Climate change is one of the most significant threats facing the world today. One of the most important consequences of climate change is increasing frequency of climate hazards, mainly heat waves. This phenomena has a robust impacts on human and other ecosystems. The aim of this study is investigating changes of heat waves in historical (1980-2014) and projected (2040-2074) data in northern cost of Persian Gulf.
The focus here is on Mean daily maximum temperature and Fujibe index to extract heat waves. For this purpose 6 weather stations locating in north coast of Persian Gulf, Iran, are used (table 1).
Table1: weather stations
Station |
Latitude |
Longitude |
Elevation(m) |
Abadan |
30° 22' N |
48° 20' E |
6.6 |
Boushehr |
28° 55' N |
50° 55' E |
9 |
Bandarabbas |
27° 15' N |
56° 15' E |
9.8 |
Bandarlengeh |
26° 35' N |
54° 58' E |
22.7 |
Kish |
26° 54' N |
53° 54' E |
30 |
In addition, 4 model ensemble outputs from the Coupled Model Intercomparison Project Phase 5 (CMIP5) are used to project future occurrence and severity of heat waves (2040 to 2070), under Representative Concentration Pathways 8.5 (RCP8.5), adopted by the Intergovernmental Panel on Climate Change for its Fifth Assessment Report (AR5) (table 2).
Table2: List of the AR5 CMIP5 Used Models
Model |
Modeling Cener |
Country |
CanESM2 |
Canadian Earth System Model |
Canada |
MPI-ESM-MR |
Max-Planck-Institut für Meteorologie |
Germany |
CSIRO-Mk3-6-0 |
Commonwealth Scientific and Industrial Research Organization |
Australia |
CMCC-CESM |
CMCC Carbon Earth System Model |
Italy |
The output of models is downscaled using artificial neural network method (ANN). A feed-forward network of multi-layer perceptron with an input layer, a hidden layer and an output layer is used for this purpose. 73 percent (1980 – 2000) of the data is used for training and 27 percent (2000-2005) for testing ANN models. Root Mean Square Error (RMSE) is used as an indicator of the accuracy of Models.
RMSE=
Here is the outputs of ANN models (downscaled data) and
is the observation data.
Fujibe et all (2007) used an index based on Normalized Thermal Deviation (NTD) for extracting long-term changes of temperature extremes and day to day variability using following equations:
Where N is the number of days in the summation except missing values. Then nine-day running average was applied three times in order to filter out day-to-day irregularities.
=(i,j,n)=T(i,j,n)-T(I,j)
The departure from the climatic mean is given by
=
If NTD >2 and at least lasts for 2 days it determine as a heat wave.
Results
Table 3 shows the results of downscaling selected GCM models.
nodes |
RMSE |
Average RMSE |
||||||
Sigmoid function |
Linear function |
Abadan |
Bushehr |
Bandarabbas |
Bandar-e-Lengeh |
Kish |
||
CanESM2 |
5 |
1 |
9.6 |
6.1 |
4.85 |
4.7 |
4.5 |
5.97 |
MPI-ESM-MR |
5 |
1 |
9.3 |
7.1 |
3.9 |
5 |
4.3 |
5.9 |
CSIRO-MK3-6-0 |
15 |
1 |
8.8 |
5.6 |
3.6 |
3.4 |
3.6 |
5 |
CMCC-CESM |
10 |
1 |
9.2 |
5.8 |
3.9 |
4.7 |
3.9 |
5.5 |
Table 4 compares the frequency of heat waves for GCMs and historical data.
CanESM2 |
MPI-ESM-MR |
CSIRO-Mk3-6-0 |
CMCC-CESM |
Historical data |
|
Abadan |
434 |
401 |
448 |
387 |
430 |
Bushehr |
376 |
423 |
420 |
406 |
407 |
Bandarabbas |
441 |
405 |
457 |
382 |
410 |
Bandar-e-Lengeh |
380 |
414 |
388 |
401 |
400 |
Kish |
421 |
442 |
415 |
442 |
399 |
For historical data, heat waves are more frequent in Abadan station than other stations. There is an increasing trend in the occurrence of heat waves in historical data and monthly frequency of heat waves show the highest amounts for summer.
For both historical and future data 2 days listening heat waves are more frequent.
Table 5 shows seasonal changes of heat waves for historical data and GCMs.
season |
The ratio of heat waves from total historical data (percent) |
The ratio of heat waves from total projected data (percent) |
|
Abadan |
Spring |
30.43 |
24.02 |
Summer |
29.19 |
27.87 |
|
Autumn |
17.39 |
22.61 |
|
Winter |
22.98 |
25.48 |
|
Bushehr |
Spring |
21.42 |
24.23 |
Summer |
25 |
26.21 |
|
Autumn |
28.57 |
24.82 |
|
Winter |
24 |
25.32 |
|
Bandarabbas |
Spring |
21.73 |
24.7 |
Summer |
26.81 |
27.01 |
|
Autumn |
25.81 |
25.17 |
|
Winter |
24.1 |
24.63 |
|
Bandar-e-Lengeh |
Spring |
23.55 |
23.74 |
Summer |
23.33 |
29.82 |
|
Autumn |
23.74 |
25.81 |
|
Winter |
25.17 |
20.8 |
|
Kish |
Spring |
24.27 |
24.8 |
Summer |
25.53 |
28.32 |
|
Autumn |
23.35 |
25.21 |
|
Winter |
23.1 |
23.8 |
In recent years the frequency of heat waves is increasing in all studied stations. Coincide with Russia and Europe, the highest amounts of heat waves is occurred in 2010 in northern coast of Persian Gulf and this is adopted Esmaeilnezhad et all (2013), Gavidel (2015) and Azizi (2011).
Sea surface temperature is one of the most effective physical parameters that affects the health of coral reefs communities.High frequency of the bleaching phenomenon has extensively occurred in the Persian Gulf in the recent years due to the increase in temperature and increased changes in the sea surface temperature (SST) resulting in great mortality in the coral communities. The aim of this research is to determinate a temperature threshold which may function as a warning for the incidence anticipation of this phenomenon. Data on the variation of the SST that has been taken from National Oceanic and Atmospheric Administration (NOAA). Information related to bleaching in the regions of the southern Persian Gulf was extracted from the published papers and reports. Each of these sources also has been extracted for a 35-year statistical course (1980-2015) and by the index of degree heating weeks (DHWs) determined for the same statistical course in this research for the assessment and anticipation of bleaching phenomenon. For reviewing of the work accuracy, Peirce Skill Score (PSS) technique was used to quantify the accuracy of previous and subsequent anticipations. According to the derived results, DHWs threshold for the study region was determined to be 7.13. the threshold 7.13 for DHW is suggested as a caution threshold for bleaching incidence in southern regions of the Persian Gulf that is whenever the values of weekly positive temperature DHW show number 7.13 and higher, there is an expectation of bleaching phenomenon incidence of corals for these regions. And the score of PSS= 0.72 derived from the amounts of H= 7/8= 0.87 for the Hit rate and F= 4/26= 0.15 for the False alarm rate of the bleaching was obtained for the southern regions of Persian Gulf and study region. In northern regions of the Persian Gulf the threshold 5.3 for DHW is suggested as a caution threshold for bleaching incidence. The rate of pss = 0.62 derived from the amounts of (3/4 = 0.75) for the Hit rate and ( 3/23 = 0.13) for the False alarm rate of the bleaching was obtained for the northern regions of Persian Gulf and study region. Difference in DHWs values of the south and north of Persian Gulf shows more resistance of the corals of south Persian Gulf against DHW changes and SST anomalies. Also the amounts of DHW alongside SST can help more completely to the anticipation of bleaching phenomenon.
Page 1 from 1 |
© 2025 CC BY-NC 4.0 | Journal of Spatial Analysis Environmental hazarts
Designed & Developed by : Yektaweb