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Resilient PHEV charging policies under price information attacks

机译:价格信息攻击下的弹性PHEV充值策略

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Enabling a bidirectional energy flow between power grids and plug-in hybrid electric vehicles (PHEVs) using vehicle-to-grid (V2G) and grid-to-vehicle (G2V) communications is considered as one of the key components of the future smart grid. On the one hand, the PHEV owner needs to charge its PHEV through the grid, given possibly time-varying electricity pricing schemes. On the other hand, the energy stored in a PHEV can also be sold back to the grid so as to act as an ancillary service while possibly generating revenues to its owner. Consequently, this motivates the need to develop smart charging policies that enable the PHEV owner to optimally decide on when to charge or discharge its vehicle, while minimizing its long-term energy consumption cost. In this paper, we model this PHEV energy management problem as a Markov decision process (MDP), which is solved by using a linear programming (LP) technique so as to obtain the optimal charging policy. In particular, we devise optimal charging policies that are resilient to the price information attacks such as denial of service (DoS) attacks and price manipulation attacks over the grid's communication network. We show that, under potential price information attacks, each PHEV can optimize its charging policies given only an estimated price information, which leads to a discrepancy between the real and expected costs. To this end, we analyze this cost difference using the proposed MDP model, which can also guide the system designer and administrator to decide whether reinforcing the system's security is required. The simulation results show that the proposed PHEV charging policy is effective and is adaptable to different PHEV mobility patterns, battery levels and varying electricity prices. It is also demonstrated that improving the system's ability to detect and resolve the attack can obviously reduce the impact brought by the attacks.
机译:使用车辆到网格(V2G)和网格到车辆(G2V)通信的电网和插入式混合动力电动车(PHEV)之间的双向能量流被认为是未来智能电网的关键组件之一。一方面,PHEV所有者需要通过电网充电PHEV,给出可能的时变电线定价计划。另一方面,存储在PHEV中的能量也可以销售回电网,以便充当辅助服务,同时可能为其所有者产生收入。因此,这激励了开发智能计费策略的需要,使PHEV所有者能够最佳地决定何时充电或排出其车辆,同时最小化其长期能耗成本。在本文中,我们将该PHEV能量管理问题模拟为马尔可夫决策过程(MDP),通过使用线性编程(LP)技术来解决,以便获得最佳充电策略。特别是,我们设计了最佳的充电策略,这些策略适用于价格信息攻击,例如拒绝服务(DOS)攻击和价格操纵对网格的通信网络的攻击。我们表明,在潜在的价格信息攻击下,每个PHEV只能在估计的价格信息中优化其充电策略,这导致实际和预期成本之间存在差异。为此,我们使用所提出的MDP模型分析了这种成本差异,也可以指导系统设计师和管理员来决定是否需要加强系统的安全性。仿真结果表明,建议的PHEV充电政策是有效的,适用于不同的PHEV移动模式,电池水平和不同的电价。还表明,提高系统检测和解决攻击的能力可以明显降低攻击带来的影响。

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