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Instantaneous Wind Condition Forecasting Method in Mountainous Areas Based on Computational Fluid Dynamics and Machine Learning

A computational fluid dynamics and machine learning technology, applied in computer-aided design, machine/structural component testing, and calculation, etc., can solve the problem of insufficient forecast precision and accuracy, and achieve fine spatial forecasting capabilities, high efficiency, and accuracy. The effect of forecast accuracy

Active Publication Date: 2022-06-24
CSIC CHONGQING HAIZHUANG WINDPOWER EQUIP
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  • Abstract
  • Description
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  • Application Information

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Problems solved by technology

[0006] Aiming at the deficiencies in the existing technology, the present invention proposes a method for forecasting instantaneous wind conditions in mountainous areas based on computational fluid dynamics and machine learning to solve the problems existing in the prior art in the forecasting of wind conditions in mountainous areas, and the fineness and accuracy of the forecast. Insufficient technical issues

Method used

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  • Instantaneous Wind Condition Forecasting Method in Mountainous Areas Based on Computational Fluid Dynamics and Machine Learning
  • Instantaneous Wind Condition Forecasting Method in Mountainous Areas Based on Computational Fluid Dynamics and Machine Learning

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Embodiment 1

[0047] This embodiment provides a method for forecasting instantaneous wind conditions in mountainous areas based on computational fluid dynamics and machine learning, including the following steps:

[0048] Collect real-time wind data at the measured points of the mountain wind farm;

[0049] Substitute real-time wind data into the real-time transient wind data forecast model;

[0050] Generate real-time transient wind forecast data for points to be forecasted.

[0051] The real-time transient wind data forecast model is established through the following steps:

[0052] Establish a digital geometric model of the wind field in the mountainous area to be forecasted;

[0053] Using the method of computational fluid dynamics, numerical calculation of the full wind direction and full wind speed is carried out on the digital geometric model of the mountain wind field, and the wind environment simulation database of the mountain wind field is established;

[0054] Extract the simul...

Embodiment 2

[0088] In this embodiment, an electronic device is provided, including:

[0089] one or more processors;

[0090] a storage device for storing one or more programs;

[0091] When one or more programs are executed by one or more processors, the one or more processors implement the method for forecasting instantaneous wind conditions in mountainous areas based on computational fluid dynamics and machine learning provided in Embodiment 1.

Embodiment 3

[0093]A computer-readable storage medium storing a computer program is provided, and when the computer program program is executed by a processor, the method for forecasting instantaneous wind conditions in mountainous areas based on computational fluid dynamics and machine learning provided in Embodiment 1 is implemented.

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Abstract

The present invention provides a method for forecasting instantaneous wind conditions in mountainous areas based on computational fluid dynamics and machine learning. Real-time transient wind forecast data. The real-time transient wind data forecast model is established through the following steps: establish a digital geometric model of the wind field in the mountainous area to be forecast; use computational fluid dynamics method to perform numerical calculations of all wind directions and full wind speeds on the digital geometric model of the wind field in the mountainous area, and establish a wind field in the mountainous area. The wind environment simulation database of the field; the simulated wind data of the measured points and the points to be predicted are extracted; the real-time transient wind data forecast model is established through machine learning. The above-mentioned technical solution utilizes the ability of computational fluid dynamics simulation technology to finely capture complex wind conditions in three-dimensional space, and the ability of machine learning algorithms to reconstruct high-dimensional data matrices; it has more refined spatial forecasting capabilities and more accurate forecasting accuracy.

Description

technical field [0001] The invention relates to the technical field of wind power generation, in particular to a method for forecasting instantaneous wind conditions in mountainous areas based on computational fluid dynamics and machine learning. Background technique [0002] When a wind power generation system converts wind energy into electric energy, the wind energy state and evolution law of its location will directly determine the basic parameters such as wind energy conversion efficiency, power generation and service life of the wind power generation system. Therefore, the fine wind environment forecasting technology of wind farms is of great significance for the planning, design and refined operation of wind farms. [0003] At present, the widely used wind resource forecasting technology in wind fields is mainly mesoscale meteorological forecasting, and the forecast results are measured by wind towers or SCADA (supervision and control system of data acquisition). The...

Claims

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Application Information

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Patent Type & Authority Patents(China)
IPC IPC(8): G06F30/27G06F30/10G06Q10/04G06Q50/26G01M9/00G01M9/08G06F113/06
CPCG06F30/27G06F30/10G06Q10/04G06Q50/26G01M9/00G01M9/08G06F2113/06
Inventor 莫蕊瑜文茂诗张会阳张日葵杨微丁可琦毛峰陈淘利
Owner CSIC CHONGQING HAIZHUANG WINDPOWER EQUIP
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