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A computationally efficient two-stage method for short-term traffic prediction on urban roads

机译:一种计算效率高的两阶段城市道路短期交通量预测方法

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摘要

Short-term traffic prediction plays an important role in intelligent transport systems. This paper presents a novel two-stage prediction structure using the technique of Singular Spectrum Analysis (SSA) as a data smoothing stage to improve the prediction accuracy. Moreover, a novel prediction method named Grey System Model (GM) is introduced to reduce the dependency on method training and parameter optimisation. To demonstrate the effects of these improvements, this paper compares the prediction accuracies of SSA and non-SSA model structures using both a GM and a more conventional Seasonal Auto-Regressive Integrated Moving Average (SARIMA) prediction model. These methods were calibrated and evaluated using traffic flow data from a corridor in Central London under both normal and incident traffic conditions. The prediction accuracy comparisons show that the SSA method as a data smoothing step before the application of machine learning or statistical prediction methods can improve the final traffic prediction accuracy. In addition, the results indicate that the relatively novel GM method outperforms SARIMA under both normal and incident traffic conditions on urban roads.
机译:短期交通预测在智能交通系统中起着重要作用。本文提出了一种新颖的两阶段预测结构,该结构使用奇异频谱分析(SSA)技术作为数据平滑阶段以提高预测精度。此外,为了减少对方法训练和参数优化的依赖,引入了一种名为灰色系统模型(GM)的新颖预测方法。为了证明这些改进的效果,本文比较了使用GM和更常规的季节性自回归综合移动平均(SARIMA)预测模型的SSA和非SSA模型结构的预测准确性。在正常和突发交通情况下,都使用伦敦市中心走廊的交通流量数据对这些方法进行了校准和评估。预测精度的比较表明,SSA方法作为应用机器学习或统计预测方法之前的数据平滑步骤可以提高最终流量预测的准确性。此外,结果表明,在城市道路的正常交通和突发交通情况下,相对新颖的GM方法均优于SARIMA。

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