Visible to the public Biblio

Filters: Keyword is power distribution networks  [Clear All Filters]
2020-02-17
Maykot, Arthur S., Aranha Neto, Edison A. C., Oliva, Neimar A..  2019.  Automation of Manual Switches in Distribution Networks Focused on Self-Healing: A Step toward Smart Grids. 2019 IEEE PES Innovative Smart Grid Technologies Conference - Latin America (ISGT Latin America). :1–4.
This work describes the self-healing systems and their benefits in the power distribution networks, with the objective of indicating which manual switch should become, as a matter of priority, automatic. The computational tool used is based on graph theory, genetic algorithms and multicriteria evaluation. There are benefits for consumers, that will benefit from a more reliable and stable system, and for the utility, that can reduce costs with team field and financial compensations payed to consumers in case of continuity indexes violation. Data from a real distribution network from the state of Sao Paulo will be used as a case study for the application of the methodology.
2018-04-11
Khalid, F., Hasan, S. R., Hasan, O., Awwadl, F..  2017.  Behavior Profiling of Power Distribution Networks for Runtime Hardware Trojan Detection. 2017 IEEE 60th International Midwest Symposium on Circuits and Systems (MWSCAS). :1316–1319.

Runtime hardware Trojan detection techniques are required in third party IP based SoCs as a last line of defense. Traditional techniques rely on golden data model or exotic signal processing techniques such as utilizing Choas theory or machine learning. Due to cumbersome implementation of such techniques, it is highly impractical to embed them on the hardware, which is a requirement in some mission critical applications. In this paper, we propose a methodology that generates a digital power profile during the manufacturing test phase of the circuit under test. A simple processing mechanism, which requires minimal computation of measured power signals, is proposed. For the proof of concept, we have applied the proposed methodology on a classical Advanced Encryption Standard circuit with 21 available Trojans. The experimental results show that the proposed methodology is able to detect 75% of the intrusions with the potential of implementing the detection mechanism on-chip with minimal overhead compared to the state-of-the-art techniques.