2022
DOI: 10.1177/09596518221083729
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Unknown input estimation algorithms for a class of LPV/nonlinear systems with application to wastewater treatment process

Abstract: This paper addresses the problem of unknown input estimation for a class of nonlinear systems with mixed nonlinear terms, namely Linear Parameter Varying (LPV) parts and purely Lipschitz nonlinearities. Three new unknown input estimation algorithms are proposed, where each algorithm depends on the distribution of the unknown inputs in the system. These algorithms provide estimation of the maximum possible unknown inputs in a system, contrarily to the methods available in the literature, which consider only par… Show more

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Cited by 7 publications
(5 citation statements)
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“…Three novel methods for estimating unknown inputs were developed in [74]; the success of each technique was contingent on the configuration of the system's unknown inputs. A UIO was developed in [75] as a mechanism for state estimates of the load frequency control (LFC) loop of a power system that considered renewable energy sources as unknown inputs.…”
Section: Unknown Input Observer Methodsmentioning
confidence: 99%
“…Three novel methods for estimating unknown inputs were developed in [74]; the success of each technique was contingent on the configuration of the system's unknown inputs. A UIO was developed in [75] as a mechanism for state estimates of the load frequency control (LFC) loop of a power system that considered renewable energy sources as unknown inputs.…”
Section: Unknown Input Observer Methodsmentioning
confidence: 99%
“…As in Figure 1, after collecting water quality, the UV appearance was standardised using water quality data from the spectra to understand the water quality collection, thus enabling the transfer of early warning models, reducing the resources required to calibrate equipment and improving the use of models, resulting in a standardised UV-Vis spectral water quality database for spectral standard instruments [15]. Due to the standardised UV levels of different rivers, various indicators and algorithmic models were selected during data collection, so that a DT algorithm can be used to extract UV-Vis spectral water quality data features, in order to learn and model the spectral information used to extract spectral water quality data features, apply the classification of spectral information to study the quality of water spectral information, and analyse water quality through a decision algorithm classification [16]; using the water quality analysis model, based on the advantages of electronic information technology, and take full advantage of its efficient computing power and its portability, to achieve the processing of water quality data, and by setting up a water pollution early warning system environment, can real-time display of water quality, so as to achieve water pollution early warning [17][18].…”
Section: Figure 1 Wp Early Warning Methods System Structure Diagrammentioning
confidence: 99%
“…An ideal and efficient early warning system for the water environment in a watershed [8][9] should meet the following needs; Providing a rapid response to police situations; A sufficiently broad range of pollutant types for early warning; Both sampling and preservation of samples, with the greatest possible automation [10][11]; Moderate cost to purchase, maintain and upgrade the system; Simplicity of operation, avoiding extensive training and excessive skill requirements; Sources of contamination can be identified and basic information on the spread of contaminants downstream can be predicted; Adequate sensitivity for monitoring of contaminants; Minimization of errors; demonstrate sufficient stability and strength for frequent operations [12][13]; Can be operated and adjusted remotely; Capable of continuous operation; Ability to allow third parties to test, evaluate and validate.…”
Section: Basin Water Environment Early Warning System Needsmentioning
confidence: 99%