基于有限集模型的预测控制预测与优化阶段的设计选择

T. Vyncke, S. Thielemans, T. Dierickx, R. Dewitte, M. Jacxsens, J. Melkebeek
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引用次数: 25

摘要

在过去的几年里,基于模型的预测控制(MBPC)在电力电子变流器中的应用得到了极大的发展。这是因为MBPC可以快速准确地控制混合系统(如电力电子转换器及其负载)的多个受控变量。由于MBPC是一个可能的控制器家族而不是单个控制器,因此在实现MBPC时需要做出多种设计选择。本文考虑并比较了在线有限集MBPC (FS-MBPC)算法的两个重要部分:优化步骤中的代价函数和预测步骤中的预测模型的几种概念可能性。研究了FS-MBPC在电力电子领域的两种不同应用。研究了代价函数在三电平飞电容逆变器输出电流和电容电压控制中的应用。研究了带2电平逆变器的异步电机定子磁链和转矩控制的预测模型。这两个不同的应用程序说明了FS-MBPC的多功能性。在对成本函数的研究中,首先对成本函数中的二次项和绝对值项进行了比较。得到了可比较的结果,但是对于绝对值成本函数获得了较低的资源使用。其次,将电容器电压跟踪控制与电容器电压可以无代价地偏离参考电压的控制进行比较。松弛的成本函数带来了更好的性能。对于预测模型,采用了经典的参数化机器模型和反向传播人工神经网络。这两种方法都具有良好的控制质量,神经网络版本更通用,但具有更高的计算负担。然而,隐藏层的神经元数量应该足够高。实验结果验证了所研究的各个方面,验证了仿真结果。更重要的是,这些实验证明了在FPGA中实现在线有限集MBPC的可行性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Design choices for the prediction and optimization stage of finite-set model based predictive control
The interest in applying model-based predictive control (MBPC) for power-electronic converters has grown tremendously in the past years. This is due to the fact that MBPC allows fast and accurate control of multiple controlled variables for hybrid systems such as a power electronic converter and its load. As MBPC is a family of possible controllers rather than one single controller, several design choices are to be made when implementing MBPC. In this paper several conceptual possibilities are considered and compared for two important parts of online Finite-Set MBPC (FS-MBPC) algorithm: the cost function in the optimizations step and the prediction model in the prediction step. These possibilities are studied for two different applications of FS-MBPC for power electronics. The cost function is studied in the application of output current and capacitor voltage control of a 3-level flying-capacitor inverter. The aspect of the prediction model is studied for the stator flux and torque control of an induction machine with a 2-level inverter. The two different applications illustrate the versatility of FS-MBPC. In the study concerning the cost function firstly the comparison is made between quadratic and absolute value terms in the cost function. Comparable results are obtained, but a lower resource usage is obtained for the absolute value cost function. Secondly a capacitor voltage tracking control is compared to a control where the capacitor voltage may deviate without cost from the reference up to a certain voltage. The relaxed cost function results in better performance. For the prediction model both a classical, parametric machine model and a back propagation artificial neural network are applied. Both are shown to be capable of a good control quality, the neural network version is much more versatile but has a higher computational burden. However, the number of neurons in the hidden layer should be suffciently high. All studied aspects were verified with experimental results and these validate the simulation results. Even more important is the fact that these experiments prove the feasibility of implementing online finite-set MBPC in an FPGA for both applications.
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