Application of Meta-Heuristic Hybrid Artificial Intelligence Techniques for Modeling of Bonding Strength of Plywood Panels

Cilt: 15 Sayı: 1 30 Temmuz 2014
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Application of Meta-Heuristic Hybrid Artificial Intelligence Techniques for Modeling of Bonding Strength of Plywood Panels

Öz

Plywood, which is one of the most important wood based panels, has many usage areas changing from traffic signs to building constructions in many countries. It is known that the high quality plywood panel manufacturing has been achieved with a good bonding under the optimum pressure conditions depending on adhesive type. This is a study of determining the using possibilities of modern meta-heuristic hybrid artificial intelligence techniques such as IKE and AANN methods for prediction of bonding strength of plywood panels. This study has composed of two main parts as experimental and analytical. Scots pine, maritime pine and European black pine logs were used as wood species. The pine veneers peeled at 32°C and 50°C were dried at 110°C, 140°C and 160°C temperatures. Phenol formaldehyde and melamine urea formaldehyde resins were used as adhesive types. EN 314-1 standard was used to determine the bonding shear strength values of plywood panels in experimental part of this study. Then the intuitive k-nearest neighbor estimator (IKE) and adaptive artificial neural network (AANN) were used to estimate bonding strength of plywood panels. The best estimation performance was obtained from MA metric for k-value=10. The most effective factor on bonding strength was determined as adhesive type. Error rates were determined less than 5% for both of the IKE and AANN. It may be recommended that proposed methods could be used in applying to estimation of bonding strength values of plywood panels.

Anahtar Kelimeler

Kaynakça

  1. Aksoy A, Iskender E, Kahraman HT (2012) Application of the Intuitive k-NN Estimator for Prediction of the Marshall Test (AstmD1559) Results For Asphalt Mixtures. Construction & Building Materials 34: 561-569.
  2. Aydin I, Colakoglu G (2005) Formaldehyde Emission, Surface Roughness, and Some Properties of Plywood as Function of Veneer Drying Temperature. Drying Technology 23: 1107-117
  3. Aydın I, Colakoglu G, Hiziroglu S (2006) Surface Characteristics of Spruce Veneers and Shear Strength of Plywood as a Function of Log Temperature in Peeling Process. International Journal of Solids and Structures 43: 6140-6147.
  4. Babu GS, Suresh S (2013) Parkinson’s Disease Prediction Using Gene Expression – A Projection Based Learning Meta-Cognitive Neural Classifier Approach. Expert Systems with Applications 40: 1519–1529.
  5. Bayindir R, Colak I, Sagiroglu S, Kahraman HT (2012) Application of Adaptive Artificial Neural Network Method to Model the Excitation Currents of Synchronous Motors. The 11th IEEE International Conference on Machine Learning Applications (ICMLA 2012), 12-15 Dec. 2012, Florida, USA, 2, 498-502.
  6. Chow S, Chunsi KS (1979) Adhesion strength and wood failure relationship in wood-glue bonds. Mokuzai Gakkaishi 25(2): 125–31.
  7. Christiansen AW (1990) How Overdrying Wood Reduces Its bonding to Phenol Formaldehyde Adhesives: A Critical Review of The Literature. Part I. Physical Responses. Wood and Fiber Science 22(4): 441-459.
  8. Demirkır C (2012) Using Possibilities of Pine Species in Turkey for Structural Plywood Manufacturing, PhD Thesis, Karadeniz Technical University, The Graduate School of Natural and Applied Sciences, Forest Industrial Engineering Department.

Ayrıntılar

Birincil Dil

İngilizce

Konular

-

Bölüm

-

Yayımlanma Tarihi

30 Temmuz 2014

Gönderilme Tarihi

26 Eylül 2013

Kabul Tarihi

-

Yayımlandığı Sayı

Yıl 2014 Cilt: 15 Sayı: 1

Kaynak Göster

APA
Demirkır, C., Kahraman, H. T., & Çolakoğlu, G. (2014). Application of Meta-Heuristic Hybrid Artificial Intelligence Techniques for Modeling of Bonding Strength of Plywood Panels. Artvin Çoruh Üniversitesi Orman Fakültesi Dergisi, 15(1), 20-32. https://doi.org/10.17474/acuofd.88981
AMA
1.Demirkır C, Kahraman HT, Çolakoğlu G. Application of Meta-Heuristic Hybrid Artificial Intelligence Techniques for Modeling of Bonding Strength of Plywood Panels. AÇÜOFD. 2014;15(1):20-32. doi:10.17474/acuofd.88981
Chicago
Demirkır, Cenk, Hamdi Tolga Kahraman, ve Gürsel Çolakoğlu. 2014. “Application of Meta-Heuristic Hybrid Artificial Intelligence Techniques for Modeling of Bonding Strength of Plywood Panels”. Artvin Çoruh Üniversitesi Orman Fakültesi Dergisi 15 (1): 20-32. https://doi.org/10.17474/acuofd.88981.
EndNote
Demirkır C, Kahraman HT, Çolakoğlu G (01 Temmuz 2014) Application of Meta-Heuristic Hybrid Artificial Intelligence Techniques for Modeling of Bonding Strength of Plywood Panels. Artvin Çoruh Üniversitesi Orman Fakültesi Dergisi 15 1 20–32.
IEEE
[1]C. Demirkır, H. T. Kahraman, ve G. Çolakoğlu, “Application of Meta-Heuristic Hybrid Artificial Intelligence Techniques for Modeling of Bonding Strength of Plywood Panels”, AÇÜOFD, c. 15, sy 1, ss. 20–32, Tem. 2014, doi: 10.17474/acuofd.88981.
ISNAD
Demirkır, Cenk - Kahraman, Hamdi Tolga - Çolakoğlu, Gürsel. “Application of Meta-Heuristic Hybrid Artificial Intelligence Techniques for Modeling of Bonding Strength of Plywood Panels”. Artvin Çoruh Üniversitesi Orman Fakültesi Dergisi 15/1 (01 Temmuz 2014): 20-32. https://doi.org/10.17474/acuofd.88981.
JAMA
1.Demirkır C, Kahraman HT, Çolakoğlu G. Application of Meta-Heuristic Hybrid Artificial Intelligence Techniques for Modeling of Bonding Strength of Plywood Panels. AÇÜOFD. 2014;15:20–32.
MLA
Demirkır, Cenk, vd. “Application of Meta-Heuristic Hybrid Artificial Intelligence Techniques for Modeling of Bonding Strength of Plywood Panels”. Artvin Çoruh Üniversitesi Orman Fakültesi Dergisi, c. 15, sy 1, Temmuz 2014, ss. 20-32, doi:10.17474/acuofd.88981.
Vancouver
1.Cenk Demirkır, Hamdi Tolga Kahraman, Gürsel Çolakoğlu. Application of Meta-Heuristic Hybrid Artificial Intelligence Techniques for Modeling of Bonding Strength of Plywood Panels. AÇÜOFD. 01 Temmuz 2014;15(1):20-32. doi:10.17474/acuofd.88981
Creative Commons Lisansı
Artvin Çoruh Üniversitesi Orman Fakültesi Dergisi Creative Commons Alıntı 4.0 Uluslararası Lisansı ile lisanslanmıştır.