Manufacturing process modeling and optimization based on Multi-Layer Perceptron network

被引:42
|
作者
Liao, TW [1 ]
Chen, LJ
机构
[1] Louisiana State Univ, Dept Ind & Mfg Syst Engn, Baton Rouge, LA 70803 USA
[2] TA Instruments Inc, New Castle, DE 19720 USA
关键词
D O I
10.1115/1.2830086
中图分类号
T [工业技术];
学科分类号
08 ;
摘要
It has been shown that a manufacturing process can be modeled (learned) using Multi-Layer Performance (MLP) neural network and then optimized directly using the learned network. This paper extends the previous work by examining several different MLP training algorithms for manufacturing process modeling and three methods for process optimization. The transformation method is used to convert a constrained objective function into an unconstrained one, which is then used as the error function in the process optimization stage. The simulation results indicate that: (i) the conjugate gradient algorithms with backtracking line search outperform the standard BP algorithm in convergence speed; (ii) the neural network approaches could yield more accurate process models than the regression method; (iii) the BP with simulated annealing method is the most reliable optimization method to generate the best optimal solution, and (iv) process optimization directly performed on the neural network is possible but cannot be easily automated totally, especially when the process concerned is a mixed integer problem.
引用
收藏
页码:109 / 119
页数:11
相关论文
共 50 条
  • [21] A Survey of Multi-layer Network Optimization
    Rozic, Ciril
    Klonidis, Dimitrios
    Tomkos, Ioannis
    20TH INTERNATIONAL CONFERENCE ON OPTICAL NETWORK DESIGN AND MODELING (ONDM 2016), 2016,
  • [22] Deep multi-layer perceptron-based evolutionary algorithm for dynamic multiobjective optimization
    Zhen Zhu
    Yanpeng Yang
    Dongqing Wang
    Xiang Tian
    Long Chen
    Xiaodong Sun
    Yingfeng Cai
    Complex & Intelligent Systems, 2022, 8 : 5249 - 5264
  • [23] Deep multi-layer perceptron-based evolutionary algorithm for dynamic multiobjective optimization
    Zhu, Zhen
    Yang, Yanpeng
    Wang, Dongqing
    Tian, Xiang
    Chen, Long
    Sun, Xiaodong
    Cai, Yingfeng
    COMPLEX & INTELLIGENT SYSTEMS, 2022, 8 (06) : 5249 - 5264
  • [24] Hybrid neural network model based on multi-layer perceptron and adaptive resonance theory
    Gavrilov, Andrey
    Lee, Young-Koo
    Lee, Stlngyoung
    ADVANCES IN NEURAL NETWORKS - ISNN 2006, PT 1, 2006, 3971 : 707 - 713
  • [25] Multi-Layer Perceptron Artificial Neural Network Based IoT Botnet Traffic Classification
    Javed, Yousra
    Rajabi, Navid
    PROCEEDINGS OF THE FUTURE TECHNOLOGIES CONFERENCE (FTC) 2019, VOL 1, 2020, 1069 : 973 - 984
  • [26] Respiratory signal prediction based on adaptive boosting and multi-layer perceptron neural network
    Sun, W. Z.
    Jiang, M. Y.
    Ren, L.
    Dang, J.
    You, T.
    Yin, F-F
    PHYSICS IN MEDICINE AND BIOLOGY, 2017, 62 (17): : 6822 - 6835
  • [27] A Multi-layer Perceptron-based Approach for Prediction of the Crude Oil Pyrolysis Process
    Rasouli, A. R.
    Dabiri, A.
    Nezamabadi-pour, H.
    ENERGY SOURCES PART A-RECOVERY UTILIZATION AND ENVIRONMENTAL EFFECTS, 2015, 37 (13) : 1464 - 1472
  • [28] Hybrid neural network based on models of multi-layer perceptron and adaptive resonance theory
    Gavrilov, AV
    Korus 2005, Proceedings, 2005, : 604 - 606
  • [29] Characterization of thin sand reservoirs based on a multi-layer perceptron deep neural network
    Du X.
    Fan T.
    Dong J.
    Nie Y.
    Fan H.
    Guo B.
    Shiyou Diqiu Wuli Kantan/Oil Geophysical Prospecting, 2020, 55 (06): : 1178 - 1187
  • [30] Measure-based modeling and FPGA Implementation of RF Power Amplifier using a multi-layer perceptron neural network
    Nunez-Perez, J. C.
    Cardenas-Valdez, J. R.
    Galaviz Aguilar, J. A.
    Gontrand, C.
    Goral, B.
    Verdier, J.
    2014 INTERNATIONAL CONFERENCE ON ELECTRONICS, COMMUNICATIONS AND COMPUTERS (CONIELECOMP), 2014, : 237 - 242