Silva Marlio Antonio, Lucena-Junior Jose Anselmo, da Silva Julio Cesar, Belo Francisco Antonio, Lima-Filho Abel Cavalcante, Ramos Jorge Gabriel Gomes de Souza, Camara Romulo, Brito Alisson
Graduate Program in Mechanical Engineering Department, Federal University of Paraiba (UFPB), João Pessoa 58051-900, Brazil.
Graduate Program in Physics, Federal University of Paraiba (UFPB), João Pessoa 58051-900, Brazil.
Entropy (Basel). 2024 Apr 25;26(5):361. doi: 10.3390/e26050361.
Three-phase induction motors are widely used in various industrial sectors and are responsible for a significant portion of the total electrical energy consumed. To ensure their efficient operation, it is necessary to apply control systems with specific algorithms able to estimate rotation speed accurately and with an adequate response time. However, the angular speed sensors used in induction motors are generally expensive and unreliable, and they may be unsuitable for use in hostile environments. This paper presents an algorithm for speed estimation in three-phase induction motors using the chaotic variable of maximum density. The technique used in this work analyzes the current signals from the motor power supply without invasive sensors on its structure. The results show that speed estimation is achieved with a response time lower than that obtained by classical techniques based on the Fourier Transform. This technique allows for the provision of motor shaft speed values when operated under variable load.
三相感应电动机广泛应用于各个工业领域,消耗了相当一部分的总电能。为确保其高效运行,有必要应用具有特定算法的控制系统,这些算法能够准确估计转速并具有足够的响应时间。然而,感应电动机中使用的角速度传感器通常昂贵且不可靠,并且可能不适用于恶劣环境。本文提出了一种利用最大密度混沌变量来估计三相感应电动机转速的算法。这项工作中使用的技术分析了来自电动机电源的电流信号,而无需在其结构上使用侵入式传感器。结果表明,该算法实现转速估计的响应时间比基于傅里叶变换的传统技术所获得的响应时间更短。该技术能够在电动机变负载运行时提供电机轴转速值。