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Four Decades of Air Temperature Data over Iran Reveal Linear and Nonlinear Warming

Kazemzadeh, Majid ; Noori, Zahra ; Jamali, Sadegh LU orcid and Abdi, Abdulhakim M. LU orcid (2022) In Journal of Meteorological Research 36(3). p.462-477
Abstract
Spatiotemporal analysis of long-term changes in air temperature is of prime importance for climate change research and the development of effective mitigation and adaptation strategies. Although there is considerable research on air temperature change across the globe, most of it has been on linear trends and time series analysis of nonlinear trends has not received enough attention. Here, we analyze spatiotemporal patterns of monthly and annual mean (Tmean), maximum (Tmax) and minimum (Tmin) air temperature at 47 synoptic stations across climate zones in Iran for a 40-year time period (1978–2017). We applied a polynomial fitting scheme (Polytrend) to both monthly and annual air temperature data to detect trends and classify them into... (More)
Spatiotemporal analysis of long-term changes in air temperature is of prime importance for climate change research and the development of effective mitigation and adaptation strategies. Although there is considerable research on air temperature change across the globe, most of it has been on linear trends and time series analysis of nonlinear trends has not received enough attention. Here, we analyze spatiotemporal patterns of monthly and annual mean (Tmean), maximum (Tmax) and minimum (Tmin) air temperature at 47 synoptic stations across climate zones in Iran for a 40-year time period (1978–2017). We applied a polynomial fitting scheme (Polytrend) to both monthly and annual air temperature data to detect trends and classify them into linear and nonlinear (quadratic and cubic) categories. The highest magnitude of increasing trends were observed in the annual Tmin (0.47 °C per decade) and the lowest magnitude was for the annual Tmax (0.4°C per decade). Across the country, increasing trends (x̄ = 37.2%) had higher spatial coverage than the decreasing trends (x̄ = 3.2%). Warming trends in Tmean (65.3%) and Tmin (73.1%) were mainly observed in humid climate zone while warming trends in Tmax were in semi-arid (43.9%) and arid (34.1%) climates. Linear change with a positive trend was predominant in all Tmean (56.7%), Tmax (67.8%) and Tmin (71.2%) and for both monthly and annual datasets. Further, the linear trends had the highest warming rate in annual Tmin (0.83°C per decade) and Tmean (0.46°C per decade) whereas the nonlinear trends had the highest warming rate in annual Tmax (0.52°C per decade). The linear trend type was predominant in humid climate zones whereas the nonlinear trends (quadratic and cubic) were mainly observed in the arid climate zones. (Less)
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author
; ; and
organization
publishing date
type
Contribution to journal
publication status
published
subject
keywords
Spatial statistics, Global warming, Climate research, Iran, Middle East
in
Journal of Meteorological Research
volume
36
issue
3
pages
19 pages
publisher
Chinese Meteorological Society
external identifiers
  • scopus:85134240947
ISSN
2095-6037
DOI
10.1007/s13351-022-1184-5
language
English
LU publication?
yes
id
f426a360-61e6-4095-97c2-89593f06a6d7
date added to LUP
2022-03-08 15:58:23
date last changed
2023-05-15 13:16:07
@article{f426a360-61e6-4095-97c2-89593f06a6d7,
  abstract     = {{Spatiotemporal analysis of long-term changes in air temperature is of prime importance for climate change research and the development of effective mitigation and adaptation strategies. Although there is considerable research on air temperature change across the globe, most of it has been on linear trends and time series analysis of nonlinear trends has not received enough attention. Here, we analyze spatiotemporal patterns of monthly and annual mean (Tmean), maximum (Tmax) and minimum (Tmin) air temperature at 47 synoptic stations across climate zones in Iran for a 40-year time period (1978–2017). We applied a polynomial fitting scheme (Polytrend) to both monthly and annual air temperature data to detect trends and classify them into linear and nonlinear (quadratic and cubic) categories. The highest magnitude of increasing trends were observed in the annual Tmin (0.47 °C per decade) and the lowest magnitude was for the annual Tmax (0.4°C per decade). Across the country, increasing trends (x̄ = 37.2%) had higher spatial coverage than the decreasing trends (x̄ = 3.2%). Warming trends in Tmean (65.3%) and Tmin (73.1%) were mainly observed in humid climate zone while warming trends in Tmax were in semi-arid (43.9%) and arid (34.1%) climates. Linear change with a positive trend was predominant in all Tmean (56.7%), Tmax (67.8%) and Tmin (71.2%) and for both monthly and annual datasets. Further, the linear trends had the highest warming rate in annual Tmin (0.83°C per decade) and Tmean (0.46°C per decade) whereas the nonlinear trends had the highest warming rate in annual Tmax (0.52°C per decade). The linear trend type was predominant in humid climate zones whereas the nonlinear trends (quadratic and cubic) were mainly observed in the arid climate zones.}},
  author       = {{Kazemzadeh, Majid and Noori, Zahra and Jamali, Sadegh and Abdi, Abdulhakim M.}},
  issn         = {{2095-6037}},
  keywords     = {{Spatial statistics; Global warming; Climate research; Iran; Middle East}},
  language     = {{eng}},
  month        = {{01}},
  number       = {{3}},
  pages        = {{462--477}},
  publisher    = {{Chinese Meteorological Society}},
  series       = {{Journal of Meteorological Research}},
  title        = {{Four Decades of Air Temperature Data over Iran Reveal Linear and Nonlinear Warming}},
  url          = {{http://dx.doi.org/10.1007/s13351-022-1184-5}},
  doi          = {{10.1007/s13351-022-1184-5}},
  volume       = {{36}},
  year         = {{2022}},
}