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首页> 外文期刊>International Journal of Offshore and Polar Engineering >Short-Term Prediction of an Artificial Neural Network in an Oscillating Water Column
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Short-Term Prediction of an Artificial Neural Network in an Oscillating Water Column

机译:振荡水柱中人工神经网络的短期预测

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摘要

An Oscillating Water Column (OWC) is a promising wave energy device due to its obvious advantages over many other wave energy converters: There are no moving components in the sea water. Though the bottom-fixed OWC have been quite successful in several practical applications, the projection of a massive wave energy production and the availability of wave energy resources have pushed the OWC applications from near shore to deeper water regions where the floating OWC are a better choice. In an OWC, the reciprocating air flow driving an air turbine to generate electricity is a random process. In such a working condition, a single design/operation point is nonexistent. To increase the energy extraction, and optimise the performance of the device, a system capable of controlling the air turbine rotation speed is desirable. For this purpose, this paper presents a short-term prediction of the random process using an artificial neural network (ANN), aiming to provide near-future information for the control system. In this research, the ANN is explored and tuned for a better prediction of the airflow and the device motions. It is found that, by carefully constructing the ANN platform and optimising the relevant parameters, the ANN is capable of predicting the random process a few steps ahead of the real time with good accuracy.
机译:振荡水柱(OWC)是一种很有前途的波浪能设备,因为它比许多其他波浪能转换器具有明显的优势:海水中没有移动组件。尽管固定在底部的OWC在一些实际应用中已经非常成功,但对大量波浪能产生的预测以及波浪能资源的可利用性已将OWC应用程序从近岸推向了较深的水域,其中浮动OWC是更好的选择。在OWC中,驱动空气涡轮机发电的往复气流是随机过程。在这种工作条件下,不存在单个设计/操作点。为了增加能量提取并优化装置的性能,期望一种能够控制空气涡轮机转速的系统。为此,本文提出了使用人工神经网络(ANN)对随机过程进行短期预测的方法,旨在为控制系统提供近期信息。在这项研究中,对ANN进行了探索和调整,以更好地预测气流和设备运动。结果发现,通过精心构建ANN平台并优化相关参数,ANN能够比实时提前几步来预测随机过程。

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