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ADVANCED INTERDISCIPLINARY DATA ASSIMILATION: FILTERING AND SMOOTHING VIA ESSE P.F.J. Lermusiaux

ADVANCED INTERDISCIPLINARY DATA ASSIMILATION: FILTERING AND SMOOTHING VIA ESSE P.F.J. Lermusiaux. ERROR SUBSPACE STATISTICAL ESTIMATION (ESSE) BIOGEOCHEMICAL-PHYSICAL SMOOTHING IN MASSACHUSETTS BAY. www.deas.harvard.edu/~pierrel. P = e { ( x – x t ) ( x – x t ) T }. ˆ. ˆ.

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ADVANCED INTERDISCIPLINARY DATA ASSIMILATION: FILTERING AND SMOOTHING VIA ESSE P.F.J. Lermusiaux

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  1. ADVANCED INTERDISCIPLINARY DATA ASSIMILATION: FILTERING AND SMOOTHING VIA ESSE P.F.J. Lermusiaux ERROR SUBSPACE STATISTICAL ESTIMATION (ESSE) BIOGEOCHEMICAL-PHYSICAL SMOOTHING IN MASSACHUSETTS BAY

  2. www.deas.harvard.edu/~pierrel

  3. P =e{(x–xt ) (x – xt)T} ˆ ˆ Coupled Interdisciplinary Error Covariances x = [xAxOxB] Physics: xO = [T, S, U, V, W] Biology: xB = [Ni, Pi, Zi, Bi, Di, Ci] Acoustics: xA = [Pressure (p), Phase ()] xO cO PAA PAO PAB P = POA POO POB PBA PBO PBB

  4. BIOGEOCHEMICAL-PHYSICAL SMOOTHING IN MASSACHUSETTS BAY • Cartoon of horizontal circulation patterns for stratified conditions in Massachusetts Bay, overlying topography in meters (thin lines). • Patterns drawn correspond to main currents in the upper layers of the pycnocline where the buoyancy driven component of the horizontal flow is often the largest • Patterns are not present at all times • Most common patterns (solid), less common (dashed)

  5. ESSE BIOGEOCHEMICAL-PHYSICAL ERROR COVARIANCE (FCST FOR SEP 2)

  6. ESSE ERROR EIGENMODE 2 (FCST FOR SEP 2)

  7. Cross-sections in Chl-a fields, from south to north along main axis of Massachusetts Bay, with: a) Nowcast on Aug. 25 b) Forecast for Sep. 2 c) 2D objective analysis for Sep. 2 of Chl-a data collected on Sep. 2–3 d) ESSE filtering estimate on Sep. 2

  8. e) Difference between ESSE smoothing estimate on Aug. 25 and nowcast on Aug. 25 f) Forecast for Sep. 2, starting from ESSE smoothing estimate on Aug. 25 (g): as d), but for Chl-a at 20 m depth (h): RMS differences between Chl-a data on Sep. 2 and the field estimates at these data-points as a function of depth (specifically, “RMS-error” for persistence, dynamical forecast and ESSE filtering estimate)

  9. Coupled bio-physical sub-regions of Massachusetts Bay in late summer: Dominant dynamics for trophic enrichment and accumulation

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