Affiliation:
1. Ericsson Research & KTH Royal Institute of Technology, Kista, Sweden
2. KTH Royal Institute of Technology & Digital Futures, Stockholm, Sweden
3. Ericsson Research & Uppsala University, Kista, Sweden
Abstract
When verifying that a communications network fulfills its specified performance, it is critical to note sudden shifts in network behavior as quickly as possible. Change point detection methods can be useful in this endeavor, but classical methods rely on measuring with a fixed measurement period, which can often be suboptimal in terms of measurement costs. In this paper, we extend the existing framework of change point detection with a notion of physical time. Instead of merely deciding when to stop, agents must now also decide at which future time to take the next measurement. Agents must now minimize the necessary number of measurements pre- and post-change, while maintaining a trade-off between post-change delay and false alarm rate. We establish, through this framework, the suboptimality of typical periodic measurements and propose a simple alternative, called crisis mode agents. We show analytically that crisis mode agents significantly outperform periodic measurements schemes. We further verify this in numerical evaluation, both on an array of synthetic change point detection problems as well as on the problem of detecting traffic load changes in a 5G test bed through end-to-end RTT measurements.
Publisher
Association for Computing Machinery (ACM)
Reference7 articles.
1. 3GPP. 2020. Service requirements for cyber-physical control applications in vertical domains. Technical Specification (TS). 3rd Generation Partnership Project (3GPP). Version 17.4.0.
2. Measuring System Visual Latency through Cognitive Latency on Video See-Through AR devices
3. Rajesh Gupta, Sudeep Tanwar, Sudhanshu Tyagi, and Neeraj Kumar. 2019. Tactile-internet-based telesurgery system for healthcare 4.0: An architecture, research challenges, and future directions. IEEE network, Vol. 33, 6 (2019), 22--29.
4. Information bounds and quick detection of parameter changes in stochastic systems
5. Change Point Detection with Adaptive Measurement Schedules for Network Performance Verification