From Simulation to Validation in Ensuring Quality and Reliability in Model-Based Predictive Analysis

被引:0
|
作者
Hrehova, Stella [1 ]
Antosz, Katarzyna [2 ]
Husar, Jozef [1 ]
Vagaska, Alena [3 ]
机构
[1] Tech Univ Kosice, Fac Mfg Technol, Dept Ind Engn & Informat, Bayerova 1, Presov 08001, Slovakia
[2] Rzeszow Univ Technol, Fac Mech Engn & Aeronaut, Powstancow Warszawy Av 35-959, Rzeszow, Poland
[3] Tech Univ Kosice, Fac Mfg Technol, Dept Nat Sci & Humanities, Bayerova 1, Presov 08001, Slovakia
来源
APPLIED SCIENCES-BASEL | 2025年 / 15卷 / 06期
关键词
simulation; model; evaluation; metrics;
D O I
10.3390/app15063107
中图分类号
O6 [化学];
学科分类号
0703 ;
摘要
The increasing complexity of artificial intelligence and machine learning models has raised concerns about balancing model accuracy and interpretability. While advanced software tools facilitate model design, they also introduce challenges in selecting models that offer both high quality and manageable complexity. Validation techniques such as Root Mean Squared Error (RMSE), Mean Absolute Error (MAE), and the Akaike Information Criterion (AIC) enable quantitative assessment, but empirical studies indicate that higher complexity does not always improve predictive performance. This study proposes an approach to evaluate model complexity versus accuracy in predicting the absorption properties of composite materials with varying textile fibre content (10%, 20%, 30%, 40%). Using MATLAB's Curve Fitting Toolbox, we assessed polynomial, Fourier, and Gaussian regression models. The Gaussian regression model with six parameters (Gauss6) achieved the best balance between complexity and accuracy (R2 = 0.9429; RMSE = 0.013537; MAE = 0.004885). Increasing parameters beyond six showed diminishing returns, as confirmed by AIC (-2806.93 for Gauss6 vs. -2847.17 for Gauss7). These findings emphasise that higher model complexity does not necessarily enhance quality, highlighting the importance of structured model validation. This study provides insights for optimising predictive modelling in material science and other domains.
引用
收藏
页数:13
相关论文
共 50 条
  • [31] AUTOTUNING FOR MODEL-BASED PREDICTIVE CONTROL
    CLUETT, WR
    GOBERDHANSINGH, E
    AUTOMATICA, 1990, 26 (04) : 691 - 697
  • [32] Model-Based Software Reliability Prediction
    Krishna, G. Sri
    Mall, Rajib
    INFORMATION SYSTEMS, TECHNOLOGY AND MANAGEMENT, PROCEEDINGS, 2010, 54 : 145 - 155
  • [33] QUALITY OF ORANGE JUICE DRINK SUBJECTED TO A PREDICTIVE MODEL-BASED PASTEURIZATION PROCESS
    Gabriel, Alonzo A.
    Azanza, Maria Patricia V.
    JOURNAL OF FOOD QUALITY, 2009, 32 (04) : 452 - 468
  • [34] On the estimators of model-based and maximal reliability
    Ogasawara, Haruhiko
    JOURNAL OF MULTIVARIATE ANALYSIS, 2009, 100 (06) : 1232 - 1244
  • [35] Model-based software reliability prediction
    Krishna G.S.
    Mall R.
    Communications in Computer and Information Science, 2010, 54 : 145 - 155
  • [36] Development and validation of the CAN communication of the autark hybrid with model-based HIL simulation
    Anderl, T
    SIMULATION AND SIMULATORS - VIRTUAL MOBILITY, 2003, 1745 : 321 - 342
  • [37] Phoenix - A model-based Human Reliability Analysis methodology: Qualitative Analysis Procedure
    Ekanem, Nsimah J.
    Mosleh, Ali
    Shen, Song-Hua
    RELIABILITY ENGINEERING & SYSTEM SAFETY, 2016, 145 : 301 - 315
  • [38] Analysis and simulation on reliability based on fault tree model
    Jia, Yu-shuang
    Shi, Xian-ming
    Xiangtan Daxue Ziran Kexue Xuebao, 2001, 23 (04): : 101 - 105
  • [39] Dynamic Model-based Saddle-point Approximation for Reliability and Reliability-based Sensitivity Analysis
    Zhou, Di
    Pan, Ershun
    Zhang, Xufang
    Zhang, Yimin
    RELIABILITY ENGINEERING & SYSTEM SAFETY, 2020, 201
  • [40] Model-based validation of a DOx sensor
    Clarke, DW
    Fraher, PMA
    CONTROL ENGINEERING PRACTICE, 1996, 4 (09) : 1313 - 1320