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Published in: European Journal of Wood and Wood Products 4/2019

02-05-2019 | Original

Performance evaluation of multiple adaptive regression splines, teaching–learning based optimization and conventional regression techniques in predicting mechanical properties of impregnated wood

Authors: Sebahattin Tiryaki, Hüseyin Tan, Selahattin Bardak, Murat Kankal, Sinan Nacar, Hüseyin Peker

Published in: European Journal of Wood and Wood Products | Issue 4/2019

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Abstract

Understanding the mechanical behaviour of impregnated wood is crucial in making a preliminary decision on the usability of such woods for structural purposes. In this paper, by considering concentration (1, 3 and 5%), pressure (1, 1.5 and 2 atm.), and time (30, 60, 90 and 120 min), an experimental study was performed, and the mechanical behaviour of impregnated wood was determined as a result of the experimental process. Multiple adaptive regression splines (MARS), teaching–learning based optimization (TLBO) algorithms and conventional regression analysis (CRA) were applied to different regression functions by using experimentally obtained data. The functions were checked against each other to detect the best equation for each parameter and to assess performances of MARS, TLBO and CRA methods in the prediction of mechanical properties. The experimental results showed that higher values of mechanical properties were obtained when lower concentration, pressure and time were chosen. Overall, all the functions successfully predicted the mechanical properties. However, the MARS and TLBO provided better accuracy in predicting the mechanical properties. The modeling results indicated that the MARS and TLBO are promising new methods in predicting the mechanical properties of impregnated wood. With the use of these methods, the mechanical behavior of impregnated wood could be determined with high levels of accuracy. Thus, the proposed methods may facilitate a preliminary decision concerning the usability of such woods for areas where the mechanical properties are important. Finally, the employment of MARS and TLBO algorithms by practitioners in the wood industry is encouraged and recommended for future studies.

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Literature
go back to reference Amiri B (2012) Application of teaching–learning-based optimization algorithm on cluster analysis. J Basic Appl Sci Res 2(11):11795–11802 Amiri B (2012) Application of teaching–learning-based optimization algorithm on cluster analysis. J Basic Appl Sci Res 2(11):11795–11802
go back to reference ASTM D 1413 (1976) Standard test method of testing wood preservatives by laboratory soil block cultures, 1976: annual book of ASTM standards, USA, pp 452–460 ASTM D 1413 (1976) Standard test method of testing wood preservatives by laboratory soil block cultures, 1976: annual book of ASTM standards, USA, pp 452–460
go back to reference Bas D, Boyacı IH (2007) Modeling and optimization I: usability of response surface methodology. J Food Eng 78:836–845CrossRef Bas D, Boyacı IH (2007) Modeling and optimization I: usability of response surface methodology. J Food Eng 78:836–845CrossRef
go back to reference Bayram A, Uzlu E, Kankal M, Dede T (2015) Modeling stream dissolved oxygen concentration using teaching–learning based optimization algorithm. Environ Earth Sci 73:6565–6576CrossRef Bayram A, Uzlu E, Kankal M, Dede T (2015) Modeling stream dissolved oxygen concentration using teaching–learning based optimization algorithm. Environ Earth Sci 73:6565–6576CrossRef
go back to reference Baysal E, Yalinkilic MK (2005) A new boron impregnation technique of wood by vapor boron of boric acid to reduce leaching boron from wood. Wood Sci Technol 39:187–198CrossRef Baysal E, Yalinkilic MK (2005) A new boron impregnation technique of wood by vapor boron of boric acid to reduce leaching boron from wood. Wood Sci Technol 39:187–198CrossRef
go back to reference Behzad HM, Ashori A, Tarmian A, Tajvidi M (2012) Impacts of wood preservative treatments on some physico-mechanical properties of wood flour/high density polyethylene composites. Const Build Mater 35:246–250CrossRef Behzad HM, Ashori A, Tarmian A, Tajvidi M (2012) Impacts of wood preservative treatments on some physico-mechanical properties of wood flour/high density polyethylene composites. Const Build Mater 35:246–250CrossRef
go back to reference Chen T, Hong Z, F-a Deng, Yang X, Wei J, Cui M (2015) A novel selective ensemble classification of microarray data based on teaching-learning-based optimization. Int J Multimed Ubiquitous Eng 10(6):203–218CrossRef Chen T, Hong Z, F-a Deng, Yang X, Wei J, Cui M (2015) A novel selective ensemble classification of microarray data based on teaching-learning-based optimization. Int J Multimed Ubiquitous Eng 10(6):203–218CrossRef
go back to reference Cheng MY, Cao MT (2014) Evolutionary multivariate adaptive regression splines for estimating shear strength in reinforced-concrete deep beams. Eng Appl Artif Intell 28:86–96CrossRef Cheng MY, Cao MT (2014) Evolutionary multivariate adaptive regression splines for estimating shear strength in reinforced-concrete deep beams. Eng Appl Artif Intell 28:86–96CrossRef
go back to reference Das SK, Suman S (2015) Prediction of lateral load capacity of pile in clay using multivariate adaptive regression spline and functional network. Arab J Sci Eng 40(6):1565–1578CrossRef Das SK, Suman S (2015) Prediction of lateral load capacity of pile in clay using multivariate adaptive regression spline and functional network. Arab J Sci Eng 40(6):1565–1578CrossRef
go back to reference Dede T (2013) Optimum design of grillage structures to LRFD-AISC with teaching–learning based optimization. Struct Multidisc Optim 48:955–964CrossRef Dede T (2013) Optimum design of grillage structures to LRFD-AISC with teaching–learning based optimization. Struct Multidisc Optim 48:955–964CrossRef
go back to reference Değirmentepe S, Baysal E, Türkoğlu T, Toker H, Deveci E (2015) Some properties of Turkish sweetgum balsam (Styrax Liquidus) impregnated oriental beech wood part II: decay resistance, mechanical, and thermal properties. Wood Res 60(4):591–604 Değirmentepe S, Baysal E, Türkoğlu T, Toker H, Deveci E (2015) Some properties of Turkish sweetgum balsam (Styrax Liquidus) impregnated oriental beech wood part II: decay resistance, mechanical, and thermal properties. Wood Res 60(4):591–604
go back to reference Deo RC, Kisi O, Singh VP (2017) Drought forecasting in eastern Australia using multivariate adaptive regression spline, least square support vector machine and M5Tree model. Atmos Res 184:149–175CrossRef Deo RC, Kisi O, Singh VP (2017) Drought forecasting in eastern Australia using multivariate adaptive regression spline, least square support vector machine and M5Tree model. Atmos Res 184:149–175CrossRef
go back to reference Dey P, Das AK (2016) Application of multivariate adaptive regression spline-assisted objective function on optimization of heat transfer rate around a Cylinder. Nucl Eng Technol 48:1315–1320CrossRef Dey P, Das AK (2016) Application of multivariate adaptive regression spline-assisted objective function on optimization of heat transfer rate around a Cylinder. Nucl Eng Technol 48:1315–1320CrossRef
go back to reference Eslah F, Enayati AA, Tajvidi M, Faezipour MM (2012) Regression models for the prediction of poplar particleboard properties based on urea formaldehyde resin content and board density. J Agric Sci Tech 14:1321–1329 Eslah F, Enayati AA, Tajvidi M, Faezipour MM (2012) Regression models for the prediction of poplar particleboard properties based on urea formaldehyde resin content and board density. J Agric Sci Tech 14:1321–1329
go back to reference Esteban LG, Fernández FG, de Palacios P, Conde M (2009) Artificial neural networks in variable process control: application in particleboard manufacture. Invest Agrar Sist Recur For 18(1):92–100 Esteban LG, Fernández FG, de Palacios P, Conde M (2009) Artificial neural networks in variable process control: application in particleboard manufacture. Invest Agrar Sist Recur For 18(1):92–100
go back to reference Fernandez FG, Esteban LG, de Palacios P, Navarro N, Conde M (2008) Prediction of standard particleboard mechanical properties utilizing an artificial neural network and subsequent comparison with a multivariate regression model. Invest Agrar Sist R 17:178–187CrossRef Fernandez FG, Esteban LG, de Palacios P, Navarro N, Conde M (2008) Prediction of standard particleboard mechanical properties utilizing an artificial neural network and subsequent comparison with a multivariate regression model. Invest Agrar Sist R 17:178–187CrossRef
go back to reference Fernandez FG, DePalacios P, Esteban LG, Iruela AG, Rodrigo BG, Menasalvas E (2012) Prediction of MOR and MOE of structural plywood board using an artificial neural network and comparison with a multivariate regression model. Compos B 43:3528–3533CrossRef Fernandez FG, DePalacios P, Esteban LG, Iruela AG, Rodrigo BG, Menasalvas E (2012) Prediction of MOR and MOE of structural plywood board using an artificial neural network and comparison with a multivariate regression model. Compos B 43:3528–3533CrossRef
go back to reference Friedman JH (1991) Multivariate adaptive regression splines (with Discussion). Ann Stat 19(1):1–141CrossRef Friedman JH (1991) Multivariate adaptive regression splines (with Discussion). Ann Stat 19(1):1–141CrossRef
go back to reference Hashemi SKH, Latibari AJ, Khademi-Eslam H, Alamuti RF (2010) Effect of boric acid treatment on decay resistance and mechanical properties of poplar wood. BioResources 5(2):690–698 Hashemi SKH, Latibari AJ, Khademi-Eslam H, Alamuti RF (2010) Effect of boric acid treatment on decay resistance and mechanical properties of poplar wood. BioResources 5(2):690–698
go back to reference Kecebas A, Yabanova I, Yumurtaci M (2012) Artificial neural network modeling of geothermal district heating system thought exergy analysis. Energy Convers Manage 64:206–212CrossRef Kecebas A, Yabanova I, Yumurtaci M (2012) Artificial neural network modeling of geothermal district heating system thought exergy analysis. Energy Convers Manage 64:206–212CrossRef
go back to reference Khuntia S, Mujtaba H, Patra C, Farooq K, Sivakugan N, Das BM (2015) Prediction of compaction parameters of coarse grained soil using multivariate adaptive regression splines (MARS). Int J Geotech Eng 9(1):79–88CrossRef Khuntia S, Mujtaba H, Patra C, Farooq K, Sivakugan N, Das BM (2015) Prediction of compaction parameters of coarse grained soil using multivariate adaptive regression splines (MARS). Int J Geotech Eng 9(1):79–88CrossRef
go back to reference Lin WW, Yu DY, Wang S, Zhang CY, Zhang SQ, Tian HY et al (2015) Multi-objective teaching–learning-based optimization algorithm for reducing carbon emissions and operation time in turning operations. Eng Optim 47:994–1007CrossRef Lin WW, Yu DY, Wang S, Zhang CY, Zhang SQ, Tian HY et al (2015) Multi-objective teaching–learning-based optimization algorithm for reducing carbon emissions and operation time in turning operations. Eng Optim 47:994–1007CrossRef
go back to reference Ozciftci A, Ayar S, Baysal E, Toker H (2011) The effects of some impregnation parameters on modulus of rupture and modulus of elasticity of wood. Wood Res 56(2):277–284 Ozciftci A, Ayar S, Baysal E, Toker H (2011) The effects of some impregnation parameters on modulus of rupture and modulus of elasticity of wood. Wood Res 56(2):277–284
go back to reference Pawar PJ, Rao RV (2013) Parameter optimization of machining processes using teaching–learning-based optimization algorithm. Int J Adv Manuf Technol 67:995–1006CrossRef Pawar PJ, Rao RV (2013) Parameter optimization of machining processes using teaching–learning-based optimization algorithm. Int J Adv Manuf Technol 67:995–1006CrossRef
go back to reference Rao RV, More KC (2015) Optimal design of the heat pipe using TLBO (teaching–learning-based optimization) algorithm. Energy 80:535–544CrossRef Rao RV, More KC (2015) Optimal design of the heat pipe using TLBO (teaching–learning-based optimization) algorithm. Energy 80:535–544CrossRef
go back to reference Rao RV, Savsani VJ, Vakharia DP (2011) Teaching–learning-based optimization: a novel method for constrained mechanical design optimization problems. Comput Aided Des 43:303–315CrossRef Rao RV, Savsani VJ, Vakharia DP (2011) Teaching–learning-based optimization: a novel method for constrained mechanical design optimization problems. Comput Aided Des 43:303–315CrossRef
go back to reference Rao RV, Savsani VJ, Vakharia DP (2012) Teaching–learning-based optimization: an optimization method for continuous non-linear large scale problems. Inform Sci 183:1–15CrossRef Rao RV, Savsani VJ, Vakharia DP (2012) Teaching–learning-based optimization: an optimization method for continuous non-linear large scale problems. Inform Sci 183:1–15CrossRef
go back to reference Roy PK (2013) Teaching learning based optimization for short-term hydrothermal scheduling problem considering valve point effect and prohibited discharge constraint. Int J Elect Power Energy Syst 53:10–19CrossRef Roy PK (2013) Teaching learning based optimization for short-term hydrothermal scheduling problem considering valve point effect and prohibited discharge constraint. Int J Elect Power Energy Syst 53:10–19CrossRef
go back to reference Samui P (2013) Multivariate adaptive regression spline (MARS) for prediction of elastic modulus of jointed rock mass. Geotech Geol Eng 31:249–253CrossRef Samui P (2013) Multivariate adaptive regression spline (MARS) for prediction of elastic modulus of jointed rock mass. Geotech Geol Eng 31:249–253CrossRef
go back to reference Shanu SA, Das AK, Rahman MM, Ashaduzzaman M (2015) Effect of chromate–copper–boron preservative treatment on physical and mechanical properties of Raj koroi (Albizia richardiana) wood. Bangladesh J Sci Ind Res 50(3):189–192CrossRef Shanu SA, Das AK, Rahman MM, Ashaduzzaman M (2015) Effect of chromate–copper–boron preservative treatment on physical and mechanical properties of Raj koroi (Albizia richardiana) wood. Bangladesh J Sci Ind Res 50(3):189–192CrossRef
go back to reference Sharda VN, Patel RM, Prasher SO, Ojasvi PR, Prakash C (2006) Modeling runoff from middle Himalayan watersheds employing artificial intelligence techniques. Agric Water Manage 83:233–242CrossRef Sharda VN, Patel RM, Prasher SO, Ojasvi PR, Prakash C (2006) Modeling runoff from middle Himalayan watersheds employing artificial intelligence techniques. Agric Water Manage 83:233–242CrossRef
go back to reference Simsek H, Baysal E (2015) Some physical and mechanical properties of borate-treated oriental beech wood. Drvna Ind 66(2):97–103CrossRef Simsek H, Baysal E (2015) Some physical and mechanical properties of borate-treated oriental beech wood. Drvna Ind 66(2):97–103CrossRef
go back to reference Suman S, Khan SZ, Das SK, Chand SK (2016) Slope stability analysis using artificial intelligence techniques. Nat Hazards 84(20):727–748CrossRef Suman S, Khan SZ, Das SK, Chand SK (2016) Slope stability analysis using artificial intelligence techniques. Nat Hazards 84(20):727–748CrossRef
go back to reference Tan H, Ulusoy H, Peker H (2017) The effects of impregnation with barite (BaSO4) on the physical and mechanical properties of wood materials. J Bartin Faculty For 19(2):160–165 Tan H, Ulusoy H, Peker H (2017) The effects of impregnation with barite (BaSO4) on the physical and mechanical properties of wood materials. J Bartin Faculty For 19(2):160–165
go back to reference Tiryaki S, Hamzacebi C (2014) Predicting modulus of rupture (MOR) and modulus of elasticity (MOE) of heat treated woods by artificial neural networks. Measurement 49:266–274CrossRef Tiryaki S, Hamzacebi C (2014) Predicting modulus of rupture (MOR) and modulus of elasticity (MOE) of heat treated woods by artificial neural networks. Measurement 49:266–274CrossRef
go back to reference Tiryaki S, Bardak S, Bardak T (2015) Experimental investigation and prediction of bonding strength of Oriental beech (Fagus orientalis Lipsky) bonded with polyvinyl acetate adhesive. J Adhes Sci Technol 29(23):2521–2536CrossRef Tiryaki S, Bardak S, Bardak T (2015) Experimental investigation and prediction of bonding strength of Oriental beech (Fagus orientalis Lipsky) bonded with polyvinyl acetate adhesive. J Adhes Sci Technol 29(23):2521–2536CrossRef
go back to reference Togan V (2013) Design of pin jointed structures using teaching-learning based optimization. Struct Eng Mech 47(2):209–225CrossRef Togan V (2013) Design of pin jointed structures using teaching-learning based optimization. Struct Eng Mech 47(2):209–225CrossRef
go back to reference Toker H, Baysal E, Simsek H, Senel A, Sonmez A, Altinok M, Ozcifci A, Yapıcı F (2009) Effects of some environmentally-friendly fire-retardant boron compounds on modulus of rupture and modulus of elastıcıty of wood. Wood Res 54(1):77–88 Toker H, Baysal E, Simsek H, Senel A, Sonmez A, Altinok M, Ozcifci A, Yapıcı F (2009) Effects of some environmentally-friendly fire-retardant boron compounds on modulus of rupture and modulus of elastıcıty of wood. Wood Res 54(1):77–88
go back to reference Tomak ED, Viitanen H, Yildiz UC, Hughes M (2011) The combined effects of boron and oil heat treatment on the properties of beech and Scots pine wood. Part 2: water absorption, compression strength, color changes, and decay resistance. J Mater Sci 46(3):608–615CrossRef Tomak ED, Viitanen H, Yildiz UC, Hughes M (2011) The combined effects of boron and oil heat treatment on the properties of beech and Scots pine wood. Part 2: water absorption, compression strength, color changes, and decay resistance. J Mater Sci 46(3):608–615CrossRef
go back to reference TS 2474 (1976) Wood-determination of ultimate strength in static bending. Institute of Turkish Standards, Ankara TS 2474 (1976) Wood-determination of ultimate strength in static bending. Institute of Turkish Standards, Ankara
go back to reference TS 2595 (1977) Wood-testing in compression parallel to grain. Institute of Turkish Standards, Ankara TS 2595 (1977) Wood-testing in compression parallel to grain. Institute of Turkish Standards, Ankara
go back to reference Uluer O, Kırmacı V, Atas S (2009) Using the artificial neural network model for modeling the performance of the counter flow vortex tube. Expert Syst Appl 36:12256–12263CrossRef Uluer O, Kırmacı V, Atas S (2009) Using the artificial neural network model for modeling the performance of the counter flow vortex tube. Expert Syst Appl 36:12256–12263CrossRef
go back to reference Uzlu E, Kömürcü Mİ, Kankal M, Dede T, Öztürk HT (2014) Prediction of berm geometry using a set of laboratory tests combined with teaching–learning-based optimization and artificial bee colony algorithms. Appl Ocean Res 48:103–113CrossRef Uzlu E, Kömürcü Mİ, Kankal M, Dede T, Öztürk HT (2014) Prediction of berm geometry using a set of laboratory tests combined with teaching–learning-based optimization and artificial bee colony algorithms. Appl Ocean Res 48:103–113CrossRef
go back to reference Villasante A, Laina R, Rojas JAM, Rojas IM, Vignote S (2013) Mechanical properties of wood from Pinus sylvestris L. treated with light organic solvent preservative and with waterbone copper azole. For Syst 22(3):416–422 Villasante A, Laina R, Rojas JAM, Rojas IM, Vignote S (2013) Mechanical properties of wood from Pinus sylvestris L. treated with light organic solvent preservative and with waterbone copper azole. For Syst 22(3):416–422
go back to reference Winandy JE (1995) The effects of waterborne preservative treatment on mechanical properties: a review. Proc Am Wood Preservers’ Assoc Woodstock MD 91:17–33 Winandy JE (1995) The effects of waterborne preservative treatment on mechanical properties: a review. Proc Am Wood Preservers’ Assoc Woodstock MD 91:17–33
go back to reference Xia K, Gao L, Li W, Chao KM (2014) Disassembly sequence planning using a simplified teaching–learning-based optimization algorithm. Adv Eng Inf 28:518–527CrossRef Xia K, Gao L, Li W, Chao KM (2014) Disassembly sequence planning using a simplified teaching–learning-based optimization algorithm. Adv Eng Inf 28:518–527CrossRef
go back to reference Yang H, Cheng W, Han G (2015) Wood modification at high temperature and pressurized steam: a relational model of mechanical properties based on a neural network. BioResources 10(3):5758–5776 Yang H, Cheng W, Han G (2015) Wood modification at high temperature and pressurized steam: a relational model of mechanical properties based on a neural network. BioResources 10(3):5758–5776
go back to reference Yapıcı F, Ulucan D (2012) Prediction of modulus of rupture and modulus of elasticity of heat treated Anatolian chestnut (Castanea sativa) wood by fuzzy logic classifier. Drvna Ind 63:37–43 Yapıcı F, Ulucan D (2012) Prediction of modulus of rupture and modulus of elasticity of heat treated Anatolian chestnut (Castanea sativa) wood by fuzzy logic classifier. Drvna Ind 63:37–43
go back to reference Yildiz UC, Temiz A, Gezer ED, Yildiz S (2004) Effects of the wood preservatives on mechanical properties of yellow pine (Pinus sylvestris L.) wood. Build Environ 39:1071–1075CrossRef Yildiz UC, Temiz A, Gezer ED, Yildiz S (2004) Effects of the wood preservatives on mechanical properties of yellow pine (Pinus sylvestris L.) wood. Build Environ 39:1071–1075CrossRef
go back to reference Zhang W, Goh ATC (2016) Multivariate adaptive regression splines and neural network models for prediction of pile drivability. Geosci Front 7:45–52CrossRef Zhang W, Goh ATC (2016) Multivariate adaptive regression splines and neural network models for prediction of pile drivability. Geosci Front 7:45–52CrossRef
Metadata
Title
Performance evaluation of multiple adaptive regression splines, teaching–learning based optimization and conventional regression techniques in predicting mechanical properties of impregnated wood
Authors
Sebahattin Tiryaki
Hüseyin Tan
Selahattin Bardak
Murat Kankal
Sinan Nacar
Hüseyin Peker
Publication date
02-05-2019
Publisher
Springer Berlin Heidelberg
Published in
European Journal of Wood and Wood Products / Issue 4/2019
Print ISSN: 0018-3768
Electronic ISSN: 1436-736X
DOI
https://doi.org/10.1007/s00107-019-01416-9

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