在环境风险管理中使用先进的数据挖掘和集成

L. Hluchý, O. Habala, Martin Seleng, P. Krammer, V. Tran
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引用次数: 1

摘要

环境风险管理研究是地球科学领域的一个已建立的部分,以使用强大的计算资源来模拟大气,海洋和河流中的物理现象而闻名。在本文中,我们探讨了如何通过机器学习和数据挖掘技术来管理这些数据密集型过程,以使产生日常天气预测的专家受益,以及对新兴环境重大事件进行很少需要但至关重要且通常时间关键的风险评估。我们说明了从水文气象领域中选择的情景的可能性,然后描述了如何将这种情景扩展到为气象学家和水文学家提供目前无法常规获得的新数据和见解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Using advanced data mining and integration in environmental risk management
Environmental risk management research is an established part of the Earth sciences domain, already known for using powerful computational resources to model physical phenomena in the atmosphere, oceans, and rivers. In this paper we explore how these data-intensive processes can be managed by machine-learning and data mining techniques to benefit the experts who produce daily weather predictions, as well as rarely needed, but crucial and often time-critical risk assessments for emerging environmentally significant events. We illustrate the possibilities on a selected scenario from the hydro-meteorological domain, and then describe how this scenario could be extended to provide meteorologists and hydrologists with new data and insights currently not routinely available.
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