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20. September 2010 - Universitet Göteborg The regional issue of detection and attribution Hans von Storch Institute of Coastal Research Helmholtz-Zentrum Geesthacht Germany with help of Jonas Bhend, Armineh Barkhordarian and Michael Richter Observed temperature anomalies 2 Change ! Change is all over the place, Change is ubiquitous. What does it mean? Anxiety; things become more extreme, more dangerous; our environment is no longer predictable, no longer reliable. Change is bad; change is a response to evil doings by egoistic social forces. In these days, in particular: climate change caused by people and greedy companies. Change ! Change is all over the place, Change is ubiquitous. What does it mean? There are other perceptions of change: it provides opportunities; it is natural and integral part of the environmental system we live in. The environmental system is a system with enormous many degrees of freedom, many non-linearities – is short: is a stochastic system, which exhibits variations on all time scales without an external and identifiable “cause”. (Hasselmann’s “Stochastic Climate Model”) Assessing change First task: Describing change Second task: “Detection” - Assessing change if consistent with natural variability (does the explanation need invoking external causes?) Third task: “Attribution” – If the presence of a cause is “detected”, determining which mix of causes describes the present change best First task: Example of inhomogeneous data Wind speed measurements SYNOP Measuring net (DWD) Coastal stations at the German Bight Observation period: 1953-2005 This and the next 3 transparencies: Janna Lindenberg, HZG First task: Inhomogeneity of wind data 1.25 m/s First task: Inhomogeneity of wind data The issue is deconstructing a given record with the intention to identify „predictable“ components. „Predictable“ -- either natural processes, which are known of having limited life times, -- or man-made processes, which are subject to decisions (e.g., GHG, urban effect) „Significant“ trends Often, an anthropogenic influence is assumed to be in operation when trends are found to be „significant“. • If the null-hypothesis is correctly rejected, then the conclusion to be drawn is – if the data collection exercise would be repeated, then we may expect to see again a similar trend. • Example: N European warming trend “April to July” as part of the seasonal cycle. • It does not imply that the trend will continue into the future (beyond the time scale of serial correlation). • Example: Usually September is cooler than July. „Significant“ trends Establishing the statistical significance of a trend may be a necessary condition for claiming that the trend would represent evidence of anthropogenic influence. Claims of a continuing trend require that the dynamical cause for the present trend is identified, and that the driver causing the trend itself is continuing to operate. Thus, claims for extension of present trends into the future require - empirical evidence for an ongoing trend, and - theoretical reasoning for driver-response dynamics, and - forecasts of future driver behavior. Detection and attribution of non-natural ongoing change • Detection of the presence of non-natural signals: rejection of null hypothesis that recent trends are drawn from the distribution of trends given by the historical record. Statistical proof. • Attribution of cause(s): Non-rejection of the null hypothesis that the observed change is made up of a sum of given signals. Plausibility argument. Detection and attribution Detection Climate system Internal variability External forcings Observations Attribution Anthropogenic Natural 13 Dimension of D&A • Purely scientific • Stakeholder utility • Attribution – the competitors • Falsification Dimension of D&A Purely scientific • Statistical rigor (D) and plausibility (A). • D depends on assumptions about “internal variability” • A depends on model-based concepts. • Thus, remaining doubts exist beyond the specified. Dimension of D&A Stakeholder utility Evidence that anthropogenic warming is related to human drivers – serving as an arguments to implement broad global mitigation measures. Evidence that recent change is part of an ongoing (predictable) pattern, or not. Serving as information to guide regional and local adaptation measures. This is what we need to know more about „Global clients“ want to have proof that the basic concept of man-made global climate change is real. The best answer for this client is an answer which is very robust and not critically dependent on models. – Mostly done. „Regional clients“ want to have best guesses of the foreseeable future, in order to institute adaptive measures – on the scale of medium-size catchment basins not many clear results. „Local clients“ want know how global and local drivers shape the future of the local environment, and which measures for mitigation are available, and which levels of adaptation are required. – very little done. Dimension of D&A Attribution – the competitors Climate drivers – relatively easy; not too many drivers, such as urbanization, aerosol, land-use. Impact drivers – hardly dealt with. Many drivers: eutrophication, pollution, overuse, regulation, globalization, urbanization Example: Baltic Sea ecosystems “Mini-IPCC” assessment on knowledge about climate change in the Baltic Sea Basin Storm surges in Hamburg Storm surges in the Elbe estuary Difference in storm surge height between Cuxhaven and Hamburg Height massively increased since 1962 – after the 1962 event, the shipping channel was deepened and retention areas reduced. Urban Heat Island effect in Stockholm Average diurnal cycle of UHI (urban heat island) intensity for the whole year, winter months (DJF), spring months (MAM), summer months (JJA) and autumn months (SON) for 1996 to 2009 • Mean UHI intensity 1.2 °C • Maximum measured UHI intensity 12.9 °C •Maximum temperature differences urban-rural in warm season Michael Richter Urban Heat Island effect in Rostock Average monthly UHI intensities for 2001 to 2009, computed from each difference of monthly averages between inner-city station RostockHolbeinplatz (Ho) and Rostock-Stuthof, RostockWarnemünde and Gülzow stations • Mean UHI intensity 0.3-0.6 °C for different stations • Maximum measured UHI intensity 8.5 °C • Maximum temperature differences urban-rural in warm season Michael Richter Local change – another major driver: urban warming Gill et al.,2007 2 3 Dimension of D&A Falsification Which observations in the coming 5/10 (?) years would lead to reject present attributions? Suggestion: Formulate and freeze NOW falsifiable hypotheses, and test in 5/10 (?) years time – using the independent data of the additional years. Suggestion: Have assessment done by scientists independent of those, who formulated the hypotheses. Cases of Global Climate Change Detection Studies In the 1990s … weak, not well documented signals. Example: Near-globally distributed air temperature IDAG (2005), Hegerl et al. (1996), Zwiers (1999) In the 2000s … strong, well documented signals Examples: Rybski et al. (2006) Zorita et al. (2009) Global detection The Rybski et al-approach dealing with global mean temperature Temporal development of Ti(m,L) = Ti(m) – Ti-L(m) divided by the standard deviation of the m-year mean reconstructed temp record for m=5 and L=20 (top), and for m=30 and L=100 years. The thresholds R = 2, 2.5 and 3σ are given as dashed lines; they are derived from temperature variations are modelled as Gaussian long-memory processes fitted to various reconstructions of historical temperature (Moberg, Mann, McIntyre) Global detection Regional: Intention: Preparation and design of measures to mitigate expected adverse effects of climate change. Problems: high variability, little knowledge about natural variability; more human-related drivers (e.g. industrial aerosols, urban effects) Zorita, et al., 2009 Log-probability of the event E that the m largest values of 157 values occupy the last17 places in long-term autocorrelation synthetic series Derived from Hadley Center/CRU data for „Giorgi bins“. Baltic Sea: Observations and simulations used Observations Interpolated land station data Temperature: CRUTEM 3v Precipitation: GPCC v4 Simulations Global model data from CMIP3 ALL: anthropogenic and natural forcing ANT: anthropogenic forcing only Jonas Bhend 29 Regional JJA temperatures Baltic Sea: Detection using optimal fingerprinting Model response is too weak No detection Model response is consistent with observed change 31 Detection with different models, 1943-1997 Temperature scaling Model response is too weak Consistency No detection 32 Δ=0.05% Regional DJF precipitation Detection with different models, 1943-1997 Precipitation scaling Model response is too weak Consistency No detection 34 Consistency of observed trend with a B2 scenario Pattern correlation Ratio of area mean change precipitation temperature precipitation temperature DJF 0.84* (0.74*) 0.95* (0.73) 2.0 (1.5) 1.3 (0.5) MAM 0.72* (0.69*) 0.83 (0.79) 2.2 (1.9) 0.9 (0.8) JJA -0.28 0.95* -1.8 1.7 SON -0.59 0.60 -1.2 0.5 > Consistency not in all seasons > Ppecip change too large compared to scenario > NAO (*) has significant influence 35 Consistency analysis: Baltic Sea catchment 1. Consistency of the patterns of model “predictions” and recent trends is found in most seasons. 2. A major exception is precipitation in JJA and SON. 3. The observed trends in precipitation are stronger than the anthropogenic signal suggested by the models. 4. Possible causes: - scenarios inappropriate (false) - drivers other than CO2 at work (industrial aerosols?) - natural variability much larger than signal (signal-to-noise ratio 0.2-0.5). BACC conclusion • Detection and consistency within reach for Northern Europe • But not really for attribution, since signals for changig aerosol emissions and land-use change are not known. • Other signals? • Falsification of detection and attribution an open problem 37 Med Sea region: Precipitation over land Observed trend 1966-2005 Ensemble mean 22 models (A1B) Ensemble mean 18 models (A2) 90% uncertainty range, 9000-year control runs Spread of trends of 22 GS signals Spread of trend of 18 GS signal Spread of trend of CRU3 and GPCC5 observed trends There is less than 5% probability that observed trends in DJF, JFM, FMA, ASO, SON are due to natural (internal) variability alone. Externally forced changes are significantly detectable in winter and autumn intervals (at 5% level) 2m Temperature Observed seasonal and annual area mean changes of 2m temperature over the period 1980-2009 in comparison with GS signals Observed trends of 2m temperature (1980-2009) Projected GS signal patterns (time slice experiment) 23 AOGCMs, A1B scenario derived from the CMIP3 90% uncertainty range of observed trends, derived from 10,000-year control simulations The spread of trends of 23 climate change projections Less than 5% probability that observed warming can be attributed to natural internal variability alone Externally forced changes are detectable in all seasons except in winter 41 Rest - Armineh 42