Invention Grant
- Patent Title: Neural-network based surrogate model construction methods and applications thereof
- Patent Title (中): 基于神经网络的代理模型构建方法及应用
-
Application No.: US12048045Application Date: 2008-03-13
-
Publication No.: US08065244B2Publication Date: 2011-11-22
- Inventor: Dingding Chen , Allan Zhong , Syed Hamid , Stanley Stephenson
- Applicant: Dingding Chen , Allan Zhong , Syed Hamid , Stanley Stephenson
- Applicant Address: US TX Houston
- Assignee: Halliburton Energy Services, Inc.
- Current Assignee: Halliburton Energy Services, Inc.
- Current Assignee Address: US TX Houston
- Agent Daniel J. Krueger
- Main IPC: G06E1/00
- IPC: G06E1/00 ; G06E3/00 ; G06F15/18 ; G06G7/00 ; G06N3/02

Abstract:
Various neural-network based surrogate model construction methods are disclosed herein, along with various applications of such models. Designed for use when only a sparse amount of data is available (a “sparse data condition”), some embodiments of the disclosed systems and methods: create a pool of neural networks trained on a first portion of a sparse data set; generate for each of various multi-objective functions a set of neural network ensembles that minimize the multi-objective function; select a local ensemble from each set of ensembles based on data not included in said first portion of said sparse data set; and combine a subset of the local ensembles to form a global ensemble. This approach enables usage of larger candidate pools, multi-stage validation, and a comprehensive performance measure that provides more robust predictions in the voids of parameter space.
Public/Granted literature
- US20080228680A1 Neural-Network Based Surrogate Model Construction Methods and Applications Thereof Public/Granted day:2008-09-18
Information query