Prediction for Gas Emission Quantity of the Working Face Based on LSSVM Optimized by Improved Particle Swarm Optimization

Author:

Feng Yu Xi1,Zhang Kai Zhi2,Yu Xi Zhan1,Liu Qing Zhi1

Affiliation:

1. Shandong University of Science and Technology

2. ShanDong University of Science and Technology Taian

Abstract

Gas emission quantity may forecast the quantity of gas inside the coal, which has important significance for predicting the outburst of gas, but the problem always has not been well solved. Traditional Particle swarm optimization (PSO) algorithm lacks the ability to track the optimal solution while the fitness function changes. An improved algorithm named Time Variant PSO (TVPSO) was proposed to track the optimal solution online. Then it was used to choose the parameters of Least Square Support Vector Machine (LSSVM), which could avoid the man-made blindness and enhance the efficiency of online forecasting. The TVPSO-LSSVM method is based on the minimum structure risk of SVM and the globally optimizing ability of TVPSO to forecast continuously the gas emission quantity of the working face. The method was applied to solve the problem of nonlinear chaos time series prediction. Result shows that the method satisfies the need of online forecasting.

Publisher

Trans Tech Publications, Ltd.

Subject

General Engineering

Reference6 articles.

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2. Yujing Liu, Guangzhi Xiao. Applying artificial neural network to predict gas emission of working face, [J]. Safety In Coal Mines, 2003, 34(1): pp.11-13.

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4. Lin Sun, Shiyuan Yang, Prediction for gas emission quantity of the working face based on LS-SVM[J], JOURNAL OF CHINA COAL SOCIETY, 2008, 33(5): pp.1378-1380.

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