Cluster analysis of strip flatness characteristics for ultra-wide cold rolling mills
-
摘要: 為準確掌握超寬冷軋機不同寬度帶鋼的板形特征,以某2180 mm超寬冷軋機1900 mm寬度帶鋼實測板形數據為研究對象,借鑒‘大數據’的思想,結合數據挖掘領域中聚類分析方法,提出基于網格和密度的板形特征聚類方法,并以此方法對幾種典型帶鋼寬度的大量板形實測數據進行分析,得到不同寬度帶鋼的板形特征.以分段函數對板形特征進行多項式表達,得到不同寬度帶鋼的板形特征參數化分析結果.提出的基于網格和密度的板形特征聚類與分析方法,能夠快速準確地對大量板形實測數據進行分析,提取出長期生產過程中板形缺陷特征并得到參數化表達,從而為冷連軋機,特別是超寬帶鋼冷連軋機的輥形改進和控制策略優化提供數據基礎.Abstract: In order to master the flatness characteristics of strips with different widths for ultra-wide tandem cold rolling mills, taking the sufficient flatness detection data of 1900 mm strips from 2180 mm cold rolling mills as a research object and considering the idea of big data and the cluster analysis method of data mining, this article proposed a cluster algorithm based on density and grid, applied this cluster algorithm to the analysis of flatness detection data under several typical strip widths, and then obtained the flatness characteristics of strips with different widths. A piecewise polynomial function was introduced to describe the strip flatness characteristics, and the analysis results of polynomial coefficients for strips with different widths were gotten. The proposed cluster algorithm based on density and grid and the piecewise function analysis method can be applied to analyze plenty of flatness detection data quickly and accurately, and the flatness defect characteristics and parameterized expression can be obtained, which will be a data basis of roll contour improvement and strip flatness control strategy optimization for cold rolling mills, especially ultra-wide cold rolling mills.
-
Key words:
- cold rolling mills /
- strip steel /
- flatness /
- cluster analysis
-

計量
- 文章訪問數: 343
- HTML全文瀏覽量: 116
- PDF下載量: 10
- 被引次數: 0