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Forecasting the air transport demand for passengers with neural modelling

机译:用神经建模预测乘客航空运输需求

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The air transport industry firmly relies on forecasting methods for supporting management decisions. However, optimistic forecasting has resulted in serious problems to the Brazilian industry in last years. In this paper, models based on artificial neural networks are developed for the air transport passenger demand forecasting. It is found that neural processing can outperform the traditional econometric approach used in this field and can accurately generalise the learnt time series behaviour, even in practical conditions, where a small number of data points is available. Feeding the input nodes of the neural estimator with pre-processed data, the forecasting error is evaluated to be smaller than 0.6%.
机译:航空运输业迫切依赖于支持管理决策的预测方法。然而,乐观预测在去年巴西行业导致了严重问题。本文为空运乘客需求预测开发了基于人工神经网络的模型。结果发现神经处理可以优于该字段中使用的传统计量方法,并且可以准确地概括学习的时间序列行为,即使在实际条件下,少量数据点可用。使用预处理数据馈送神经估计器的输入节点,评估预测误差小于0.6%。

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