| 引用本文: | 黄嘉庆,沈玲,贺建军,吴婧祎.大规格尖端铝合金锻件温度场协同解耦控制[J].控制理论与应用,2025,42(10):1914~1924.[点击复制] |
| HUANG Jia-qing,SHEN Ling,HE Jian-jun,WU Jin-yi.Cooperative decoupling control of temperature field of large-size and cutting-edge aluminum alloy forgings[J].Control Theory & Applications,2025,42(10):1914~1924.[点击复制] |
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| 大规格尖端铝合金锻件温度场协同解耦控制 |
| Cooperative decoupling control of temperature field of large-size and cutting-edge aluminum alloy forgings |
| 摘要点击 230 全文点击 44 投稿时间:2023-11-10 修订日期:2025-04-02 |
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| DOI编号 10.7641/CTA.2019.90305 |
| 2025,42(10):1914-1924 |
| 中文关键词 大型铝合金锻件 大尺度温度场 有限元法 外推法 智能解耦 |
| 英文关键词 large-size aluminum large scale temperature field finite element method extrapolation intelligent decou pling |
| 基金项目 国家自然科学基金项目(62203167,62373377),湖南省自然科学基金项目(2023JJ30413)资助. |
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| 中文摘要 |
| 大型立式淬火炉炉内温度是决定大规格尖端铝合金锻件性能的主要因素.为解决传统淬火炉温度控制方
法无法克服多区耦合换热影响实现大尺度温度场均匀性控制目标的问题,本文首先构建了炉内温度场模型,提出时
间维有限元外推方法,利用有限元方法计算不同时间步长下的温度结果结合推得的时间维外推公式,实现铝合金锻
件温度高精度高时效预测;随后,提出特征向量快速聚类与竞争学习融合的变结构神经网络,结合预测温度,实时调
节控制器参数,实现多区协同解耦控制;最后,通过仿真实验,验证了所提方法温度控制误差低于±2?C. |
| 英文摘要 |
| The temperature inside a large vertical quenching furnace is the primary factor determining the performance
of large-scale advanced aluminum alloy forgings. To address the issue that traditional quenching furnace temperature con
trol methods cannot overcome the effects of multi-zone coupled heat transfer, thereby failing to achieve the objective of
uniform temperature field control over large scales, this paper first constructs a temperature field model inside the furnace.
It proposes a time-domain finite element extrapolation method, which uses the finite element method to calculate tem
perature results at different time steps. By combining these results with the derived time-domain extrapolation formula,
it achieves high-precision, high-efficiency temperature prediction for aluminum alloy forgings. Subsequently, it intro
duces a variable-structure neural network integrating fast clustering of characteristic vectors and competitive learning. This
network, combined with the predicted temperatures, adjusts the controller parameters in real time to achieve multi-zone
coordinated decoupling control. Finally, simulation experiments verify that the proposed method achieves a temperature
control error of less than ±2?C. |
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