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Artificial Neural Network based Prediction Model for reduction of failure frequency in Thermal Power Plants

机译:基于人工神经网络的火电厂故障频率降低预测模型

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This paper describes a systematic approach to predict the water level in the drum of a steam boiler with the help of artificial neural networks (ANN). The parameters of the model can be obtained from the physical dimensions and characteristics of the boiler. The frequency of deviations and the degree of deviation of the water level in the drum can be significantly reduced by the ANN modeling of the water tube boiler water feed system to the drum. The ANN model to be applied for the boiler feed system in the power plant will not only increases the efficiency of the system but shall considerably reduce the tripping of the power plant. The model so developed can be used for synthesis of model-based control algorithms of boiler system.
机译:本文介绍了一种借助人工神经网络(ANN)预测蒸汽锅炉汽包中水位的系统方法。该模型的参数可以从锅炉的物理尺寸和特性中获得。通过对桶的水管锅炉给水系统的ANN建模,可以大大降低桶中偏差频率和水位偏差程度。用于电厂锅炉给水系统的ANN模型不仅会提高系统的效率,而且还将大大减少电厂的跳闸。这样开发的模型可以用于锅炉系统基于模型的控制算法的综合。

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