A Neural Network Model of Combustion Characteristics of Power Plant Boiler

A neural network model and power plant boiler technology, applied in the field of power plant boiler combustion characteristics modeling, can solve problems such as premature learning, difficulty in determining the number of neurons in the hidden layer, and low training success rate
CN103870878BActive Publication Date: 2016-09-28XIAN TPRI THERMAL CONTROL TECH +1

Patent Information

Authority / Receiving Office
CN · China
Patent Type
Patents(China)
Current Assignee / Owner
XIAN TPRI THERMAL CONTROL TECH
Publication Date
2016-09-28

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Abstract

A power station boiler combustion characteristic neural network model comprises model input, model output and a neural network. The model input comprises output power of all combustors, coal quality parameters of pulverized coal corresponding to the combustors, pulverized coal concentration, flow speed, primary air, secondary air, over fire air, oxygen content, loads, carbon monoxide content, combustion chamber draft, pressure of all air bellows and opening degrees of all regulating mechanisms in the pulverized coal flow. The model output comprises a boiler effect measuring the performance of the boiler or NOx content relative to the boiler effect and surface characteristics. According to the physical characteristics of the model input, the model input is divided into combustor exclusive input and other global influence input which correspond to different input layers and hidden layer nerve cells. According to the power station boiler combustion characteristic neural network model, a power station boiler structure can be converted to a corresponding neural network special structure, the network model is made to comprise information of actual boiler characteristics, unnecessary interaction and coupling are avoided, subnetwork parameters with similar characteristics are made to be reusable at the same time, and high performance and efficiency are achieved.
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Description

technical field

[0001] The invention relates to the technical field of combustion characteristic modeling of a power station boiler, in particular to a neural network model of the combustion characteristic of a power station boiler. Background technique

[0002] The boiler combustion system is the most complex and difficult to model part of the power plant system. It involves complex physical and chemical changes in a large space field, and the heat transfer causes the phase change of the working fluid. Therefore, it is difficult to describe it with classical mathematical methods, and there is no mature and reliable classical mathematical model. Neural network technology has been widely used in the field of modeling of a large number of industrial systems because of its suitability for complex nonlinear systems and self-learning characteristics.

[0003] The mathematical models of boilers mostly focus on modeling on the side of steam and water, but such models are difficult...

Claims

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