Semidefinite Relaxation-Based Optimization of Multiple-Input Wireless Power Transfer Systems
For engineers designing MISO WPT systems, this provides a rigorous, globally optimal optimization framework that ensures physical realizability.
The paper presents a semidefinite relaxation-based optimization method for multiple-input wireless power transfer systems that ensures physical realizability and guarantees convergence to the global optimum, outperforming global optimization methods like genetic algorithms.
An optimization procedure for multi-transmitter (MISO) wireless power transfer (WPT) systems based on tight semidefinite relaxation (SDR) is presented. This method ensures physical realizability of MISO WPT systems designed via convex optimization -- a robust, semi-analytical and intuitive route to optimizing such systems. To that end, the nonconvex constraints requiring that power is fed into rather than drawn from the system via all transmitter ports are incorporated in a convex semidefinite relaxation, which is efficiently and reliably solvable by dedicated algorithms. A test of the solution then confirms that this modified problem is equivalent (tight relaxation) to the original (nonconvex) one and that the true global optimum has been found. This is a clear advantage over global optimization methods (e.g. genetic algorithms), where convergence to the true global optimum cannot be ensured or tested. Discussions of numerical results yielded by both the closed-form expressions and the refined technique illustrate the importance and practicability of the new method. It, is shown that this technique offers a rigorous optimization framework for a broad range of current and emerging WPT applications.