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Yarn quality prediction plays an important role in modern textile production management. Due to the nonlinearity and non-stationarity of yarn quality indicator series, the accuracy of the commonly used conventional methods, including regression analyses and artificial neural networks (ANN), has been limited. A prediction model based on support vector regression (SVR) is proposed in this paper to solve the yarn quality prediction problem. Model selection which amounts to search in hyper-parameter space is performed for study of suitable parameters, C and σ, with real code Genetic Algorithms (RGA). The predictive powers of the RGA-SVM models are estimated by comparison with ANN models. The experimental results indicate that in the small data sets and real-life production, the RGA-SVM models have the stability of predictive accuracy, and more suitable for noisy and dynamic spinning process.
Lü et al. (Wed,) studied this question.