Prediction of the colorimetric parameters and mass loss of heat-treated bamboo: Comparison of multiple linear regression and artificial neural network method

被引:9
|
作者
Gurgen, Aysenur [1 ]
Topaloglu, Elif [2 ]
Ustaomer, Derya [1 ]
Yildiz, Sibel [1 ]
Ay, Nurgul [1 ]
机构
[1] Karadeniz Tech Univ, Fac Forest, Forest Ind Engn, TR-61080 Trabzon, Turkey
[2] Giresun Univ, Tech Sci Vocat Sch, Architecture & Urban Planning Dept, Giresun, Turkey
关键词
artificial neural network; bamboo; colorimetric parameter; mass loss; multiple linear regressions; THERMAL MODIFICATION; MECHANICAL-PROPERTIES; CHEMICAL-PROPERTIES; COLOR; SURFACE; OIL;
D O I
10.1002/col.22393
中图分类号
O69 [应用化学];
学科分类号
081704 ;
摘要
In this study, the colorimetric parameters (L*, a*, b*) and mass loss of heat-treated bamboo were investigated, and the obtained results were modeled by using two methods: multiple linear regression (MLR) and artificial neural network (ANN). First, bamboo samples were exposed to heat treatment at different temperatures (110 degrees C, 140 degrees C, 170 degrees C, and 200 degrees C) and durations (15, 30, 45, 60, 75, 90, and 115 minutes) in a laboratory oven. Then, the colorimetric parameters (L*, a*, b*) and mass loss of each sample were measured after each period of heat treatment. All data were modeled by using two methods separately for each parameter and the performances of these proposed methods were compared. It was found that color change and mass loss increased with increasing temperature and duration of heat treatment. Mean absolute percentage error (MAPE) values of all obtained MLR ranged from 0.64% to 10.63%, while the all MAPE values of ANN were found to be lower than 1.5%. Based on these results, it can be said that MLR and ANN could be used to evaluate the changes on the selected properties of heat-treated bamboo samples. On the other hand, it should be emphasized that the ANN gave more accurate results than the MLR method because of its learning capability.
引用
收藏
页码:824 / 833
页数:10
相关论文
共 50 条
  • [22] Multiple Regression and Artificial Neural Network for the Prediction of Crop Pest Risks
    Yan, Yingwei
    Feng, Chen-Chieh
    Wan, Maffee Peng-Hui
    Chang, Klarissa Ting-Ting
    INFORMATION SYSTEMS FOR CRISIS RESPONSE AND MANAGEMENT IN MEDITERRANEAN COUNTRIES, ISCRAM-MED 2015, 2015, 233 : 73 - 84
  • [23] Development of an Artificial Neural Network Model to Minimize Power Consumption in the Milling of Heat-Treated and Untreated Wood
    Ozsahin, Sukru
    Singer, Hilal
    KASTAMONU UNIVERSITY JOURNAL OF FORESTRY FACULTY, 2019, 19 (03): : 317 - 328
  • [24] Prediction of feed abrasive value by artificial neural networks and multiple linear regression
    Norouzian, M. A.
    Asadpour, S.
    NEURAL COMPUTING & APPLICATIONS, 2012, 21 (05) : 905 - 909
  • [25] Prediction of feed abrasive value by artificial neural networks and multiple linear regression
    M. A. Norouzian
    S. Asadpour
    Neural Computing and Applications, 2012, 21 : 905 - 909
  • [26] Effect of fibre-quality parameters on pulp properties by using multiple linear regression and artificial neural network
    Uddin, Mohammad Nashir
    Likhon, Md. Nur Alam
    Rahman, Md. Mostafizur
    Jahan, Md. Sarwar
    International Wood Products Journal, 2024, 15 (2-4) : 91 - 99
  • [27] Multiple linear regression, artificial neural network, and fuzzy logic prediction of 28 days compressive strength of concrete
    Khademi, Faezehossadat
    Akbari, Mahmoud
    Jamal, Sayed Mohammadmehdi
    Nikoo, Mehdi
    FRONTIERS OF STRUCTURAL AND CIVIL ENGINEERING, 2017, 11 (01) : 90 - 99
  • [28] Prediction of urban expressway total traffic accident duration based on multiple linear regression and artificial neural network
    Zhang, Jie
    Wang, Junhua
    Fang, Shouen
    2019 5TH INTERNATIONAL CONFERENCE ON TRANSPORTATION INFORMATION AND SAFETY (ICTIS 2019), 2019, : 503 - 510
  • [29] Prediction of drape profile of cotton woven fabrics using artificial neural network and multiple regression method
    Pattanayak, Ajit Kumar
    Luximon, Ameersing
    Khandual, Asimananda
    TEXTILE RESEARCH JOURNAL, 2011, 81 (06) : 559 - 566
  • [30] Multiple linear regression, artificial neural network, and fuzzy logic prediction of 28 days compressive strength of concrete
    Faeze Khademi
    Mahmoud Akbari
    Sayed Mohammadmehdi Jamal
    Mehdi Nikoo
    Frontiers of Structural and Civil Engineering, 2017, 11 : 90 - 99