条规则的含义被迭代地改变,以反映有关过程行为的新信息。仿真结果表明,该方法在存在过程不对称动态特性的情况下,提高了系统的整体响应,证明该策略可以作为普通模糊控制的一种合适的替代策略。为了研究这种自组织方案,作者采用了一种与气体保护金属电弧焊过程相似的仿真模型。该模型模拟了焊接头正下方工件的峰值表面温度随电弧电流变化的变化,或者更准确地说,是电极送丝速度的变化
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Self organizing fuzzy linguistic control with application to arc welding
Presents a self organizing fuzzy linguistic control strategy that is based on on-line modification of the control rules according to the extent of deviation of the process output from the output of a given reference model. Accordingly, the learning/adaptation algorithm, which is based on the hill climbing approach, modifies the parametrized characteristic functions of the fuzzy subsets describing the control rules, such that the meaning of each rule is iteratively changed to reflect new information regarding the behavior of the process. Simulation results show that this technique improves the overall response of the system in presence of asymmetric dynamic characteristics of the process, proving that this strategy can be a suitable alternative to ordinary fuzzy control. In order to study this self organizing scheme, the authors used a simulation model with similar characteristics as the gas metal arc welding process. This model simulates the variation of the peak surface temperature of the workpiece directly underneath the weld bead in response to changes in the arc current, or more accurately, changes in the electrode wire feedrate.<>
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