基于机器学习的网络攻击检测与非线性过程经济模型预测控制弹性运行

Scarlett Chen, Zhe Wu, P. Christofides
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引用次数: 1

摘要

这项工作提出了易受针对性网络攻击的非线性过程的弹性操作策略,以及检测和处理标准类型的网络攻击。针对一类非线性系统,提出了一种改进的基于lyapunov的经济模型预测控制器(LEMPC),该控制器采用闭环和开环联合控制动作实现方案,在保持闭环过程稳定性的同时,以时变方式优化经济效益。尽管传感器测量可能容易受到网络攻击,但所提出的控制器设计和操作策略确保了该过程将保持稳定性,并对特定类型的不稳定网络攻击保持弹性。基于数据的网络攻击检测器是通过机器学习方法使用传感器数据开发的,这些检测器定期激活并在线应用于过程操作环境中。以连续搅拌罐式反应器为例,仿真结果证明了弹性控制和检测策略在网络攻击下保持稳定和经济最优运行的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine Learning-Based Cyber-attack Detection and Resilient Operation via Economic Model Predictive Control for Nonlinear Processes
This work proposes resilient operation strategies for nonlinear processes that are vulnerable to targeted cyber-attacks, as well as detection and handling of standard types of cyber-attacks. Working with a general class of nonlinear systems, a modified Lyapunov-based Economic Model Predictive Controller (LEMPC) using combined closed-loop and open-loop control action implementation schemes is proposed to optimize economic benefits in a time-varying manner while maintaining closed-loop process stability. Although sensor measurements may be vulnerable to cyber-attacks, the proposed controller design and operation strategy ensure that the process will maintain stability and stay resilient against particular types of destabilizing cyber-attacks. Data-based cyber-attack detectors are developed using sensor data via machine-learning methods, and these detectors are periodically activated and applied online in the context of process operation. Using a continuously stirred tank reactor example, simulation results demonstrate the effectiveness of the resilient control and detection strategy in maintaining stable and economically optimal operation in the presence of cyber-attacks.
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