多时间尺度下溶液净化过程最优值设置的动态修正方法

IF 5.4 2区 计算机科学 Q1 AUTOMATION & CONTROL SYSTEMS Control Engineering Practice Pub Date : 2024-06-15 DOI:10.1016/j.conengprac.2024.106003
Xulong Zhang , Yonggang Li , Huiping Liang , Bei Sun , Chunhua Yang
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引用次数: 0

摘要

溶液净化工艺包括多个连续反应器。通过全局优化设置每个反应器的关键技术指标,是实现整个工艺优化运行的前提。受入口条件波动、运行参数调整和随机干扰的影响,溶液净化过程的运行状态会发生相应变化,导致基于全局优化的最优值设置不再适用。为确保最优值设置在工艺变化时的适用性,并考虑到不同时间尺度下采集的生产数据包含不同的工艺信息,本研究提出了一种多时间尺度下溶液净化工艺最优值设置的动态修正方法。首先,考虑到低频测试数据能反映运行效果,结合机理知识和专家经验实现低频修正。其次,根据高频检测数据能及时反映运行状态变化的特点,提出了一种有监督的自组织图方法,对运行状态的变化趋势进行分类。最后,提出了一种综合的时空及时学习方法(具有多种运行状态变化趋势)来实现高频校正。实验结果表明,所提出的方法可以动态修正最优值设置,并在确保产品质量的同时降低资源消耗。
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A dynamic correction method for the optimal value settings of the solution purification process at multiple time scales

The solution purification process includes multiple continuous reactors. Setting the key technical indicators of each reactor through global optimization is the prerequisite for realizing the optimal operation of the entire process. Affected by fluctuations in inlet conditions, adjustments of operating parameters, and random disturbances, the operating status of the solution purification process will change accordingly, causing the optimal value settings based on global optimization to become no longer applicable. To ensure the applicability of the optimal value settings as the process changes and considering that the production data collected at different time scales contain different process information, this study proposes a dynamic correction method for the optimal value settings of the solution purification process at multiple time scales. First, considering the low-frequency testing data that can reflect the operation effect, the low-frequency correction is realized by combining mechanism knowledge and expert experience. Second, based on the characteristic that the high-frequency detection data can reflect the changing operating status in time, a supervised self-organizing map method is proposed to classify the changing trends in the operating status. Finally, an integrated, spatiotemporal, just-in-time learning method (with multiple changing trends in the operating status) is proposed to realize high-frequency correction. The experimental results show that the proposed method can dynamically correct the optimal value settings and reduce resource consumption while ensuring product quality.

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来源期刊
Control Engineering Practice
Control Engineering Practice 工程技术-工程:电子与电气
CiteScore
9.20
自引率
12.20%
发文量
183
审稿时长
44 days
期刊介绍: Control Engineering Practice strives to meet the needs of industrial practitioners and industrially related academics and researchers. It publishes papers which illustrate the direct application of control theory and its supporting tools in all possible areas of automation. As a result, the journal only contains papers which can be considered to have made significant contributions to the application of advanced control techniques. It is normally expected that practical results should be included, but where simulation only studies are available, it is necessary to demonstrate that the simulation model is representative of a genuine application. Strictly theoretical papers will find a more appropriate home in Control Engineering Practice''s sister publication, Automatica. It is also expected that papers are innovative with respect to the state of the art and are sufficiently detailed for a reader to be able to duplicate the main results of the paper (supplementary material, including datasets, tables, code and any relevant interactive material can be made available and downloaded from the website). The benefits of the presented methods must be made very clear and the new techniques must be compared and contrasted with results obtained using existing methods. Moreover, a thorough analysis of failures that may happen in the design process and implementation can also be part of the paper. The scope of Control Engineering Practice matches the activities of IFAC. Papers demonstrating the contribution of automation and control in improving the performance, quality, productivity, sustainability, resource and energy efficiency, and the manageability of systems and processes for the benefit of mankind and are relevant to industrial practitioners are most welcome.
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