停车需求管理和城市规模部署的新算法

O. Zoeter, C. Dance, S. Clinchant, J. Andreoli
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引用次数: 20

摘要

就像任何公共事业一样,如果免费或定价与市场价格相去甚远,街边停车场的利用效率就会很低。本文介绍了一种新的需求管理解决方案:利用专用占用传感器的数据,迭代方案更新停车费率以更好地匹配需求。新的费率鼓励停车者避开高峰时间和高峰地点,减少拥堵和使用不足。解决方案故意简单,以便易于理解,容易看到是公平的,并导致停车政策,容易记住和行动。我们研究了迭代格式的收敛性,并证明了它收敛于一个非常大的模型类的合理分布。作为洛杉矶快速公园项目的一部分,自2012年6月以来,该算法已被用于改变洛杉矶市中心6000多个停车位的停车费率。初步结果令人鼓舞,减少了拥堵和未充分利用的情况,而在更多的地方,比率下降而不是增加。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
New algorithms for parking demand management and a city-scale deployment
On-street parking, just as any publicly owned utility, is used inefficiently if access is free or priced very far from market rates. This paper introduces a novel demand management solution: using data from dedicated occupancy sensors an iteration scheme updates parking rates to better match demand. The new rates encourage parkers to avoid peak hours and peak locations and reduce congestion and underuse. The solution is deliberately simple so that it is easy to understand, easily seen to be fair and leads to parking policies that are easy to remember and act upon. We study the convergence properties of the iteration scheme and prove that it converges to a reasonable distribution for a very large class of models. The algorithm is in use to change parking rates in over 6000 spaces in downtown Los Angeles since June 2012 as part of the LA Express Park project. Initial results are encouraging with a reduction of congestion and underuse, while in more locations rates were decreased than increased.
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