http://rdf.ncbi.nlm.nih.gov/pubchem/patent/WO-2020068471-A1

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inventor http://rdf.ncbi.nlm.nih.gov/pubchem/patentinventor/MD5_b29bc9a82da221562828d84175cfe42f
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publicationDate 2020-04-02-04:00^^<http://www.w3.org/2001/XMLSchema#date>
publicationNumber WO-2020068471-A1
titleOfInvention Disk drive failure prediction with neural networks
abstract Disk drive failure is predicted using a machine learning model. The framework involves receiving disk drive sensor attributes as training data, preprocessing the training data to select a set of enhanced feature sequences, and using the enhanced feature sequences to train a machine learning model to predict disk drive failures from disk drive sensor monitoring data. Prior to the training phase, the RNN LSTM model is tuned using a set of predefined hyper-parameters. The preprocessing, which is performed during the training and evaluation phase as well as later during the prediction phase, involves using predefined values for a set of parameters to generate the set of enhanced sequences from raw sensor reading. The enhanced feature sequences are generated to maintain a desired healthy/failed disk ratio, and only use samples leading up to a last-valid-time sample to honor a pre-specified heads-up-period alert requirement.
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priorityDate 2018-09-27-04:00^^<http://www.w3.org/2001/XMLSchema#date>
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