大规模数据集中基于北方苍鹰优化和长短期记忆的高炉煤气利用率预测模型

Yue Zhou, Weihua Cao, Zhuofu Zhang, Yan Yuan
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引用次数: 0

摘要

受全球新冠肺炎疫情影响,全球市场能源价格持续上涨。钢铁企业的高质量生产和节能减排已成为一项重要任务。高炉是炼钢过程的前端核心。高炉煤气利用率可以有效表征高炉内部气流分布、高炉运行情况和高炉能耗水平。高炉煤气利用率(GUR)可以有效表征高炉内部气流分布、高炉运行状况和能耗水平。大多数现有的研究都是基于数据驱动的模型。选择浅层神经网络模型。但高炉炼铁具有复杂的不确定性。工业信息技术下的海量数据样本需要处理。预测模型的鲁棒性和泛化能力不理想。针对上述问题,本文提出了一种基于NGO-LSTM回归的预测模型。模型参数搜索可以智能化。对海量数据样本实现了高精度的预测结果。首先,利用最大信息系数法完成特征参数的选择;其次,高炉地面的强耦合需要充分预测特征参数之间的关系。选择具有一定记忆能力的长短期记忆(LSTM)神经网络。并采用北方苍鹰优化算法对该神经网络模型的多个参数进行了优化。建立了NGO-LSTM回归预测模型。本文利用实际生产数据进行了实验研究。实验结果表明,该方法能准确预测高炉煤气利用率。为提高高炉产品质量、降低成本、提高效率提供参考。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Blast Furnace Gas Utilization Rate Prediction Model based on Northern Goshawk Optimization and Long Short-Term Memory in Massive Data Set
Affected by the global New Crown Pneumonia epidemic, energy prices in the global market continue to rise. The high quality production and energy saving of steel companies have become an important task. The blast furnace is the front-end core of the steel manufacturing process. The blast furnace gas utilization rate can effectively characterize the internal airflow distribution, blast furnace operation and energy consumption level of the blast furnace. The blast furnace Gas Utilization Rate (GUR) can effectively characterize the internal airflow distribution, blast furnace operation and energy consumption level. Most of the existing studies are based on data-driven models. The shallow neural network model is selected. But blast furnace iron making has complex uncertainty. Massive data samples under industrial information technology need to be processed. The robustness and generalization ability of the prediction model are not satisfactory. To address the above problems, this paper proposes a prediction model based on NGO-LSTM regression. The model parameter searchs can be intelligently. It achieves high-precision prediction results for massive data samples. Firstly, the selection of feature parameters is completed by maximal information coefficient. Secondly, the strong coupling of blast furnace ground needs to fully predict the relationship between the characteristic parameters. The Long Short-Term Memory (LSTM) neural network with certain memory capability is selected. And multiple parameters of this neural network model are optimized by the Northern Goshawk Optimization (NGO) algorithm. An NGO-LSTM regression prediction model is established. In this paper, experiments are carried out using actual production data. The experimental results show that the proposed method can accurately predict the blast furnace gas utilization rate. This can provide a reference for improving blast furnace product quality, reducing costs and increasing efficiency.
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