OCEAN VARIABILITY AND ITS INFLUENCE ON THE DETECTABILITY OF GREENHOUSE WARMING SIGNALS

被引:74
|
作者
SANTER, BD
MIKOLAJEWICZ, U
BRUGGEMANN, W
CUBASCH, U
HASSELMANN, K
HOCK, H
MAIERREIMER, E
WIGLEY, TML
机构
[1] MAX PLANCK INST METEOROL, D-20146 HAMBURG, GERMANY
[2] UNIV HAMBURG, INST LOGIST & TRANSPORT, D-20146 HAMBURG, GERMANY
[3] DEUTSCH KLIMARECHENZENTRUM, D-20146 HAMBURG, GERMANY
[4] NATL CTR ATMOSPHER RES, BOULDER, CO 80307 USA
关键词
D O I
10.1029/95JC00683
中图分类号
P7 [海洋学];
学科分类号
0707 ;
摘要
Recent investigations have considered whether it is possible to achieve early detection of greenhouse-gas-induced climate change by observing changes in ocean variables. In this study we use model data to assess some of the uncertainties involved in estimating when we could expect to detect ocean greenhouse warming signals. We distinguish between detection periods and detection times. As defined here, detection period is the length of a climate time series required in order to detect, at some prescribed significance level, a given linear trend in the presence of the natural climate variability. Detection period is defined in model years and is independent of reference time and the real time evolution of the signal. Detection time is computed for an actual time-evolving signal from a greenhouse warming experiment and depends on the experiment's start date. Two sources of uncertainty are considered: those associated with the level of natural variability or noise, and those associated with the time-evolving signals. We analyze the ocean signal and noise for spatially averaged ocean circulation indices such as heat and fresh water fluxes, rate of deep water formation, salinity, temperature, transport of mass, and ice volume. The signals for these quantities are taken from recent time-dependent greenhouse warming experiments performed by the Max Planck Institute for Meteorology in Hamburg with a coupled ocean-atmosphere general circulation model. The time-dependent greenhouse gas increase in these experiments was specified in accordance with scenario A of the Intergovernmental Panel on Climate Change. The natural variability noise is derived from a 300-year control run performed with the same coupled atmosphere-ocean model and from two long (>3000 years) stochastic forcing experiments in which an uncoupled ocean model was forced by white noise surface flux variations. In the first experiment the stochastic forcing was restricted to the fresh water fluxes, while in the second experiment the ocean model was additionally forced by variations in wind stress and heat fluxes. The mean states and ocean variability are very different in the three natural variability integrations. A suite of greenhouse warming simulations with identical forcing but different initial conditions reveals that the signal estimated from these experiments may evolve in noticeably different ways for some ocean variables. The combined signal and noise uncertainties translate into large uncertainties in estimates of detection time. Nevertheless, we find that ocean variables that are highly sensitive indicators of surface conditions, such as convective overturning in the North Atlantic, have shorter signal detection times (35-65 years)than deep-ocean indicators (greater than or equal to 100 years). We investigate also whether the use of a multivariate detection vector increases the probability of early detection. We find that this can yield detection times of 35-60 years (relative to a 1985 reference date) if signal and noise are projected onto a common ''fingerprint'' which describes the expected signal direction. Optimization of the signal-to-noise ratio by (spatial) rotation of the fingerprint in the direction of low-noise components of the stochastic forcing experiments noticeably reduces the detection time (to 10-45 years). However, rotation in space alone does not guarantee an improvement of the signal-to-noise ratio for a time-dependent signal. This requires an ''optimal fingerprint'' strategy in which the detection pattern (fingerprint) is rotated in both space and time.
引用
收藏
页码:10693 / 10725
页数:33
相关论文
共 50 条
  • [21] Greenhouse warming intensifies north tropical Atlantic climate variability
    Yang, Yun
    Wu, Lixin
    Guo, Ying
    Gan, Bolan
    Cai, Wenju
    Huang, Gang
    Li, Xichen
    Geng, Tao
    Jing, Zhao
    Li, Shujun
    Liang, Xi
    Xie, Shang-Ping
    SCIENCE ADVANCES, 2021, 7 (35):
  • [24] Suppressed Atlantic Nino/Nina variability under greenhouse warming
    Yang, Yun
    Wu, Lixin
    Cai, Wenju
    Jia, Fan
    Ng, Benjamin
    Wang, Guojian
    Geng, Tao
    NATURE CLIMATE CHANGE, 2022, 12 (09) : 814 - +
  • [25] Inconsistent Subsurface and Deeper Ocean Warming Signals During Recent Global Warming and Hiatus
    Su, Hua
    Wu, Xiangbai
    Lu, Wenfang
    Zhang, Weiwei
    Yan, Xiao-Hai
    JOURNAL OF GEOPHYSICAL RESEARCH-OCEANS, 2017, 122 (10) : 8182 - 8195
  • [26] Asymmetric dynamical ocean responses in warming icehouse and cooling greenhouse climates
    Kvale, Karin F.
    Turner, Katherine E.
    Keller, David P.
    Meissner, Katrin J.
    ENVIRONMENTAL RESEARCH LETTERS, 2018, 13 (12):
  • [27] Evidence for a time-varying pattern of greenhouse warming in the Pacific Ocean
    Cai, WJ
    Whetton, PH
    GEOPHYSICAL RESEARCH LETTERS, 2000, 27 (16) : 2577 - 2580
  • [28] The influence of greenhouse warming on the atmospheric component of the hydrological cycle
    Dept of Earth + Atmospheric Sci, Univ of Alberta, Edmonton Alta.T6G 2E3, Canada
    Hydrol Processes, 10 (1317-1327):
  • [29] The influence of greenhouse warming on the atmospheric component of the hydrological cycle
    Szilder, K
    Lozowski, EP
    HYDROLOGICAL PROCESSES, 1996, 10 (10) : 1317 - 1327
  • [30] Southern Ocean warming due to human influence
    Fyfe, John C.
    GEOPHYSICAL RESEARCH LETTERS, 2006, 33 (19)