High-performance model predictive control methods for multilevel inverter-fed medium-voltage drive systems
Abstract
This dissertation presents comprehensive research on the modeling, control, and implementation
of advanced multilevel inverter (MLI) topologies and model predictive control
(MPC) strategies for medium-voltage (MV) drive systems. The primary objective is to
achieve superior current tracking performance, reduced switching frequency, and minimized
common-mode voltage (CMV), while maintaining low computational complexity. The research
addresses critical limitations in existing MLI topologies and MPC methods such as
high component count, increased cost and size, model inaccuracy, high computational burden
through the development of novel converter configurations and control methodologies.
A new five-level (5L) inverter topology is first proposed, featuring a reduced number
of components and the elimination of multiple isolated DC-sources. The topology utilizes
only flying capacitors (FCs) and switches, thereby reducing control complexity compared
to existing 5L-MLI. A finite-control-set-MPC (FCS-MPC) method is also developed to control
the proposed 5L-MLI, and the performance of the inverter is experimentally validated
under various operating scenarios. Results demonstrate that the proposed inverter has superior
harmonic performance and low switching power losses while operating at low switching
frequency in comparison to the existing 5L-MLIs.
Besides converter configurations, control methods play a pivotal role in system performance.
Existing FCS-MPC are modeled based-on the forward Euler’s integration method
due to its ease of implementation but suffer from significant prediction errors at larger sampling
periods. To tackle this issue, a Heun integration-based-FCS-MPC approach is proposed
for MLIs. The proposed method incorporates correction stage along with prediction stage
to improve the prediction accuracy, resulting in a substantial reduction in current tracking
error and switching activity. Experimental results confirm the effectiveness of the proposed
approach through enhanced prediction accuracy while operating at a low switching frequency.
To further tackle CMV and computational challenges, improved sequential MPC (SMPC)
strategies are proposed. The proposed low-complexity SMPC eliminates the reliance on
weighting factors and offline switching vector preselection to reduce the CMV. In addition, an enhanced sampled-data SMPC is proposed to improve the discrete-time model precision,
significantly reducing current distortion and FC voltage ripple. Experimental validation on
an MLI prototype demonstrates their excellent current regulation, lower CMV, and improved
performance compared to existing SMPCs.
Finally, an SMPC strategy with cost function-free current control and CMV mitigation
is proposed based on the low-complexity SMPC framework. By directly determining the
optimal voltage level from the reference AC currents, the proposed method removes the
need for cost function optimization in the current control stage, while maintaining low CMV
and reducing computational complexity. Experimental and simulation results demonstrate
effective current regulation, low harmonic distortion, reduced FC voltage ripple, and satisfactory
motor drive performance, confirming the practical suitability of the proposed SMPC
for high-performance MLI-fed MV drive systems.
Description
Thesis embargoed until July 1 2027.
