郭昌放, 武祥, 杨真, 陈一鼎, 马留柱, 马中原. 多源信息融合约束下的工作面电磁波CT探测智能反演方法研究[J]. 煤炭学报, 2021, 46(11): 3623-3635.
引用本文: 郭昌放, 武祥, 杨真, 陈一鼎, 马留柱, 马中原. 多源信息融合约束下的工作面电磁波CT探测智能反演方法研究[J]. 煤炭学报, 2021, 46(11): 3623-3635.
GUO Changfang, WU Xiang, YANG Zhen, CHEN Yiding, MA Liuzhu, MA Zhongyuan. Intelligent inversion method of electromagnetic wave CT detection withinworking face under the constraint of multi-source information fusion[J]. Journal of China Coal Society, 2021, 46(11): 3623-3635.
Citation: GUO Changfang, WU Xiang, YANG Zhen, CHEN Yiding, MA Liuzhu, MA Zhongyuan. Intelligent inversion method of electromagnetic wave CT detection withinworking face under the constraint of multi-source information fusion[J]. Journal of China Coal Society, 2021, 46(11): 3623-3635.

多源信息融合约束下的工作面电磁波CT探测智能反演方法研究

Intelligent inversion method of electromagnetic wave CT detection withinworking face under the constraint of multi-source information fusion

  • 摘要: 为满足煤矿工作面智能精准开采对地质异常分布精准感知的需求,进一步提高工作面电磁波CT反演的精准性,提出了多源先验信息约束下的电磁波CT智能反演模型。在对工作面电磁波CT反演稀疏矩阵方程进行泛函优化转换的基础上,分析了基本遗传算法(Single Genetic Algorithm,SGA)的寻优进化机理,探讨了不同遗传参数对SGA智能算法搜索优化性能的影响,设计了基于多种群自适应遗传算法(Multi-population Adaptive Genetic Algorithm,MAGA)的工作面地质异常电磁波CT反演目标函数求解机制。除此之外,提出了范围约束、就近约束和平均值约束3种约束模型,将生产过程中揭露的巷探、钻探及回采等多源先验地质信息作为约束条件,不断调整地质异常反演目标函数搜索的进化方向,最终形成了基于MAGA智能算法和多源先验信息约束的电磁波CT反演模型,并通过数值模拟和工程实例进行了测试和验证。试验结果表明:MAGA智能算法能够充分结合多种群协同进化和遗传参数自适应调节策略,相比于单一的遗传算法具有更高的全局及局部搜索准确性和稳定性;随着外部约束数据的增加,基于平均值约束的MAGA智能算法能够获得更优的电磁波CT反演目标函数收敛结果。以山西大同矿区8208工作面内电磁波CT地质异常反演和解释为例对所建模型进行检验,预测结果与实际揭露结果基本一致,进一步验证了多源信息约束下的智能反演方法在工程实践应用中的可靠性,为工作面内地质异常的精准反演和预测提供了一种新的思路和方法。

     

    Abstract: In order to meet the demand of accurate perception of geological anomaly distribution in intelligent precision mining of working face,and further improve the inversion accuracy of electromagnetic wave CT of working face,an intelligent inversion model of electromagnetic wave CT under the constraint of multi-source prior information was proposed.Based on the functional optimization transformation of the sparse matrix equations of the electromagnetic wave CT inversion of the working face,the optimization and evolution mechanism of the single genetic algorithm (SGA) was analyzed,and the search optimization performance of the SGA intelligent algorithm by different genetic parameters was discussed.The objective function solution mechanism of electromagnetic wave CT inversion for geological abnormalities of working face based on Multi-population adaptive genetic algorithm (MAGA) was designed.In addition,three constraint models of range constraint,nearest constraint and average value constraint were proposed.The multi-source prior geological information revealed in the production process,such as roadway exploration,drilling and mining,was taken as constraint conditions,and the evolution direction of geological anomaly inversion objective function search can be continuously adjusted.Finally,the electromagnetic wave CT inversion model based on MAGA intelligent algorithm and multi-source prior information constraint was formed,and it was tested and verified by numerical simulation and engineering example.The test results show that the MAGA intelligent algorithm can fully combine the multi-group co-evolution and the adaptive adjustment strategy of genetic parameters,and has higher global and local search accuracy and stability than SGA; With the increase of external constraint data,the MAGA intelligent algorithm based on average value constraint can obtain a better convergence result of the objective function of electromagnetic wave CT inversion.Taking the electromagnetic wave CT geological anomaly inversion and interpretation within 8208 working face of Datong mining area in Shanxi as an example to test the built model,the predicted results were basically consistent with the actual revealed results,which further verifies that the intelligent inversion method under the constraints of multi-source information is reliable in engineering practice.The proposed model provides a new idea and method for the accurate inversion and prediction of geological anomalies within the working face.

     

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