利用机器学习方法预测水资源的环境参数

Farshid Faraj, Haojing Shen
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引用次数: 1

摘要

仔细监测水资源的质量和数量在现代环境管理中起着重要作用。因此,为了实现这一目标,应以理想的精度测量和控制水资源的数量和质量参数。然而,用简单、廉价、精确和快速的实验方法测量这些参数并不总是可能的。因此,为了解决这类问题,包括智能方法在内的新方法在许多计算领域都具有很大的潜力。考虑到研究的多样性和缺乏全面的综述论文,应该进行这项研究。本文旨在对人工神经网络和支持向量机的智能方法在水资源领域的应用进行全面综述,为感兴趣的研究人员提供一个全面的研究来源。这些研究结果都表明,这些先进的智能方法比其他计算方法更高效、准确、经济、快速地预测水资源定量和定性参数。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Forecasting the Environmental Parameters of Water Resources Using Machine Learning Methods
Careful monitoring of the quality and quantity of water resources plays a significant role in modern environmental management. Thus, to achieve this aim, the quantitative and qualitative parameters of water resources should be measured and controlled with a desirable accuracy. However, it is not always possible to measure these parameters with easy, inexpensive, precise, and quick experimental methods. Therefore, today to solve this type of problems, new methods including smart methods are used which have a great potential in many computational areas. Considering the variety of the studies and absence of a comprehensive review paper, this research should be conducted. The aim of this paper is to comprehensively review application of the smart methods of artificial neural network and support vector machine in the area of water resources and to develop a comprehensive study source for the researchers interested in this field. The results of these studies all show that these advanced smart methods are more efficient, accurate, economical, and faster than other computational methods to predict quantitative and qualitative parameters of water resources.
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