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Title: Multi-model blending

Abstract

A method and a system to perform multi-model blending are described. The method includes obtaining one or more sets of predictions of historical conditions, the historical conditions corresponding with a time T that is historical in reference to current time, and the one or more sets of predictions of the historical conditions being output by one or more models. The method also includes obtaining actual historical conditions, the actual historical conditions being measured conditions at the time T, assembling a training data set including designating the two or more set of predictions of historical conditions as predictor variables and the actual historical conditions as response variables, and training a machine learning algorithm based on the training data set. The method further includes obtaining a blended model based on the machine learning algorithm.

Inventors:
; ; ; ;
Publication Date:
Research Org.:
International Business Machines Corp., Armonk, NY (United States)
Sponsoring Org.:
USDOE
OSTI Identifier:
1329307
Patent Number(s):
9,471,884
Application Number:
14/291,720
Assignee:
INTERNATIONAL BUSINESS MACHINES CORPORATION (Armonk, NY)
DOE Contract Number:  
EE0006017
Resource Type:
Patent
Resource Relation:
Patent File Date: 2014 May 30
Country of Publication:
United States
Language:
English
Subject:
99 GENERAL AND MISCELLANEOUS; 97 MATHEMATICS AND COMPUTING

Citation Formats

Hamann, Hendrik F., Hwang, Youngdeok, van Kessel, Theodore G., Khabibrakhmanov, Ildar K., and Muralidhar, Ramachandran. Multi-model blending. United States: N. p., 2016. Web.
Hamann, Hendrik F., Hwang, Youngdeok, van Kessel, Theodore G., Khabibrakhmanov, Ildar K., & Muralidhar, Ramachandran. Multi-model blending. United States.
Hamann, Hendrik F., Hwang, Youngdeok, van Kessel, Theodore G., Khabibrakhmanov, Ildar K., and Muralidhar, Ramachandran. 2016. "Multi-model blending". United States. https://www.osti.gov/servlets/purl/1329307.
@article{osti_1329307,
title = {Multi-model blending},
author = {Hamann, Hendrik F. and Hwang, Youngdeok and van Kessel, Theodore G. and Khabibrakhmanov, Ildar K. and Muralidhar, Ramachandran},
abstractNote = {A method and a system to perform multi-model blending are described. The method includes obtaining one or more sets of predictions of historical conditions, the historical conditions corresponding with a time T that is historical in reference to current time, and the one or more sets of predictions of the historical conditions being output by one or more models. The method also includes obtaining actual historical conditions, the actual historical conditions being measured conditions at the time T, assembling a training data set including designating the two or more set of predictions of historical conditions as predictor variables and the actual historical conditions as response variables, and training a machine learning algorithm based on the training data set. The method further includes obtaining a blended model based on the machine learning algorithm.},
doi = {},
url = {https://www.osti.gov/biblio/1329307}, journal = {},
number = ,
volume = ,
place = {United States},
year = {Tue Oct 18 00:00:00 EDT 2016},
month = {Tue Oct 18 00:00:00 EDT 2016}
}

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