基于1型和2型模糊逻辑无传感器控制的电动差动汽车模型参考自适应系统速度估计

A. Khemis, T. Boutabba, S. Drid
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摘要

介绍。本文提出了一种估算具有两个独立后驱的轮毂电动汽车速度的新方法。目前,变速感应电机在广泛的应用中取代了直流电机驱动,包括需要快速动态响应的电动汽车。由于电力换流装置、数字信号处理以及最近的智能控制系统等领域的技术进步和发展,电气驱动器的动态性能得到了显著改善,这一点现在成为可能。通过不使用速度传感器的控制策略,提高了系统的可靠性和鲁棒性,降低了感应电机驱动器的成本、尺寸和维护要求。没有传感器的感应电动机已成功地用于中速和高速运行。然而,低速不稳定性和各种电荷摄动条件下的不稳定性仍然是这一研究领域的严重问题,尚未得到有效解决。一些应用,如牵引传动和起重机,需要在不确定的负载扭矩干扰条件下保持所需的扭矩水平到低速水平。速度和转矩的控制在轮中电机牵引传动系统中尤为重要,车辆轮辋直接与电机轴相连以控制速度和转矩。该方法的新颖之处在于,采用1型和2型模糊控制器改进了模型参考自适应系统速度观测器的传统控制器的动态性能。目的。该方案通过对发动机的性能进行控制,采用模糊控制器控制转子转速的估计,并采用1型和2型对估计结果进行比较。方法。针对两轮电动汽车,研制了一种基于模型参考自适应控制系统的2型和1型模糊控制器的高性能无传感器轮式电机驱动系统。结果。实验证明,采用模糊逻辑2型控制器对电动汽车电动观测器的电差速器进行无传感器速度控制,取得了较好的效果。实用价值。论证了基于智能观测器(2型模糊逻辑)实现可靠高效电力推进系统的主要可能性。该研究方法旨在促进未来在数字信号处理器上的实验实现。
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Model reference adaptive system speed estimator based on type-1 and type-2 fuzzy logic sensorless control of electrical vehicle with electrical differential
Introduction. In this paper, a new approach for estimating the speed of in-wheel electric vehicles with two independent rear drives is presented. Currently, the variable-speed induction motor replaces the DC motor drive in a wide range of applications, including electric vehicles where quick dynamic response is required. This is now possible as a result of significant improvements in the dynamic performance of electrical drives brought about by technological advancements and development in the fields of power commutation devices, digital signal processing, and, more recently, intelligent control systems. The system’s reliability and robustness are improved, and the cost, size, and upkeep requirements of the induction motor drive are reduced through control strategies without a speed sensor. Successful uses of the induction motor without a sensor have been made for medium- and high-speed operations. However, low speed instability and instability under various charge perturbation conditions continue to be serious issues in this field of study and have not yet been effectively resolved. Some application such as traction drives and cranes are required to maintain the desired level of torque down to low speed levels with uncertain load torque disturbance conditions. Speed and torque control is more important particularly in motor-in-wheel traction drive train configuration where vehicle wheel rim is directly connected to the motor shaft to control the speed and torque. Novelty of the proposed work is to improve the dynamic performance of conventional controller used of model reference adaptive system speed observer using both type-1 and type-2 fuzzy logic controllers. Purpose. In proposed scheme, the performance of the engine is being controlled, fuzzy logic controller is controlling the estimate rotor speed, and results are then compared using type-1 and type-2. Method. For a two-wheeled motorized electric vehicle, a high-performance sensorless wheel motor drive based on both type-2 and type-1 fuzzy logic controllers of the model reference adaptive control system is developed. Results. Proved that, using fuzzy logic type-2 controller the sensorless speed control of the electrical differential of electric vehicle EV observer, much better results are achieved. Practical value. The main possibility of realizing reliable and efficient electric propulsion systems based on intelligent observers (type-2 fuzzy logic) is demonstrated. The research methodology has been designed to facilitate the future experimental implementation on a digital signal processor.
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