Abstract
There is substantial evidence suggesting climate change is having an adverse impact on the world’s water resources. One must remember, however, that climate change is beset by uncertainty. It is therefore meaningful for climate change impact assessments to be conducted with stochastic-based frameworks. The degree of uncertainty about the nature of a stochastic phenomenon may differ from one another. Deep uncertainty refers to a situation in which the parameters governing intervening probability distributions of the stochastic phenomenon are themselves subjected to some degree of uncertainty. In most climatic studies, however, the assessment of the role of deep-uncertain nature of climate change has been limited. This work contributes to fill this knowledge gap by developing a Markov Chain Monte Carlo (MCMC) analysis involving Bayes’ theorem that merges the stochastic patterns of historical data (i.e., the prior distribution) and the regional climate models’ (RCMs’) generated climate scenarios (i.e., the likelihood function) to redefine the stochastic behavior of a non-conditional climatic variable under climate change conditions (i.e., the posterior distribution). This study accounts for the deep-uncertainty effect by evaluating the stochastic pattern of the central tendency measure of the posterior distributions through regenerating the MCMCs. The Karkheh River Basin, Iran, is chosen to evaluate the proposed method. The reason for selecting this case study was twofold. First, this basin has a central role in ensuring the region’s water, food, and energy security. The other reason is the diverse topographic profile of the basin, which imposes predictive challenges for most RCMs. Our results indicate that, while in most seasons, with the notable exception of summer, one can expect a slight drop in the temperature in the near future, the average temperature would continue to rise until eventually surpassing the historically recorded values. The results also revealed that the 95% confidence interval of the central tendency measure of computed posterior probability distributions varies between 0.1 and 0.3 °C. The results suggest exercising caution when employing the RCMs’ raw projections, especially in topographically diverse terrain.
Highlights
There is substantial evidence suggesting climate change is having an adverse impact on the world’s water resources
There may be evidence supporting the probabilistic nature of stochastic phenomena, which is commonly represented as a probability distribution function
As stated above this study aims to shed light on the deep uncertainties that are associated with the climate change phenomenon
Summary
There is substantial evidence suggesting climate change is having an adverse impact on the world’s water resources. Deep uncertainty refers to a situation in which the parameters governing intervening probability distributions of the stochastic phenomenon are themselves subjected to some degree of uncertainty. Level two uncertainty can be handled by representing the stochastic nature of the phenomenon with a single probability distribution function (pdf). Some of the ironies that arise with the occurrence of uncertain events are explained by Taleb’s3 black swan theory In this case the decision-makers are mainly concerned with those highly improbable, yet entirely plausible, events that are out of the realm of conveniently expected outcomes. In the context of deep uncertainty, for instance, one cannot merely represent the stochastic nature of the problem using a singular pdf, for in such cases the parameters used to define these pdfs are themselves uncertain. In lower stages of uncertainty it is possible to treat these parameters as deterministic values even though they behave in a stochastic manner in the context of deep uncertainty
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