AUTOENCODER-DERIVED FEATURES AS INPUTS TO CLASSIFICATION ALGORITHMS FOR PREDICTING FAILURES

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United States of America Patent

APP PUB NO 20170328194A1
SERIAL NO

15496995

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Abstract

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The invention relates to using autoencoder-derived features for predicting well failures (e.g., rod pump failures) using a machine learning classifier (e.g., a Support Vector Machine (SVMs)). Features derived from dynamometer card shapes are used as inputs to the machine learning classifier algorithm. Hand-crafted features can lose important information whereas autoencoder-derived abstract features are designed to minimize information loss. Autoencoders are a type of neural network with layers organized in an hourglass shape of contraction and subsequent expansion; such a network eventually learns how to compactly represent a data set as a set of new abstract features with minimal information loss. When applied to card shape data, it can be demonstrated that these automatically derived abstract features capture high-level card shape characteristics that are orthogonal to the hand-crafted features. In addition, experimental results show improved well failure prediction accuracy by replacing the hand crafted features with more informative abstract features.

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Patent Owner(s)

Patent OwnerAddress
UNIV SOUTHERN CALIFORNIA1150 S OLIVE STREET SUITE 2300 LOS ANGELES CALIFORNIA 90015 90015

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Inventor(s)

Inventor Name Address # of filed Patents Total Citations
Jaiswal, Ayush Los Angeles, US 4 17
Liu, Jeremy J Arcadia, US 1 14
Raghavendra, Cauligi S Redondo Beach, US 3 78
Yao, Ke-Thia Porter Ranch, US 5 151

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