Product quality model based on wavelet relevance vector machine
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摘要: 針對常用的質量建模方法精度不高且難以給出預測區間,提出了基于小波相關向量機的產品質量模型.應用仿真數據和帶鋼熱鍍鋅鋅層質量的實際生產數據分別建立了小波相關向量機模型.結果表明,小波相關向量機方法與支持向量機及傳統的相關向量機相比,具有更好的預測精度,而且給出了預測區間.多組帶鋼熱鍍鋅鋅層質量實際數據的相對預測誤差的平均值為4.52%,為保證產品質量提供必要的決策支持和分析手段.Abstract: According to the fact that a common method for product quality modeling has not very high modeling accuracy and its prediction intervals can not be given, a model of product quality based on wavelet relevance vector machine was proposed. The simulation data and the real field data of zinc coating mass from strip hot-dip galvanizing were used for validation. The results show that the model based on wavelet relevance vector machine has a higher prediction precision than those based support vector machine and relevance vector machine, and its prediction intervals can he given. The zinc coating mass forecasting model based on wavelet relevance vector machine for multi-group data has an average of the relative prediction error of 4.52%; thus for the quality control, it provides the necessary decision supports and analysis tools.
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