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New Energy Generation Power Prediction System
Overview

The system utilizes renewable energy generation power prediction algorithms based on PaddleTS to perform ultra-short-term, short-term, and medium-term power predictions for scenarios such as PV, wind power, and renewable energy power plant regions. Meanwhile, in accordance with the "two rules" assessment content, it uses meteorological station data from renewable energy power plants as calibration, enhances renewable energy power prediction accuracy by downscaling large-scale meteorological forecast data, and helps users address the pain points of low prediction accuracy and excessive assessment 

Functional Features
  • High-Precision Prediction Algorithm
    It employs various advanced modeling methods such as statistical modeling and hybrid modeling, adapts the optimal algorithm model according to different scenarios and data characteristics, improves prediction accuracy, and supports one-to-one algorithm customization.
  • Multi-Source Data Fusion
    In addition to the operation data of renewable energy stations, it deeply integrates various external data sources such as meteorological data and geographic information data, and ultra-fine granularity data further improves prediction accuracy and reliability.
  • Extensive Industry Experience
    Deployment and implementation in multiple wind farms and PV power stations in the Southern Grid region have accumulated a substantial amount of renewable energy station operation data and prediction cases, providing valuable reference for continuous product optimization.
Cases