论文标题
基于深度学习的停车服务的动态价格
Dynamic Price of Parking Service based on Deep Learning
论文作者
论文摘要
城市地区的空中质量改善是公共政府机构的主要关注点之一。这种担忧来自空气质量与公共卫生之间的证据。该领域政府机构的重大努力包括监测和预测系统,禁止更多污染物的汽车以及在低质量空气期间的交通限制。在这项工作中,提出了有关监管停车服务中动态价格的提案。当预计低质量发作时,停车服务的动态价格必须阻止汽车停车。为此,评估了各种深度学习策略。他们共同使用集体空气质量测量,以预测城市空气质量的预测标签。该提案通过使用马德里(西班牙)的经济参数和深度学习质量标准进行评估。
The improvement of air-quality in urban areas is one of the main concerns of public government bodies. This concern emerges from the evidence between the air quality and the public health. Major efforts from government bodies in this area include monitoring and forecasting systems, banning more pollutant motor vehicles, and traffic limitations during the periods of low-quality air. In this work, a proposal for dynamic prices in regulated parking services is presented. The dynamic prices in parking service must discourage motor vehicles parking when low-quality episodes are predicted. For this purpose, diverse deep learning strategies are evaluated. They have in common the use of collective air-quality measurements for forecasting labels about air quality in the city. The proposal is evaluated by using economic parameters and deep learning quality criteria at Madrid (Spain).