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Prediction-based charging of PHEVs from the smart grid with dynamic pricing

机译:基于智能定价的智能电网中基于预测的PHEV充电

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Coexistence of Plug-in Hybrid Vehicles (PHEVs) with the emerging smart grids has been recently an attractive and equally challenging research topic. The existing electricity grids are rapidly evolving into smart grids by utilizing the advances in Information and Communication Technologies (ICT). Meanwhile, advances in Lithium-Ion (Li-ion) battery technologies have made manufacturing of PHEVs cost-wise effective, and PHEVs are expected to be widely adopted in the following years. PHEVs have several benefits over conventional vehicles such as, less fuel dependency, lower operating costs and lower amount of CO2 emissions. On the other hand, unless PHEVs are powered by off the grid renewable energy resources, they will be drawing electricity from the grid to charge their batteries and they will increase the load on the grid. In the worst case, when the Time Of Charging (TOC) coincides with the critical peak periods, the grid may experience overall or partial failure. For most of the cases, TOC may be during the peak hours when the price of electricity is high. To avoid endangering grid resilience and to avoid high costs, a charging strategy and communication with the smart grid is essential. In this paper, we propose a prediction-based charging scheme which receives dynamic pricing information by wireless communications, predicts the market prices during the charging period and determines an appropriate TOC with low cost. Our prediction-based charging scheme is based-on a simple, light-weight classification technique which is suitable for implementation on a vehicle or a charging station. We show that prediction-based charging provides less operating cost and less CO2 emissions.
机译:插电式混合动力汽车(PHEV)与新兴智能电网的共存最近成为一个有吸引力且同样具有挑战性的研究课题。利用信息和通信技术(ICT)的进步,现有的电网正在迅速发展为智能电网。同时,锂离子(Li-ion)电池技术的进步使PHEV的制造在成本上具有成本效益,并且PHEV有望在接下来的几年中被广泛采用。与传统车辆相比,插电式混合动力汽车具有许多优势,例如,更少的燃料依赖性,更低的运营成本和更低的CO 2 排放量。另一方面,除非插电式混合动力汽车由离网的可再生能源提供动力,否则它们将从电网汲取电力为电池充电,并且它们将增加电网的负荷。在最坏的情况下,当充电时间(TOC)与关键峰值时段重合时,电网可能会遭受全部或部分故障。在大多数情况下,TOC可能是在电价高昂的高峰时段。为了避免危害电网弹性并避免高成本,计费策略和与智能电网的通信必不可少。在本文中,我们提出了一种基于预测的计费方案,该方案通过无线通信接收动态定价信息,预测计费期间的市场价格,并以低成本确定合适的TOC。我们基于预测的充电方案基于一种简单,轻量级的分类技术,适用于在车辆或充电站上实施。我们证明了基于预测的充电提供了更低的运营成本和更少的CO 2 排放量。

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