Prediction method of deaerator water level in ultra-supercritical steam turbine fcb condition

A technology of ultra-supercritical and predictive methods, applied in neural learning methods, biological neural network models, etc., can solve problems such as complex models, insufficient water storage, and water level drop in deaerators, and achieve the effect of simple models and ideal calculation accuracy

Active Publication Date: 2016-06-08
ELECTRIC POWER RES INST OF GUANGDONG POWER GRID +1
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  • Application Information

AI Technical Summary

Problems solved by technology

[0002] The water tank of the deaerator of the ultra-supercritical steam turbine is set up to ensure that the boiler has a certain feed water reserve. The ultra-supercritical unit adopts a once-through boiler. Since there is no steam drum, the deaerator is its only water outlet container, and its capacity is generally required to be Not less than the water supply required for 15-20 minutes of continuous operation under the rated load of the boiler. If the water level of the deaerator is too low, the insufficient water storage may endanger the safe operation of the boiler; The water level of the deaerator of the steam turbine will drop greatly under the FCB working condition, which will seriously affect the safety of the unit operation
[0003] The existing method for predicting the water level of the deaerator under the FCB working condition of an ultra-supercritical steam turbine has low calculation accuracy, slow speed, and complex models, and it is difficult to accurately and real-time monitor the value of the water level of the deaerator
At present, there are no relevant research results on the prediction of the water level of the deaerator using the RBF neural network

Method used

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  • Prediction method of deaerator water level in ultra-supercritical steam turbine fcb condition
  • Prediction method of deaerator water level in ultra-supercritical steam turbine fcb condition
  • Prediction method of deaerator water level in ultra-supercritical steam turbine fcb condition

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Embodiment Construction

[0056] Such as figure 1 and figure 2 Shown, the prediction method implementation example of deaerator water level under the ultra-supercritical steam turbine FCB working condition of the present invention may further comprise the steps:

[0057] S1 uses the Gaussian function as the radial basis function to train the network

[0058] Structure and Learning Algorithm of RBF Neural Network

[0059] The RBF neural network uses radial basis function neurons, and the radial basis function generally uses a Gaussian function. This function takes the distance between the input vector and the weight vector as an independent variable, and as the distance between the weight and the input vector decreases , the network output is incremental, when the input vector and the weight vector are consistent, the neuron outputs 1; a three-layer network structure is adopted: it is composed of an input layer, a hidden layer and an output layer; the input layer and the hidden layer are regarded as ...

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Abstract

A method for predicting the water level of the deaerator under the FCB working condition of an ultra-supercritical steam turbine: Based on the RBF neural network model of the water level of the deaerator, starting from the actual data under different FCB working conditions, the data samples of the deaerator water level are sorted out, Use this sample to train the RBF neural network, and obtain the RBF neural network model of the deaerator water level after multiple iterations. The RBF neural model adopts a three-layer network structure, and the radial basis function adopts Gaussian functions. The RBF neural network model is used for FCB working conditions According to the prediction of the water level of the deaerator, the change of the water level of the deaerator under the actual working conditions is obtained. The calculation result of the present invention is very close to the measured value, and has ideal calculation accuracy. At the same time, the model has a simple structure and rapid calculation, and can achieve the purpose of predicting the water level of the deaerator under the FCB working condition, prevent the water level of the deaerator from being too low, and help the unit to run Personnel understand the operating status of the unit and maintain the safe and economical operation of the steam turbine.

Description

technical field [0001] The invention relates to a method for predicting the water level of a deaerator under the FCB (fast load shedding) working condition of an ultra-supercritical steam turbine based on a RBF (radial basis function) neural network. Background technique [0002] The water tank of the deaerator of the ultra-supercritical steam turbine is set up to ensure that the boiler has a certain feed water reserve. The ultra-supercritical unit adopts a once-through boiler. Since there is no steam drum, the deaerator is its only water outlet container, and its capacity is generally required to be Not less than the water supply required for 15-20 minutes of continuous operation under the rated load of the boiler. If the water level of the deaerator is too low, the insufficient water storage may endanger the safe operation of the boiler; The water level of the deaerator of the steam turbine will drop greatly under the FCB working condition, which seriously affects the safe...

Claims

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Application Information

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Patent Type & Authority Patents(China)
IPC IPC(8): G06N3/08
Inventor 邓少翔冯永新陈畅谢诞梅邓小文熊扬恒李千军郑李坤
Owner ELECTRIC POWER RES INST OF GUANGDONG POWER GRID
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