污水处理厂基本控制回路设计的迁移学习方法

Ivan Pisa, A. Morell, J. Vicario, R. Vilanova
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引用次数: 5

摘要

工业4.0范式和人工神经网络(ann)的入侵正在改变工业系统的构思和控制方式。现在,更常见的是谈论数据驱动的方法,要么支持传统的工业控制策略,要么充当控制本身。因此,人们可以发现,在过去的几年里,更常见的是发现控制系统完全基于数据,而不考虑高度复杂的数学模型。然而,为了提供良好的性能,数据驱动模型和人工神经网络必须得到正确的训练,因此,被视为控制策略的核心部分。这可能会成为一个耗时且乏味的过程。出于这个原因,迁移学习(TL)技术可以用来简化基于数据和人工神经网络方法的概念、设计和训练过程,因为努力必须主要集中在训练一个独特的网络,然后将其转移到其他场景中。从这个意义上讲,我们在这里提出了一种TL方法来设计和实施污水处理厂(WWTP)的整体控制。首先,通过基于长短期记忆单元(LSTM)的比例积分(PI)控制器(LSTM-based PI)对被控对象的最快动态进行控制。一旦LSTM经过训练和测试,它的知识将被转移到剩余的WWTP控制回路中。通过这种方式,控制系统的设计和训练以及控制系统的复杂性都得到了简化和减少。结果显示了双重成就:(i)与传统PI控制器相比,基于lstm的PI在期望测量值与获得的测量值之间的综合绝对误差(IAE)和综合平方误差(ISE)方面的控制性能分别提高了93.56%和99.07%,并且(ii)当它被转移到不同的WWTP控制回路时,基于lstm的PI控制器在IAE和ISE方面的平均改进分别达到了9.55%和15.25%。
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Transfer Learning Approach for the Design of Basic Control Loops in Wastewater Treatment Plants
The incursion of the Industry 4.0 paradigm and the Artificial Neural Networks (ANNs) is changing the way as the industrial systems are conceived and controlled. Now, it is more common to talk about data-driven methods either supporting conventional industrial control strategies, or acting as the control itself. Thus, one can find that in the last years it is more common to find control systems which are purely based on data leaving aside the highly complex mathematical models. However, data-driven models and ANNs have to be correctly trained in order to offer a good performance and therefore, be contemplated as the core part of a control strategy. This can become a time-demanding and tedious process. For that reason, Transfer Learning (TL) techniques can be adopted to ease the conception, design and training processes of the data-based and ANNs methods, since the efforts have to be mainly focused on training a unique net which will be then transferred into the other scenarios. In that sense, we present here a TL approach to design and implement the whole control of a Wastewater Treatment Plant (WWTP). First, the control of the quickest dynamics under control is performed by means of a Long Short-Term Memory cell (LSTM) based Proportional Integral (PI) controller (LSTM-based PI). Once the LSTM is trained and tested, its knowledge will be transferred into the remaining WWTP control loops. In that way, an ease and reduction in the time involved in the design and training of the control as well as in its complexity is achieved. Results have shown a twofold achievement: (i) the LSTM-based PI achieves an improvement of the control performance with respect to a conventional PI controller around a 93.56% and a 99.07% in terms of the Integrated Absolute (IAE) and Integrated Squared (ISE) errors between the desired measurement and the obtained one, respectively, and (ii) the LSTM-based PI controller achieves an average improvement in the IAE and ISE around a 9.55% and 15.25%, respectively, when it is transferred into a different WWTP control loop.
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