Prediction of coal calorific value based on the RBF neural network optimized by genetic algorithm

Yuan Jing, Min-fang Qi, Zhong-guang Fu
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引用次数: 4

Abstract

The calorific value of coal is an important factor for the economic operation of coal fired power plant. However calorific value is tremendous difference between the different coal, and even if coal is from the same mine. Restricted by the coal market, most of coal fired power plants can not burn the designed-coal by now in China. The properties of coal as received are changing so frequently that pulverized coal firing is always with the unexpected condition. Therefore, the researches on the on-line prediction of calorific value of coal has a profound significance for the economic operation of power plants. Aiming at the problem of uncertainty of calorific value of coal, a soft measurement model for calorific value of coal is proposed based on the RBF neural network. And combined with the thought of k-cross validation, the genetic algorithm constructed a fitness function to optimize the RBF network parameters. It is shown by an example that the optimized model is concise and accurate, with good training accuracy and generalization ability. The model could provide a good guidance for the calculation of the calorific value of coal and optimization operation of coal fired power plants.
基于遗传算法优化的RBF神经网络的煤热值预测
煤的热值是影响燃煤电厂经济运行的重要因素。然而,不同的煤之间的热值是巨大的差异,即使煤来自同一矿山。受煤炭市场的制约,目前中国大部分燃煤电厂都不能使用设计煤。人们所认识到的煤的性质变化非常频繁,煤粉的燃烧总是带着意想不到的状态。因此,煤热值在线预测的研究对电厂的经济运行具有深远的意义。针对煤炭发热量不确定的问题,提出了一种基于RBF神经网络的煤炭发热量软测量模型。并结合k交叉验证思想,构造适应度函数对RBF网络参数进行优化。算例表明,优化后的模型简洁准确,具有良好的训练精度和泛化能力。该模型可为煤热值的计算和燃煤电厂的优化运行提供良好的指导。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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