基于模型的数据同化与数据驱动的机器学习

2020.08.21

投稿:龚惠英部门:理学院浏览次数:

活动信息

时间: 2020年08月28日 16:00

地点: 腾讯 会议

报告主题:Model-based Data Assimilation versus Data-driven Machine Learning(基于模型的数据同化与数据驱动的机器学习)

报告人:Haixiang Ling 教授(荷兰代尔夫特理工大学应用数学系)

报告时间:2020年8月28日(周五) 16:00-18:00

参会方式:腾讯 会议

会议ID:会议ID:876 571 395

会议密码:202028

会议地点:https://meeting.tencent.com/s/Y581PQnWVDxf

主办部门:金沙集团1862cc成色运筹与优化开放实验室-国际科研合作平台、上海市运筹学会、金沙集团1862cc成色理学院数学系

报告摘要:Uncertainty is common in real life, both mathematical-physical models and observations contain uncertainties. Data assimilation is a method which uses the information of observation data to reduce the uncertainty in the model consequently improving the forecast accuracy of the model. Machine learning is a data-driven method which tries to find the important features and their relations from the data, in contrast to model-based data assimilation, machine learning techniques do not require a mathematical-physical model and try to fit the data into some functional relationship through an optimization procedure. In this sense machine learning is therefore an “interpolation” method without paying attention to “extrapolation”. Combining the power of the model-based data assimilation method and the data-driven machine learning technique is the focus of many recent research, in this talk we will discuss some examples of this development.

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