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REAL-TIME SHORT-TERM FORECASTING METHOD OF REMAINING PARKING SPACE IN URBAN PARKING GUIDANCE SYSTEMS

机译:城市停车诱导系统中剩余停车空间的实时短期预报方法

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摘要

Short-term forecasting of the remaining parking space is important for urban parking guidance systems (PGS). The previous methods like polynomial equations and neural network methods are difficult to be applied in practice because of low accuracy or lengthy initial training time which is unfavourable if real-time training is carried out on adapting to changing traffic conditions. To forecast the remaining parking space in real-time with higher accuracy and improve the performances of PGS, this study develops an online forecasting model based on a time series method. By analysing the characteristics of data collected in Nanjing, China, an autoregressive integrated moving average (ARIMA) model has been established and a real-time forecasting procedure developed. The performance of this proposed model has been further analysed and compared with the performances of a neural network method and the Markov chain method. The results indicate that the mean error of the proposed model is about 2 vehicles per 15 minutes, which can meet the requirements for general PGS. Furthermore, this method outperforms the neural network model and the Markov chain method both in individual and collective error analysis. In summary, the proposed online forecasting method appears to be promising for forecasting the remaining parking space in supporting the PGS.
机译:剩余停车位的短期预测对于城市停车引导系统(PGS)至关重要。诸如多项式方程式和神经网络方法之类的先前方法由于其准确性低或初始训练时间长而难以在实践中应用,如果适应变化的交通状况进行实时训练,则不利于此。为了更准确地实时预测剩余停车位并提高PGS的性能,本研究建立了一种基于时间序列方法的在线预测模型。通过分析在中国南京收集的数据的特征,建立了自回归综合移动平均值(ARIMA)模型,并开发了实时预测程序。对该模型的性能进行了进一步分析,并与神经网络方法和马尔可夫链方法的性能进行了比较。结果表明,提出的模型的平均误差为每15分钟2辆车,可以满足一般PGS的要求。此外,该方法在个体误差和集体误差分析方面均优于神经网络模型和马尔可夫链方法。总而言之,提出的在线预测方法对于预测支持PGS的剩余停车位似乎很有希望。

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