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基于BP神经网络的工业锅炉房负荷预测
引用本文:彭岚,何大鹏,李友荣. 基于BP神经网络的工业锅炉房负荷预测[J]. 工业加热, 2006, 35(5): 31-33,50
作者姓名:彭岚  何大鹏  李友荣
作者单位:重庆大学,动力工程学院,重庆,400044;重庆大学,动力工程学院,重庆,400044;重庆大学,动力工程学院,重庆,400044
摘    要:针对工业锅炉房日负荷变化的特点,采用BP人工神经网络模型对热负荷进行预测。在建立模型时,考虑不同小时的热负荷差异,采用24个单输出的BP网络来分别预测每天24h负荷值;利用MATLAB神经网络工具箱NNT(Neural Network Toolbox)分别实现对24个BP网络预测模型的构建及算法改进;最后,应用一个实例对建立的预测模型和实现方法进行了仿真分析,结果证明,该负荷预测模型网络结构小、收敛速度快、预测精度高、具有较高的实用价值。

关 键 词:负荷预测  BP网络  神经网络工具箱  改进算法
文章编号:1002-1639(2006)05-0031-03
收稿时间:2006-04-24
修稿时间:2006-04-242006-07-03

Boiler Plant Load Forecasting Based on BP Artificial Neural Network
PENG Lan,HE Da-peng,LI You-tong. Boiler Plant Load Forecasting Based on BP Artificial Neural Network[J]. Industrial Heating, 2006, 35(5): 31-33,50
Authors:PENG Lan  HE Da-peng  LI You-tong
Affiliation:College of Power Engineering, Chongqing Univ., Chongqing 400044, China
Abstract:According to the varying characteristics of boiler plant daily thermal load, the thermal load forecasting method based on BP neuralnetwork is presented. Considering the thermal load diversity of different hour type, 24 single neural network models to forecast every hourload per day are built. Appropriate modified BP algorithms and constructing methods for 24 forecasting models are given based on MATLAB'sneural networks toolbox. Finally the stimulating application example of prediction models and achieving methods is given out. The resultsshows the forecasting model has simple structure, shorting training time,better forecasting precision, and higher feasible value.
Keywords:load forecasting  BP network  neural networks toolbox  modified algorithm
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