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基于内部需求的动态空间分配优化共享停车释放。

Dynamic Space Allocation Based on Internal Demand for Optimizing Release of Shared Parking.

机构信息

Department of Industrial Management, National Taiwan University of Science and Technology, Taipei 106, Taiwan.

Center for Cyber-Physical System Innovation, National Taiwan University of Science and Technology, Taipei 106, Taiwan.

出版信息

Sensors (Basel). 2021 Dec 29;22(1):235. doi: 10.3390/s22010235.

Abstract

The size of cities has been continuously increasing because of urbanization. The number of public and private transportation vehicles is rapidly increasing, thus resulting in traffic congestion, traffic accidents, and environmental pollution. Although major cities have undergone considerable development in terms of transportation infrastructure, problems caused by a high number of moving vehicles cannot be completely resolved through the expansion of streets and facilities. This paper proposes a solution for the parking problem in cities that entails a shared parking system. The primary concept of the proposed shared parking system is to release parking lots that are open to specific groups for public usage without overriding personal usage. Open-to-specific-groups parking lots consist of parking spaces provided for particular people, such as parking buildings at universities for teachers, staff, and students. The proposed shared parking system comprises four primary steps: collecting and preprocessing data by using an Internet of Things system, predicting internal demand by using a recurrent neural network algorithm, releasing several unoccupied parking lots based on prediction results, and continuously updating the real-time data to improve future internal usage prediction. Data collection and data forecasting are performed to ensure that the system does not override personal usage. This study applied several forecasting algorithms, including seasonal ARIMA, support vector regression, multilayer perceptron, convolutional neural network, long short-term memory recurrent neural network with a many-to-one structure, and long short-term memory recurrent neural network with a many-to-many structure. The proposed system was evaluated using artificial and real datasets. Results show that the recurrent neural network with the many-to-many structure generates the most accurate prediction. Furthermore, the proposed shared parking system was evaluated for some scenarios in which different numbers of parking spaces were released. Simulation results show that the proposed shared parking system can provide parking spaces for public usage without overriding personal usage. Moreover, this system can generate new income for parking management and/or parking lot owners.

摘要

由于城市化,城市规模不断扩大。公共和私人交通工具的数量迅速增加,导致交通拥堵、交通事故和环境污染。尽管主要城市的交通基础设施有了相当大的发展,但通过扩大街道和设施,无法完全解决大量车辆造成的问题。本文提出了一种城市停车问题的解决方案,即共享停车系统。所提出的共享停车系统的主要概念是释放对特定群体开放的停车场,供公众使用,而不影响个人使用。面向特定群体的停车场包括为特定人群提供的停车位,例如大学为教师、员工和学生提供的停车楼。所提出的共享停车系统包括四个主要步骤:使用物联网系统收集和预处理数据,使用递归神经网络算法预测内部需求,根据预测结果释放几个空闲停车场,并不断更新实时数据以提高未来的内部使用预测。数据收集和数据预测是为了确保系统不影响个人使用。本研究应用了几种预测算法,包括季节性 ARIMA、支持向量回归、多层感知机、卷积神经网络、具有一对多结构的长短期记忆递归神经网络和具有多对多结构的长短期记忆递归神经网络。该系统使用人工和真实数据集进行了评估。结果表明,具有多对多结构的递归神经网络产生了最准确的预测。此外,还评估了所提出的共享停车系统在不同数量的停车位被释放的几种情况下的性能。仿真结果表明,所提出的共享停车系统可以为公众提供停车位,而不影响个人使用。此外,该系统可以为停车场管理和/或停车场所有者创造新的收入。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/19fc/8749656/a0cc0810abf0/sensors-22-00235-g001.jpg

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