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Superheater steam temperature control for a 300MW boiler unit with Inverse Dynamic Process Models

机译:具有逆动态过程模型的300MW锅炉机组过热蒸汽温度控制

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An Inverse Dynamic Neuro-Controller (IDNC) is developed to improve the superheater steam temperature control of a 300MW boiler unit. A recurrent neural network was used for building the Inverse Dynamic Process Models (IDPMs) for the superheater system. Two inverse dynamic neural network (NN) models referring to the first-stage and the second-stage water-spray attemperators are constructed separately. To achieve highly accurate approximation of the superheater system, the NN models are trained with sufficient historical data in a wide operating range, which consists of both different steady-state conditions and dynamic transients. Then the IDNCs are designed based on the well-trained IDPMs and applied to superheater steam temperature control. In order to eliminate the steady-state control error arisen by the model error, a simple feedback PID compensator is added to an inverse controller. Detailed control tests are carried out on a full-scope simulator for a 300MW coal-fired power generating unit. It is shown that the temperature control is greatly improved with the IDNCs compared to the original cascaded PID control scheme.
机译:开发了逆动态神经控制器(IDNC),以改善300MW锅炉机组的过热器蒸汽温度控制。递归神经网络用于构建过热器系统的逆动态过程模型(IDPM)。分别构造了涉及第一级和第二级喷水减温器的两个逆动态神经网络(NN)模型。为了实现过热器系统的高精度估算,在广泛的运行范围内使用足够的历史数据对NN模型进行训练,该历史数据由不同的稳态条件和动态瞬变组成。然后根据训练有素的IDPM设计IDNC,并将其应用于过热器蒸汽温度控制。为了消除模型误差引起的稳态控制误差,将简单的反馈PID补偿器添加到逆控制器。在用于300MW燃煤发电机组的全范围模拟器上进行了详细的控制测试。结果表明,与原始的级联PID控制方案相比,使用IDNC可以大大改善温度控制。

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