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Improving Superheated Steam Temperature Control Using United Long Short Term Memory and MPC

机译:使用团结的长期记忆和MPC改善过热蒸汽温度控制

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Superheated steam temperature is one of the most important process variables for controlling the steam quality of thermal power units. In order to improve the accuracy of superheated steam temperature and the stability of valves for desuperheating water, this paper proposed a novel control strategy called united long short-term memory (LSTM) and model predictive control (MPC), which is weighted by particle swarm optimization. First, a deeply learnt inverse model is made to express the potential nonlinear dynamic characteristics of data and to predict the future valve opening in short-term. Secondly, model predictive control is used to control the secondary superheated steam temperature. Thirdly, the two predicted valve opening are weighted by particle swarm optimization. The combined deep learning inverse model control and MPC can make up the deficiencies of each other, i.e., over fitting of deep learning inverse model and linearity of MPC. The simulation experiments proved the advantage of LSTM-MPC in comparison with traditional PID and single MPC control.
机译:过热蒸汽温度是用于控制热电单元蒸汽质量的最重要的过程变量之一。为了提高过热的蒸汽温度和阀门稳定性的冷热水的稳定性,提出了一种新的控制策略,称为联合短期内存(LSTM)和模型预测控制(MPC),其被粒子群加权优化。首先,使得一种深入了解的反向模型来表达数据的潜在非线性动态特性,并以短期预测未来的阀门开口。其次,模型预测控制用于控制二次过热蒸汽温度。第三,两个预测的阀门开口由粒子群优化加权。组合的深度学习逆模型控制和MPC可以弥补彼此的缺陷,即,在拟合深度学习逆模型和MPC的线性。仿真实验证明了LSTM-MPC与传统PID和单个MPC控制相比的优势。

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