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meteorology-driver-classification

将环境与气象变量分类到驱动因素类别,用于归因分析。在需要将多个变量归纳为有意义的组时使用。

person作者: wu-ukhubclawhub

Driver Classification Guide

Overview

When analyzing what drives changes in an environmental system, it is useful to group individual variables into broader categories based on their physical meaning.

Common Driver Categories

Heat

Variables related to thermal energy and radiation:

  • Air temperature
  • Shortwave radiation
  • Longwave radiation
  • Net radiation (shortwave + longwave)
  • Surface temperature
  • Humidity
  • Cloud cover

Flow

Variables related to water movement:

  • Precipitation
  • Inflow
  • Outflow
  • Streamflow
  • Evaporation
  • Runoff
  • Groundwater flux

Wind

Variables related to atmospheric circulation:

  • Wind speed
  • Wind direction
  • Gust speed
  • Atmospheric pressure

Human

Variables related to anthropogenic activities:

  • Developed area
  • Agriculture area
  • Impervious surface
  • Population density
  • Industrial output
  • Land use change rate

Derived Variables

Sometimes raw variables need to be combined before analysis:

# Combine radiation components into net radiation
df['NetRadiation'] = df['Longwave'] + df['Shortwave']

Grouping Strategy

  1. Identify all available variables in your dataset
  2. Assign each variable to a category based on physical meaning
  3. Create derived variables if needed
  4. Variables in the same category should be correlated

Validation

After statistical grouping, verify that:

  • Variables load on expected components
  • Groupings make physical sense
  • Categories are mutually exclusive

Best Practices

  • Use domain knowledge to define categories
  • Combine related sub-variables before analysis
  • Keep number of categories manageable (3-5 typically)
  • Document your classification decisions