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A Privacy Preserving Distributed Optimization Algorithm for Economic Dispatch Over Time-Varying Directed Networks

机译:一条隐私保留分布式优化算法,以时间各种定向网络

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The economic dispatch problem (EDP) plays a fundamental and significant role in smart grids. Its purpose is to decide the output power of every generator in smart grids for achieving the minimal generation cost. With advantages in flexibility, robustness, and scalability, it is desirable to apply distributed optimization methods to solve EDPs. In most existing distributed optimization approaches, all generators explicitly exchange their states with neighbors to obtain the optimal solution, which may result in disclosing the privacy information of generators. This problem becomes worse if there are some adversaries aimed at inferring privacy information from the communication network for nefarious purposes. For privacy preservation, a privacy preserving distributed optimization algorithm over time-varying directed communication networks is proposed in this article by adding conditional noises to the exchanged states. It is proved that this proposed algorithm is able to solve the EDP. Moreover, the convergence rate and privacy analysis of the proposed algorithm are also shown in this article. An example is provided to confirm the effectiveness of this proposed algorithm.
机译:经济调度问题(EDP)在智能电网中起着基本和重要的作用。其目的是决定智能电网中每个发电机的输出功率,以实现最小的生成成本。具有灵活性,鲁棒性和可扩展性的优点,希望应用分布式优化方法来解决EDP。在大多数现有的分布式优化方法中,所有生成器都将其与邻居的状态显式交换以获得最佳解决方案,这可能导致披露生成器的隐私信息。如果有一些旨在从通信网络推断出用于邪恶的目的的侵略性信息,这种问题变得更糟。对于隐私保存,通过向交换状态添加条件噪声,在本文中提出了一种隐私保留分布式优化算法。事实证明,这一提议的算法能够解决EDP。此外,本文还示出了所提出的算法的收敛速率和隐私分析。提供了一个例子以确认该算法的有效性。

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