ARIMA与改进神经网络预测木材含水率的比较

Cao Jun, Zhang Jiawei, Sun Liping
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引用次数: 4

摘要

木材含水率(MC)是影响木材产品成本、质量和效率等的关键参数之一。基于电法原理,光纤饱和点(FSP)不能直接测量。本文考虑了基于自回归积分移动平均(ARIMA)和功能链接人工神经网络模型的两种预测测量算法,以及这些模型的各种组合来预测纤维饱和点附近的木材含水率(MC)。详细介绍了这些方法的预测原理和步骤。通过测量实验,得到木材含水率的时间序列数据。预测性能的仿真比较表明,采用功能链接人工神经网络的改进神经网络模型在解决木材含水率预测问题上具有更好的性能。
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Comparison on prediction wood moisture content using ARIMA and improved neural networks
Wood moisture content (MC) is one of the key parameters which influenced on wood product cost, qualities and efficiency, etc. The fiber saturation point (FSP) cannot be measured directly based the principle of electrical method. In this paper, two prediction measuring algorithms based the autoregressive integrated moving average (ARIMA) and functional link artificial neural network models are considered along with various combinations of these models for predicting wood moisture content (MC) around the fiber saturation point. The predicting principle and procedure of these methods are presented in detail. Measurement experiments are performed to get the time series data of wood moisture content. Simulation comparison of predicting performances shows that the improved neural network models with functional link ANN give a better performance in solving the wood moisture content prediction problem.
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