Communications - Scientific Letters of the University of Zilina 2022, 24(3):B239-B246 | DOI: 10.26552/com.C.2022.3.B239-B246
Methods for Identification of Complex Industrial Control Objects on Their Accelerating Characteristics
- Academy of Logistics and Transport, Almaty, Republic of Kazakhstan
Theoretical identification methods for complex industrial control objects give very cumbersome and complex mathematical relations, the use of which for practical purposes is not constructive. In this regard, methods for obtaining mathematical models based on experimental data have now become the main focus of identification theory. In this paper is described the method of identification of industrial control objects developed according to their acceleration characteristics. The structure of the object under study is determined by the type of amplitude-phase frequency response and dynamic parameters are determined by experimental data. The high adequacy of the method is confirmed by similar studies on known (reference) models. The scientific novelty of the work consists in development of a new method for identifying complex industrial control objects by their acceleration characteristics.
Keywords: monotone S-shaped, acceleration curve, second order inertial, link, transfer function, identification, active experiment
Received: November 23, 2021; Accepted: April 25, 2022; Prepublished online: May 26, 2022; Published: July 1, 2022 Show citation
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