Model Predictive Control based Direct Matrix Converter fed Permanent Magnet Synchronous Machine drives for Traction and Electric Mobility Applications

B. Balaji, J. D. Anunciya
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Abstract

There have been extensive research works going on electric mobility but most of these work and the existing electric mobility systems are battery-based DC systems. In some applications of electric mobility like traction and advanced technologies like electromagnetic induction charging, AC fed systems are employed due to the innate qualities of AC power transmission. Almost all the electric mobility systems we use are AC induction or permanent magnet machines. The conventional electric mobility systems including traction having AC as their energy source use two-stage conversion i.e. A fixed AC is converted to a fixed or variable DC link using a rectifier and finally, an inverter provides a variable AC in terms of frequency and magnitude according to the control algorithm. The two-stage conversion has its pros and cons but Matrix Converter (MC) will be a suitable and efficient alternative for AC fed AC motor drives. In the case of traction and other electric mobility applications, the load torque demand plays a significant role. The predictive control technique provides a suitable solution for these kinds of special drive applications due to their selective parameter control ability. Implementation of predictive control using a matrix converter is more effective than the conventional inverter fed drives, owing to the increased viability of matrix converter switching configurations. This paper discusses the mathematical implementation and comparison of Predictive Current Control (PCC) and Predictive Torque Control (PTC) with and without weighing factor for AC fed electric mobility applications. The efficacy of both the model predictive control techniques in concern of execution time, steady-state, transient, and dynamic conditions are analysed and validated along with the influence of diverse control variables in the cost function.
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基于模型预测控制的直接矩阵变换器永磁同步电机驱动在牵引和电动交通中的应用
目前已经有大量的研究工作在进行电动交通,但大多数这些工作和现有的电动交通系统是基于电池的直流系统。在牵引等电动交通和电磁感应充电等先进技术的某些应用中,由于交流输电的固有特性,采用交流馈电系统。几乎所有我们使用的电动移动系统都是交流感应或永磁电机。传统的电动移动系统,包括以交流为能源的牵引,使用两级转换,即使用整流器将固定的交流转换为固定或可变的直流链路,最后,逆变器根据控制算法提供频率和幅度的可变交流。两级转换有其优点和缺点,但矩阵变换器(MC)将是一个合适的和有效的替代交流馈电交流电机驱动。在牵引和其他电动交通应用中,负载扭矩需求起着重要作用。预测控制技术由于其参数的选择性控制能力,为这类特殊的驱动应用提供了一种合适的解决方案。由于矩阵变换器开关配置的可行性增加,使用矩阵变换器实现预测控制比传统的逆变器馈源驱动更有效。本文讨论了预测电流控制(PCC)和预测转矩控制(PTC)在交流电动汽车应用中的数学实现和比较。分析和验证了两种模型预测控制技术在执行时间、稳态、暂态和动态条件下的有效性,以及成本函数中不同控制变量的影响。
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