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Deaerator Water Level Control Based on Neuron Intelligent Control by Fieldbus Intelligent Control Network

机译:基于Neuron智能控制的脱气剂水位控制现场总线智能控制网络

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Difficulties in water level control of deaerator lie in the strong couples between water level of deaerator and pressure in outlet of condenser pump, which causes unavailability of automatic control with traditional PID controllers. General problems in traditional decoupling control and PID control schemes are analyzed. Control scheme of combining neuron intelligent regulator with static decoupling, in which adaptive and self-organizing functions are realized by tuning weight factors in neuron adaptive control with gradient descent algorithm and neuron intelligent regulators act in control while decoupling network acts in decoupling, is proposed. Algorithms of online optimization for Kp based on linear reinforcement and self-learning rate based on gradual reduction are proposed and analyzed. Features, characteristics, advantages and simulation results of the proposed scheme are analyzed and presented. Control implementation based on fieldbus intelligent control network is presented. Operational practice shows that satisfactory control effects are achieved with the proposed control scheme.
机译:困难除氧在于除氧器的水位和压力在冷凝器泵,这会导致与传统的PID控制器自动控制的不可用的出口之间的强耦合的水位控制。在传统的解耦控制和PID控制方案的常见问题进行了分析。神经元智能调节器与静态解耦,其中自适应和自组织功能由调谐加权因子与梯度下降算法神经元自适应控制和神经元智能调节器实现组合的控制方案中的控制动作,同时去耦网络中解耦,提出了作用。基于线性增强和基于逐渐减少的自学率的Kp在线优化的算法被提出并分析。功能,特点,优势和所提出的方案的仿真结果进行了分析和介绍。基于现场总线的智能控制网络上的控制实现呈现。运行实践表明,满意的控制效果与控制方案来实现的。

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