传统ARX和人工神经网络ARX模型预测马来西亚石油消费量

I. Awaludin, R. Ibrahim, K. S. Rama Rao
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引用次数: 7

摘要

本研究调查预测石油消费在马来西亚。根据训练和验证数据集开发和验证石油消耗模型。马来西亚的可用数据是1982年至2006年的年度数据,包括人口、人均国内生产总值和石油消费数据。预测时间目标为2020年,这是几份能源展望报告常用的时间目标。本文建立了传统的自回归外生(ARX)模型和人工神经网络ARX (ANN ARX)模型。不同之处在于这些模型如何根据训练数据集找到未知参数。传统模型采用最小二乘法计算未知参数,ANN ARX模型采用权值更新策略寻找未知参数。每个模型的性能通过均方根误差(RMSE)值来衡量。结果表明,在训练数据较少的情况下,ANN ARX模型的性能优于传统的ARX模型。
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Conventional ARX and Artificial Neural networks ARX models for prediction of oil consumption in Malaysia
This study investigates prediction of oil consumption in Malaysia. Models of oil consumption are developed and validated with respect to training and validation dataset. Available data for Malaysia is annual data from 1982 to 2006 comprises Population, GDP per Capita, and Oil Consumption data. Prediction time target is year 2020 which is commonly used by several energy outlook reports. Two models are developed in this study, conventional Autoregressive Exogenous (ARX) model and Artificial Neural Network ARX (ANN ARX) model. The difference lies on how those models work to find unknown parameters based on training dataset. Conventional model uses Least Square method to calculate the unknown parameter where ANN ARX model uses weight updating strategy to find the unknown parameter. Performance of each model is measured through Root Mean Square Error (RMSE) value. It is shown that ANN ARX model can perform better than conventional ARX especially with small number of training dataset.
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