英文摘要: | Large ensemble climate modelling experiments demonstrate the large role natural variability plays in local climate on a multi-decadal timescale. Variability in local weather and climate influences individual beliefs about climate change. To the extent that support for climate mitigation policies is determined by citizens' local experiences, natural variability will strongly influence the timescale for implementation of such policies. Under a number of illustrative threshold criteria for both national and international climate action, we show that variability-driven uncertainty about local change, even in the face of a well-constrained estimate of global change, can potentially delay the time to policy implementation by decades. Because several decades of greenhouse gas emissions can have a large impact on long-term climate outcomes, there is substantial risk associated with climate policies driven by consensus among individuals who are strongly influenced by local weather conditions.
Extreme weather events, including hurricanes Sandy and Katrina and the heatwaves experienced by much of Europe in 2010 or in the United States in 2012, spur public discussion about reducing greenhouse gas emissions — regardless of the extent to which these events can actually be attributed to past emissions. In contrast, the fact that most places have experienced relatively little warming over the past decade1 has caused some to doubt the reality of human-induced global warming and to argue against actions to reduce greenhouse gas emissions. Natural variability and weather extremes, in particular local warming, influences people's belief in climate change and their willingness to support potentially costly climate mitigation measures2, 3, 4, 5, 6. However, climate variability and extreme events involve a fundamentally chaotic component7, 8. Society's response to the threats posed by climate change partly depends on unpredictable meteorological events, adding another layer of uncertainty and unpredictability to policy outcomes. Despite overwhelming scientific evidence for the impending damages caused by anthropogenic climate change, climate policy leading to substantial emissions reduction has been slow to materialize9. A number of recently published works in the psychological literature has shown that citizens' belief in climate change and their willingness to pay for emissions abatement are influenced by their experiences with heatwaves and other extreme local conditions2, 3, 4, 5, 6. Risk perceptions and willingness to pay for risk mitigation are influenced by local extreme events or accidents. From heatwaves and floods, to hurricanes, to nuclear power or natural gas pipeline accidents, people exhibit an availability bias2, 10 when making economic decisions impacted by environmental or disaster-related risks11, 12, 13, 14, 15, 16. These changes in perception and willingness to pay are influenced by proximity14 and event severity13, and decay with time after the event16, 17. An extreme event may therefore open a 'policy window'18 — a limited opportunity to implement climate change policies that would lack sufficient political support in the absence of such a focusing event. While an extreme event alone is unlikely to bring about policy change19, when aligned with hospitable political and institutional conditions it may provide a critical impetus for local policy adoption20, 21. As global temperatures continue to rise, a confluence of natural variability and the forced response of the climate system to greenhouse gases will increase the frequency of unprecedented events, such as the 2010 heatwave in eastern Europe22. Although the forcing-driven component of increased extreme event frequency is to some extent predictable, the natural variability-driven component — and thus the timing and location of these events — is largely stochastic. Large ensemble climate modelling experiments have demonstrated the important role natural variability plays in the range of regional climate change predicted for coming decades. Indeed, in many regions, the multi-decadal component of natural variability may be as large as the forced response to rising greenhouse gas concentrations over the next several decades7, 27. Natural variability influences local meteorological conditions on timescales from days to decades24, 25, 26, 27. Thus, natural variability may mask the forced response in some countries while exacerbating the forced response in others, with differential consequences for public support for climate policy in each country. Because support for climate policies is likely to be affected by the local experiences of citizens, natural variability can be expected to significantly influence the timescale for action to mitigate climate change.
There is no shortage of factors that make it difficult to predict the future evolution of complex social systems. To illustrate the influence that unpredictable extreme weather events may have on the time to reach a global agreement on climate policy, we present an analysis in which weather is the only unpredictable factor. In our simple illustrative model, deterministic citizens are confronted with a stochastic world represented by climate model projections. We analysed the output from a 40-member coupled climate model ensemble23 to illustrate how local experiences might affect the timing of acceptance of strong climate policy measures. Each of these ensemble members are subject to identical climate forcings, yet experience different weather (see Supplementary Information for details about our analytical methods). Our analysis illustrates how timescales for domestic and international policy action will be influenced by natural variability in local weather if a nation's decision to take strong actions to abate emissions is contingent solely on the local experiences of its citizens. A wide range of climate risk-reduction policy options are likely to be considered simultaneously, involving a wide range of decisions, but for simplicity our illustration involves a single policy decision. Because quantitative data about the magnitude and timescale of the influence of extreme weather events on willingness to take action to mitigate climate change is limited, we draw on the broader literature about risk decision making following natural disasters (including weather-related ones) to formulate our model. In our illustration, we assume that in any given climate model grid cell28 the fraction of the population that is convinced of the need for strong climate change risk mitigation policies is increased by unusually hot months. The fraction of the unconvinced population that becomes convinced increases with the extremity of the event. In addition, the fraction of the population previously convinced (and thus willing to pay for policy changes) decreases each month with a timescale similar to those observed in the literature about risk mitigation behaviour following natural disasters16, 17, which is consistent with timescales suggested in the more limited quantitative assessments of changes in climate risk perceptions following extreme weather events3, 5. In this model, the fraction of the population (f) convinced to pay for mitigation policy is represented by the following equation:
where N represents the extremity of the event (as in a 1-in-N hot month) relative to a baseline period. N is calculated in terms of the month's temperature as measured in standard deviations (σ) from an early twenty-first century baseline: N = 1/(1 – erf(σ/√2)). The parameter k represents the sensitivity of the unconvinced population to extremes, and τ is the time constant according to which supporters of policy action lose their willingness to support those policies (Supplementary Methods and Supplementary Fig. 1). In our model, a national tipping point for the policy action occurs when half of the country's population is convinced. We refer to the time that this social tipping point is reached for a particular country as the 'time-to-action' for that country. Because populations' sensitivities to extremes are uncertain, natural variability could delay action by more or less than indicated by our analysis. The point of this exercise is to illustrate the potential interplay of natural variability and the forced climate response in influencing public perceptions and climate policies within the confines of the available dataset. Therefore, other aspects of our model are kept as transparent and simple as possible. To the extent that climate policies are driven by the weather experienced by a country's citizens, variability in weather will result in significantly disparate times-to-action. The spread of the model results for each country is entirely due to internal climate variability — our modelled social system is deterministic and the only differences between simulation ensemble members are small perturbations in the initial conditions of the atmosphere. For the top six global CO2 emitters, natural climate variability results in a range of times-to-action spanning several decades (Fig. 1). Furthermore, the times-to-action for these large emitters are not strongly correlated (Supplementary Table 1). The potential range of outcomes is narrower and the median times-to-action are nearer-term for the European Union, India and Japan than for China and, in particular, the United States and Russia.
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