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首页> 外文期刊>IEEE Transactions on Systems, Man, and Cybernetics >Multisource Data Ensemble Modeling for Clinker Free Lime Content Estimate in Rotary Kiln Sintering Processes
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Multisource Data Ensemble Modeling for Clinker Free Lime Content Estimate in Rotary Kiln Sintering Processes

机译:回转窑烧结过程中无熟料石灰含量估算的多源数据集成模型

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Clinker free lime (f-CaO) content plays a crucial role in determining the quality of cement. However, the existing methods are mainly based on laboratory analysis and with significant time delays, which makes the closed-loop control of f-CaO content impossible. In this paper, a multisource data ensemble learning-based soft sensor model is developed for online estimation of clinker f-CaO content. To build such a soft sensor model, input flame images, process variables, and the corresponding output f-CaO content data for a rotary cement kiln were collected from No. 2 rotary kiln at Jiuganghongda Cement Plant which produces 2000 tonnes of clinker per day. The raw data were preprocessed to distinguish the flame image regions of interest (ROI) and remove process variable outliers. Three types of flame image ROI features, i.e., color, global configuration, and local configuration features, were then extracted without segmentation. Further, a kernel partial least square technique was applied for extracting the compressed score matrix features from the concatenated flame image features and filtered process variables to avoid high-dimensional, nonlinear, and correlated problems. Feed-forward neural networks with random weights were employed as base learners in our proposed ensemble modeling framework, which aims to enhance the model’s reliability and prediction performance. A total of 157 flame images, the associated process variable data, and the experimentally measured f-CaO content data were used in our experiments. A comparative study on the f-CaO content estimator built by various feature compressed techniques and learner models and robustness analysis were carried out. The results indicate that the proposed multisource data ensemble soft sensor model performs favorably and has good potential in real world applications.
机译:熟料中游离石灰(f-CaO)的含量在决定水泥质量方面起着至关重要的作用。但是,现有的方法主要是基于实验室分析并且具有较大的时间延迟,这使得无法对f-CaO含量进行闭环控制。本文建立了一种基于多源数据集成学习的软传感器模型,用于在线估算熟料的f-CaO含量。为了建立这样的软传感器模型,从九龙红大水泥厂每天生产2000吨熟料的2号回转窑中收集了回转水泥窑的输入火焰图像,过程变量和相应的输出f-CaO含量数据。对原始数据进行预处理,以区分感兴趣的火焰图像区域(ROI),并删除过程变量离群值。然后提取三种火焰图像ROI特征,即颜色,全局配置和局部配置特征,而无需进行分段。此外,采用核偏最小二乘技术从级联的火焰图像特征和滤波后的过程变量中提取压缩分数矩阵特征,以避免高维,非线性和相关问题。在我们提出的整体建模框架中,采用具有随机权重的前馈神经网络作为基础学习者,该框架旨在提高模型的可靠性和预测性能。在我们的实验中,总共使用了157张火焰图像,相关的过程变量数据和实验测量的f-CaO含量数据。通过各种特征压缩技术,学习者模型和鲁棒性分析建立了f-CaO含量估算器的比较研究。结果表明,所提出的多源数据集成软传感器模型性能良好,在实际应用中具有良好的潜力。

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