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Combining seasonal time series ARIMA method and neural networks with genetic algorithms for predicting the production value of the mechanical industry in Taiwan

机译:结合季节时间序列ARIMA方法和神经网络与遗传算法预测台湾机械工业的产值

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摘要

Supplying industrial firms with an accurate method of forecasting the production value of the mechanical industry to facilitate decision makers in precise planning is highly desirable. Numerous methods, including the autoregressive integrated-moving average (ARIMA) model and artificial neural networks can make accurate forecasts based on historical data. The seasonal ARIMA (SARIMA) model and artificial neural networks can also handle data involving trends and seasonality. Although neural networks can make predictions, deciding the most appropriate input data, network structure and learning parameters are difficult. Therefore, this article presents a hybrid forecasting method that combines the SARIMA model and neural networks with genetic algorithms. Analytical results generated by the SARIMA model are inputted as the input data of a neural network. Subsequently, the number of neurons in the hidden layer and the number of learning parameters of the neural network architecture are globally optimized using genetic algorithms. This model is subsequently adopted to forecast seasonal time series data of the production value of the mechanical industry in Taiwan. The results presented here provide a valuable reference for decision makers in industry.
机译:向工业公司提供一种预测机械工业产值的准确方法,以帮助决策者进行精确计划的工作非常必要。包括自回归综合移动平均(ARIMA)模型和人工神经网络在内的许多方法都可以基于历史数据做出准确的预测。季节性ARIMA(SARIMA)模型和人工神经网络还可以处理涉及趋势和季节性的数据。尽管神经网络可以做出预测,但是确定最合适的输入数据,网络结构和学习参数却很困难。因此,本文提出了一种混合预测方法,将SARIMA模型和神经网络与遗传算法相结合。由SARIMA模型生成的分析结果被输入作为神经网络的输入数据。随后,使用遗传算法全局优化隐藏层中神经元的数量和神经网络体系结构的学习参数的数量。随后,采用此模型来预测台湾机械工业产值的季节性时间序列数据。此处提供的结果为行业决策者提供了有价值的参考。

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