Andrey Bernstein, Emiliano Dall'Anese, et al.
IEEE TSP
Optimization underpins many of the challenges that science and technology face on a daily basis. Recent years have witnessed a major shift from traditional optimization paradigms grounded on batch algorithms for medium-scale problems to challenging dynamic, time-varying, and even huge-size settings. This is driven by technological transformations that converted infrastructural and social platforms into complex and dynamic networked systems with even pervasive sensing and computing capabilities. This article reviews a broad class of state-of-the-art algorithms for time-varying optimization, with an eye to performing both algorithmic development and performance analysis. It offers a comprehensive overview of available tools and methods and unveils open challenges in application domains of broad range of interest. The real-world examples presented include smart power systems, robotics, machine learning, and data analytics, highlighting domain-specific issues and solutions. The ultimate goal is to exemplify wide engineering relevance of analytical tools and pertinent theoretical foundations.
Andrey Bernstein, Emiliano Dall'Anese, et al.
IEEE TSP
Andrea Simonetto, Alec Koppel, et al.
IEEE TACON
Emiliano Dall'Anese, Swaroop S. Guggilam, et al.
IEEE Transactions on Power Systems
Elif Eser, Julien Monteil, et al.
IFAC CTS 2018