Invention Grant
- Patent Title: Optimal power flow computation method based on multi-task deep learning
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Application No.: US17717121Application Date: 2022-04-10
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Publication No.: US11436494B1Publication Date: 2022-09-06
- Inventor: Gang Huang , Longfei Liao , Wei Hua
- Applicant: Zhejiang Lab
- Applicant Address: CN Zhejiang
- Assignee: Zhejiang Lab
- Current Assignee: Zhejiang Lab
- Current Assignee Address: CN Zhejiang
- Agency: JCIPRNET
- Priority: CN202110826171.X 20210721
- Main IPC: H02J13/00
- IPC: H02J13/00 ; H02J4/00 ; G06N3/08 ; G06K9/62 ; G06N3/04

Abstract:
An optimal power flow computation method based on multi-task deep learning is provided, which is related to the field of smart power grids. The optimal power flow computation method based on multi-task deep learning includes: acquiring state data of a power grid at a certain dispatching moment, and amplifying collected data samples by means of sampling to acquire training data; applying an optimization method to acquire dispatching solutions of the power grid in different sampling states, and acquiring labels; designing a deep learning neural network model, learning feasibility and an optimal solution of an optimal power flow computation problem separately, and outputting a feasibility determination and an optimal solution prediction; simultaneously training, tasks of the feasibility determination and the optimal solution prediction in the optimal power flow computation problem; and determining whether there is a feasible dispatching solution, and outputting an optimal dispatching solution or an early warning.
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