Data-based robust multiobjective optimization of interconnected processes: energy efficiency case study in papermaking.

IEEE transactions on neural networks Pub Date : 2011-12-01 Epub Date: 2011-11-29 DOI:10.1109/TNN.2011.2174444
Puya Afshar, Martin Brown, Jan Maciejowski, Hong Wang
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引用次数: 13

Abstract

Reducing energy consumption is a major challenge for "energy-intensive" industries such as papermaking. A commercially viable energy saving solution is to employ data-based optimization techniques to obtain a set of "optimized" operational settings that satisfy certain performance indices. The difficulties of this are: 1) the problems of this type are inherently multicriteria in the sense that improving one performance index might result in compromising the other important measures; 2) practical systems often exhibit unknown complex dynamics and several interconnections which make the modeling task difficult; and 3) as the models are acquired from the existing historical data, they are valid only locally and extrapolations incorporate risk of increasing process variability. To overcome these difficulties, this paper presents a new decision support system for robust multiobjective optimization of interconnected processes. The plant is first divided into serially connected units to model the process, product quality, energy consumption, and corresponding uncertainty measures. Then multiobjective gradient descent algorithm is used to solve the problem in line with user's preference information. Finally, the optimization results are visualized for analysis and decision making. In practice, if further iterations of the optimization algorithm are considered, validity of the local models must be checked prior to proceeding to further iterations. The method is implemented by a MATLAB-based interactive tool DataExplorer supporting a range of data analysis, modeling, and multiobjective optimization techniques. The proposed approach was tested in two U.K.-based commercial paper mills where the aim was reducing steam consumption and increasing productivity while maintaining the product quality by optimization of vacuum pressures in forming and press sections. The experimental results demonstrate the effectiveness of the method.

基于数据的互联过程鲁棒多目标优化:造纸能效案例研究。
减少能源消耗是造纸等“能源密集型”行业面临的主要挑战。商业上可行的节能解决方案是采用基于数据的优化技术来获得一组满足某些性能指标的“优化”操作设置。这样做的困难在于:1)这类问题本质上是多标准的,即改进一项绩效指标可能会损害其他重要措施;2)实际系统往往表现出未知的复杂动力学和多个相互联系,这使得建模任务变得困难;3)由于模型是从现有的历史数据中获得的,它们仅在局部有效,并且外推包含了增加过程可变性的风险。为了克服这些困难,本文提出了一种新的决策支持系统,用于互联过程的鲁棒多目标优化。首先将工厂划分为串联单元,对过程、产品质量、能耗和相应的不确定性措施进行建模。然后根据用户偏好信息,采用多目标梯度下降算法对问题进行求解。最后,将优化结果可视化,便于分析和决策。在实践中,如果考虑优化算法的进一步迭代,则必须在进行进一步迭代之前检查局部模型的有效性。该方法由基于matlab的交互式工具DataExplorer实现,该工具支持一系列数据分析、建模和多目标优化技术。所提出的方法在两家英国商业造纸厂进行了测试,目的是通过优化成型和压制部分的真空压力来减少蒸汽消耗和提高生产率,同时保持产品质量。实验结果证明了该方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
IEEE transactions on neural networks
IEEE transactions on neural networks 工程技术-工程:电子与电气
自引率
0.00%
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2
审稿时长
8.7 months
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