Applying Artificial Intelligence to Optimize Small-Scale Ocean Current Turbine Performance

S. Rouhi, S. Sadeqi, N. Xiros, L. Birk, E. Aktosun, J. Ioup
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Abstract

A comprehensive artificial intelligence-based motor drive was developed to control the performance of a permanent magnet direct current (PMDC) motor employed as a small-scale three-bladed horizontal axis ocean current turbine. Although the conventional controller performs reasonably in a lab environment where non-linear load is absented; however, for towing tank experiments with noisy and potentially non-linear input, it is crucial to run the small-scale turbine in a robust mode. A mathematical model of a PMDC motor dynamic system is derived incorporating a fuzzy logic controller. In addition, this drive control was validated experimentally. The experimental design is discussed in detail. The system performance was tested experimentally over a wide range of operating condition to validate the fuzzy logic control robustness and effectiveness. Also, it is shown that the speed of the PMDC motor was controlled by using this fuzzy logic controller. The speed tracking shows good agreement with the reference speed regardless of the load condition.
应用人工智能优化小型洋流涡轮性能
为控制小型三叶片水平轴海流涡轮用永磁直流电动机的性能,开发了一种基于人工智能的综合电机驱动系统。虽然传统的控制器在没有非线性负载的实验室环境中表现合理;然而,对于具有噪声和潜在非线性输入的拖曳槽试验,在鲁棒模式下运行小型涡轮机至关重要。建立了含模糊控制器的永磁直流电动机动态系统的数学模型。并通过实验验证了该驱动控制方法的有效性。对实验设计进行了详细的讨论。在各种工况下对系统性能进行了实验测试,验证了模糊逻辑控制的鲁棒性和有效性。结果表明,该模糊控制器可以有效地控制永磁同步电动机的转速。无论负载情况如何,速度跟踪都与参考速度吻合良好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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