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A Hybrid Ensemble Model Based on ELM and Improved AdaBoost.RT Algorithm for Predicting the Iron Ore Sintering Characters

机译:一种基于ELM的混合合奏模型,改进的Adaboost.rt算法预测铁矿石烧结特征

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As energy efficiency becomes increasingly important to the steel industry, the iron ore sintering process is attracting more attention since it consumes the second large amount of energy in the iron and steel making processes. The present work aims to propose a prediction model for the iron ore sintering characters. A hybrid ensemble model combined the extreme learning machine (ELM) with an improved AdaBoost.RT algorithm is developed for regression problem. First, the factors that affect solid fuel consumption, gas fuel consumption, burn-through point (BTP), and tumbler index (TI) are ranked according to the attributes weightiness sequence by applying the RReliefF method. Second, the ELM network is selected as an ensemble predictor due to its fast learning speed and good generalization performance. Third, an improved AdaBoost.RT is established to overcome the limitation of conventional AdaBoost.RT by dynamically self-adjusting the threshold value. Then, an ensemble ELM is employed by using the improved AdaBoost.RT for better precision than individual predictor. Finally, this hybrid ensemble model is applied to predict the iron ore sintering characters by production data from No. 4 sintering machine in Baosteel. The results obtained show that the proposed model is effective and feasible for the practical sintering process. In addition, through analyzing the first superior factors, the energy efficiency and sinter quality could be obviously improved.
机译:随着能源效率对钢铁工业越来越重要,铁矿石烧结过程吸收更多的关注,因为它消耗了钢铁制造过程中的第二大能量。目前的工作旨在提出一种用于铁矿石烧结特性的预测模型。混合集合模型将极端学习机(ELM)与改进的Adaboost.rt算法组合起来用于回归问题。首先,通过应用Rrelieff方法根据属性的加权序列,根据属性加权序列对影响固体燃料消耗,气体燃料消耗,燃烧点(BTP)和翻转指数(TI)的因素。其次,由于其快速学习速度和良好的泛化性能,选择ELM网络作为集合预测器。第三,建立改进的adaboost.rt以通过动态自调节阈值来克服传统的adaboost.rt的限制。然后,通过使用改进的Adaboost.rt来使用合并榆树以获得比个体预测值更好的精度。最后,采用该混合集合模型来通过Baosteel中的4号烧结机的生产数据来预测铁矿石烧结特性。得到的结果表明,所提出的模型对于实际烧结过程是有效和可行的。此外,通过分析第一个优异的因素,可以明显提高能效和烧结品质。

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