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Advanced extreme learning machines vs. deep learning models for peak wave energy period forecasting: A case study in Queensland, Australia

机译:高级极端学习机与峰值波动期预测的深度学习模型 - 以澳大利亚昆士兰州为例

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摘要

The peak period of an energy-generating wave is one of the most important parameters that describe the spectral shape of the oceanic wave, as this indicates the duration for which the waves prevail with respect to their maximum extractable energy. In this paper, a half-hourly peak wave energy period (Tp) forecast model is constructed using a suite of statistically significant lagged inputs based on the partial auto-correlation function with an extreme learning machine model developed and its predictive utility is benchmarked against deep learning models, i.e., convolutional neural network (CNN/CovNet) and recurrent neural network (RNN) models and other traditional M5tree, Conditional Maximization based Multiple Linear Regression (MLR-ECM) and MLR models. The objective model (ELM) vs. the comparison models (CNN, RNN, M5tree, MLR-ECM, and MLR) were trained and validated independently on the test dataset obtained from coastal zones of eastern Australia that have a high potential for implementation of wave energy generation systems. The outcomes ascertain that the ELM model can generate significantly accurate predictions of the half-hourly peak wave energy period, providing a good level of accuracy relative to deep learning models in selected coastal study zones. The study establishes the practical usefulness of the ELM model as being a noteworthy methodology for the applications in renewable and sustainable energy resource management systems. (C) 2021 Elsevier Ltd. All rights reserved.
机译:能量产生波的峰值周期是描述海波光谱形状的最重要的参数之一,因为这表明波浪相对于其最大可提取能量的持续时间。在本文中,使用基于基于部分自相关函数的统计上显着的滞后输入构建了半小时峰值波能量期(TP)预测模型,其具有开发的极端学习机模型,其预测效用基准测试学习模型,即卷积神经网络(CNN / COVNET)和经常性神经网络(RNN)模型和其他传统的M5Tree,条件基于多元线性回归(MLR-ECM)和MLR模型。客观型号(ELM)与比较模型(CNN,RNN,M5Tree,MLR-ECM和MLR)在从澳大利亚东部沿海地区获得的测试数据集上独立验证,具有很大的应用波动能量发电系统。结果确定ELM模型可以产生明显的半小时峰值波能量期的准确预测,相对于所选沿海学习区的深度学习模型提供良好的准确性。该研究确定了ELM模型的实际用途,作为可再生能源和可持续能源资源管理系统应用的值得注意的方法。 (c)2021 elestvier有限公司保留所有权利。

著录项

  • 来源
    《Renewable energy》 |2021年第11期|1031-1044|共14页
  • 作者单位

    Deakin Univ Deakin SWU Joint Res Ctr Big Data Sch Informat Technol Burwood Vic 3125 Australia;

    Univ Fiji Sch Sci & Technol Dept Sci Saweni Lautoka Fiji;

    Deakin Univ Deakin SWU Joint Res Ctr Big Data Sch Informat Technol Burwood Vic 3125 Australia;

    TKM Coll Engn Kollam Dept Civil Engn Kollam Kerala India;

    Univ Southern Queensland Ctr Appl Climate Sci Sch Sci Springfield Qld 4300 Australia|Univ Southern Queensland Ctr Sustainable Agr Syst Springfield Qld 4300 Australia;

    Southwest Univ Coll Comp & Informat Sci Chongqing Peoples R China;

    Deakin Univ Deakin SWU Joint Res Ctr Big Data Sch Informat Technol Burwood Vic 3125 Australia;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Deep learning; RNN; CNN; ELM; Peak wave energy period; Coastal waves;

    机译:深度学习;RNN;CNN;榆树;峰值波动期;沿海海浪;

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