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A local model networks based multivariable long-range predictive control strategy for thermal power plants

机译:基于局部模型网络的火电厂多变量远程预测控制策略

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Load-cycling operation of thermal power plants leads to changes in operating point right across the whole operating range. This results in non-linear variations in most of the plant variables. This paper investigates methods to account fornon-linearities without resorting to on-line parameter estimation as done in self-tuning control. A constrained multivariable long range predictive controller (LRPC), based on generalised predictive control (GPC) algorithm, is designed and implemented ina simulation of 200 MW oil-fired drum-boiler thermal power plant. In order to take into account system non-linearity, the LRPC is evaluated using two types of predictive models: approximate single global linear models and local model networks (LMN). As asimpler alternative, single global linear ARIX models were identified off-line with data generated by running the plant simulation over a load profile covering the entire operating range along with suitable PRBS signals superimposed on controls. For moreaccurate long-range prediction, networks of dynamic local linear models, identified after dividing the whole operating region into a number of zones, were created. The control strategy gives impressive results. when used in controlling main steamtemperature and pressure and reheat steam temperature during large rate of load changes right across the operating range. The improvements are apparent in both constant-steam-pressure as well as variable-steam-pressure modes of plant operation. Theresults obtained with LMNs based LRPC compare favourably to the those obtained with global model based LRPC.
机译:火力发电厂的负载循环操作会导致整个工作范围内工作点的变化。这导致大多数工厂变量出现非线性变化。本文研究了在不考虑自整定控制中所采用的在线参数估计的情况下解决非线性问题的方法。设计并实现了基于广义预测控制(GPC)算法的约束多变量远程预测控制器(LRPC),并在200 MW燃油鼓式锅炉火力发电厂中进行了仿真。为了考虑系统非线性,使用两种类型的预测模型对LRPC进行评估:近似单个全局线性模型和局部模型网络(LMN)。作为一种更简便的选择,通过在覆盖整个操作范围的负载曲线上运行工厂仿真以及叠加在控件上的合适PRBS信号,离线识别单个全局线性ARIX模型。为了进行更准确的远程预测,创建了动态局部线性模型的网络,该网络在将整个操作区域划​​分为多个区域后确定。控制策略给出了令人印象深刻的结果。当用于控制主要蒸汽温度和压力,并在整个工作范围内大负荷变化时重新加热蒸汽温度时使用。在工厂操作的恒定蒸汽压力和可变蒸汽压力模式下,改进都是显而易见的。与基于全局模型的LRPC相比,基于LMN的LRPC获得的结果具有优势。

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