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A Comparative Study of Parking Occupancy Prediction Methods considering Parking Type and Parking Scale

机译:考虑停车型和停车位的停车占用预测方法的比较研究

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Parking issues have been receiving increasing attention. An accurate parking occupancy prediction is considered to be a key prerequisite to optimally manage limited parking resources. However, parking prediction research that focuses on estimating the occupancy for various parking lots, which is critical to the coordination management of multiple parks (e.g., district-scale or city-scale), is relatively limited. This study aims to analyse the performance of different prediction methods with regard to parking occupancy, considering parking type and parking scale. Two forecasting methods, FM1 and FM2, and four predicting models, linear regression (LR), support vector machine (SVR), backpropagation neural network (BPNN), and autoregressive integrated moving average (ARIMA), were proposed to build models that can predict the parking occupancy of different parking lots. To compare the predictive performances of these models, real-world data of four parks in Shenzhen, Shanghai, and Dongguan were collected over 8 weeks to estimate the correlation between the parking lot attributes and forecast results. As per the case studies, among the four models considered, SVM offers stable and accurate prediction performance for almost all types and scales of parking lots. For commercial, mixed functional, and large-scale parking lots, FM1 with SVM made the best prediction. For office and medium-scale parking lots, FM2 with SVM made the best prediction.
机译:停车问题一直受到越来越关注。准确的停车位入住预测被认为是最佳管理有限停车资源的关键先决条件。然而,侧重于估计各种停车场的占用率的停车预测研究,这对多个公园的协调管理至关重要(例如,区域规模或城市规模),相对有限。本研究旨在考虑停车占用,考虑停车型和停车位方面的不同预测方法的性能。提出了两个预测方法,FM1和FM2和四个预测模型,线性回归(LR),支持向量机(SVR),BackProjagation神经网络(BPNN)和自动增加的集成移动平均(Arima),以构建可以预测的模型停车场不同的停车场。为了比较这些模型的预测性能,在8周内收集了深圳,上海和东莞四个公园的现实世界数据,以估计停车场属性与预测结果之间的相关性。根据案例研究,在考虑的四种模型中,SVM为几乎所有类型和尺度的停车场提供稳定和准确的预测性能。对于商业,混合功能和大型停车场,具有SVM的FM1使得最佳预测。对于办公室和中型停车场,具有SVM的FM2使得最佳预测。

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