Fully privacy-preserving distributed optimization in power systems based on secret sharing

iEnergy Pub Date : 2022-09-01 DOI:10.23919/IEN.2022.0045
Nianfeng Tian;Qinglai Guo;Hongbin Sun;Xin Zhou
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引用次数: 3

Abstract

With the increasing development of smart grid, multi-party cooperative computation between several entities has become a typical characteristic of modern energy systems. Traditionally, data exchange among parties is inevitable, rendering how to complete multiparty collaborative optimization without exposing any private information a critical issue. This paper proposes a fully privacy-preserving distributed optimization framework based on secure multi-party computation (SMPC) with secret sharing protocols. The framework decomposes the collaborative optimization problem into a master problem and several subproblems. The process of solving the master problem is executed in the SMPC framework via the secret sharing protocols among agents. The relationships of agents are completely equal, and there is no privileged agent or any third party. The process of solving subproblems is conducted by agents individually. Compared to the traditional distributed optimization framework, the proposed SMPC-based framework can fully preserve individual private information. Exchanged data among agents are encrypted and no private information disclosure is assured. Furthermore, the framework maintains a limited and acceptable increase in computational costs while guaranteeing optimality. Case studies are conducted on test systems of different scales to demonstrate the principle of secret sharing and verify the feasibility and scalability of the proposed methodology.
基于秘密共享的电力系统完全隐私保护分布式优化
随着智能电网的不断发展,多个实体之间的多方协同计算已成为现代能源系统的典型特征。传统上,各方之间的数据交换是不可避免的,这使得如何在不暴露任何私人信息的情况下完成多方协同优化成为一个关键问题。本文提出了一种基于秘密共享协议的安全多方计算(SMPC)的完全隐私保护分布式优化框架。该框架将协作优化问题分解为一个主问题和几个子问题。通过代理之间的秘密共享协议,在SMPC框架中执行解决主问题的过程。代理人之间的关系是完全平等的,不存在特权代理人或任何第三方。解决子问题的过程由代理单独执行。与传统的分布式优化框架相比,所提出的基于SMPC的框架可以充分保留个人隐私信息。代理之间交换的数据是加密的,不会保证私人信息泄露。此外,该框架在保证最优性的同时,保持了计算成本的有限且可接受的增加。在不同规模的测试系统上进行了案例研究,以证明秘密共享的原理,并验证所提出方法的可行性和可扩展性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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