Policy Poisoning in Batch Learning for Linear Quadratic Control Systems via State Manipulation

Courtney M. King, Son Tung Do, Juntao Chen
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引用次数: 1

Abstract

In this work, we study policy poisoning through state manipulation, also known as sensor spoofing, and focus specifically on the case of an agent forming a control policy through batch learning in a linear-quadratic (LQ) system. In this scenario, an attacker aims to trick the learner into implementing a targeted malicious policy by manipulating the batch data before the agent begins its learning process. An attack model is crafted to carry out the poisoning strategically, with the goal of modifying the batch data as little as possible to avoid detection by the learner. We establish an optimization framework to guide the design of such policy poisoning attacks. The presence of bi-linear constraints in the optimization problem requires the design of a computationally efficient algorithm to obtain a solution. Therefore, we develop an iterative scheme based on the Alternating Direction Method of Multipliers (ADMM) which is able to return solutions that are approximately optimal. Several case studies are used to demonstrate the effectiveness of the algorithm in carrying out the sensor-based attack on the batch-learning agent in LQ control systems.
基于状态操纵的线性二次控制系统批量学习中的策略中毒
在这项工作中,我们研究了通过状态操纵的策略中毒,也称为传感器欺骗,并特别关注线性二次(LQ)系统中智能体通过批量学习形成控制策略的情况。在此场景中,攻击者的目标是在代理开始学习过程之前通过操纵批处理数据来欺骗学习器实现目标恶意策略。一个攻击模型被精心设计来策略性地执行中毒,其目标是尽可能少地修改批数据,以避免被学习者发现。我们建立了一个优化框架来指导这种策略投毒攻击的设计。优化问题中存在双线性约束,需要设计一种计算效率高的算法来求解。因此,我们开发了一种基于乘法器交替方向法(ADMM)的迭代方案,该方案能够返回近似最优的解。通过几个案例研究,证明了该算法在LQ控制系统中对批量学习智能体进行基于传感器攻击的有效性。
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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