MIMO First and Second Order Discrete Sliding Mode Controls of Uncertain Linear Systems under Implementation Imprecisions
Mohammad Reza Amini, Mahdi Shahbakhti, and Selina Pan

TL;DR
This paper introduces advanced discrete sliding mode controllers that incorporate online uncertainty prediction and adaptation to enhance robustness against model inaccuracies and implementation imprecisions in uncertain linear systems.
Contribution
It presents new formulations of first and second order DSMCs with integrated ADC uncertainty prediction and adaptation laws for the first time.
Findings
Second order DSMCs improve tracking by up to 84%.
Adaptive mechanisms remove up to 90% of uncertainties.
Real-time evaluation on a DC motor demonstrates effectiveness.
Abstract
The performance of a conventional model-based controller significantly depends on the accuracy of the modeled dynamics. The model of a plant's dynamics is subjected to errors in estimating the numerical values of the physical parameters, and variations over operating environment conditions and time. These errors and variations in the parameters of a model are the major sources of uncertainty within the controller structure. Digital implementation of controller software on an actual electronic control unit (ECU) introduces another layer of uncertainty at the controller inputs/outputs. The implementation uncertainties are mostly due to data sampling and quantization via the analog-to-digital conversion (ADC) unit. The failure to address the model and ADC uncertainties during the early stages of a controller design cycle results in a costly and time consuming verification and validation…
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Taxonomy
TopicsAdaptive Control of Nonlinear Systems · Advanced Control Systems Optimization · Real-time simulation and control systems
