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Prediction model of hot metal temperature for blast furnace based on improved multi-layer extreme learning machine

机译:基于改进的多层极限学习机的高炉铁水温度预测模型

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In the blast furnace production site, the disposable thermocouple is used to measure the hot metal temperature. However, this method is not only inconvenient for continuous data acquisition but also costly for the use of one-time thermocouple. Hence, this paper establishes a prediction model to predict the hot metal temperature. Before the prediction model is established, the corresponding factors of influencing the hot metal temperature are selected, and the noises of production data are removed. In this paper, multi-layer extreme learning machine (ML-ELM) is used as the prediction algorithm of the prediction model. However, the input weights, hidden layer weights and hidden biases of ML-ELM are randomly selected, and the solution of the output weights is based on them, which makes ML-ELM inevitably have a set of non-optimal or unnecessary weights and biases. In addition, ML-ELM may suffer from over-fitting problem. Hence, this paper uses the adaptive particle swarm optimization (APSO) and the ensemble model to improve ML-ELM, and the improved algorithm is named as EAPSO-ML-ELM. APSO can optimize the selections of the input weights, hidden layer weights and hidden biases, the ensemble model can alleviate the over-fitting problem, i.e., this paper combines several of the optimized ML-ELMs which have different input weights, hidden layer weights and hidden biases. Finally, this paper also uses other algorithms to establish the prediction model, and simulation results demonstrate that the prediction model based on EAPSO- ML-ELM has better prediction accuracy and generalization performance.
机译:在高炉生产现场,使用一次性热电偶测量铁水温度。但是,这种方法不仅不便于连续数据采集,而且一次性热电偶的使用成本很高。因此,本文建立了预测铁水温度的预测模型。在建立预测模型之前,选择影响铁水温度的相应因素,并消除生产数据的噪声。本文采用多层极限学习机(ML-ELM)作为预测模型的预测算法。但是,ML-ELM的输入权重,隐藏层权重和隐藏偏差是随机选择的,而输出权重的解是基于它们的,这使得ML-ELM不可避免地具有一组非最佳或不必要的权重和偏差。另外,ML-ELM可能会出现过度装配的问题。因此,本文采用自适应粒子群算法(APSO)和集成模型对ML-ELM进行改进,并将改进后的算法称为EAPSO-ML-ELM。 APSO可以优化输入权重,隐藏层权重和隐藏偏差的选择,集成模型可以缓解过拟合问题,即本文结合了几种优化的ML-ELM,它们具有不同的输入权重,隐藏层权重和隐藏的偏见。最后,本文还利用其他算法建立了预测模型,仿真结果表明,基于EAPSO-ML-ELM的预测模型具有较好的预测精度和泛化性能。

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