Abstract
AbstractWith the growth in complexity of real-time embedded systems, there is an increasing need for tools and techniques to understand and compare the observed runtime behavior of a system with the expected one. Since many real-time applications require periodic interactions with the environment, one of the fundamental problems in guaranteeing their temporal correctness is to be able to infer the periodicity of certain events in the system. The practicability of a period inference tool, however, depends on both its accuracy and robustness (also its resilience) against noise in the output trace of the system, e.g., when the system trace is impacted by the presence of aperiodic tasks, release jitters, and runtime variations in the execution time of the tasks. This work (i) presents the first period inference framework that uses regression-based machine-learning (RBML) methods, and (ii) thoroughly investigates the accuracy and robustness of different families of RBML methods in the presence of uncertainties in the system parameters. We show, on both synthetically generated traces and traces from actual systems, that our solutions can reduce the error of period estimation by two to three orders of magnitudes w.r.t. the state of the art.
Publisher
Springer Science and Business Media LLC
Subject
Electrical and Electronic Engineering,Control and Optimization,Computer Networks and Communications,Computer Science Applications,Modeling and Simulation,Control and Systems Engineering
Reference45 articles.
1. Akesson B, Nasri M, Nelissen G, Altmeyer S, Davis RI (2020) An empirical survey-based study into industry practice in real-time systems. In: IEEE real-time systems symposium (RTSS). IEEE, Houston, pp 1–9
2. Audsley N, Burns A, Richardson M, Tindell K, Wellings AJ (1993) Applying new scheduling theory to static priority preemptive scheduling. Softw Eng J 8(5):284–292
3. Barr ET, Harman M, McMinn P, Shahbaz M, Yoo S (2015) The oracle problem in software testing: a survey. IEEE Trans Software Eng 41(5):507–525
4. Bellman R (1961) Curse of dimensionality. In: Adaptive control processes: a guided tour. Princeton University Press, Princeton, p 2
5. Berberidis C, Aref WG, Atallah M, Vlahavas I, Elmagarmid AK (2002) Multiple and partial periodicity mining in time series databases. In: European conference on artificial intelligence (ECAI). ECAI, Vienna, pp 370–374
Cited by
1 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献
1. A Robust Scheduling Algorithm for Overload-Tolerant Real-Time Systems;2023 IEEE 26th International Symposium on Real-Time Distributed Computing (ISORC);2023-05