Prospects of model predictive control of the drum level at a 225 MW combined cycle power plant

H. Nieto-Chaupis
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引用次数: 2

Abstract

We report the application of the Model-based Predictive Control (MPC) to improve the performance of the start-up of a 150⊕75 MW combined cycle power plant whose gas turbine is fueled by natural gas. In concrete the simulations have shown that the efficient drum level control is reflected on the improvement of power efficiency in the sense of reaching the 225 MW set point in around 45 minutes faster than the case of PID. Experimental data taken from ordinary runs from power plant was used for ends of system identification which is based on convolution integrals resulting well adjustable to the acquired data. Simulations have demonstrated that the performance of the MPC surpasses to the one of classic PID essentially in two aspects: (i) reducing the time for reaching set point and (ii) avoiding unexpected critical situations during the plant start-up. Results have indicated that the MPC might reduce in up to 45±5 minutes the time of reaching the set point established to be 225MWwithin a computational error of 5%, which is translated as the MPC error of order of 2.5% working as software in plant. All these results might sustain the fact that the MPC based on convolution models appears to be an interesting scheme to optimize the full functionality in power plants whose expected power is ranging between 200 and 250 MW.
225mw联合循环电厂汽包水位模型预测控制展望
本文报道了基于模型的预测控制(MPC)在150⊕75 MW燃气轮机天然气燃料联合循环电厂启动性能改进中的应用。具体而言,仿真结果表明,高效的汽包液位控制体现在功率效率的提高上,比PID控制在45分钟左右达到225mw设定点。利用电厂正常运行的实验数据进行系统辨识,该方法基于卷积积分,对采集到的数据进行了较好的调整。仿真结果表明,MPC的性能优于经典PID的主要表现在两个方面:(1)缩短了达到设定值的时间;(2)避免了装置启动过程中出现的意外关键情况。结果表明,MPC可以在5%的计算误差范围内,在45±5分钟内达到设定的225mw的时间,这相当于在工厂中作为软件工作的MPC误差为2.5%。所有这些结果可能支持这样一个事实,即基于卷积模型的MPC似乎是一个有趣的方案,以优化电厂的全部功能,其预期功率范围在200至250兆瓦之间。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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