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首页> 外文期刊>Journal of Transportation Engineering >Spatiotemporal Deep-Learning Networks for Shared-Parking Demand Prediction
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Spatiotemporal Deep-Learning Networks for Shared-Parking Demand Prediction

机译:用于共享停车需求预测的时空深度学习网络

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摘要

One fundamental issue in managing a shared-parking system is predicting shared-parking demand. Such predictions are very challenging because predicting shared-parking demand usually involves nonlinearities and complex spatiotemporal dependencies. In this paper, we propose a deep learning-based network comprising of three modeling components-CNN-Module, Conv-LSTM-Module, and LSTM-Module-to predict the shared-parking inflow and outflow in each region of a shared-parking system. First, the CNN-Module utilized convolution neural networks to determine local spatial dependencies. Second, the Conv-LSTM-Module leveraged the Conv-LSTM neural network to capture similarities of shared-parking demand across different regions. Finally, the LSTM-Module was applied to model temporal features by using the Long Short-Term Memory (LSTM) network. Moreover, we also divided the input into three components (recent, daily, and weekly) to extract the periodically shifted relations. The model was evaluated using a real-world shared-parking data set in Chengdu, China. Experiments showed that our model outperforms six other well-known baseline methods within an acceptable time frame. Extensive additional experiments and evaluations were conducted to investigate the sensitivity of our model.
机译:管理共享停车系统的一个基本问题预测共享停车需求。这种预测非常具有挑战性,因为预测共享停车需求通常涉及非线性和复杂的时空依赖性。在本文中,我们提出了一个基于深度学习的网络,包括三个建模组件-CNN-Module,Conv-LSTM模块和LSTM模块 - 预测共享停车的每个区域的共享停车流入和流出系统。首先,CNN模块利用卷积神经网络来确定局部空间依赖性。其次,Conv-LSTM模块利用Conv-LSTM神经网络捕获不同地区共享停车需求的相似之处。最后,使用长短期存储器(LSTM)网络应用LSTM模块来模拟时间特征。此外,我们还将输入分为三个组件(最近,每日和每周),以提取周期性的关系。该模型使用中国成都市的真实共享停车数据进行了评估。实验表明,我们的模型在可接受的时间框架内优于六种其他众所周知的基线方法。进行了广泛的额外实验和评估,以研究模型的敏感性。

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