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Evolutionary Deep Learning for Car Park Occupancy Prediction in Smart Cities

机译:智能城市停车场入住预测的进化深度学习

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This study presents a new technique based on Deep Learning with Recurrent Neural Networks to address the prediction of car park occupancy rate. This is an interesting problem in smart mobility and we here approach it in an innovative way, consisting in automatically design a deep network that encapsulates the behavior of the car occupancy and then is able to make an informed guess on the number of free parking spaces near to the medium time horizon. We analyze a real world case study consisting of the occupancy values of 29 car parks in Birmingham, UK, during eleven weeks and compare our results to other predictors in the state-of-the-art. The results show that our approach is accurate to the point of being useful for being used by citizens in their daily lives, as well as it outperforms the existing competitors.
机译:本研究提出了一种基于与经常性神经网络的深度学习的新技术,以解决停车场占用率的预测。这是智能移动性的一个有趣问题,我们在这里以一种创新的方式方法,它在自动设计一个封装汽车占用的行为的深度网络中,然后能够在附近的免费停车位的数量方面进行通知猜测到中等时间地平线。我们分析了一个真实的世界案例研究,该研究包括伯明翰,英国伯明翰的29个停车场价值,在11周内,将结果与最先进的其他预测因子进行比较。结果表明,我们的方法准确到了在日常生活中被公民使用,以及它优于现有的竞争对手。

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