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公开(公告)号:US20210223768A1
公开(公告)日:2021-07-22
申请号:US17222243
申请日:2021-04-05
Applicant: Johnson Controls Technology Company
Inventor: Sumant S. Khalate , Tushar Shripad Joshi , Dishant Mittal
Abstract: A building management system includes connected equipment configured to measure a plurality of monitored variables and a predictive diagnostics system configured to receive the monitored variables from the connected equipment; generate a probability distribution of the plurality of monitored variables; determine a boundary for the probability distribution using a supervised machine learning technique to separate normal conditions from faulty conditions indicated by the plurality of monitored variables; separate the faulty conditions into sub-patterns using an unsupervised machine learning technique to generate a fault prediction model, each sub-pattern corresponding with a fault, and each fault associated with a fault diagnosis; receive a current set of the monitored variables from the connected equipment; determine whether the current set of monitored variables correspond with one of the sub-patterns of the fault prediction model to facilitate predicting whether a corresponding fault will occur; and determining the fault diagnosis associated with the predicted fault.
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公开(公告)号:US20210223769A1
公开(公告)日:2021-07-22
申请号:US17222337
申请日:2021-04-05
Applicant: Johnson Controls Technology Company
Inventor: Sumant S. Khalate , Tushar Shripad Joshi , Dishant Mittal
Abstract: A building management system includes connected equipment configured to measure a plurality of monitored variables and a predictive diagnostics system configured to receive the monitored variables from the connected equipment; generate a probability distribution of the plurality of monitored variables; determine a boundary for the probability distribution using a supervised machine learning technique to separate normal conditions from faulty conditions indicated by the plurality of monitored variables; separate the faulty conditions into sub-patterns using an unsupervised machine learning technique to generate a fault prediction model, each sub-pattern corresponding with a fault, and each fault associated with a fault diagnosis; receive a current set of the monitored variables from the connected equipment; determine whether the current set of monitored variables correspond with one of the sub-patterns of the fault prediction model to facilitate predicting whether a corresponding fault will occur; and determining the fault diagnosis associated with the predicted fault.
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公开(公告)号:US11835945B2
公开(公告)日:2023-12-05
申请号:US17222337
申请日:2021-04-05
Applicant: Johnson Controls Technology Company
Inventor: Sumant S. Khalate , Tushar Shripad Joshi , Dishant Mittal
IPC: G05B23/02 , G06F17/18 , G06N7/01 , G05B17/02 , G06N20/00 , G06N5/045 , G06N20/10 , G06N5/046 , G06N3/02
CPC classification number: G05B23/0283 , G05B23/0221 , G05B23/0229 , G06F17/18 , G06N5/045 , G06N7/01 , G06N20/00 , G05B17/02 , G05B23/024 , G05B2219/2642 , G06N3/02 , G06N5/046 , G06N20/10
Abstract: A building management system includes connected equipment configured to measure a plurality of monitored variables and a predictive diagnostics system configured to receive the monitored variables from the connected equipment; generate a probability distribution of the plurality of monitored variables; determine a boundary for the probability distribution using a supervised machine learning technique to separate normal conditions from faulty conditions indicated by the plurality of monitored variables; separate the faulty conditions into sub-patterns using an unsupervised machine learning technique to generate a fault prediction model, each sub-pattern corresponding with a fault, and each fault associated with a fault diagnosis; receive a current set of the monitored variables from the connected equipment; determine whether the current set of monitored variables correspond with one of the sub-patterns of the fault prediction model to facilitate predicting whether a corresponding fault will occur; and determining the fault diagnosis associated with the predicted fault.
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公开(公告)号:US10969775B2
公开(公告)日:2021-04-06
申请号:US16014556
申请日:2018-06-21
Applicant: Johnson Controls Technology Company
Inventor: Sumant S. Khalate , Tushar Shripad Joshi , Dishant Mittal
Abstract: A building management system includes connected equipment configured to measure a plurality of monitored variables and a predictive diagnostics system configured to receive the monitored variables from the connected equipment; generate a probability distribution of the plurality of monitored variables; determine a boundary for the probability distribution using a supervised machine learning technique to separate normal conditions from faulty conditions indicated by the plurality of monitored variables; separate the faulty conditions into sub-patterns using an unsupervised machine learning technique to generate a fault prediction model, each sub-pattern corresponding with a fault, and each fault associated with a fault diagnosis; receive a current set of the monitored variables from the connected equipment; determine whether the current set of monitored variables correspond with one of the sub-patterns of the fault prediction model to facilitate predicting whether a corresponding fault will occur; and determining the fault diagnosis associated with the predicted fault.
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5.
公开(公告)号:US20180373234A1
公开(公告)日:2018-12-27
申请号:US16014556
申请日:2018-06-21
Applicant: Johnson Controls Technology Company
Inventor: Sumant S. Khalate , Tushar Shripad Joshi , Dishant Mittal
Abstract: A building management system includes connected equipment configured to measure a plurality of monitored variables and a predictive diagnostics system configured to receive the monitored variables from the connected equipment; generate a probability distribution of the plurality of monitored variables; determine a boundary for the probability distribution using a supervised machine learning technique to separate normal conditions from faulty conditions indicated by the plurality of monitored variables; separate the faulty conditions into sub-patterns using an unsupervised machine learning technique to generate a fault prediction model, each sub-pattern corresponding with a fault, and each fault associated with a fault diagnosis; receive a current set of the monitored variables from the connected equipment; determine whether the current set of monitored variables correspond with one of the sub-patterns of the fault prediction model to facilitate predicting whether a corresponding fault will occur; and determining the fault diagnosis associated with the predicted fault.
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