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Deep ventilation in Lake Baikal: a simplified model for a complex natural phenomenon Department of Civil, Environmental and Mechanical Engineering University of Trento PhD Candidate: Sebastiano Piccolroaz Supervisor: Dr. Marco Toffolon Group of Environmental Hydraulics and Morphodynamics, Trento Trento, April 19th 2013 Modelling deep ventilation of Lake Baikal 1/40 Outline Outline Part 1 - A plunge into the abyss of the world's deepest lake Lake Baikal and deep ventilation A simplified 1D model Calibration, validation, sensitivity analysis and main results Climate change scenarios Part 2 – Back to the surface A simple lumped model to convert Ta into surface Tw Conclusions Modelling deep ventilation of Lake Baikal 2/40 Part 1 A plunge into the abyss of the world's deepest lake Modelling deep ventilation of Lake Baikal 3/40 Lake Baikal Lake Baikal - Siberia (Озеро Байкал - Сибирь) The lake of records The oldest, deepest and most voluminous lake in the world Modelling deep ventilation of Lake Baikal 4/40 Lake Baikal Lake Baikal in numbers Lake Baikal formed in an ancient rift valley tectonic origin Main characteristics: Volume: 23 600 km3 Surface area: 31 700 km2 Length: 636 km Max. width: 79 km Max .depth: 1 642 m Ave. Depth: 744 m Shore Length: 2 100 km Surf. Elevation: 455.5 m Age: 25 million years Inflow rivers: 300 Outflow rivers: 1 (Angara River) World Heritage Site in 1996 Modelling deep ventilation of Lake Baikal Divided into 3 sub-basins: South Basin Central Basin North Basin 5/40 Lake Baikal Bathymetry An impressive bathymetry: maximum depth at 1642 m average depth at 744 m flat bottom steep sides Source: The INTAS Project 99-1669 Team. 2002. A new bathymetric map of Lake Baikal. Open-File Report on CD-Rom Modelling deep ventilation of Lake Baikal 6/40 Deep ventilation Deep ventilation The physical phenomenon Phenomenon triggered by thermobaric instability [Weiss et al., 1991]: − density depends on T and P (equation of state: Chen and Millero, 1976) − T of maximum density decreases with the depth (P=Patm Tρmax ≈ 4°C) ehc Density ρ [kg m-3] depth 2000 m http://www.engineeringtoolbox.com Temperature T [°C] Modelling deep ventilation of Lake Baikal depth 250 m ehc depth 1000 m w ρparcel > ρlocal ew strong weak external forcing hc ew>ehc DEEP DOWNWELLING 1 bar 10 m water eew<ehc NO DEEP DOWNWELLING ρparcel< ρlocal 7/40 Deep ventilation A simplified sketch The main effects: deep ventilation at the shore wind sinking volume of water Modelling deep ventilation of Lake Baikal − deep water renewal − a permanent, even if weak, stratified temperature profile − high oxygen concentration up to the bottom Presence of aquatic life down to huge depths 8/40 Deep ventilation The state of the art − Observations and data analysis: Weiss et al., 1991; Shimaraev et al., 1993; Hohmann et al., 1997; Peeters et al., 1997, 2000; Ravens et al., 2000; Wüest et al., 2000, 2005; Schmid et al., 2008; Shimaraev et al., 2009, 2011a,b, 2012 − Downwelling periods (May – June, December – January) − Downwelling temperature (3 ÷ 3.3 °C) − Downwelling volumes estimations (10 ÷ 100 km3 per year) − Numerical simulations: Putin Field measurement campaign at Lake Baikal MIR:turns Deepsubmariner Submergence Vehicle (photo credit: C. Tsimitri) Akitomo, 1995; Walker and Watts, 1995; Killworth et al., 1996; Tsvetova, 1999; Peeters et al., 2000; Botte and Kay, 2002; Lawrence et al., 2002 Walker and Watts, 1995 − 2D or 3D numerical models − Simplified geometries or partial domains − Main aim: understand the phenomenon (triggering factors/conditions) Modelling deep ventilation of Lake Baikal 9/40 A simplified 1D numerical model A simplified 1D model The aims − simple way to represent the phenomenon (at the basin scale) − just a few input data required (according to the available measurements) − suitable to predict long-term dynamics (i.e. climate change scenarios) The site − South Basin of Lake Baikal The input data ─ surface water temperature (measurements + reanalysis) • Courtesy of Prof. A. Wüest and his research team (EAWAG) • ERA-40 reanalysis dataset, thanks to Clotilde Dubois and Samuel Somot (Meteo France) ─ wind speed and duration (observations + reanalysis) • Rzheplinsky and Sorokina, 1977 • ERA-40 reanalysis dataset, thanks to Clotilde Dubois and Samuel Somot (Meteo France) Modelling deep ventilation of Lake Baikal 10/40 downwelling A simplified 1D numerical model The model in three parts 1. simplified downwelling algorithm (wind energy input vs energy required to reach hc) Available energy → T profile → wind Required energy specific energy input ew ew=ξCD0.5W downwelling volume Vd Vd=ηCDW2Δtw ξ and η: main calibration parameters of the model (mainly dependent on the geometry) Modelling deep ventilation of Lake Baikal ehc Compensation depth - hc ehc ew>ehc DEEP DOWNWELLING Wind - based parameterization: ew<ehc NO DEEP DOWNWELLING (downwelling volume) 11/40 A simplified 1D numerical model ρ The model in three parts z Lagrangian vertical stabilization algorithm 2. unstable (re-arrange unstable regions, move the sinking volume) °C stable ρ − re-sorting starting form the pair of sub-volumes showing the higher instability z − the mixing exchanges are accounted for at every switch Stable Unstable Modelling deep ventilation of Lake Baikal where and is the generic tracer the mixing coeff. 12/40 A simplified 1D numerical model C The model in three parts vertical diffusion equation solver with source (reaction) terms 3. (for temperature, oxygen and other solutes) cooling flux z higher sat. conc. DO °C oxygen consumption geothermal heat flux z − the diffusion equation is solved for any tracer flux source given the BC at the surface and R along the water column. geothermal heat flux oxygen consumption Modelling deep ventilation of Lake Baikal 13/40 A simplified 1D numerical model … it is a matter of feedback Lacustrine systems are regulated by a complex network of feedback loops, controlled by the external forcing Self-consistent procedure to dynamically reconstruct Dz Modelling deep ventilation of Lake Baikal 14/40 Calibration Calibration Calibration procedure (ξ, η, cmix and Dz,r) Medium term simulations during the second half of the 20th century: ─ comparison of simulated temperature and oxygen profiles with measured data ─ formation of the CFC profile (1988-1996) unambiguous tracer: non-reactive, high chemical stability [e.g. England, 2001] Objective: numerically reproduce particular conditions of the lake during a specific historical period (1980s- 1990s). Available data: reanalysis dataset the reprocessing of past climate observations combining together data assimilation techniques and numerical modeling (GCMs) ERA-40 datasets: wind speed (W) and air temperature (Ta) every 6 hours from 1958 to 2002 Thanks to S. Somot and C. Dubois (Meteo France) Modelling deep ventilation of Lake Baikal 15/40 Calibration Reanalysis data: limitations ─ reanalysis horizontal resolution is too coarse (∼ 100 km x 100 km) for the purpose of many practical applications (mismatch of spatial scales) ─ reanalysis data are often affected by inconsistencies due to the lack of fundamental feedback between the numerous natural processes ─ air temperature is available, but the model requires surface water temperature Post-processing (downscaling) is necessary Modelling deep ventilation of Lake Baikal 16/40 Calibration Statistical downscaling Transfer function approach: establishes a relationship between the cumulative distribution functions (CDFs) of observed local climate variables (predictands) and the CDFs of large-scale GCMs outputs (predictors) Quantile – mapping method [Panofsky and Brier, 1968]: assumption xr Xr,adj CDFr CDFo = generic climatic variable of re-analysis (W, Ta) = generic climatic variable adjusted = cumulative distribution function of re-analysis data = cumulative distribution function of observations [e.g. Minville et al.,2008; Diaz-Nieto and Wilby, 2005; Hay et al., 2000] Drawbacks: ─ it does not include information of future climate patterns ─ it is stationary in the variance and skew of the distribution, and only the mean changes ─ it is not indicated to be applied for climate change analysis Modelling deep ventilation of Lake Baikal 17/40 Calibration Quantile-mapping approach From reanalysis (large scale) to observations (local scale) Wind: seasonal CDFs Wr Wr,adj Modelling deep ventilation of Lake Baikal Temperature: daily CDFs Ta,r Tw,adj 18/40 Calibration Temperature profiles 15th of February Modelling deep ventilation of Lake Baikal 15th of September 19/40 Calibration CFC and dissolved oxygen profiles Mean annual Modelling deep ventilation of Lake Baikal 20/40 Sensitivity analysis Sensitivity analysis Results: ─ an evident deviation Sensitivity analysisfrom measurements and calibrated solution suggesting that a proper calibration has been achieved Aimed at evaluating the robustness of the calibration and the role played by each of the parameters of the ─main no dramatic changes aremodel. observed in the behavior of the limnic system indicating the suitability and robustness of the fundamental algorithms Procedure: a new set of 40-year simulations, changing ξ, η and cmix (one by one) within the interval of ± 50% of the calibrated value. Modelling deep ventilation of Lake Baikal 21/40 Validation Validation Validation procedure Limited amount of available information a classical validation adjustment phaseof this model with an independent set of data is not possible ∼ 50 – 100 years asymptotic equilibrium T ∼ 3.37°C Indirect validation: long-term simulation, starting from arbitrarily set initial conditions and verifying the achievement of proper equilibrium profiles of the main variables. ─ Initial conditions: isothermal (T=3.98°C) and anoxic profiles (DO=0 mgO2 l-1) ─ Boundary conditions: a series of 1000 years randomly generated from the ERA-40 reanalysis dataset Same external forcing as those of current conditions numerical results are expected to converge toward the actual observed conditions, after an adjustment phase depending on the IC. Modelling deep ventilation of Lake Baikal 22/40 Validation Temperature and dissolved oxygen profiles 15th of February Modelling deep ventilation of Lake Baikal Mean annual 23/40 Main results Main results Characterization of seasonal dynamics ─ cycle of temperature ─ thickness of the epilimnion ─ diffusivity profile ─ N2, S2 and Ri profiles In-depth analysis of deep ventilation ─ timing of deep ventilation ─ vertical distribution of downwellings ─ main downwelling properties: and ─ energy demand vs. Modelling deep ventilation of Lake Baikal 24/40 Main results Seasonal cycle of temperature (mean year) RMSE ∼ 0.07°C MAE ∼ 0.03°C MaxAE ∼ 0.78°C Simulation Measurements (data courtesy of Prof. A. Wüest, unpublished data) Map of residuals (1000-year simulation, mean year) (modeled - measured temperature profiles). Modelling deep ventilation of Lake Baikal 25/40 Main results Downwelling properties mean annual sinking volume ( ) and temperature ( ) Warm season: smaller and colder events Cold season: larger and warmer events Present model: statistics based on the 1000-year simulation results (long dataset) events beneath 1300 m depth Literature estimates: measurements collected near the bottom short observational periods (from a few years to a decade) significant variability between the single authors (depending on analyzed events) is probably underestimated [Wüest et al., 2005; Schmid et al., 2008] Modelling deep ventilation of Lake Baikal 26/40 Main results Downwelling properties relationship between and the specific energy required to reach hc Warm season: smaller and colder events Cold season: larger and warmer events Wind is stronger during the cold season (Oct-Dec) Is this a contradictory result? is larger during this period … ec is higher in winter Wind-speed parameterization: specific energy input ew ew=ξCD0.5W downwelling volume Vd Vd=ηCDW2Δtw … and is higher. One would expect colder winter than in summer in Seasonality of ec due to the typical thermal structure of the epilimnion Modelling deep ventilation of Lake Baikal 27/40 Climate change Climate change The aim ─ investigate the future response of the limnic system to climate change ─ estimate the possible impact on deep ventilation The scenarios Constructed on the basis of the outputs from GCMs forced with different greenhouse gases (GHG) concentration projections (IPCC 2007) CMIP5 datasets: wind speed (W) and air temperature (Ta) every 3 hours for the 3 different scenarios (rcp2.6, rcp 4.5 and rcp8.5) and the following periods 1960-2005, 2026-2046 and 2081-2101. Thanks to S. Somot and C. Dubois (Meteo France) Modelling deep ventilation of Lake Baikal 28/40 Climate change CMIP5 data: limitations ─ mismatch of spatial scales, simplification of natural phenomena, no information regarding Tw (as for re-analysis data) downscaling ─ due to their different derivation, CMIP5 data cannot be considered as the prosecution of the re-analysis series compatibility Bias during the whole year Coarse resolution, global scale climate patterns Modelling deep ventilation of Lake Baikal 29/40 Climate change Data processing: downscaling Wind speed (W): a novel procedure has been developed, based on the quantile-mapping approach, but also accounts for potential modifications in both intensity and seasonality of wind speed. Air temperature (Ta): a simple lumped model to convert Ta into surface Tw to assess the possible impact on lake temperature (ΔTw) quantile-mapping approach, including ΔTw (delta method) ΔTw Conversion… Air 2 Water Ta,r Modelling deep ventilation of Lake Baikal Tw,adj ΔTw Tw,fut 30/40 Climate change Temperature profiles 15th of February Modelling deep ventilation of Lake Baikal 15th of September 31/40 Climate change Oxygen profiles The main changes are expected for the RCP8.5 scenario: evident enhancement of deep water renewal (larger and colder downwelling volumes, strong oxygenation) the major impact is expected from modifications of the wind forcing (intensity and seasonality) Mean annual Modelling deep ventilation of Lake Baikal 32/40 Part 2 Back to the surface Modelling deep ventilation of Lake Baikal 33/40 Air2Water Air2Water The model A simple lumped model to convert air temperature (Ta) into surface water temperature (Tw) of lakes model Main forcing factor: air temperature Ta Main result: surface water temperature Tw Ta physical parameters Tw The key equation Heat budget in the well-mixed surface layer Modelling deep ventilation of Lake Baikal 34/40 Air2Water The heat budget A simplified parameterization of the net heat exchange seasonal forcing (hp. sinusoidal) residual “gradient” with residual atmosphere effect of Tw effect 1 of time-dependent stratification: dimensionless depth of the surface well-mixed layer (Tr is the deep temperature, for dimictic lakes =4°C) Different versions of the model: ─ 8-parameter (pi, i=1..8) ─ 6-parameter (pi, i=1..6) simplified inverse stratification (winter) ─ 4-parameter (pi, i=3..6) seasonal forcing included in the other periodic terms (p4, p5) Modelling deep ventilation of Lake Baikal 35/40 Air2Water An application to Lake Superior (4 par. model) Selection of parameters based on Nash efficiency index (108 Monte Carlo model realizations with uniform random sampling) calibration validation T air meas. T water model 4 par. model 8 par meas. Modelling deep ventilation of Lake Baikal 36/40 Air2Water … using satellite data T air meas. T water model 4 par. model 8 par meas. (data: Great Lakes Environmental Research Laboratory, NOAA National Oceanic and Atmospheric Administration) − The model has been applied to other lakes Baikal (Russia), Great Lakes (USA-Canada), Garda (Italy) and Mara (Canada) − The model is suitable to reproduce the evolution of Tw at long time scales seasonal, annual, inter-annual hysteresis cycle and inter-annual fluctuations Modelling deep ventilation of Lake Baikal 37/40 Conclusions Conclusions Main results: − a simplified numerical model has been developed to simulate deep ventilation in profound lakes (Lake Baikal) − the model allows for a suitable description of seasonal lake dynamics and a proper evaluation of downwelling features (e.g. and ) − some preliminary evidence about the existence of significant feedback loops among the different physical processes has been found (e.g. ec vs ) − thanks to its simple structure (low computational cost) and suitable parameterization (necessary to investigate evolving systems) such a model is appropriate to predict long-term dynamics (i.e. climate change scenarios) − a novel downscaling procedure and a simple physically-based model to convert air temperature into surface water temperature have been devised, which are suitable to be applied in climate change studies Modelling deep ventilation of Lake Baikal 38/40 Further activities: − further research is expected to explore the coupling of physical and biological processes (e.g. plankton dynamics) − further research is needed to better understand the complex network of interactions between the numerous physical processes that take place in the lake − the model could be used to investigate the convective dynamics in the other very deep lakes in the world (e.g. Lake Tanganyika, Crater Lake) and possibly also is some deep alpine lakes (e.g.Lake Tahoe, Lake Como, Lake Geneva, Lake Garda) viewed to through of diatom Amphorotiacharacteristic hispida − Air2Water isDiatoms expected be the appliedLight tomicrograph lakes having different (e.g. microscope. Image by Dr. G.T. Taylor discovered in Lake Baikal, geometry, climate, mixing regime) in order to assess the possible response of the lake to different climate conditions. Lake Garda (Italy) Modelling deep ventilation of Lake Baikal 39/40 Thank you [email protected] Thank you Mysterious ice circles in the southern basin of Lake Baikal (Nasa Earth Observatory, April 25, 2009; Balkhanov et al., TP 2010) Modelling deep ventilation of Lake Baikal 40/40