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A novel control method to maximize the energy-harvesting capability of an adjustable slope angle wave energy converter

机译:一种最大化可调节斜角波能量转换器能量收集能力的新型控制方法

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This paper introduces a novel control approach to maximizing the output energy of an adjustable slope angle wave energy converter (ASAWEC) with oil-hydraulic power take-off. Different from typical floating-buoy WECs, the ASAWEC is capable of capturing wave energy from both heave and surge modes of wave motions. For different waves, online determination of the titling angle plays a significant role in optimizing the overall efficiency of the ASAWEC. To enhance this task, the proposed method was developed based on a learning vector quantitative neural network (LVQNN) algorithm. First, the LVQNN-based supervisor controller detects wave conditions and directly produces the optimal titling angles. Second, a so-called efficiency optimization mechanism (EOM) with a secondary controller was designed to regulate automatically the ASAWEC slope angle to the desired value sent from the supervisor controller. A prototype of the ASAWEC was fabricated and a series of simulations and experiments was performed to train the supervisor controller and validate the effectiveness of the proposed control approach with regular waves. The results indicated that the system could reach the optimal angle within 2s and subsequently, the output energy could be maximized. Compared to the performance of a system with a vertically fixed slope angle, an increase of 5% in the overall efficiency was achieved. In addition, simulations of the controlled system were performed with irregular waves to confirm the applicability of the proposed approach in practice. (C) 2016 Published by Elsevier Ltd.
机译:本文介绍了一种新颖的控制方法,该方法可最大化带油压动力输出的可调斜角波能量转换器(ASAWEC)的输出能量。与典型的浮标WEC不同,ASAWEC能够从波动的波动模式和波动模式中捕获波浪能。对于不同的波,在线确定倾斜角度对优化ASAWEC的整体效率起着重要作用。为了增强该任务,基于学习矢量量化神经网络(LVQNN)算法开发了该方法。首先,基于LVQNN的监控器控制器可检测波动情况并直接产生最佳的倾斜角。其次,设计了带有辅助控制器的所谓效率优化机制(EOM),以将ASAWEC倾斜角自动调节为从主管控制器发送的所需值。制造了ASAWEC的原型,并进行了一系列模拟和实验,以训练主管控制器并验证所提出的规则波控制方法的有效性。结果表明,该系统可以在2s内达到最佳角度,从而使输出能量最大化。与具有垂直固定斜角的系统的性能相比,总体效率提高了5%。另外,用不规则波进行了受控系统的仿真,以确认所提出方法在实践中的适用性。 (C)2016由Elsevier Ltd.出版

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