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An enhanced extreme learning machine model for river flow forecasting: State-of-the-art, practical applications in water resource engineering area and future research direction

机译:一种增强的河流预测极端学习机模型:最先进的水资源工程领域和未来研究方向的实际应用

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摘要

Despite the massive diversity in the modeling requirements for practical hydrological applications, there remains a need to develop more reliable and intelligent expert systems used for real-time prediction purposes. The challenge in meeting the standards of an expert system is primarily due to the influence and behavior of hydrological processes that is driven by natural fluctuations over the physical scale, and the resulting variance in the underlying model input datasets. River flow forecasting is an imperative task for water resources operation and management, water demand assessments, irrigation and agriculture, early flood warning and hydropower generations. This paper aims to investigate the viability of the enhanced version of extreme learning machine (EELM) model in river flow forecasting applied in a tropical environment. Herein, we apply the complete orthogonal decomposition (COD) learning tool to tune the output-hidden layer of the ELM model's internal neuronal system, instead of the conventional multi-resolution tool (e.g., singular value decomposition). To demonstrate the application of EELM model, the Kelantan River, located in the Malaysian peninsular, selected as a case study. For a comparison of the EELM model, and further model evaluation, two distinct data-intelligent models are developed (i.e., the classical ELM and the support vector regression, SVR model). An exhaustive list of diagnostic indicators are used to evaluate the EELM model in respect to the benchmark algorithms, namely, SVR and ELM. The model performance indicators exhibit superior results for the EELM model relative to ELM and SVR models. In addition, the EELM model is presented as a more accurate, alternative predictive tool for modelling the tropical river flow patterns and its underlying characteristic perturbations in the physical space. Several statistical metrics defined as the coefficient of determination (r), Nash-Sutcliffe efficiency (E-ns), Willmott's Index (WI), root-mean-square error (RMSE) and mean absolute error (MAE) are computed to assess the model's effectiveness. In quantitative terms, superiority of EELM over ELM and SVR models was exhibited by E-ns = 0.7995, 0.7434 and 0.665, r = 0.894, 0.869 and 0.818 and WI = 0.9380, 0.9180 and 0.8921, respectively. Whereas, EELM model attained lower (RMSE and MAE) values by approximately (11.61-22.53%) and (8.26-8.72%) relative to ELM and SVR models, respectively. The obtained results reveal that the EELM model is a robust expert model and can be embraced practically in real-life water resources management and river sustainability decisions. As a complementary component of this paper, we also review state-of-art research works where scholars have embraced extensive implementation of the ELM model in water resource engineering problems. A comprehensive evaluation is carried out to recognize the current limitations, and also to propose potential opportunities of applying improved variants of the ELM model presented as a future research direction.
机译:尽管对实际水文应用的建模要求进行了大量多样性,但仍然需要开发更可靠而智能的专家系统,用于实时预测目的。满足专家系统标准的挑战主要是由于水文过程的影响和行为,这些过程由物理规模的自然波动驱动,以及底层模型输入数据集中的结果方差。河流预测是水资源运营和管理,水需求评估,灌溉和农业,早期防洪和水电世代的必要任务。本文旨在调查热带环境中河流预测中的极端学习机(EELM)模型增强版本的可行性。这里,我们应用完整的正交分解(COD)学习工具来调整ELM模型的内部神经元系统的输出隐藏层,而不是传统的多分辨率工具(例如,奇异值分解)。为了证明EELM模型,位于马来西亚半岛的Kelantan河的应用,作为案例研究。为了比较EELM模型,以及进一步的模型评估,开发了两个不同的数据智能模型(即,古典榆树和支持向量回归,SVR模型)。详尽的诊断指示符列表用于评估基准算法,即SVR和ELM的EELM模型。模型性能指示器相对于ELM和SVR模型对EELM模型表现出卓越的结果。此外,EELM模型被呈现为更准确,替代的预测工具,用于在物理空间中建模热带河流模式及其潜在的特征扰动。将几种统计指标定义为确定系数(R),NASH-SUTCLIFFE效率(E-NS),WillMott的索引(Wi),根均衡误差(RMSE)和平均绝对误差(MAE)被计算为评估模型的有效性。在定量术语中,E-NS = 0.7995,0.7434和0.665,r = 0.894,0.869和0.818和Wi = 0.9380,0.9180和0.8921,表现出ELM和SVR模型对ELM和SVR模型的优越性。然而,eelm模型分别达到较低(RMSE和MAE)值,相对于ELM和SVR模型分别达到较低(11.61-22.53%)和(8.26-8.72%)。所获得的结果表明,EELM模型是一个强大的专家模型,可以实际上在现实生活水资源管理和河流可持续发展决策中。作为本文的补充组成部分,我们还审查了最先进的研究工作,学者学者在水资源工程问题中拥有广泛实施ELM模型。进行全面评估以认识到当前限制,并提出潜在的机会应用作为未来研究方向所呈现的ELM模型的改进变种。

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