학술논문

Optimization Filters for Stochastic Time-Varying Convex Optimization
Document Type
Conference
Source
2023 European Control Conference (ECC) Control Conference (ECC), 2023 European. :1-6 Jun, 2023
Subject
Computing and Processing
Robotics and Control Systems
Signal Processing and Analysis
Heuristic algorithms
Europe
Filtering algorithms
Prediction algorithms
Linear matrix inequalities
Kalman filters
Noise measurement
Language
Abstract
We look at a stochastic time-varying optimization problem and we formulate online algorithms to find and track its optimizers in expectation. The algorithms are derived from the intuition that standard prediction and correction steps can be seen as a dynamical system and a measurement equation, respectively, yielding the notion of filter design. The optimization algorithms are then based on an extended Kalman filter in the unconstrained case, and on a linear matrix inequality condition in the constrained case. Some special cases and variations are discussed, and supporting numerical results are presented from real data sets in ride-hailing scenarios. The results are encouraging, especially when predictions are accurate, a case which is often encountered in practice when historical data is abundant