Selection of quasi-optimal inputs in chemometrics modeling by artificial neural network analysis

被引:40
|
作者
Boger, Z [1 ]
机构
[1] Ind Neural Syst Ltd, OPTIMAL, IL-84243 Beer Sheva, Israel
[2] Ind Neural Syst Ltd, OPTIMAL, Rockville, MD 20852 USA
关键词
artificial neural networks; chemometrics; input selection; microhotplate sensor array;
D O I
10.1016/S0003-2670(03)00349-0
中图分类号
O65 [分析化学];
学科分类号
070302 ; 081704 ;
摘要
Instrumentation spectra used for chemometrics analysis are often too unwieldy to model, as many of the inputs do not contain important information. Several mathematical methods are used for reducing the number of inputs to the significant ones only. Artificial neural networks (ANN) modeling suffers from difficulties in training models with a large number of inputs. However, using a non-random initial connection weight algorithm and local minima avoidance and escape techniques can overcome these difficulties. Once the ANN model is trained, the analysis of its connection weights can easily identify the more relevant inputs. Repeating the process of training the ANN model with the reduced input set and the selection of the more relevant inputs can proceed until a quasi-optimal, small, set of inputs is identified. Two examples are presented-finding the minimal set of wavelengths in benchmark diesel fuel NIR spectra, and in spectra generated in a recent work, modeling of "artificial nose" sensor array. In the last example, 1260 inputs were reduced to optimal sets of <10 inputs. Causal index calculation can analyze the influence of each of selected wavelengths on the predicted property. Some of the resulting minimal sets are not unique, depending on the ANN architecture used in the training. The accuracy of the resulting ANN models is usually better, and more robust, than the original large ANN model. (C) 2003 Elsevier Science B.V. All rights reserved.
引用
收藏
页码:31 / 40
页数:10
相关论文
共 50 条
  • [41] Analysis of quasi-optimal polynomial approximations for parameterized PDEs with deterministic and stochastic coefficients
    Tran, Hoang
    Webster, Clayton G.
    Zhang, Guannan
    NUMERISCHE MATHEMATIK, 2017, 137 (02) : 451 - 493
  • [42] Neural network for modeling esthetic selection
    Gedeon, Tamas Domonkos
    NEURAL INFORMATION PROCESSING, PART II, 2008, 4985 : 666 - 674
  • [43] Modeling and Planning on Urban Logistics Park Location Selection Based on the Artificial Neural Network
    Huang, Lijuan
    JOURNAL OF COMPUTERS, 2012, 7 (03) : 792 - 797
  • [44] Optimal artificial neural network architecture design for modeling an industrial ethylene oxide plant
    Sildir, Hasan
    Sarrafi, Sahin
    Aydin, Erdal
    COMPUTERS & CHEMICAL ENGINEERING, 2022, 163
  • [45] Analysis of quasi-optimal polynomial approximations for parameterized PDEs with deterministic and stochastic coefficients
    Hoang Tran
    Clayton G. Webster
    Guannan Zhang
    Numerische Mathematik, 2017, 137 : 451 - 493
  • [46] Artificial neural network for optimal power flow
    Kasangaki, V.B.A.
    Sendaula, H.M.
    Biswas, S.K.
    International Journal of Power and Energy Systems, 1998, 18 (03): : 225 - 229
  • [47] OPTIMAL VISUAL TRACKING WITH ARTIFICIAL NEURAL NETWORK
    DOBNIKAR, A
    LIKAR, A
    PODBREGAR, D
    FIRST IEE INTERNATIONAL CONFERENCE ON ARTIFICIAL NEURAL NETWORKS, 1989, : 275 - 279
  • [48] A review of artificial neural network based chemometrics applied in laser-induced breakdown spectroscopy analysis
    Li, Lu-Ning
    Liu, Xiang-Feng
    Yang, Fan
    Xu, Wei-Ming
    Wang, Jian-Yu
    Shu, Rong
    SPECTROCHIMICA ACTA PART B-ATOMIC SPECTROSCOPY, 2021, 180
  • [49] Application of artificial neural network for constitutive modeling in finite element analysis
    Javadi, A. A.
    Tan, T. P.
    Elkassas, A. S. I.
    NUMERICAL MODELS IN GEOMECHANICS: NUMOG X, 2007, : 635 - 639
  • [50] Modeling of tool wear in drilling by statistical analysis and artificial neural network
    Sanjay, C
    Neema, ML
    Chin, CW
    JOURNAL OF MATERIALS PROCESSING TECHNOLOGY, 2005, 170 (03) : 494 - 500