Advanced Discrete-Time Control Methods for Industrial Applications
Arash Khatamianfar

TL;DR
This thesis develops advanced discrete-time control methods for wind power dispatch with BESS and for overhead crane systems, improving efficiency, precision, and disturbance rejection in industrial applications.
Contribution
It introduces novel discrete-time control schemes including model predictive control and passivity-based control for energy management and crane operation, considering practical constraints and nonlinearities.
Findings
Optimal BESS operation under market rules demonstrated in simulations.
High-precision crane control with load swing suppression achieved experimentally.
Effective disturbance estimation and compensation methods validated on real crane setup.
Abstract
This thesis focuses on developing advanced control methods for two industrial systems in discrete-time aiming to enhance their performance in delivering the control objectives as well as considering the practical aspects. The first part addresses wind power dispatch into the electricity network using a battery energy storage system (BESS). To manage the amount of energy sold to the electricity market, a novel control scheme is developed based on discrete-time model predictive control (MPC) to ensure the optimal operation of the BESS in the presence of practical constraints. The control scheme follows a decision policy to sell more energy at peak demand times and store it at off-peaks in compliance with the Australian National Electricity Market rules. The performance of the control system is assessed under different scenarios using actual wind farm and electricity price data in…
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