基于驾驶员侧和交通的路边停车解决方案评价模型

Qianyu Ou, Wenjun Zheng, Zhan Shi, Ruizhi Liao
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引用次数: 0

摘要

停车对城市司机来说一直是一个痛苦的问题。在全球城市化的背景下,越来越多的人倾向于居住在城市,停车的痛苦也随之加剧。因此,迫切需要找到一个解决方案来减轻司机的停车头痛。许多解决方案试图通过预测停车位占用率来解决停车问题。他们的重点是理论方面的准确性,但缺乏一个标准化的模型来评估这些建议在实践中。本文建立了驾驶员侧基于交通的停车方案评价模型(dsbm),为不同停车方案提供了一个通用的评价方案。分析了固定传感和移动传感两种常见的停车检测方法。结果表明:第一,DSTBM从驾驶员角度考察不同的解决方案,与其他评价方案不存在冲突;其次,DSTBM证实了固定传感在预测精度上优于移动传感。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Driver-Side and Traffic-Based Evaluation Model for On-street Parking Solutions
Parking has been a painful problem for urban drivers. The parking pain exacerbates as more people tend to live in cities in the context of global urbanization. Thus, it is demanding to find a solution to mitigate drivers’ parking headaches. Many solutions tried to resolve the parking issue by predicting parking occupancy. Their focuses were on the accuracy of the theoretical side but lacked a standardized model to evaluate these proposals in practice. This paper develops a Driver-Side and Traffic-Based Evaluation Model (DSTBM), which provides a general evaluation scheme for different parking solutions. Two common parking detection methods - fixed sensing and mobile sensing - are analyzed using DSTBM. The results indicate: first, DSTBM examines different solutions from the driver’s perspective and has no conflicts with other evaluation schemes; second, DSTBM confirms that fixed sensing performs better than mobile sensing in terms of prediction accuracy.
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