V. Avgustinovich, T. A. Kuznetsova, A. A. Sukharev
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引用次数: 0
摘要
燃烧室是燃气涡轮发动机最重要的部件之一,也是有害排放物的主要来源。本研究的核心问题是设计和测试一套自动控制系统,以 PI 控制器和内置的低排放燃烧器 (LEС) 神经网络数学模型为基础,控制 16 兆瓦 GTP-16 燃气轮机发电厂火焰管中的有害排放物和压力脉动。针对氮氧化物和一氧化碳向大气中的排放以及低排放燃烧器火焰管中的压力脉动,开发了神经网络控制器算法。这些算法在图形编程环境中给出,并集成到在 PXI NI 硬件和软件平台上实现的 GTP-16 自动控制系统中。在将 LEС 神经网络模型作为虚拟排放传感器的 GTP-16 模拟器上进行的台架测试中,对排放控制器的性能进行了检验。确定了估算氮氧化物和碳氧化物排放量的误差以及火焰管中的压力脉动。证明了所开发的氮氧化物排放模型误差分布的正态性。最后得出结论:利用神经网络开发燃气轮机厂低压燃烧器排放和火焰管压力脉动自适应控制系统的前景广阔。
Neural network controller of a gas turbine plant low emission combustor
One of the most important gas turbine engine components is the combustion chamber, the main source of harmful emissions. The study is devoted to the central issues of designing and testing of an automatic control system of harmful emissions and pressure pulsations in flame tubes of a gas turbine plant with a capacity of 16 MW GTP-16 based on a PI-controller with a built-in neural network mathematical model of a low-emission combustor (LEС). Algorithms for a neural network controller of emission of nitrogen oxides and carbon monoxide into the atmosphere, as well as pressure pulsations in the LEC’s flame tubes were developed. The algorithms are given in a graphical programming environment and integrated into the automatic control system of GTP-16, implemented on the PXI NI hardware and software platform. The performance of the emission controller was checked during bench tests on the GTP-16 simulator with LEС neural network model serving as a virtual emission sensor. The errors in estimating the emission of nitrogen and carbon oxides and pressure pulsations in the flame tubes were determined. The normality of the error distribution of the developed nitrogen oxide emission model was proven. A conclusion about the prospects of using neural networks for the development of an adaptive control system of emissions and flame tube pressure pulsations for LECs of the gas turbine plants was drawn.