Hostname: page-component-848d4c4894-hfldf Total loading time: 0 Render date: 2024-05-10T08:21:08.067Z Has data issue: false hasContentIssue false

Modeling Onset of Glaciation

Published online by Cambridge University Press:  20 January 2017

Thomas J. Crowley
Affiliation:
Applied Research Corporation, 305 Arguello Drive, College Station, TX 77840, U.S.A.
Gerald R. North
Affiliation:
Climate System Research Program, Department of Meteorology, Texas A & M University, College Station, TX 77843, U.S.A.
Rights & Permissions [Opens in a new window]

Abstract

Numerous studies have shown that climate has varied between ice-free and glaciated states, with transitions often marked by abrupt steps. We summarize some modeling studies that have attempted to explain elements of the long-term trend and discuss a particular model for abrupt transitions that involves instabilities due to albedo discontinuities at the snow/ice edge.

Type
Research Article
Copyright
Copyright © International Glaciological Society 1990

Introduction

Past climates have fluctuated several times between times of apparently ice-free conditions and times with polar ice caps (e.g. Crowley, Reference Crowley1983). For example, numerous studies on the evolution of Cenozoic climate indicate that there has been a long-term trend toward cooler climates (e.g. Fig. 1). A number of key transitions are marked by relatively abrupt, steplike changes. In this paper we will examine modeling progress in simulating the long-term changes and discuss one class of climate models that may explain some of the rapid transitions.

Long-Term Trend

At least four processes may be influencing the long-term evolution of climate — changing levels of atmospheric carbon dioxide; variations in poleward ocean heat transport; varations in orography; and fluctuations in the seasonal cycle of landmasses as a result of change in land-sea distribution. For example, climate and geochemical model studies suggest that CO2 levels were significantly higher in the past (Reference Berner, Lasaga and GarrelsBerner and others, 1983; Reference Barron and WashingtonBarron and Washington, 1985) and may have been responsible for warm temperatures of the mid-Cretaceous 100 Ma (million years) ago. Other modeling studies indicate that uplift of the Himalayas and Rockies and closing of the central American isthmus may have significantly influenced the atmosphere and ocean circulation (Reference Kutzbach, Guetter, Ruddiman and PrellKutzbach and others, 1989; Maier-Reimer and others, 1989; Ruddiman and others’ Reference Ruddiman, Prell and Raymo1989).

Fig. 1. The deep-sea 18O record for the last 100 million years (Ma). The long-term trend is thought to reflect cooling in high latitudes. Note that abrupt steps mark the long-term trend. 18O record after Douglas ard Woodruff (Reference Douglas and Woodruff1981).

Changes in land-sea distribution can also affect the long-term evolution of climate (Barron, Reference Barron1985; Reference Crowley, Short, Mengel and NorthCrowley and others, 1986, 1987). Due to the different heat capacities of land and water, summer temperatures are higher over land, and the larger the land mass, the higher the temperature. This feature can be modeled with seasonal two-dimensional energy balance models (EBMs); cf. North and others (Reference North, Mengel and Short1983). Sensitivity experiments indicate that the EBMs are comparable to GCMs in terms of changes in seasonal forcing (Reference Hyde, Crowley, Kim and NorthHyde and others, 1989, 1990).

Changes in past land-sea distribution due to continental drift should have significantly affected the seasonal cycle on landmasses. For example, Crowley and others (Reference Crowley, Short, Mengel and North1986) calculate large reductions in summer termpatures in key areas that presently have permanent ice sheets (Greenland and Antarctica). Such decreases may have allowed inception of ice sheets. A more dramatic example involves the migration of the Paleozoic supercontinent of Gondwanaland across the South Pole (Fig. 2). Due to the differences in heat capacity of land and ocean, there are large changes in polar temperatures depending on whether the pole is situated near the edge or in the center of the landmass (Fig. 3). Some geographic configurations may result in summer temperatures too high to allow glacial inception.

Fig. 2. Postulated Paleozoic apparent polar wander paths of the South Pole with respect to Gondwanaland. Dashed line indicates alternate path based on different data sources. Numbers in parentheses are ages in Ma. (From Reference Crowley, Mengel and ShortCrowley and others, 1987; adapted from Reference Morel and IrvingMorel and Irving, 1978.)

Fig. 3. Modeled summer temperature at the South Pole for different positions of an idealized supercontinent (see inset), based on seasonal two-dimensional energy balance model calculations. Heavy line represents temperatures for the present orbital configuration. Variations around this value represent changes in forcing compatible with the maximum changes in orbital configurations for the Pleistocene (highest points, “hot summer” orbit; lowest points, “cool summer” orbit). Diagonal striping marks the postulated region of parameter space affected by glaciation if ice-albedo feedback were included. (From Reference Crowley, Mengel and ShortCrowley and others, 1987.)

The above studies indicate that it is unlikely that the long-term evolution in past climates will be explained by only one factor. One of the goals of paleoclimatology is to integrate the effects of all of the above changes and then compare the results with the long-term history mapped by geologists. A substantial amount of additional work is required to reach this goal.

Abrupt Transitions

Another feature of past climates involves the abrupt steps (Fig. 1). The best evidence for these steps is in the Cenozoic (last 65 Ma), but they probably occurred earlier. There are now at least three classes of models that exhibit unstable behavior which may explain the transitions. The first class focuses on thermohaline instabilities in areas of deep-water formation (Peterson, Reference Peterson1979; Reference Broecker, Peteet and RindBroecker and others, 1985; cf. Bryan, Reference Bryan1986). The second class focuses on nonlinear interactions in the ocean-ice-atmosphere system (e.g. Ghil and Le Treut, Reference Ghil and LeTreut1981; Reference Saltzman and SuteraSaltzman and Sutera, 1984). The third class of models addresses instabilities triggered by discontinuous albedo changes at the margin of permanent snow/ice cover, i.e. the “small ice-cap instability” (SICI); (North, Reference North1984; Reference North and CrowleyNorth and Crowley, 1985). Because one of us (G.N.) has investigated the latter phenomenon in considerable detail over the years, in the following section we will briefly discuss it as representing one example of a class of models exhibiting unstable behavior.

An example of model behavior of the third type is shown in Figure 4, which illustrates different stable branches of an energy balance model (EBM) with snow-albedo feedback (cf. North, Reference North1975; Reference North, Cahalan and CoakleyNorth and others, 1981). Due to the albedo discontinuity at the snow line, the model exhibits discontinuous behavior as some radiation balance parameter is taken past critical points B and C′. In the course of crossing such a threshold by the slow change in any parameter affecting the radiation budget, the ice cover area changes abruptly (of course, the growth of ice volume is determined by the mass balance of the ice cap which is considered beyond the scope of this kind of model). Further studies with stochastic forcing of an EBM (Reference Crowley and NorthCrowley and North, 1988) indicate that temperature range and autocorrelation increase as the mean climate state approaches a critical point.

Figure 4 tells us that stable ice caps smaller than the critical size cannot exist in this type of model. The reason for this peculiar behavior is an interaction between the albedo discontinuity at the snow-line edge and the existence of a fundamental length scale in the simple mean annual EBMs with diffusive heat transport. Consider the following example. Suppose that changes in continental drift caused a gradual reduction in summer temperatures such that at some point temperatures did not rise above zero in one area. In this area permanent snow cover would result. Due to the higher albedo of snow and ice, temperatures would now drop significantly below zero on the now-permanent snow patch.

Fig. 4. Schematic graph of equilibrium solutions of an energy balance model with ice-albedo feedback. The dependent variable is the ice-cap radius and the independent variable is the solar constant (or carbon dioxide) increasing to the right. (From Reference North and CrowleyNorth and Crowley, 1985.)

The effect of the “point sink” of heat would extend beyond the limits of the original snow-ice edge, now depressing temperatures below zero in these regions. The effective length scale of the perturbation in polar regions is on the order of 1000 to 2000 km (North, Reference North1984; Reference Manabe and BroccoliManabe and Broccoli, 1985; cf. Reference Hansen and LebedeffHansen and Lebedeff, 1987); physically, it can be interpreted as the distance a heat anomaly can diffuse before it is radiatively damped away (Fig. 5). The length scale of the temperature perturbation therefore dictates the minimum size of a stable ice sheet as about 1500 km (cf. Fig. 4). All ice sheets in between 0 km and 1500 km would be unstable (cf. Reference Cahalan and NorthCahalan and North, 1979), with the climate state therefore converging on one of two solutions — no ice or an ice sheet of 1500 km radius. This is the physical explanation for SICI.

Fig. 5. Example of the length scale effect as modeled in both EBMs and the Geophysical Fluid Dynamics Laboratory general circulation model (GFDL-GCM). For both experiments a “point sink” of heat — northern hemisphere ice sheet — was inserted as a lower boundary condition. Note the limited area affected by the perturbation, and that the far-field response is similar in both the EBM and GCM. GCM results from Broccoli and Manabe (Reference Broccoli and Manabe1987); figure from Hyde and others (Reference Hyde, Crowley, Kim and North1989).

The situation just described has been modeled for a planet with no seasons (North, 1975). It leads to a symmetric ice cap centered at the pole. While this configuration is similar to the situation at the South Pole, it lacks certain key ingredients to make a complete theory of Antarctic or Pleistocene glacial inception. Furthermore, we know that the Milankovitch forcing is mainly expressed through changes in the seasonal distribution of insolation. Hence, SICI as described above cannot explain the quasi-periodic glaciations of the Pleistocene.

Consider now a seasonal EBM with land and sea distribution (Reference North and CoakleyNorth and Coakley, 1979; North and others, 1983). The heat capacity contrast between land- and sea-covered surfaces has a strong influence on the amplitude of the seasonal cycle in these models: large amplitude over land toward the poles, small over oceans. The summer temperatures then are strongly modulated by the surface type and the latitude. We might consider as a reasonable hypothesis that glaciers can grow when snow cover remains over the local summer. Hence, in this formulation the key feature is the presence or absence of snow over the summer. The nature of the influence function is now modified, since a small patch of snow does not contribute a steady sink for heat in the model. Rather, it is time-dependent because of the seasonal march of insolation. The length scale is now shorter and it depends on surface type, land or ocean. In a nutshell, the length scale is still reasonably large over land but negligibly small over oceans, leading to a complicated structure of the influence function near irregular shorelines. Exploration of seasonal models for abrupt changes in climate is obviously more involved.

There have been two recent attempts to simulate SICI with simple geography and seasonal forcing. For a configuration analogous to Antarctica (symmetric band of land centered on the pole), Mengel and others (Reference Mengel, Short and North1988) found an abrupt transition when values of the forcing (the solar constant) were changed by only 0.01%. The 0.07 W m−2change in forcing is more than three orders of magnitude less than Pleistocene ice volume changes associated with Milankovitch insolation cycles. This work supported earlier studies by Suarez and Held (Reference Suarez and Held1979) and Watts and Hayder (Reference Watts and Hayder1984).

Lin and North (1989) examined the case where a slightly more complicated case involved geography and seasonal forcing (symmetric polar ocean and mid-latitude land strip). The seasonal cycle of the snow line is shown in Figure 6. There are two transitions: first summer snow abruptly covers the polar ocean, then summer snow abruptly covers the continent. These experiments indicate that there may be multiple instabilities in the climate system, and that the instabilities may be clustered over a relatively small range of parameter space — the total change in radiative forcing is approximately equivalent to late Pleistocene changes associated with ice-age CO2 fluctuations.

Fig. 6. Seasonal snow-line distribution vs time of year, as calculated with nonlinear energy balance model with idealized geography. Shaded area denotes land. Q/Q0 refers to proportional changes in effective solar forcing. Note that changes in forcing of 0.0001 can result in seasonally ice-free states and that there is a tendency for “clustering” of instabilities over a relatively small range of parameter space (see text). (From Lin and North, 1989.)

The EBM studies suggest that the planet could undergo abrupt shifts in summer snow cover leading to the sustained growth of instability of continental ice sheets. The studies so far have been with idealized geographies and no hydrological cycle. They can only suggest the existence of discontinuous behavior. Studies with more realistic geography and physics are being developed. Real world behavior may not be discontinuous but the remnant of discontinuity may be steep slopes, etc. The continued study of these idealized models can yield additional insight into the potentially important processes affecting the variation of the Earth’s climate.

Summary and Conclusions

Considerable progress has been made in delineating mechanisms reponsible for the long-term evolution of climate. At least four important processes can be identified — changes in CO2, the seasonal cycle on land masses, poleward ocean heat transport, and orography. It remains to be determined how these various pieces of the puzzle fit together. There are at least three classes of models that illustrate unstable behavior and which may explain the abrupt steps of the past. Examples are given of one of these classes. However, the jury is still out as to the relative importance of the different classes.

Acknowledgements

This work was supported by National Science Foundation grants ATM87-22145(TJC) and ATM87-15079 (GRN).

References

Barron, E.J 1985. Explanations of the Tertiary global cooling trend. Palaeogeogr. Palaeoclimatol. Palaeoecol, 50, 45-61.Google Scholar
Barron, E.J and Washington, W.M 1985. Warm Cretaceous climates: high atmospheric CO2 as a plausible mechanism. In Sundquist, E.T. and W.S. Broecker,eds. The carbon cycle and atmospheric CO2: natural variations Archean to present. Washington, DC, American Geophysical Union, 546-553. (Geophysical Monograph 32.)Google Scholar
Berner, R.A, Lasaga, A.C, and Garrels, R.M 1983. The carbonate-silicate geochemical cycle and its effect on atmospheric carbon dioxide over the last 100 million years. Am. J. Sci., 238, 641-683.CrossRefGoogle Scholar
Broccoli, A and Manabe, S 1987. The influence of continental ice, atmospheric CO2, and land albedo on the climate of the last glacial maximum. Climate Dyn., 1, 87-100.Google Scholar
Broecker, W.S,Peteet, D.M and Rind, D 1985. Does the ocean-atmosphere system have more than one stable mode of operation? Nature, 315, 21-26.Google Scholar
Bryan, F 1986. High-latitude salinity effects and inter-hemispheric thermohaline circulations. Nature, 323, 301-304.Google Scholar
Cahalan, R.Fand North, G.R 1979. A stability theorem for energy-balance climate models. J. Atmos. Sci., 36, 1205-1216.Google Scholar
Crowley, T.J 1983. The geologic record of climatic change. Rev. Geophys. Space Phys., 21, 828-877.CrossRefGoogle Scholar
Crowley, T.J and North, G.R 1988.Abrupt climate change and extinction events in Earth history. Science, 240, 996-1002.Google Scholar
Crowley, T.J, Short, D A, Mengel, J.G, and North, G.R 1986. Role of seasonality in the evolution of climate over the last 100 million years. Science, 231, 579-584.Google Scholar
Crowley, T.J, Mengel, J.G, and Short, D.A. 1987. Gond-wanaland’s seasonal cycle. Nature, 329(6142), 803-807.Google Scholar
Douglas, R.G and Woodruff, F 1981. Deep sea benthic foraminifera. In Emiliani, C, ed. The sea. Vol. 7. NewYork, Wiley-Interscience, 1233-1327.Google Scholar
Ghil, M and LeTreut, H 1981. A climate model with cryodynamics and geodynamics. J. Geophys. Res., 86(C6), 5262-5270.Google Scholar
Hansen, J and Lebedeff, S 1987. Global trends of measured surface air temperature. J. Geophys. Res., 92(D11), 13, 345-13,372.Google Scholar
Hyde, W.T, Crowley, T.J, Kim, K.-Y, and North, G.R 1989. Comparison of GCM and energy balance model simulations of seasonal temperature changes over the past 18,000 years. J. Clim., 2, 864-887.Google Scholar
Hyde, W.T, Kim, K.-Y, Crowley, T.J and North, G.R Inpress. On the relation between polar continentality and climate: studies with a nonlinear energy balance model. J. Geophys. Res. Google Scholar
Kutzbach, J.E, Guetter, P.J, Ruddiman, W.F, and Prell, W.L 1989. The sensitivity of climate to Late Cenozoic uplift in southeast Asia and the American southwest: numerical experiments. J. Geophys. Res., 94(D15), 18,393-18,407.Google Scholar
Lin, R.-Q and North, G.R In press. A study of abrupt climate change in a simple nonlinear climate model. Climate Dyn. Google Scholar
Maier-Reimer, E, Crowley, T.J and Mikolajewicz, U In press. Ocean GCM sensitivity experiment with an open Central American isthmus. Paleoceanography. Google Scholar
Manabe, S and Broccoli, A.J 1985. The influence of continental ice sheets on the climate of an ice age. J. Geophys. Res., 90(D1), 2167-2190.Google Scholar
Manabe, S and Stouffer, R.J 1988. Two stable equilibria of a coupled ocean-atmosphere model. J. Clim., 1, 841-866.Google Scholar
Mengel, J.G, Short, D.A and North, G.R 1988. Seasonal snowline instability in an energy balance model. Climate Dyn., 2, 127-131.Google Scholar
Morel, P and Irving, E 1978. Tentative paleocontinental maps for the early Phanerozoic and Proterozoic. J. Geol., 86, 535-561.CrossRefGoogle Scholar
North, G.R 1975. Theory of energy-balance climate models. J. Atmos. Sci., 32, 2033-2043.Google Scholar
North, G.R 1984. The small ice cap instability in diffusive climate models. J. Atmos. Sci., 41, 3390-3395.Google Scholar
North, G.R and Coakley, J.A 1979. Differences between seasonal and mean annual energy balance model calculations of climate and climate sensitivity. J. Atmos. Sci., 36, 1189-1204.Google Scholar
North, G.R and Crowley, T.J 1985. Application of a seasonal climate model to Cenozoic glaciation. J. Geol. Soc. London, 142, 475-482.Google Scholar
North, G.R, Cahalan, R.F and Coakley, J.A 1981. Energy balance climate models. Rev. Geophys. Space Phys., 19, 91-121.Google Scholar
North, G.R, Mengel, J.G and Short, D.A 1983. Simple energy balance model resolving the seasons and the continents: application to the astronomical theory of the ice ages. J. Geophys. Res., 881(01), 6576-6586.Google Scholar
Peterson, W.H 1979. A steady thermohaline convection model. Coral Gables, FL, University of Miami. Rosenstiel School of Marine and Atmospheric Science. (Technical Report TR-79-4.)Google Scholar
Ruddiman, W.F, Prell, W.L and Raymo, M.E 1989. History of Late Cenozoic uplift in southeast Asia and the American southwest: rationale for general circulation modeling experiments. J. Geophys. Res., 94(D15), 18,379-18,391.Google Scholar
Saltzman, B and Sutera, A 1984. A model of the internal feedback system involved in late Quaternary climatic variations. J. Atmos. Sci., 41, 736-745.Google Scholar
Suarez, M.J and Held, I.M 1979. The sensitivity of an energy balance climate model to variations in the orbital parameters. J. Geophys. Res., 84(C8), 4825-4836.Google Scholar
Watts, R.G and Hayder, M.E. 1984. The effect of land-sea distribution on ice-sheet formation. (Abstract.) Ann. Glaciol., 5, 234-236.Google Scholar
Figure 0

Fig. 1. The deep-sea 18O record for the last 100 million years (Ma). The long-term trend is thought to reflect cooling in high latitudes. Note that abrupt steps mark the long-term trend. 18O record after Douglas ard Woodruff (1981).

Figure 1

Fig. 2. Postulated Paleozoic apparent polar wander paths of the South Pole with respect to Gondwanaland. Dashed line indicates alternate path based on different data sources. Numbers in parentheses are ages in Ma. (From Crowley and others, 1987; adapted from Morel and Irving, 1978.)

Figure 2

Fig. 3. Modeled summer temperature at the South Pole for different positions of an idealized supercontinent (see inset), based on seasonal two-dimensional energy balance model calculations. Heavy line represents temperatures for the present orbital configuration. Variations around this value represent changes in forcing compatible with the maximum changes in orbital configurations for the Pleistocene (highest points, “hot summer” orbit; lowest points, “cool summer” orbit). Diagonal striping marks the postulated region of parameter space affected by glaciation if ice-albedo feedback were included. (From Crowley and others, 1987.)

Figure 3

Fig. 4. Schematic graph of equilibrium solutions of an energy balance model with ice-albedo feedback. The dependent variable is the ice-cap radius and the independent variable is the solar constant (or carbon dioxide) increasing to the right. (From North and Crowley, 1985.)

Figure 4

Fig. 5. Example of the length scale effect as modeled in both EBMs and the Geophysical Fluid Dynamics Laboratory general circulation model (GFDL-GCM). For both experiments a “point sink” of heat — northern hemisphere ice sheet — was inserted as a lower boundary condition. Note the limited area affected by the perturbation, and that the far-field response is similar in both the EBM and GCM. GCM results from Broccoli and Manabe (1987); figure from Hyde and others (1989).

Figure 5

Fig. 6. Seasonal snow-line distribution vs time of year, as calculated with nonlinear energy balance model with idealized geography. Shaded area denotes land. Q/Q0 refers to proportional changes in effective solar forcing. Note that changes in forcing of 0.0001 can result in seasonally ice-free states and that there is a tendency for “clustering” of instabilities over a relatively small range of parameter space (see text). (From Lin and North, 1989.)