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Prediction of blade life cycle for an industrial gas turbine at off-design conditions by applying thermodynamics, turbo-machinery and artificial neural network models

机译:通过施加热力学,涡轮机和人工神经网络模型预测工业燃气轮机的叶片寿命周期

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A novel method for estimating the rotor blade life cycle of an industrial gas turbine (GT) by the use of artificial Neural Network is proposed in this paper At the first step the blade life cycle is obtained by the use of Larson–Miller method which uses output results of GT performance modeling and blade thermal-mechanical data. Then results of rotor blade life cycle analysis by the above method are compared with results of stress factor curve (which is provided by manufacturers). Comparison of results revealed an average difference value of 9.7 % between blade life cycle estimation by two above mentioned methods. In the next step, by input data such as mass flow rate, temperature and pressure of hot flue gas, the output data such as blade cooling air and turbine shaft rotational speed are obtained from GT modeling. Then blade life cycle are also obtained by Larson–Miller? method for 811 sample points of GT operating conditions for various ambient temperatures and load ratios. These data are used for neural network training. Results show that life cycle estimated values by neural network method in comparison with life cycle estimated values by Larson–Miller method, had about 4.8% error value in maximum (with 10-4 as mean square error, MSE). Finally, by the use of neural network method, the effects of gas turbine operating and health conditions (at various ambient temperatures, GT load ratios and compressor fouling levels) on blade life cycle are investigated. If we expect to get the nominal power output of clean blade at ISO ambient condition, in ambient temperature range of 15 to 45 oC, the GG turbine first rotor blade life cycle reduces from 4.85 to 0.07 and in the range of 0 to 7% compressor fouling, turbine blade life cycle reduces from 4.85 to 0.68 years.
机译:通过使用人工神经网络估计工业燃气轮机(GT)的转子叶片寿命周期的新方法在本文中提出了通过使用使用的Larson-Miller方法获得叶片寿命周期获得的第一步GT性能建模和刀片热机械数据的输出结果。然后通过上述方法进行转子叶片寿命周期分析的结果与应力因子曲线的结果进行比较(由制造商提供)。结果比较叶片寿命周期估计的平均差值为9.7%,通过上述两种方法。在下一步中,通过输入数据,例如质量流量,热烟道气的温度和压力,从GT造型获得诸如刀片冷却空气和涡轮轴转速的输出数据。然后,Larson-Miller也获得刀片生命周期?用于811种GT操作条件的方法,用于各种环境温度和负载比率。这些数据用于神经网络培训。结果表明,与Larson-Miller方法的生命周期估计值相比,Neural网络方法的生命周期估计值大约为4.8%的误差值(以10-4为平均方误差,MSE)。最后,通过使用神经网络方法,研究了燃气轮机操作和健康状况(在各种环境温度,GT负载比和压缩机污垢水平)对叶片寿命周期的影响。如果我们预计在ISO环境条件下获得清洁刀片的标称动力输出,在环境温度范围内为15至45℃,GG涡轮机的第一转子叶片寿命周期从4.85降至0.07,范围为0至7%压缩机污垢,涡轮机叶片寿命周期从4.85减少到0.68岁。

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