Parameter Solving of Probability Integral Method Based on Improved Genetic Algorithm

The probability integral method (PIM) is the main method for mining subsidence prediction in China. Parameter errors and model errors are the main sources of error in the application of the probability integral method. There are many surface subsidence problems caused by coal mining. In order to imp...

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Main Authors: Jingxian Li, Xuexiang Yu*, Ya Liang, Shenshen Chi
Format: Article
Language:English
Published: Faculty of Mechanical Engineering in Slavonski Brod, Faculty of Electrical Engineering in Osijek, Faculty of Civil Engineering in Osijek 2021-01-01
Series:Tehnički Vjesnik
Subjects:
Online Access:https://hrcak.srce.hr/file/371880
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author Jingxian Li
Xuexiang Yu*
Ya Liang
Shenshen Chi
author_facet Jingxian Li
Xuexiang Yu*
Ya Liang
Shenshen Chi
author_sort Jingxian Li
collection DOAJ
description The probability integral method (PIM) is the main method for mining subsidence prediction in China. Parameter errors and model errors are the main sources of error in the application of the probability integral method. There are many surface subsidence problems caused by coal mining. In order to improve the accuracy and operating efficiency of the genetic algorithm (GA) in calculating the parameters of the PIM, this paper proposes an improved genetic algorithm (IGA) by adding the dynamic crossover and mutation rate to the traditional GA. Made improvements to the shortcomings of random crossover and mutation rate of all individuals in the population in the original algorithm.Through simulation experiments, it is confirmed that the IGA improves the calculation efficiency and accuracy of the traditional GA under the same conditions.The IGA has higher accuracy, reliability, resistance to gross interference and resistance to missing observation points. This method is obviously superior to direct inversion and conventional optimization inversion algorithms, and effectively avoids the dependence on the initial value of the probabilistic integral method parameter.
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spelling doaj.art-edeca535abaa4cd390b7d2bfff3b85a92024-04-15T16:52:48ZengFaculty of Mechanical Engineering in Slavonski Brod, Faculty of Electrical Engineering in Osijek, Faculty of Civil Engineering in OsijekTehnički Vjesnik1330-36511848-63392021-01-0128251552210.17559/TV-20200429150210Parameter Solving of Probability Integral Method Based on Improved Genetic AlgorithmJingxian Li0Xuexiang Yu*1Ya Liang2Shenshen Chi31) School of Earth and Environment, Anhui University of Science and Technology; 2) School of Geomatics, Anhui University of Science and Technology; 3) Key Laboratory of Aviation-aerospace-ground Cooperative Monitoring and Early Warning of Coal Mining-induced Disasters of Anhui Higher Education Institutes; 4) Coal Industry Engineering Research Center of Mining Area Environmental and Disaster Cooperative Monitoring, Anhui University of Science and TechnologySchool of Geomatics, Anhui University of Science and Technology, No. 168, Taifeng Street, Huainan City, Anhui Province, 232001, ChinaSchool of Mathematics and Big Data, Anhui University of Science and Technology, Huainan, 232001, ChinaSchool of Earth and Environment, Anhui University of Science and Technology, Huainan, 232001, ChinaThe probability integral method (PIM) is the main method for mining subsidence prediction in China. Parameter errors and model errors are the main sources of error in the application of the probability integral method. There are many surface subsidence problems caused by coal mining. In order to improve the accuracy and operating efficiency of the genetic algorithm (GA) in calculating the parameters of the PIM, this paper proposes an improved genetic algorithm (IGA) by adding the dynamic crossover and mutation rate to the traditional GA. Made improvements to the shortcomings of random crossover and mutation rate of all individuals in the population in the original algorithm.Through simulation experiments, it is confirmed that the IGA improves the calculation efficiency and accuracy of the traditional GA under the same conditions.The IGA has higher accuracy, reliability, resistance to gross interference and resistance to missing observation points. This method is obviously superior to direct inversion and conventional optimization inversion algorithms, and effectively avoids the dependence on the initial value of the probabilistic integral method parameter.https://hrcak.srce.hr/file/371880dynamic crossovergenetic algorithmground subsidencemutation rate
spellingShingle Jingxian Li
Xuexiang Yu*
Ya Liang
Shenshen Chi
Parameter Solving of Probability Integral Method Based on Improved Genetic Algorithm
Tehnički Vjesnik
dynamic crossover
genetic algorithm
ground subsidence
mutation rate
title Parameter Solving of Probability Integral Method Based on Improved Genetic Algorithm
title_full Parameter Solving of Probability Integral Method Based on Improved Genetic Algorithm
title_fullStr Parameter Solving of Probability Integral Method Based on Improved Genetic Algorithm
title_full_unstemmed Parameter Solving of Probability Integral Method Based on Improved Genetic Algorithm
title_short Parameter Solving of Probability Integral Method Based on Improved Genetic Algorithm
title_sort parameter solving of probability integral method based on improved genetic algorithm
topic dynamic crossover
genetic algorithm
ground subsidence
mutation rate
url https://hrcak.srce.hr/file/371880
work_keys_str_mv AT jingxianli parametersolvingofprobabilityintegralmethodbasedonimprovedgeneticalgorithm
AT xuexiangyu parametersolvingofprobabilityintegralmethodbasedonimprovedgeneticalgorithm
AT yaliang parametersolvingofprobabilityintegralmethodbasedonimprovedgeneticalgorithm
AT shenshenchi parametersolvingofprobabilityintegralmethodbasedonimprovedgeneticalgorithm