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An improved incipient whale optimization algorithm based robust fault detection and diagnosis for sensorless brushless DC motor drive under external disturbances

机译:基于改进的初期捕鲸鲸类优化算法基于鲁棒故障检测和诊断外部干扰下的无传感器无刷直流电机驱动

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摘要

In general, unexpected failures in sensorless brushless DC (BLDC) motors can result in production downtime, costly repairs, and safety concerns. BLDC motors are commonly used in home appliances, the medical sector, aerospace, small-scale, and large-scale industries under uncertain operating conditions. Therefore, the fault detection and diagnosis (FDD) of BLDC motor drives can play a very important role in increasing their performance, reliability, robustness control, and operational safety under uncertain operating conditions in critical real-time applications. To satisfy these issues of hall effect sensor, misplacement of a hall-effect sensor, inverter IGBT open-switch fault diagnosis, failure of hall effect sensor, lack of robustness speed control of BLDC motor, which has received substantial interest in academic and industry sectors to establish the proposed work optimization techniques approach FDD strategy for speed control of sensorless BLDC motor under uncertain operating conditions. The proposed optimization techniques such as Bat Algorithm (BA), Grey Wolf Optimization (GWO), and Whale Optimization Algorithm (WOA) approach FDD strategies for BLDC motor drives. These FDD strategies simulated by the above optimization techniques on a sensorless BLDC motor with numerical Matlab/Simulink 2020a simulation results are verified. From the simulation results, out of three optimization techniques, the WOA-based FDD strategies are very effective for both bearing and stator winding faults detection and diagnosis in sensorless BLDC motor drives.
机译:通常,无传感器无刷直流(BLDC)电机中的意外故障可能导致生产停机,昂贵的维修和安全问题。 BLDC电机通常用于家电,医疗领域,航空航天,小规模和大型行业,在不确定的运行条件下。因此,BLDC电机驱动器的故障检测和诊断(FDD)可以在提高关键实时应用中不确定运行条件下的性能,可靠性,稳健性控制和操作安全性方面发挥非常重要的作用。为了满足霍尔效应传感器的这些问题,霍尔效应传感器的错位,逆变器IGBT开关故障诊断,霍尔效应传感器的失效,缺乏BLDC电机的鲁棒速度控制,这对学术和工业部门得到了大量兴趣建立所提出的工作优化技术,在不确定的操作条件下对无传感器BLDC电机速度控制的FDD策略。所提出的优化技术,如BAT算法(BA),灰狼优化(GWO)和鲸瓦优化算法(WOA)接近BLDC电机驱动器的FDD策略。这些FDD策略通过上述优化技术模拟,在具有数值MATLAB / SIMULINK 2020A仿真结果的无传感器BLDC电动机上进行了验证。从仿真结果,在三种优化技术中,基于WOA的FDD策略对于无传感器BLDC电机驱动器中的轴承和定子绕组故障检测和诊断非常有效。

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