Bias and data assimilation
Indexed incrossref
Abstract
Abstract All data assimilation systems are affected by biases, caused by problems with the data, by approximations in the observation operators used to simulate the data, by limitations of the assimilating model, or by the assimilation methodology itself. A clear symptom of bias in the assimilation is the presence of systematic features in the analysis increments, such as large persistent mean values or regularly recurring spatial structures. Bias can also be detected by monitoring statistics of observed‐minus‐background residuals for different instruments. Bias‐aware assimilation methods are designed to estimate and correct systematic errors jointly with the model state variables. Such methods require…
Citation impact
656
total citations
- FWCI
- 10.71
- Percentile
- 100%
- References
- 33
Citations per year
Authors
1Topics & keywords
Topics
Keywords
- Data assimilation
- Assimilation (phonology)
- Statistics
- Computer science
- Systematic error
- Data set
- Econometrics
- Errors-in-variables models
No related works found for this paper.