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APPLICATION OF ARTIFICIAL INTELLIGENCE IN PREDICTION OF ROAD FREIGHT TRANSPORTATION

机译:人工智能在公路货运预测中的应用

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摘要

Road freight transport often requires the prediction of volume. Such knowledge is necessary to capture trends in the industry and support decision making by large and small trucking companies. The aim of the presented work is to demonstrate that application of some artificial intelligence methods can improve the accuracy of the forecasts. The first method employed was double exponential smoothing. The modification of this method has been proposed. Not only the parameters but also the initial values were set in order to minimize the mean absolute percentage error (MAPE) using the artificial immune system. This change resulted in a marked improvement in the effects of minimization, and suggests that the variability of the initial value of S2 has an impact on this result. Then, the forecasting Bayesian networks method was applied. The Bayesian network approach is able to take into account not only the historical data concerning the volume of freight, but also the data related to the overall state of the national economy. This significantly improves the quality of forecasting. The application of this approach can also help in predicting the trend changes caused by overall state of economy, which is rather impossible when analysing only the historical data.
机译:公路货运通常需要预测数量。这些知识对于捕获行业趋势并支持大小卡车公司的决策是必不可少的。提出的工作的目的是证明某些人工智能方法的应用可以提高预测的准确性。使用的第一种方法是双指数平滑。已经提出了对该方法的修改。为了使用人工免疫系统最小化平均绝对百分比误差(MAPE),不仅要设置参数,还要设置初始值。此更改导致最小化效果的显着改善,并表明S2初始值的可变性对该结果有影响。然后,应用了预测贝叶斯网络方法。贝叶斯网络方法不仅可以考虑有关货运量的历史数据,而且可以考虑与国民经济总体状况有关的数据。这显着提高了预测质量。这种方法的应用还可以帮助预测由整体经济状况引起的趋势变化,这在仅分析历史数据时几乎是不可能的。

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