Response of hygroscopicity to heat treatment and its relation to durability of thermally modified wood T Li, D Cheng, S Avramidis, MEP Wålinder, D Zhou Construction and Building Materials 144, 671-676, 2017 | 98 | 2017 |
Radio frequency vacuum drying of wood. I. Mathematical model A Koumoutsakos, S Avramidis, SG Hatzikiriakos Drying technology 19 (1), 65-84, 2001 | 87* | 2001 |
Prediction of physical and mechanical properties of thermally modified wood based on color change evaluated by means of “group method of data handling”(GMDH) neural network V Nasir, S Nourian, S Avramidis, J Cool Holzforschung 73 (4), 381-392, 2019 | 63 | 2019 |
Application of near-infrared spectroscopy for moisture-based sorting of green hem-fir timber K Watanabe, SD Mansfield, S Avramidis Journal of wood science 57, 288-294, 2011 | 63 | 2011 |
Classification of thermally treated wood using machine learning techniques V Nasir, S Nourian, S Avramidis, J Cool Wood Science and Technology 53, 275-288, 2019 | 62 | 2019 |
Behaviour of solid wood and bound water as a function of moisture content. A proton magnetic resonance study CD Araujo, S Avramidis, AL MacKay Walter de Gruyter, Berlin/New York 48 (1), 69-74, 1994 | 62 | 1994 |
Predicting wood thermal conductivity using artificial neural networks S Avramidis, L Iliadis Wood and Fiber Science, 682-690, 2005 | 60 | 2005 |
Multiphysics modeling of vacuum drying of wood S sandoval Torres, W Jomaa, JR Puiggali, S Avramidis Applied Mathematical Modelling 35 (10), 5006-5016, 2011 | 58 | 2011 |
Radio frequency vacuum drying of wood. II. Experimental model evaluation A Koumoutsakos, S Avramidis, SG Hatzikiriakos Drying technology 19 (1), 85-98, 2001 | 58 | 2001 |
Prediction of timber kiln drying rates by neural networks H Wu, S Avramidis Drying Technology 24 (12), 1541-1545, 2006 | 57 | 2006 |
The effect of resin content and face-to-core ratio on some properties of oriented strand board S Avramidis, LA Smith Holzforschung 43 (2), 131-133, 1989 | 56 | 1989 |
Stress wave evaluation for predicting the properties of thermally modified wood using neuro-fuzzy and neural network modeling V Nasir, S Nourian, S Avramidis, J Cool Holzforschung 73 (9), 827-838, 2019 | 54 | 2019 |
Non-destructive measurement of moisture distribution in wood during drying using digital X-ray microscopy K Watanabe, Y Saito, S Avramidis, S Shida Drying technology 26 (5), 590-595, 2008 | 54 | 2008 |
Stress wave evaluation by accelerometer and acoustic emission sensor for thermally modified wood classification using three types of neural networks V Nasir, S Nourian, S Avramidis, J Cool European Journal of Wood and Wood Products 77, 45-55, 2019 | 52 | 2019 |
Neural network prediction of bending strength and stiffness in western hemlock (Tsuga heterophylla Raf.) SD Mansfield, L Iliadis, S Avramidis Walter de Gruyter 61 (6), 707-716, 2007 | 52 | 2007 |
On the permeability of main wood species in China F Bao, J Lu, S Avramidis Walter de Gruyter 53 (4), 350-354, 1999 | 51 | 1999 |
Drying characteristics of thick lumber in a laboratory radio-frequeocy/vacuum dryer S Avramidis, F Liu Drying technology 12 (8), 1963-1981, 1994 | 50 | 1994 |
A preliminary study on ultrasonic treatment effect on transverse wood permeability T Tanaka, S Avramidis, S Shida Maderas. Ciencia y tecnología 12 (1), 03-09, 2010 | 47 | 2010 |
The basics of sorption S Avramidis Proceedings of international conference of COST action E 8, 1-16, 1997 | 47 | 1997 |
Analysis of the wood sorption isotherm using clustering theory ID Hartley, S Avramidis Walter de Gruyter, Berlin/New York 47 (2), 163-167, 1993 | 47 | 1993 |