|
付宗营, 蔡英春, 高 鑫, 等. 基于人工神经网络模型的木材干燥应变模拟预测. 林业科学, 2020, 56 (6): 76- 82.
|
|
Fu Z Y, Cai Y C, Gao X, et al. Simulation of drying strain based on artificial neural network model. Scientia Silvae Sinicae, 2020, 56 (6): 76- 82.
|
|
齐 越, 吴江源, 任丁华, 等. 重组竹制造与应用技术研究进展. 林业科学, 2023, 59 (6): 159- 168.
|
|
Qi Y, Wu J Y, Ren D H, et al. The development in manufacture and application technology of bamboo scrimber. Scientia Silvae Sinicae, 2023, 59 (6): 159- 168.
|
|
王晓曼, 吕建雄, 李贤军, 等. 基于PSO-BP神经网络模型的浸胶竹束干燥过程含水率预测. 林业科学, 2025, 61 (5): 187- 198.
|
|
Wang X M, Lü J X, Li X J, et al. Prediction of moisture content during drying of phenolic resin impregnated heat-treated bamboo bundles based on PSO-BP neural network modeling. Scientia Silvae Sinicae, 2025, 61 (5): 187- 198.
|
|
杨春梅, 李月茹, 田心池, 等. 密度和含水率对竹基纤维复合材料抗弯性能的影响. 木材科学与技术, 2023, 37 (3): 44- 50.
|
|
Yang C M, Li Y R, Tian X C, et al. Effects of density and moisture content on flexural properties of bamboo-based fiber composites. Chinese Journal of Wood Science and Technology, 2023, 37 (3): 44- 50.
|
|
于文吉, 余养伦, 周 月, 等. 小径竹重组结构材性能影响因子的研究. 林产工业, 2006, 33 (6): 24- 28.
|
|
Yu W J, Yu Y L, Zhou Y, et al. Studies on factors influencing properties of reconstituted engineering timber made from small-sized bamboo. China Forest Products Industry, 2006, 33 (6): 24- 28.
|
|
于文吉. 我国重组竹产业发展现状与机遇. 世界竹藤通讯, 2019, 17 (3): 1- 4.
doi: 10.13640/j.cnki.wbr.2019.03.001
|
|
Yu W J. Current situation and opportunities for the development of bamboo scrimber industry in China. World Bamboo and Ranttan, 2019, 17 (3): 1- 4.
doi: 10.13640/j.cnki.wbr.2019.03.001
|
|
张亚慧, 祝荣先, 于文吉, 等. 浸胶竹纤维化单板干燥温度对竹基纤维复合材料性能的影响. 木材工业, 2011, 25 (6): 1- 3.
doi: 10.3969/j.issn.1001-8654.2011.06.001
|
|
Zhang Y H, Zhu R X, Yu W J, et al. Glue-impregnated bamboo-mat drying temperature effect on crushed bamboo-mat composite properties. China Wood Industry, 2011, 25 (6): 1- 3.
doi: 10.3969/j.issn.1001-8654.2011.06.001
|
|
Ali Y, Khan H U, Khalid M. Engineering the advances of the artificial neural networks (ANNs) for the security requirements of Internet of Things: a systematic review. Journal of Big Data, 2023, 10 (1): 128.
doi: 10.1186/s40537-023-00805-5
|
|
Bai T, Yan J, Lu J Q, et al. Engineering transverse cell deformation of bamboo by controlling localized moisture content. Nature Communications, 2025, 16 (1): 4077.
doi: 10.1038/s41467-025-59453-3
|
|
Chai H J, Li L. Prediction of wood drying process based on artificial neural network. BioResources, 2023, 18 (4): 8212- 8222.
doi: 10.15376/biores.18.4.8212-8222
|
|
Chen M L, Semple K, Hu Y A, et al. Fundamentals of bamboo scrimber hot pressing: Mat compaction and heat transfer process. Construction and Building Materials, 2024, 412, 134843.
doi: 10.1016/j.conbuildmat.2023.134843
|
|
Gad A G. Particle swarm optimization algorithm and its applications: a systematic review. Archives of Computational Methods in Engineering, 2022, 29 (5): 2531- 2561.
doi: 10.1007/s11831-021-09694-4
|
|
Ge Y L, Lyu J X, Li X G, et al. Experimental investigations and model validation of compression rheological behavior in bamboo scrimber during the hot-pressing process. European Journal of Wood and Wood Products, 2025, 83 (1): 42.
doi: 10.1007/s00107-025-02200-8
|
|
Gupta N, Mahendran A R, Weiss S, et al. Thermal curing behavior of phenol formaldehyde resin-impregnated paper evaluated using DSC and dielectric analysis. Journal of Thermal Analysis and Calorimetry, 2024, 149 (6): 2609- 2618.
doi: 10.1007/s10973-023-12843-5
|
|
Huang Y X, Ji Y H, Yu W J. Development of bamboo scrimber: a literature review. Journal of Wood Science, 2019, 65 (1): 25.
doi: 10.1186/s10086-019-1806-4
|
|
Iliadis L, Mansfield S D, Avramidis S, et al. Predicting Douglas-fir wood density by artificial neural networks (ANN) based on progeny testing information. Holzforschung, 2013, 67 (7): 771- 777.
doi: 10.1515/hf-2012-0132
|
|
Liang E S, Zhou Q F, Lin X Y, et al. Feasibility of one-time drying for manufacturing bamboo scrimber: fresh bamboo bundle at high initial moisture content impregnated by PF. Industrial Crops and Products, 2023, 194, 116302.
doi: 10.1016/j.indcrop.2023.116302
|
|
Li J L, Li Y J, Li Z D, et al. Combined impact of moisture and temperature on cellulose nanocrystal interface degradation by molecular dynamics simulation. Wood Science and Technology, 2024, 58 (5): 1971- 1990.
doi: 10.1007/s00226-024-01598-3
|
|
Li X Z, Mou Q Y, Ji S Y, et al. Effect of elevated temperature on physical and mechanical properties of engineered bamboo composites. Industrial Crops and Products, 2022, 189, 115847.
doi: 10.1016/j.indcrop.2022.115847
|
|
Liu J W, Li P X, Tang X H, et al. Research on improved convolutional wavelet neural network. Scientific Reports, 2021, 11 (1): 17941.
doi: 10.1038/s41598-021-97195-6
|
|
Lu T, Ge Y L, Zhou C F, et al. Effects of physical parameters on the temperature and vapor-pressure behavior of bamboo scrimber during hot-pressing. Wood Material Science & Engineering, 2023, 18 (5): 1641- 1649.
doi: 10.1080/17480272.2023.2169633
|
|
Mirjalili S, Mirjalili S M, Lewis A. Grey wolf optimizer. Advances in Engineering Software, 2014, 69, 46- 61.
doi: 10.1016/j.advengsoft.2013.12.007
|
|
Moonlight L S, Trilaksono B R, Harianto B B, et al. Implementation of recurrent neural network for the forecasting of USD buy rate against IDR. International Journal of Electrical and Computer Engineering (IJECE), 2023, 13 (4): 4567.
doi: 10.11591/ijece.v13i4.pp4567-4581
|
|
Nikoo M, Abbasi Malekabadi R, Hafeez G. Estimating the mechanical properties of Heat-Treated woods using Optimization Algorithms-Based ANN. Measurement, 2023, 207, 112354.
doi: 10.1016/j.measurement.2022.112354
|
|
Ozsahin S, Murat M. Prediction of equilibrium moisture content and specific gravity of heat treated wood by artificial neural networks. European Journal of Wood and Wood Products, 2018, 76 (2): 563- 572.
doi: 10.1007/s00107-017-1219-2
|
|
Ozturk H, Demir A, Demirkir C. Optimization of pressing parameters for the best mechanical properties of wood veneer/polystyrene composite plywood using artificial neural network. European Journal of Wood and Wood Products, 2022, 80 (4): 907- 922.
doi: 10.1007/s00107-022-01818-2
|
|
Samarasinghe S, Kulasiri D, Jamieson T. Neural networks for predicting fracture toughness of individual wood samples. Silva Fennica, 2007, 41 (1): 105- 122.
doi: 10.14214/sf.309
|
|
Song S S, Qiao J Z, Hao X F, et al. Effect of drying temperature on the curing properties of phenolic resin-impregnated heat-treated bamboo bundles. Wood Material Science & Engineering, 2025, 20 (2): 281- 290.
doi: 10.1080/17480272.2024.2344019
|
|
Tian X C, Yang C M, Wang T T, et al. Influence of gradient moisture content on hot pressing heat transfer of bamboo scrimber and it’s mathematical model. Journal of Wood Science, 2024, 70 (1): 51.
doi: 10.1186/s10086-024-02164-y
|
|
Wang C M, Wang H X, Guo Y Y, et al. Correlations between moisture expansion and flexural properties of bamboo strips in response to different loading rates. European Journal of Wood and Wood Products, 2024a, 82 (5): 1333- 1344.
doi: 10.1007/s00107-024-02091-1
|
|
Wang X X, Zhu R X, Lei W C, et al. The optimization of thermo-mechanical densification to improve the water resistance of outdoor bamboo scrimber. Forests, 2023, 14 (4): 749.
doi: 10.3390/f14040749
|
|
Wang X M, Lyu J X, Li X J, et al. Investigating the drying characteristics and curing behavior of bamboo scrimber base unit: Phenolic resin impregnated heat-treated bamboo bundles. Industrial Crops and Products, 2024b, 222, 119970.
doi: 10.1016/j.indcrop.2024.119970
|
|
Xu L W, Wang H, Lin W, et al. GWO-BP neural network based OP performance prediction for mobile multiuser communication networks. IEEE Access, 2019, 7, 152690- 152700.
doi: 10.1109/ACCESS.2019.2948475
|
|
Yadav V, Nath S. 2017. Forecasting of PM10 using autoregressive models and exponential smoothing technique. Asian Journal of Water, Environment and Pollution, 14(4): 109−113.
|
|
Yang C, Zhang Y M, Zhang Y H, et al. Enhanced mechanism of physical and mechanical properties of bamboo scrimber prepared by roller-pressing impregnation method. Industrial Crops and Products, 2025, 223, 119962.
doi: 10.1016/j.indcrop.2024.119962
|
|
Yang X X. Study on the application of error back-propagation algorithm applied to the student status management in higher education institutions. International Journal of Information and Communication Technology Education, 2024, 20 (1): 1- 14.
doi: 10.4018/ijicte.348960
|