TY - JOUR U1 - Zeitschriftenartikel, wissenschaftlich - begutachtet (reviewed) A1 - Diachenko, Grygorii A1 - Schullerus, Gernot A1 - Dominic, Antony A1 - Aziukovskyi, Oleksandr T1 - Energy-efficient predictive control for field-orientation induction machine drives JF - Naukovyj visnyk Nacionalʹnoho Hirnyc̆oho Universytetu / Nacionalʹnyj Hirnyčyj Universytet = Scientific bulletin of National Mining University N2 - Purpose. To improve the efficiency of the closed-cycle operation of the field-orientation induction machine in dynamic behavior when load conditions are changing, considering the nonlinearities of the main inductance. Methodology. The optimal control problem is defined as the minimization of the time integral of the energy losses. The algorithm observed in this paper uses the Matlab/Simulink, dSPACE real-time interface, and C language. Handling real-time applications is made in ControlDesk experiment software for seamless ECU development. Findings. Adiscrete-time model with an integrated predictive control scheme where the optimization is performed online at every sampling step has been developed. The optimal field-producing current trajectory is determined, so that the copper losses are minimized over a wide operational range. Additionally, the comparison of measurement results with conventional methods is provided, which validates the advantages and performance of the control scheme. Originality. To solve the given problem, the information vector on the current state of the coordinates of the electromechanical system is used to form a controlling influence in the dynamic mode of operation. For the first time, the formation process of controls has considered the current state and the desired future state of the system in the real-time domain. Practical value. Apredictive iterative approach for optimal flux level of an induction machine is important to generate the required electromagnetic torque and to reduce power losses simultaneously. KW - predictive control KW - energy efficiency KW - dynamic operation KW - real-time implementation Y1 - 2020 UN - https://nbn-resolving.org/urn:nbn:de:bsz:rt2-opus4-29707 SN - 2071-2227 SS - 2071-2227 U6 - https://doi.org/10.33271/nvngu/2020-6/061 DO - https://doi.org/10.33271/nvngu/2020-6/061 IS - 6 SP - 61 EP - 67 S1 - 7 PB - National Mining University CY - Dnipro, Ukraine ER -