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首页> 外文期刊>Mathematical Problems in Engineering: Theory, Methods and Applications >Hybrid Modeling of Flotation Height in Air Flotation Oven Based on Selective Bagging Ensemble Method
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Hybrid Modeling of Flotation Height in Air Flotation Oven Based on Selective Bagging Ensemble Method

机译:基于选择性装袋法的气浮炉浮选高度混合建模

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摘要

The accurate prediction of the flotation height is very necessary for the precise control of the air flotation oven process, therefore, avoiding the scratch and improving production quality. In this paper, a hybrid flotation height prediction model is developed. Firstly, a simplified mechanism model is introduced for capturing the main dynamic behavior of the process. Thereafter, for compensation of the modeling errors existing between actual system and mechanism model, an error compensation model which is established based on the proposed selective bagging ensemble method is proposed for boosting prediction accuracy. In the framework of the selective bagging ensemble method, negative correlation learning and genetic algorithm are imposed on bagging ensemble method for promoting cooperation property between based learners. As a result, a subset of base learners can be selected from the original bagging ensemble for composing a selective bagging ensemble which can outperform the original one in prediction accuracy with a compact ensemble size. Simulation results indicate that the proposed hybrid model has a better prediction performance in flotation height than other algorithms’ performance.
机译:浮选高度的准确预测对于精确控制气浮炉过程非常必要,因此,避免了刮擦并提高了生产质量。本文建立了一种混合浮选高度预测模型。首先,引入简化的机制模型来捕获过程的主要动态行为。此后,为了补偿实际系统与机构模型之间存在的建模误差,提出了一种基于所提出的选择性装袋集成方法建立的误差补偿模型,以提高预测精度。在选择性装袋合奏方法的框架内,对袋装合奏方法进行了负相关学习和遗传算法,以提高基础学习者之间的合作性。结果,可以从原始装袋合奏中选择基础学习者的子集,以组成选择性装袋合奏,该组合在紧凑的合奏尺寸上的预测精度可以优于原始装袋合奏。仿真结果表明,提出的混合模型在浮选高度上具有比其他算法更好的预测性能。

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