共 3 条
Study on fasART neuro-fuzzy networks for distinguishing the difficulty degree of top coal caving in steep seam
被引:1
作者:
冯涛
赵伏军
林剑
机构:
[1] School of Energy and Safety Engineering Hunan University of Science and Technology
[2] Xiangtan 411201
[3] China
关键词:
steep coal seam;
difficulty degree of top coal caving;
ambiguity;
membership function;
fuzzy reasoning;
fasART fuzzy neural networks;
D O I:
暂无
中图分类号:
TD823 [地下开采方法];
学科分类号:
081901 ;
摘要:
Distinguishing the difficulty degree of top coal caving was a precondition of the popularization and application of the roadway sub-level caving in steep seam. Because of complexity and uncertainty of the coal seam, the expression of influence factors was diffi-culty with exact data. According to the fuzzy and uncertainty of influence factors, triangular fuzzy membership functions were adopted to carry out the factors ambiguity, of which the factors not only have the consistency of semantic meaning, but also dissolve sufficiently expert knowledge. Based on the properties and structures of fasART fuzzy neural net-works of fuzzy logic system and practical needs, a simplified fasART model was put for-ward, stability and reliability of the network were improved, the deficiency of learning sam-ples and uncertainty of the factors were better treated. The method is of effective and practical value was identified by experiments.
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页码:5 / 8
页数:4
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