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新探索的机器学习模型在澳大利亚玛丽河的河流流量时间序列预测。

Newly explored machine learning model for river flow time series forecasting at Mary River, Australia.

机构信息

Key Lab of Disasters Monitoring and Mechanism Simulating of Shannxi Province, Baoji University of Art & Sciences, Baoji, 721013, Shannxi, People's Republic of China.

Geography and Environment Department, Baoji University of Art & Sciences, Baoji, 721013, Shannxi, People's Republic of China.

出版信息

Environ Monit Assess. 2020 Nov 14;192(12):761. doi: 10.1007/s10661-020-08724-1.

DOI:10.1007/s10661-020-08724-1
PMID:33188607
Abstract

Hourly river flow pattern monitoring and simulation is the indispensable precautionary task for river engineering sustainability, water resource management, flood risk mitigation, and impact reduction. Reliable river flow forecasting is highly emphasized to support major decision-makers. This research paper adopts a new implementation approach for the application of a river flow prediction model for hourly prediction of the flow of Mary River in Australia; a novel data-intelligent model called emotional neural network (ENN) was used for this purpose. A historical dataset measured over a 4-year period (2011-2014) at hourly timescale was used in building the ENN-based predictive model. The results of the ENN model were validated against the existing approaches such as the minimax probability machine regression (MPMR), relevance vector machine (RVM), and multivariate adaptive regression splines (MARS) models. The developed models are evaluated against each other for validation purposes. Various numerical and graphical performance evaluators are conducted to assess the predictability of the proposed ENN and the competitive benchmark models. The ENN model, used as an objective simulation tool, revealed an outstanding performance when applied for hourly river flow prediction in comparison with the other benchmark models. However, the order of the model, performance wise, is ENN > MARS > RVM > MPMR. In general, the present results of the proposed ENN model reveal a promising modeling strategy for the hourly simulation of river flow, and such a model can be explored further for its ability to contribute to the state-of-the-art of river engineering and water resources monitoring and future prediction at near real-time forecast horizons.

摘要

小时河流流量模式监测和模拟是河流工程可持续性、水资源管理、洪水风险缓解和减少影响的不可或缺的预防任务。可靠的河流流量预测受到高度重视,以支持主要决策者。本研究论文采用了一种新的实施方法,用于应用河流流量预测模型对澳大利亚玛丽河的流量进行小时预测;一种新颖的数据智能模型,称为情感神经网络(ENN),用于此目的。一个历史数据集在 4 年的时间内(2011-2014 年)在每小时的时间尺度上进行测量,用于建立基于 ENN 的预测模型。ENN 模型的结果与现有的方法(如最小最大概率机回归(MPMR)、相关向量机(RVM)和多元自适应回归样条(MARS)模型)进行了验证。为了验证目的,对开发的模型进行了相互评估。进行了各种数值和图形性能评估器,以评估提出的 ENN 和竞争基准模型的可预测性。所开发的模型的性能评估显示,ENN 模型在应用于小时河流流量预测时与其他基准模型相比表现出色。然而,从模型的顺序来看,性能方面,ENN > MARS > RVM > MPMR。总的来说,所提出的 ENN 模型的现有结果表明,它是一种有前途的河流流量小时模拟建模策略,并且可以进一步探索该模型在近实时预测范围内对河流工程和水资源监测以及未来预测的最新技术的贡献能力。

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