Establishing a common database of ice experiments and using machine learning to understand and predict ice behavior

Volume: 162, Pages: 56 - 73
Published: Jun 1, 2019
Abstract
Ice material models often limit the accuracy of ice related simulations. The reasons for this are manifold, e.g. complex ice properties. One issue is linking experimental data to ice material modeling, where the aim is to identify patterns in the data that can be used by the models. However, numerous parameters that influence ice behavior lead to large, high dimensional data sets which are often fragmented. Handling the data manually becomes...
Paper Details
Title
Establishing a common database of ice experiments and using machine learning to understand and predict ice behavior
Published Date
Jun 1, 2019
Volume
162
Pages
56 - 73
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