See All Resources (261)
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Greener Aviation with Virtual Sensors: A Case Study
A Publication, Ashok Srivastava's Collection - 10 years, 4 months ago
Shared By: Ashok Srivastava
The environmental impact of aviation is enormous given the fact that in the US alone there are nearly 6 million flights per year of commercial ...
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An Algorithm, Multiple Kernel Learning based Heterogeneous Algorithm (MKAD) - 12 years, 4 months ago
Shared By: Indir Jaganjac
Machine Learning (ML) from USGS NEIC global earthquake catalog data. Machine Learning (ML) and building predictive rules and trees from global earthquake catalog data
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An Algorithm, Multiple Kernel Learning based Heterogeneous Algorithm (MKAD) - 12 years, 4 months ago
Shared By: Indir Jaganjac
Machine Learning (ML) from USGS NEIC global earthquake catalog data. Machine Learning (ML) and building predictive rules and trees from global earthquake catalog data
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A Dataset, FLEA - 12 years, 3 months ago
Shared By: EDWARD BALABAN
Frequently asked questions about FLEA (Flyable Electro-Mechanical Actuator) testbed data sets.
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A Dataset, FLEA - 12 years, 5 months ago
Shared By: EDWARD BALABAN
A data set of two-minute scenarios with a large set of motion and load profiles. Each scenario started with a nominal actuator, then, at 1-minute ...
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A Dataset, SCOTT POLL's Collection - 12 years ago
Shared By: SCOTT POLL
We provide MATLAB binary files (.mat) and comma separated values files of data collected from a pilot study of a plug load management system that ...
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A Dataset, Aeroelastic Prediction Workshop - 12 years ago
Shared By: CAROL WIESEMAN
Model with Tetrahedral elements includes wing, balance, exciter and modelcart Some files were too large and had to be split into parts. To combine the ...
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HIRENASD Comparisons of FEM modal frequencies and modeshapes
A Dataset, Aeroelastic Prediction Workshop - 12 years, 6 months ago
Shared By: CAROL WIESEMAN
Below are frequency comparisons of different models with experiment Note Modeshapes aren't very descriptive for higher modes. There is coupling between them so this is ...
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HIRENASD Modeshapes Nov 2011 model
A Dataset, Aeroelastic Prediction Workshop - 12 years, 6 months ago
Shared By: CAROL WIESEMAN
This documents the modal results for the final HIRENASD Finite element models TET model with instrumentation, modelcart, balance and OML modified. Post your comments below ...
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A Dataset, Aeroelastic Prediction Workshop - 11 years, 9 months ago
Shared By: JENNIFER HEEG
Files are located here, defining the locations of the pressure transducers on the HIRENASD model. These locations also correspond to the locations that analysts should ...
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HIRENASD Experimental Data, Magnitude & Phase of Oscillatory Cp/displacement
A Dataset, Aeroelastic Prediction Workshop - 11 years, 5 months ago
Shared By: JENNIFER HEEG
OUTDATED information. This data was replaced April 2012. The originally posted HIRENASD reduced data contained numerous errors. Tecplot (ascii) and matlab files of the frequency ...
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HIRENASD Experimental Data, Static Cp Plots and Data files
A Dataset, Aeroelastic Prediction Workshop - 11 years, 9 months ago
Shared By: JENNIFER HEEG
Tecplot (ascii) and matlab files are posted here for the Static pressure coefficient data sets. To download all of the data in either tecplot format ...
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HIRENASD Experimental Data, Individual Plots
A Dataset, Aeroelastic Prediction Workshop - 11 years, 9 months ago
Shared By: JENNIFER HEEG
The HIRENASD data produced by analyzing the experimental data is repeated on this website, for those who can not download the information in the zip ...
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HIRENASD analysis Information Package
A Publication, Aeroelastic Prediction Workshop - 11 years, 9 months ago
Shared By: JENNIFER HEEG
Updated November 2, 2011 Contains summary information and analysis condition details for the Aeroelastic Prediction Workshop Information plotted in this package is found in data ...
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Discriminative Mixed-Membership Models
A Publication, Nikunj Oza's Collection - 12 years, 6 months ago
Shared By: Nikunj Oza
Although mixed-membership models have achieved great success in unsupervised learning, they have not been widely applied to classification problems. In this paper, we propose a ...