KCAD: Kinetic Cyber-attack Detection Method for Cyber-physical Additive Manufacturing Systems
Title | KCAD: Kinetic Cyber-attack Detection Method for Cyber-physical Additive Manufacturing Systems |
Publication Type | Conference Paper |
Year of Publication | 2016 |
Authors | Chhetri, Sujit Rokka, Canedo, Arquimedes, Faruque, Mohammad Abdullah Al |
Conference Name | Proceedings of the 35th International Conference on Computer-Aided Design |
Publisher | ACM |
Conference Location | New York, NY, USA |
ISBN Number | 978-1-4503-4466-1 |
Keywords | additive manufacturing, composability, cps privacy, Cyber-physical systems, Intrusion detection, kinetic cyber-attacks, Metrics, Physical layer, physical layer security, physical-layer security, pubcrawl, Resiliency, security |
Abstract | Additive Manufacturing (AM) uses Cyber-Physical Systems (CPS) (e.g., 3D Printers) that are vulnerable to kinetic cyber-attacks. Kinetic cyber-attacks cause physical damage to the system from the cyber domain. In AM, kinetic cyber-attacks are realized by introducing flaws in the design of the 3D objects. These flaws may eventually compromise the structural integrity of the printed objects. In CPS, researchers have designed various attack detection method to detect the attacks on the integrity of the system. However, in AM, attack detection method is in its infancy. Moreover, analog emissions (such as acoustics, electromagnetic emissions, etc.) from the side-channels of AM have not been fully considered as a parameter for attack detection. To aid the security research in AM, this paper presents a novel attack detection method that is able to detect zero-day kinetic cyber-attacks on AM by identifying anomalous analog emissions which arise as an outcome of the attack. This is achieved by statistically estimating functions that map the relation between the analog emissions and the corresponding cyber domain data (such as G-code) to model the behavior of the system. Our method has been tested to detect potential zero-day kinetic cyber-attacks in fused deposition modeling based AM. These attacks can physically manifest to change various parameters of the 3D object, such as speed, dimension, and movement axis. Accuracy, defined as the capability of our method to detect the range of variations introduced to these parameters as a result of kinetic cyber-attacks, is 77.45%. |
URL | http://doi.acm.org/10.1145/2966986.2967050 |
DOI | 10.1145/2966986.2967050 |
Citation Key | chhetri_kcad:_2016 |