Strategies for constructing mathematical models of nonlinear systems based on multiple linear regression models

Mathematical systems often have nonlinear, time-varying, time-lagged, and uncertain factors, which affect the experimental prediction accuracy. In order to improve the experimental prediction accuracy, this paper inputs the independent and dependent variable data sets as the original samples into a...

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Main Authors: Shao Yongcun, Qin Cong
Format: Article
Language:English
Published: Sciendo 2024-01-01
Series:Applied Mathematics and Nonlinear Sciences
Subjects:
Online Access:https://doi.org/10.2478/amns.2023.1.00078
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author Shao Yongcun
Qin Cong
author_facet Shao Yongcun
Qin Cong
author_sort Shao Yongcun
collection DOAJ
description Mathematical systems often have nonlinear, time-varying, time-lagged, and uncertain factors, which affect the experimental prediction accuracy. In order to improve the experimental prediction accuracy, this paper inputs the independent and dependent variable data sets as the original samples into a multiple linear regression function performs fitting calculations to obtain the nonlinear factors, and constructs a mathematical model of nonlinear systems based on a multiple linear regression model. In this model, the expected output value is calculated, and the input vector and output vector are continuously controlled for rolling operations to obtain the prediction results. A mathematical experiment of nonlinear system dynamics of vibration of deep water trap-test pipe system is set up to test the prediction ability of the model. The results show that the nonlinear system mathematical model based on the multiple linear regression model has a very high prediction accuracy. In the mathematical experiments of vibration nonlinear system dynamics of deep water trap-test pipe system, the error of the nonlinear system mathematical model based on multiple linear regression model in the transverse flow vibration frequency of the trap pipe column is 2%, which is lower than the single trap pipe calculation model by 4%. The prediction accuracy of the nonlinear system mathematical model based on the multiple linear regression model is higher than that of the single test tube model calculation by 78%. This shows that the nonlinear system mathematical model based on the multiple linear regression model can improve the experimental prediction accuracy.
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spelling doaj.art-6fe49175583d4a8b89f7945741bbb57f2024-01-29T08:52:25ZengSciendoApplied Mathematics and Nonlinear Sciences2444-86562024-01-019110.2478/amns.2023.1.00078Strategies for constructing mathematical models of nonlinear systems based on multiple linear regression modelsShao Yongcun0Qin Cong11Suzhou City University, Suzhou, Jiangsu, 215104, China2Center for Financial Engineering Soochow University, Suzhou, Jiangsu, 215006, ChinaMathematical systems often have nonlinear, time-varying, time-lagged, and uncertain factors, which affect the experimental prediction accuracy. In order to improve the experimental prediction accuracy, this paper inputs the independent and dependent variable data sets as the original samples into a multiple linear regression function performs fitting calculations to obtain the nonlinear factors, and constructs a mathematical model of nonlinear systems based on a multiple linear regression model. In this model, the expected output value is calculated, and the input vector and output vector are continuously controlled for rolling operations to obtain the prediction results. A mathematical experiment of nonlinear system dynamics of vibration of deep water trap-test pipe system is set up to test the prediction ability of the model. The results show that the nonlinear system mathematical model based on the multiple linear regression model has a very high prediction accuracy. In the mathematical experiments of vibration nonlinear system dynamics of deep water trap-test pipe system, the error of the nonlinear system mathematical model based on multiple linear regression model in the transverse flow vibration frequency of the trap pipe column is 2%, which is lower than the single trap pipe calculation model by 4%. The prediction accuracy of the nonlinear system mathematical model based on the multiple linear regression model is higher than that of the single test tube model calculation by 78%. This shows that the nonlinear system mathematical model based on the multiple linear regression model can improve the experimental prediction accuracy.https://doi.org/10.2478/amns.2023.1.00078multiple linear regression functionnonlinear system modelfitting calculationrolling operationprediction accuracy62j02
spellingShingle Shao Yongcun
Qin Cong
Strategies for constructing mathematical models of nonlinear systems based on multiple linear regression models
Applied Mathematics and Nonlinear Sciences
multiple linear regression function
nonlinear system model
fitting calculation
rolling operation
prediction accuracy
62j02
title Strategies for constructing mathematical models of nonlinear systems based on multiple linear regression models
title_full Strategies for constructing mathematical models of nonlinear systems based on multiple linear regression models
title_fullStr Strategies for constructing mathematical models of nonlinear systems based on multiple linear regression models
title_full_unstemmed Strategies for constructing mathematical models of nonlinear systems based on multiple linear regression models
title_short Strategies for constructing mathematical models of nonlinear systems based on multiple linear regression models
title_sort strategies for constructing mathematical models of nonlinear systems based on multiple linear regression models
topic multiple linear regression function
nonlinear system model
fitting calculation
rolling operation
prediction accuracy
62j02
url https://doi.org/10.2478/amns.2023.1.00078
work_keys_str_mv AT shaoyongcun strategiesforconstructingmathematicalmodelsofnonlinearsystemsbasedonmultiplelinearregressionmodels
AT qincong strategiesforconstructingmathematicalmodelsofnonlinearsystemsbasedonmultiplelinearregressionmodels