26 research outputs found
Concrete Problems in AI Safety, Revisited
As AI systems proliferate in society, the AI community is increasingly
preoccupied with the concept of AI Safety, namely the prevention of failures
due to accidents that arise from an unanticipated departure of a system's
behavior from designer intent in AI deployment. We demonstrate through an
analysis of real world cases of such incidents that although current vocabulary
captures a range of the encountered issues of AI deployment, an expanded
socio-technical framing will be required for a more complete understanding of
how AI systems and implemented safety mechanisms fail and succeed in real life.Comment: Published at ICLR workshop on ML in the Real World, 202
Event detection and localization in distribution grids with phasor measurement units
The recent introduction of synchrophasor technology into power distribution systems has given impetus to various monitoring, diagnostic, and control applications, such as system identification and event detection, which are crucial for restoring service, preventing outages, and managing equipment health. Drawing on the existing framework for inferring topology and admittances of a power network from voltage and current phasor measurements, this paper proposes an online algorithm for event detection and localization in unbalanced three-phase distribution systems. Using a convex relaxation and a matrix partitioning technique, the proposed algorithm is capable of identifying topology changes and attributing them to specific categories of events. The performance of this algorithm is evaluated on a standard test distribution feeder with synthesized loads, and it is shown that a tripped line can be detected and localized in an accurate and timely fashion, highlighting its potential for real-world applications