A neural control of the parallel Gas Turbine with differential link

N. H. Mai
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Abstract

Gas turbine engine has the highest performance in the engine rotation. The performance of the types of modern gas turbines could able up to 44%. In specific applications, gas turbines are used for equipment such as electrical generators, aircraft engines, high-speed boat … The applications of gas turbine are used to transmit turbine, cabinet pull in eneral[3],[5],[6],[9],[10],[12],[15]. However, there have been no published works on the use of dual turbine. This paper presents an artificial neural network controller to control Double Differential Gas Turbine (DDGT) by use algorithm to synchronize the speed of two turbines at each variable turbine load to reduce low power balance in the system. From the Rowen's model of control for a turbine, the author analyzed and combined with the existing model to construct a dual turbine combinatorial structure coupled by differential coupling. Model-driven control algorithms are used as training grounds for artificial neural networks (ANNs) to replace traditional PID controllers. Because the double tubine construction is strong nonlinear system, modeling is directly transformed from the object model. Simulation results for a dual-turbine twin-turbine combination of 32MW, demonstrating the suitability of the theory. Simulation results show that ANN can be deployed into practice to replace PID controllers to increase control accuracy.
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带差动连杆并联燃气轮机的神经控制
燃气涡轮发动机在发动机旋转中具有最高的性能。现代燃气轮机的性能可达44%。在具体应用中,燃气轮机用于发电机、飞机发动机、高速艇等设备,燃气轮机的应用一般用于传递涡轮、机柜拉力[3]、[5]、[6]、[9]、[10]、[12]、[15]。然而,目前还没有关于双涡轮使用的出版作品。本文提出了一种人工神经网络控制双差式燃气轮机(DDGT)的方法,采用算法同步各变负荷下两台燃气轮机的转速,以减少系统中的低功率平衡。从汽轮机的Rowen控制模型出发,分析并结合已有的模型,构建了采用微分耦合耦合的双汽轮机组合结构。模型驱动控制算法被用作人工神经网络(ann)的训练基础,以取代传统的PID控制器。由于双水轮机结构是强非线性系统,直接由对象模型进行建模。对32MW双机机组进行了仿真,验证了该理论的适用性。仿真结果表明,人工神经网络可以应用于实际,以取代PID控制器,提高控制精度。
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