论文标题
用于保护水分配系统的物理信息神经网络
Physics-Informed Neural Networks for Securing Water Distribution Systems
论文作者
论文摘要
物理知识的神经网络(PINNS)是神经网络的新兴类别,可以培训,以解决监督的学习任务,同时考虑到通用非线性部分偏微分方程所描述的物理定律。 Pinns展示了有希望的特征,例如使用最少的数据进行训练的数据,以准确代表系统动态环境的物理特性。在这项工作中,我们采用了新兴的Pinns范式来证明其在增强智能网络物理系统安全性方面的潜力。特别是,我们使用水分配网络的用例提出了概念验证方案,该场景涉及对负责通过液体流量传感器测量调节液体泵的控制器的攻击。 Pinns用于减轻攻击的影响,同时证明该方法的适用性和挑战。
Physics-informed neural networks (PINNs) is an emerging category of neural networks which can be trained to solve supervised learning tasks while taking into consideration given laws of physics described by general nonlinear partial differential equations. PINNs demonstrate promising characteristics such as performance and accuracy using minimal amount of data for training, utilized to accurately represent the physical properties of a system's dynamic environment. In this work, we employ the emerging paradigm of PINNs to demonstrate their potential in enhancing the security of intelligent cyberphysical systems. In particular, we present a proof-of-concept scenario using the use case of water distribution networks, which involves an attack on a controller in charge of regulating a liquid pump through liquid flow sensor measurements. PINNs are used to mitigate the effects of the attack while demonstrating the applicability and challenges of the approach.