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Parking Availability Forecasting Model

机译:停车位预测模型

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Parking is increasingly an issue in the world today especially in large and growing cities with contemporary urban mobility. The effort spent in searching for available parking spots results in significant loss of resources such as time, and fuel, as well as environmental pollution. Parking Availability can be influenced by many factors such as time of day, day of week, location, nearby events, weather and traffic conditions. Driven by the idea of predicting parking availability to help drivers plan ahead of time, we contribute a Parking Availability Forecasting Model, which uses a time-series analysis and machine-learning algorithms to predict the number of available parking spots at a certain location on a desired date and time. The forecasting model is trained on historical parking data from the cities of Kansas City, US and Melbourne, Australia. This paper also compares the accuracy of different time-series forecasting models, and how each of them fits our use-case scenario. Multivariate data analysis together with temperature and weather summary are used to cross-validate our forecasting model.
机译:在当今世界,停车问题日益成为一个问题,尤其是在具有现代城市机动性的大型且成长中的城市。寻找可用停车位所花费的精力导致时间,燃料和环境污染等资源的大量损失。停车可用性可能受许多因素影响,例如一天中的时间,一周中的一天,位置,附近的事件,天气和交通状况。在预测停车位数量以帮助驾驶员提前计划的想法的推动下,我们贡献了一个停车位数量预测模型,该模型使用时间序列分析和机器学习算法来预测停车位上某个位置的可用停车位数量。所需的日期和时间。预测模型是根据来自美国堪萨斯城和澳大利亚墨尔本等城市的历史停车数据进行训练的。本文还比较了不同时间序列预测模型的准确性,以及它们各自如何适合我们的用例场景。多元数据分析以及温度和天气摘要可用于交叉验证我们的预测模型。

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