A Data-Driven Prediction Model of Blast Furnace Gas Generation Based on Spectrum Decomposition

IF 0.7 Q4 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Journal of Advanced Computational Intelligence and Intelligent Informatics Pub Date : 2023-03-20 DOI:10.20965/jaciii.2023.p0304
Lili Feng, Jun Peng, Zhaojun Huang
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引用次数: 2

Abstract

Blast furnace gas (BFG) is an important secondary energy in the iron and steel industries, and its efficient and reasonable utilization is the key to improving the economic efficiency of enterprises and the level of energy conservation and emission reduction. Aiming at the problems of difficult accurate modeling on the generation process and difficult prediction of real-time flow, this paper proposes a generation prediction model based on spectrum decomposition. Firstly, the major chemical reactions, production process, and data characteristics of blast furnace are analyzed, and the input variables for the prediction model are reasonably selected based on the correlation analysis results. Then, according to the spectrum characteristics, the BFG data is decomposed into low-frequency and medium-frequency parts by two finite impulse response filters. Next, for the low- and middle-frequency components of data, a low-frequency component prediction model based on the support vector regression, and a middle-frequency component prediction model based on the Elman neural network (ENN) are designed respectively. Finally, we decompose the spectrum of the actual industrial production data and find that the spectrum of the decomposed data basically meets the expected target, which verifies the effectiveness of the finite impulse response filters. In addition, we compare the prediction effect of the designed combined model with other models, such as the support vector regression, the back-propagation neural network, and the ENN. The final experimental results show the correctness, effectiveness, and superiority of the combined model and the spectral decomposition method proposed in this paper.
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基于谱分解的高炉煤气生成数据驱动预测模型
高炉煤气是钢铁工业重要的二次能源,其高效合理利用是提高企业经济效益和节能减排水平的关键。针对发电过程难以准确建模和实时流量难以预测的问题,提出了一种基于频谱分解的发电预测模型。首先,对高炉主要化学反应、生产工艺、数据特征进行分析,并根据相关分析结果合理选择预测模型的输入变量。然后,根据频谱特征,通过两个有限脉冲响应滤波器将BFG数据分解为低频和中频部分。其次,针对数据的低频和中频分量,分别设计了基于支持向量回归的低频分量预测模型和基于Elman神经网络(ENN)的中频分量预测模型。最后对实际工业生产数据的频谱进行分解,发现分解后的数据频谱基本满足预期目标,验证了有限脉冲响应滤波器的有效性。此外,我们还将所设计的组合模型与其他模型(如支持向量回归、反向传播神经网络和ENN)的预测效果进行了比较。最后的实验结果证明了本文所提出的组合模型与光谱分解方法的正确性、有效性和优越性。
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来源期刊
CiteScore
1.50
自引率
14.30%
发文量
89
期刊介绍: JACIII focuses on advanced computational intelligence and intelligent informatics. The topics include, but are not limited to; Fuzzy logic, Fuzzy control, Neural Networks, GA and Evolutionary Computation, Hybrid Systems, Adaptation and Learning Systems, Distributed Intelligent Systems, Network systems, Multi-media, Human interface, Biologically inspired evolutionary systems, Artificial life, Chaos, Complex systems, Fractals, Robotics, Medical applications, Pattern recognition, Virtual reality, Wavelet analysis, Scientific applications, Industrial applications, and Artistic applications.
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