Yuanyuan Fang
Carnegie Institution for Science
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Featured researches published by Yuanyuan Fang.
Nature | 2017
Christopher R. Schwalm; William R. L. Anderegg; Anna M. Michalak; Joshua B. Fisher; Franco Biondi; George W. Koch; Marcy E. Litvak; Kiona Ogle; John D. Shaw; Adam Wolf; Deborah N. Huntzinger; Kevin Schaefer; R. B. Cook; Yaxing Wei; Yuanyuan Fang; Daniel J. Hayes; Maoyi Huang; Atul K. Jain; Hanqin Tian
Drought, a recurring phenomenon with major impacts on both human and natural systems, is the most widespread climatic extreme that negatively affects the land carbon sink. Although twentieth-century trends in drought regimes are ambiguous, across many regions more frequent and severe droughts are expected in the twenty-first century. Recovery time—how long an ecosystem requires to revert to its pre-drought functional state—is a critical metric of drought impact. Yet the factors influencing drought recovery and its spatiotemporal patterns at the global scale are largely unknown. Here we analyse three independent datasets of gross primary productivity and show that, across diverse ecosystems, drought recovery times are strongly associated with climate and carbon cycle dynamics, with biodiversity and CO2 fertilization as secondary factors. Our analysis also provides two key insights into the spatiotemporal patterns of drought recovery time: first, that recovery is longest in the tropics and high northern latitudes (both vulnerable areas of Earth’s climate system) and second, that drought impacts (assessed using the area of ecosystems actively recovering and time to recovery) have increased over the twentieth century. If droughts become more frequent, as expected, the time between droughts may become shorter than drought recovery time, leading to permanently damaged ecosystems and widespread degradation of the land carbon sink.
Global Biogeochemical Cycles | 2015
Yuanyuan Fang; Anna M. Michalak
Understanding the response of the terrestrial biospheric carbon cycle to variability in enviroclimatic drivers is critical for predicting climate-carbon interactions. Here we apply an atmospheric-inversion-based framework to assess the relationships between the spatiotemporal patterns of net ecosystem CO2 exchange (NEE) and those of enviroclimatic drivers. We show that those relationships can be directly observed at 1° × 1° 3-hourly resolution from atmospheric CO2 measurements for four of seven large biomes in North America, namely, (i) boreal forests and taiga; (ii) temperate coniferous forests; (iii) temperate grasslands, savannas, and shrublands; and (iv) temperate broadleaf and mixed forests. We find that shortwave radiation plays a dominant role during the growing season over all four biomes. Specific humidity and precipitation also play key roles and are associated with decreased CO2 uptake (or increased release). The explanatory power of specific humidity is especially strong during transition seasons, while that of precipitation appears during both the growing and dormant seasons. We further find that the ability of four prototypical terrestrial biospheric models (TBMs) to represent the spatiotemporal variability of NEE improves as the influence of radiation becomes more dominant, implying that TBMs have a better skill in representing the impact of radiation relative to other drivers. Even so, we show that TBMs underestimate the strength of the relationship to radiation and do not fully capture its seasonality. Furthermore, the TBMs appear to misrepresent the relationship to precipitation and specific humidity at the examined scales, with relationships that are not consistent in terms of sign, seasonality, or significance relative to observations. More broadly, we demonstrate the feasibility of directly probing relationships between NEE and enviroclimatic drivers at scales with no direct measurements of NEE, opening the door to the study of emergent processes across scales and to the evaluation of their scaling within TBMs.
Scientific Reports | 2017
Deborah N. Huntzinger; Anna M. Michalak; Christopher R. Schwalm; P. Ciais; Anthony W. King; Yuanyuan Fang; Kevin Schaefer; Yaxing Wei; R. B. Cook; Joshua B. Fisher; Daniel J. Hayes; Maoyi Huang; Akihiko Ito; Atul K. Jain; Huimin Lei; Chaoqun Lu; F. Maignan; Jiafu Mao; N. C. Parazoo; Shushi Peng; Benjamin Poulter; Daniel M. Ricciuto; Xiaoying Shi; Hanqin Tian; Weile Wang; Ning Zeng; Fang Zhao
Terrestrial ecosystems play a vital role in regulating the accumulation of carbon (C) in the atmosphere. Understanding the factors controlling land C uptake is critical for reducing uncertainties in projections of future climate. The relative importance of changing climate, rising atmospheric CO2, and other factors, however, remains unclear despite decades of research. Here, we use an ensemble of land models to show that models disagree on the primary driver of cumulative C uptake for 85% of vegetated land area. Disagreement is largest in model sensitivity to rising atmospheric CO2 which shows almost twice the variability in cumulative land uptake since 1901 (1 s.d. of 212.8 PgC vs. 138.5 PgC, respectively). We find that variability in CO2 and temperature sensitivity is attributable, in part, to their compensatory effects on C uptake, whereby comparable estimates of C uptake can arise by invoking different sensitivities to key environmental conditions. Conversely, divergent estimates of C uptake can occur despite being based on the same environmental sensitivities. Together, these findings imply an important limitation to the predictability of C cycling and climate under unprecedented environmental conditions. We suggest that the carbon modeling community prioritize a probabilistic multi-model approach to generate more robust C cycle projections.
Earth’s Future | 2017
Chao Li; Xuebin Zhang; Francis W. Zwiers; Yuanyuan Fang; Anna M. Michalak
Wet bulb Globe Temperature (WBGT) accounts for the effect of environmental temperature and humidity on thermal comfort, and can be directly related to the ability of the human body to dissipate excess metabolic heat and thus avoid heat stress. Using WBGT as a measure of environmental conditions conducive to heat stress, we show that anthropogenic influence has very substantially increased the likelihood of extreme high summer mean WBGT in northern hemispheric land areas relative to the climate that would have prevailed in the absence of anthropogenic forcing. We estimate that the likelihood of summer mean WGBT exceeding the observed historical record value has increased by a factor of at least 70 at regional scales due to anthropogenic influence on the climate. We further estimate that, in most northern hemispheric regions, these changes in the likelihood of extreme summer mean WBGT are roughly an order of magnitude larger than the corresponding changes in the likelihood of extreme hot summers as simply measured by surface air temperature. Projections of future summer mean WBGT under the RCP8.5 emissions scenario that are constrained by observations indicate that by 2030s at least 50% of the summers will have mean WBGT higher than the observed historical record value in all the analyzed regions, and that this frequency of occurrence will increase to 95% by mid-century.
Scientific Reports | 2018
Chao Li; Yuanyuan Fang; Ken Caldeira; Xuebin Zhang; Noah S. Diffenbaugh; Anna M. Michalak
A critical question for climate mitigation and adaptation is to understand when and where the signal of changes to climate extremes have persistently emerged or will emerge from the background noise of climate variability. Here we show observational evidence that such persistent changes to temperature extremes have already occurred over large parts of the Earth. We further show that climate models forced with natural and anthropogenic historical forcings underestimate these changes. In particular, persistent changes have emerged in observations earlier and over a larger spatial extent than predicted by models. The delayed emergence in the models is linked to a combination of simulated change (‘signal’) that is weaker than observed, and simulated variability (‘noise’) that is greater than observed. Over regions where persistent changes had not occurred by the year 2000, we find that most of the observed signal-to-noise ratios lie within the 16–84% range of those simulated. Examination of simulations with and without anthropogenic forcings provides evidence that the observed changes are more likely to be anthropogenic than nature in origin. Our findings suggest that further changes to temperature extremes over parts of the Earth are likely to occur earlier than projected by the current climate models.
Biogeosciences | 2014
Yuanyuan Fang; Anna M. Michalak; Yoichi P. Shiga; Vineet Yadav
Environmental Research Letters | 2017
Yuanyuan Fang; Anna M. Michalak; Christopher R. Schwalm; Deborah N. Huntzinger; Joseph A. Berry; Philippe Ciais; Shilong Piao; Benjamin Poulter; Joshua B. Fisher; R. B. Cook; Daniel J. Hayes; Maoyi Huang; Akihiko Ito; Atul K. Jain; Huimin Lei; Chaoqun Lu; Jiafu Mao; N. C. Parazoo; Shushi Peng; Daniel M. Ricciuto; Xiaoying Shi; Bo Tao; Hanqin Tian; Weile Wang; Yaxing Wei; Jia Yang
Environmental Research Letters | 2018
Yoichi P. Shiga; Anna M. Michalak; Yuanyuan Fang; Kevin Schaefer; Arlyn E. Andrews; Deborah H Huntzinger; Christopher R. Schwalm; Kirk Thoning; Yaxing Wei
Environmental Research Letters | 2018
Whitney L. Forbes; Jiafu Mao; Mingzhou Jin; Shih Chieh Kao; Wenting Fu; Xiaoying Shi; Daniel M. Riccuito; Peter E. Thornton; Aurélien Ribes; Yutao Wang; Shilong Piao; Tianbao Zhao; Christopher R. Schwalm; Forrest M. Hoffman; Joshua B. Fisher; Akihiko Ito; Ben Poulter; Yuanyuan Fang; Hanqin Tian; Atul K. Jain; Daniel J. Hayes
Earth’s Future | 2017
Chao Li; Xuebin Zhang; Francis W. Zwiers; Yuanyuan Fang; Anna M. Michalak