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An Intelligent Dual Optimization Approach for Improved Load Following of Supercritical Power Unit Based on Condensate Throttling

机译:一种智能双优化方法,用于基于冷凝水流的超临界功率单元改进负载

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In modern real-time unit load scheduling, it is unavoidable for large-capacity supercritical (SC) units to participate in peak-load regulation with automatic generation control (AGC), which raises the requirements for load control of a large SC power unit. With only the traditional coordinated control system, it is easy to fail in meeting the requirements of rapid load-changing and cause large fluctuations for main steam pressure and temperature. Condensate throttling technique, as an emerging new technology for rapid adjustment of unit load, has attracted much attention in recent years. This paper develops a neural network based unit load prediction model which takes condensate throttling into account for a 600 MW SC power unit. An intelligent dual optimization approach is then developed, which uses the load prediction model twice, first to optimize the deaerator valve opening during the initial load-changing stage for fast load following, and then to optimize the turbine valve opening during the later condensate flow recovery phase to keep the load-following accuracy. Simulation tests show that the proposed approach can greatly improve the unit load dynamic response in speed and control accuracy, thus effectively improve the unit load adaptability to AGC.
机译:在现代实时单位负载调度中,对于大容量超临界(SC)单元来说是不可避免的,以通过自动发电控制(AGC)参与峰值负载调节,这提高了大SC电源单元的负载控制要求。只有传统的协调控制系统,很容易在满足快速负载变化的要求时,对主蒸汽压力和温度产生大的波动。冷凝水的节流技术,作为新兴的新技术,用于快速调整单位负荷,近年来引起了很多关注。本文开发了一种基于神经网络的单位负载预测模型,考虑到600 MW SC电源单元的凝结物限制。然后开发了一种智能双优化方法,其使用负载预测模型两次,首先优化初始载荷变换阶段的脱气阀开口,以便快速载荷,然后在后续冷凝物流恢复期间优化涡轮阀开口相位以保持负载之后的准确性。仿真试验表明,该方法可以大大改善速度和控制精度的单位负载动态响应,从而有效地提高了对AGC的单元负载适应性。

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