循环神经网络在四罐系统建模和控制中的应用

N. Rajasekhar, K. Kumaran Nagappan, T.K. Radhakrishnan, N. Samsudeen
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引用次数: 0

摘要

四水箱(QT)系统由四个相互作用的水箱组成,可以随着泵阀位置的变化在最小相位和非最小相位之间切换,被视为基准控制问题。本研究基于基于模型的控制框架,为基准 QT 系统设计了一种递归神经网络(RNN)--长短期记忆(LSTM)。从 QT 系统的白盒模型中生成随机输入输出序列,以训练 LSTM 网络模型。通过调整 LSTM 网络的超参数(如隐藏层数、隐藏单元和历时)来调整 LSTM 网络,以最小化对测试数据的预测误差。在训练过程中和训练结束后,都会对训练出的模型进行交叉验证,以避免过度拟合。一旦获得合理可靠的模型,就会训练另一个 LSTM 网络作为控制器使用。不断修改网络结构,直到控制器能够以最小误差跟踪测试设定点。使用门控递归单元(GRU)网络重复这一过程,并根据标准性能指标,即均方根误差(RMSE)、积分平方误差(ISE)和控制努力(CE),对网络模型和控制器的伺服和调节响应进行评估。结果表明,基于 RNN 设计的控制器比传统的集中式控制器性能更好。
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Application of recurrent neural networks for modeling and control of a quadruple-tank system

The quadruple tank (QT) system consists of four interacting tanks and can switch between the minimum and non-minimum phase behavior with changes in the positions of pump valves and is considered a benchmark control problem. In the present study, long-short term memory (LSTM), a type of recurrent neural networks (RNN) is designed for the benchmark QT system based on the model-based control framework. Random input–output sequences are generated from the white box model of the QT system to train an LSTM network model. The LSTM network is tuned by adjusting its hyperparameters such as the number of hidden layers, hidden units, and epochs to minimize the prediction error on the test data. The trained model is cross validated both during and after training to avoid overfitting. Once a reasonably reliable model is obtained, another LSTM network is trained for use as a controller. The network architecture is constantly modified till the controller is able to track the test setpoints with minimum error. This procedure is repeated with a gated recurrent unit (GRU) network and the servo and regulatory response of both the network models and controller are evaluated in terms of standard performance measure namely root mean square error (RMSE), integral square error (ISE), and control effort (CE). It is observed that the controller designed based on RNN performs better than a conventional centralized controller.

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