Prediction of Gas Emission Based on Information Fusion and Chaotic Time Series Prediction of Gas Emission Based on Information Fusion and Chaotic Time Series

Prediction of Gas Emission Based on Information Fusion and Chaotic Time Series

  • 期刊名字:中国矿业大学学报(英文版)
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  • 论文作者:GAO Li,YU Hong-zhen
  • 作者单位:College of Information and Electrical Engineering
  • 更新时间:2022-09-22
  • 下载次数:
论文简介

In order to make more exact predictions of gas emissions, information fusion and chaos time series are combined to predict the amount of gas emission in pits. First, a multi-sensor information fusion frame is established. The frame includes a data level, a character level and a decision level. Functions at every level are interpreted in detail in this paper. Then, the process of information fusion for gas emission is introduced. On the basis of those data processed at the data and character levels, the chaos time series and neural network are combined to predict the amount of gas emission at the decision level. The weights of the neural network are gained by training not by manual setting, in order to avoid subjectivity introduced by human intervention. Finally, the experimental results were analyzed in Matlab 6.0 and prove that the method is more accurate in the prediction of the amount of gas emission than the traditional method.

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