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Optimization Approach to Depot Location in Car Sharing Systems with Big Data

机译:大数据共享汽车系统中仓库选址的优化方法

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Determining the location of depots of car sharing systems is a fundamental problem in car sharing systems. Existing methods to determine the location of depots mainly use qualitative method and do not take real demand into account. This paper proposes a novel optimization approach to determine the depot location in car sharing systems scientifically. To predict the car sharing demand accurately, we propose a deep learning approach which has been implemented as a stacked auto-encoder (SAE) model at the bottom with a logistic regression layer at the top. The SAE model is employed for unsupervised feature learning, which has been proved to be effective. Meanwhile the spatial and temporal correlations is considered inherently in the prediction model. The results allow us to determine the location of depots scientifically. Experiments on the datasets illustrate that the proposed model for car sharing demand prediction has superior performance.
机译:确定汽车共享系统的仓库的位置是汽车共享系统中的基本问题。现有的确定仓库位置的方法主要使用定性方法,没有考虑实际需求。本文提出一种新颖的优化方法,科学地确定汽车共享系统中的仓库位置。为了准确预测汽车共享需求,我们提出了一种深度学习方法,该方法已实现为底部的堆叠式自动编码器(SAE)模型,顶部为逻辑回归层。 SAE模型用于无监督特征学习,已被证明是有效的。同时,在预测模型中固有地考虑了空间和时间相关性。结果使我们能够科学地确定仓库的位置。对数据集的实验表明,所提出的汽车共享需求预测模型具有优异的性能。

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