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基于PSO-BP神经网络模型的浸胶竹束干燥过程含水率预测

王晓曼 吕建雄 李贤军 吴义强 李新功 郝晓峰 乔建政 徐康

林业科学2025,Vol.61Issue(5):187-198,12.
林业科学2025,Vol.61Issue(5):187-198,12.DOI:10.11707/j.1001-7488.LYKX20240387

基于PSO-BP神经网络模型的浸胶竹束干燥过程含水率预测

Prediction of Moisture Content during Drying of Phenolic Resin Impregnated Heat-Treated Bamboo Bundles Based on PSO-BP Neural Network Modeling

王晓曼 1吕建雄 2李贤军 1吴义强 1李新功 1郝晓峰 1乔建政 1徐康1

作者信息

  • 1. 中南林业科技大学材料科学与工程学院 长沙 410004
  • 2. 中国林业科学研究院木材工业研究所 北京 100091
  • 折叠

摘要

Abstract

[Objective]The present study utilized an artificial neural network model to forecast the moisture content variation during the drying process of phenolic resin impregnated heat-treated bamboo bundles(PHB),elucidating the impact of drying temperature,drying time,paving method,and initial moisture content on the moisture variation during the drying process.The findings provide a fundamental reference for achieving high-quality and efficient drying of PHB.[Method]The measured data of moisture content during the drying process of PHB samples was utilized to create a dataset,with input variables including drying temperature,drying time,paving method,and initial moisture content.The output variable was the moisture content during the drying process.Subsequently,this dataset was divided into three sets:the training set,consisting of 308 data points(70%of the total data);the validation set,comprising 66 data points(15%of the total data);and the test set,containing 66 data points(15%of the total data).The particle swarm optimization(PSO)algorithm was employed to optimize the initial weights and thresholds of back propagation ropagation(BP)neural network,thereby constructing a PSO-BP neural network prediction model.This model has been verified and analyzed.[Result]The PSO-BP neural network model exhibited robust predictive capabilities.In the test set,it achieved a coefficient of determination(R2)of 0.98,a mean square error(MSE)of 1.27,a mean absolute error(MAE)of 3.73,and a residual predictive deviation(RPD)of 7.96.Compared to the BP neural network,the PSO-BP neural network demonstrated an improvement in R2 and RPD by 6.53%and 110.2%,respectively,while reducing MSE and MAE by 54.0%and 71.86%.The model verification demonstrated that the moisture content variation during the drying process of PHB was primarily influenced by the drying temperature and paving method.Both factors have a significant impact on the predictive accuracy of the PSO-BP neural network model.Optimal prediction performance was achieved when using a drying temperature of 60 ℃,regardless of the four different paving methods employed,resulting in R2 values exceeding 0.969 and MSE staying below 3.Employing three layers of paving yielded superior outcomes under various drying temperature conditions,with R2 values surpassing 0.99 and MSE remaining below 2.Additionally,neither drying time nor initial moisture content significantly affected the predictive accuracy of the model.[Conclusion]The PSO-BP neural network model exhibited remarkable accuracy in predicting the moisture content during the drying process of PHB samples.It effectively addresses issues such as significant prediction errors and slow convergence rates that are commonly encountered with traditional BP neural networks,thereby providing valuable technical support for the high-quality and efficient drying of PHB.

关键词

浸胶竹束/干燥/含水率/粒子群优化算法/反向传播/神经网络

Key words

phenolic resin impregnated heat-treated bamboo bundles(PHB)/drying/moisture content/particle swarm optimization(PSO)algorithm/back propagation(BP)/neural network

分类

农业科技

引用本文复制引用

王晓曼,吕建雄,李贤军,吴义强,李新功,郝晓峰,乔建政,徐康..基于PSO-BP神经网络模型的浸胶竹束干燥过程含水率预测[J].林业科学,2025,61(5):187-198,12.

基金项目

国家自然科学基金面上项目(32371981,32071852) (32371981,32071852)

湖湘青年英才项目(2023RC3161) (2023RC3161)

湖南省自然科学基金项目(2024JJ8278,2023JJ30993,2023JJ60161). (2024JJ8278,2023JJ30993,2023JJ60161)

林业科学

OA北大核心

1001-7488

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