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首页> 外文期刊>Journal of Cleaner Production >Production capacity identification and analysis using novel multivariate nonlinear regression: Application to resource optimization of industrial processes
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Production capacity identification and analysis using novel multivariate nonlinear regression: Application to resource optimization of industrial processes

机译:采用新型多变量非线性回归的生产能力识别与分析:应用于工业过程资源优化的应用

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摘要

Production capacity identification and analysis in industrial processes plays a more and more important role at home and abroad, which not only can improve the energy efficiency, but also reduce the carbon emission. However, the data of complex industrial processes exist multi-dimension and strong noise, which make traditional linear models difficult to identify and analyze the production capacity. Therefore, this paper proposes a novel production capacity identification and analysis method based on multivariate nonlinear regression (MNR) integrating the affinity propagation (AP) clustering algorithm (AP-MNR) for energy saving and resource optimization. The elements that mainly affect the production capacity are extracted by the AP algorithm. Then the extracted elements and the final yield are set as inputs and outputs to build the production capacity identification model by using multivariate nonlinear regression method. At last, the AP-MNR method has been applied for energy saving and resource optimization of actual ethylene and PTA industrial processes. The evaluation indexes with the goodness of fit in ethylene and PTA industrial processes are 0.984 and 0.993, which have proved the effectiveness of the proposed method. Furthermore, the reasonable resource allocation of complex industrial processes can be optimized to achieve energy saving and carbon dioxide emission reduction. (C) 2020 Elsevier Ltd. All rights reserved.
机译:工业流程的生产能力识别和分析在国内外发挥了越来越重要的作用,这不仅可以提高能源效率,而且还减少了碳排放。然而,复杂工业过程的数据存在多维和强大的噪声,这使得传统的线性模型难以识别和分析生产能力。因此,本文提出了一种基于多变量非线性回归(MNR)的新的生产能力识别和分析方法,其集成了用于节能和资源优化的亲和传播(AP-MNR)的关联传播(AP)聚类算法(AP-MNR)。主要影响生产能力的元素由AP算法提取。然后,提取的元素和最终产量被设置为输入和输出,以通过使用多变量非线性回归方法来构建生产能力识别模型。最后,AP-MNR方法已应用于实际乙烯和PTA工业过程的节能和资源优化。乙烯和PTA工业过程良好的评价指标为0.984和0.993,证明了该方法的有效性。此外,可以优化复杂工业过程的合理资源分配,以实现节能和二氧化碳排放减少。 (c)2020 elestvier有限公司保留所有权利。

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