학술논문

Application of mismatched Cellular Nonlinear Networks for Physical Cryptography
Document Type
Conference
Source
2010 12th International Workshop on Cellular Nanoscale Networks and their Applications (CNNA 2010) Cellular Nanoscale Networks and Their Applications (CNNA), 2010 12th International Workshop on. :1-6 Feb, 2010
Subject
Components, Circuits, Devices and Systems
Cellular networks
Cryptography
Cellular neural networks
Analog circuits
Integrated circuit interconnections
Partial differential equations
Nonlinear equations
Circuit simulation
System-on-a-chip
Nonlinear wave propagation
Physical Uncloneable Functions (PUF)
Physical Cryptography
Cellular Nonlinear Networks (CNN)
Language
ISSN
2165-0144
2165-0152
Abstract
This paper proposes the use of Cellular Non-Linear Networks (CNNs) as physical uncloneable functions (PUFs). We argue that analog circuits offer higher security than existing digital PUFs and that the CNN paradigm allows us to build large, unclonable, and scalable analog PUFs, which still show a stable and repeatable input-output behavior. CNNs are dynamical arrays of locally-interconected cells, with a cell dynamics that depends upon the interconnection strengths to their neighbors. They can be designed to evolve in time according to partial differential equations. If this If this equation describes a physical phenomenon, then the CNN can simulate a complex physical system on-chip. This can be exploited to create electrical PUFs with high relevant structural information content. To illustrate our paradigm at work, we design a circuit that directly emulates nonlinear wave propagation phenomena in a random media. It effectively translates the complexity of optical PUFs into electrical circuits.