Preserving Topology of Network Systems: Metric, Analysis, and Optimal Design

07/31/2023
by   Yushan Li, et al.
0

Preserving the topology from being inferred by external adversaries has become a paramount security issue for network systems (NSs), and adding random noises to the nodal states provides a promising way. Nevertheless, recent works have revealed that the topology cannot be preserved under i.i.d. noises in the asymptotic sense. How to effectively characterize the non-asymptotic preservation performance still remains an open issue. Inspired by the deviation quantification of concentration inequalities, this paper proposes a novel metric named trace-based variance-expectation ratio. This metric effectively captures the decaying rate of the topology inference error, where a slower rate indicates better non-asymptotic preservation performance. We prove that the inference error will always decay to zero asymptotically, as long as the added noises are non-increasing and independent (milder than the i.i.d. condition). Then, the optimal noise design that produces the slowest decaying rate for the error is obtained. More importantly, we amend the noise design by introducing one-lag time dependence, achieving the zero state deviation and the non-zero topology inference error in the asymptotic sense simultaneously. Extensions to a general class of noises with multi-lag time dependence are provided. Comprehensive simulations verify the theoretical findings.

READ FULL TEXT
research
06/02/2021

On Topology Inference for Networked Dynamical Systems: Principles and Performances

Topology inference for networked dynamical systems (NDSs) plays a crucia...
research
11/08/2020

Topology Inference for Multi-agent Cooperation under Unmeasurable Latent Input

Topology inference is a crucial problem for cooperative control in multi...
research
05/24/2020

Networks with pixels embedding: a method to improve noise resistance in images classification

In the task of images classification, usually, the network is sensitive ...
research
03/20/2018

Non-Asymptotic Classical Data Compression with Quantum Side Information

In this paper, we analyze classical data compression with quantum side i...
research
04/14/2023

Distributed detection of ARMA signals

This paper considers a distributed detection setup where agents in a net...
research
08/24/2022

Inferring Topology of Networked Dynamical Systems by Active Excitations

Topology inference for networked dynamical systems (NDSs) has received c...
research
09/04/2019

A Communication-Efficient Algorithm for Exponentially Fast Non-Bayesian Learning in Networks

We introduce a simple time-triggered protocol to achieve communication-e...

Please sign up or login with your details

Forgot password? Click here to reset