Recognition of Spontaneous Combustion in Coal Mines Based on Genetic Clustering Recognition of Spontaneous Combustion in Coal Mines Based on Genetic Clustering

Recognition of Spontaneous Combustion in Coal Mines Based on Genetic Clustering

  • 期刊名字:中国矿业大学学报(英文版)
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  • 论文作者:SUN Ji-ping,SONG Shu
  • 作者单位:School of Mechanical
  • 更新时间:2023-01-17
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论文简介

Spontaneous combustion is one of the greatest disasters in coal mines. Early recognition is important because it may be a potential inducement for other coalmine accidents. However, early recognition is difficult because of the complexity of different coal mines. Fuzzy clustering has been proposed to incorporate the uncertainty of spontaneous combustion in coal mines and it can give a clear degree of classification of combustion. Because FCM clustering tends to become trapped in local minima, a new approach of fuzzy c-means clustering based on a genetic algorithm is therefore proposed. Genetic algorithm is capable of locating optimal or near optimal solutions to difficult problems. It can be applied in many fields without first obtaining detailed knowledge about correlation. It is helpful in improving the effectiveness of fuzzy clustering in detecting spontaneous combustion. The effectiveness of the method is demonstrated by means of an experiment.

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