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Artificial Neural Networks model for predicting wall temperature of supercritical boilers

机译:预测超临界锅炉壁温的人工神经网络模型

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Prediction of wall temperature for the range of operating conditions and selecting appropriate material for water-wall tubes, cooled by turbulent water/steam with drastic changes in property, is important in boiler design. An analytical route of predicting the wall temperature for such flow conditions is not reliable. Empirical correlations of non-dimensional numbers, based on experimental data, are used for predicting wall temperatures of turbulent flow with abrupt changes in fluid properties. BHEL has conducted many experiments with supercritical water/steam and developed Artificial Neural Network (ANN) based wall temperature prediction model. This model predicts wall temperature using the given inputs of fluid pressure, fluid temperature, product of mass flux and diameter, and heat flux. The model has prediction accuracy of 100% for the experimental data and 81.94% for the literature data at a deviation level of +/- 7 degrees C. This ANN model is useful for predicting wall temperatures of supercritical boilers operating in the tested range of parameters. (C) 2015 Elsevier Ltd. All rights reserved.
机译:在锅炉的设计中,重要的是预测工作条件范围内的壁温,并为水冷壁管选择合适的材料,这些材料由湍流的水/蒸汽进行冷却,其性能发生急剧变化。在这种流动条件下预测壁温的分析方法是不可靠的。基于实验数据的无量纲数字的经验相关性用于预测湍流的壁温以及流体特性的突然变化。 BHEL用超临界水/蒸汽进行了许多实验,并开发了基于人工神经网络(ANN)的壁温预测模型。该模型使用给定的流体压力,流体温度,质量通量和直径乘积以及热通量的输入来预测壁温。该模型在+/- 7摄氏度的偏差水平下,对实验数据的预测准确度为100%,对于文献数据的预测准确度为81.94%。此ANN模型可用于预测在参数测试范围内运行的超临界锅炉的壁温。 。 (C)2015 Elsevier Ltd.保留所有权利。

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