🇲🇲 Myanmar Dürren, Überschwemmungen, extreme Temperaturen (% der Bevölkerung, Durchschnitt 1990-2009) — Historical Data

World Bank data • 200920091 data pointsClimate Change

Latest Value
0.09
2009
Year-on-Year
N/A
10-Year Average
0.09
20002009
Range
0.09 (2009)
0.09 (2009)

Myanmar Dürren, Überschwemmungen, extreme Temperaturen (% der Bevölkerung, Durchschnitt 1990-2009)2009 to 2009

Loading chart...

About this Indicator

Droughts, floods and extreme temperatures is the annual average percentage of the population that is affected by natural disasters classified as either droughts, floods, or extreme temperature events. A drought is an extended period of time characterized by a deficiency in a region's water supply that is the result of constantly below average precipitation. A drought can lead to losses to agriculture, affect inland navigation and hydropower plants, and cause a lack of drinking water and famine. A flood is a significant rise of water level in a stream, lake, reservoir or coastal region. Extreme temperature events are either cold waves or heat waves. A cold wave can be both a prolonged period of excessively cold weather and the sudden invasion of very cold air over a large area. Along with frost it can cause damage to agriculture, infrastructure, and property. A heat wave is a prolonged period of excessively hot and sometimes also humid weather relative to normal climate patterns of a certain region. Population affected is the number of people injured, left homeless or requiring immediate assistance during a period of emergency resulting from a natural disaster; it can also include displaced or evacuated people. Average percentage of population affected is calculated by dividing the sum of total affected for the period stated by the sum of the annual population figures for the period stated.

Historical Data Table

YearValue
20090.09

🔗 Embed this chart

Copy and paste this code to embed the chart on your website:

<iframe src="https://nationstat.com/de/country/myanmar/droughts-floods-extreme-temperatures-of-population-average-1990-2009" width="800" height="500" frameborder="0"></iframe>

Compare with Other Countries

🇦🇫Afghanistan
1.062009
🇦🇴Angola
1.012009
🇦🇱Albanien
5.272009
🇦🇷Argentinien
0.172009
🇦🇲Armenien
0.482009
🇦🇸Amerikanisch-Samoa
0.002009
🇦🇺Australien
3.052009
🇦🇹Österreich
0.042009
🇦🇿Aserbaidschan
1.112009
🇧🇮Burundi
2.382009
🇧🇪Belgien
0.002009
🇧🇯Benin
0.862009
🇧🇫Burkina Faso
1.252009
🇧🇩Bangladesch
4.582009
🇧🇬Bulgarien
0.012009
🇧🇦Bosnien und Herzegowina
0.492009
🇧🇾Belarus
0.022009
🇧🇿Belize
0.812009
🇧🇴Bolivien
1.302009
🇧🇷Brasilien
0.482009
🇧🇹Bhutan
0.012009
🇧🇼Botswana
0.742009
🇨🇫Zentralafrikanische Republik
0.182009
🇨🇦Kanada
0.012009
🇨🇭Schweiz
0.002009
🇨🇱Chile
0.262009
🇨🇳China
7.952009
🇨🇮Elfenbeinküste
0.002009
🇨🇲Kamerun
0.072009
🇨🇩Kongo, Dem. Rep.
0.022009
🇨🇬Kongo, Rep.
0.262009
🇨🇴Kolumbien
0.662009
🇰🇲Komoren
0.022009
🇨🇻Cabo Verde
0.012009
🇨🇷Costa Rica
0.702009
🇨🇺Kuba
0.732009
🇨🇾Zypern
0.002009
🇨🇿Tschechien
0.162009
🇩🇪Deutschland
0.032009
🇩🇯Dschibuti
6.802009
🇩🇰Dänemark
0.002009
🇩🇴Dominikanische Republik
0.082009
🇩🇿Algerien
0.042009
🇪🇨Ekuador
0.342009
🇪🇬Ägypten
0.012009
🇪🇷Eritrea
7.322009
🇪🇸Spanien
0.732009
🇪🇪Estland
0.002009
🇪🇹Äthiopien
3.262009
🇫🇮Finnland
0.002009
🇫🇯Fidschi
1.732009
🇫🇷Frankreich
0.012009
🇫🇲Mikronesien, Föd. St.
1.352009
🇬🇧Vereinigtes Königreich
0.032009
🇬🇪Georgien
0.772009
🇬🇭Ghana
0.972009
🇬🇳Guinea
0.182009
🇬🇲Gambia
0.202009
🇬🇼Guinea-Bissau
0.542009
🇬🇷Griechenland
0.012009
🇬🇹Guatemala
1.312009
🇬🇾Guyana
7.172009
🇭🇰Hongkong, China
0.002009
🇭🇳Honduras
1.262009
🇭🇷Kroatien
0.002009
🇭🇹Haiti
0.842009
🇭🇺Ungarn
0.092009
🇮🇩Indonesien
0.162009
🇮🇳Indien
4.362009
🇮🇪Irland
0.002009
🇮🇷Iran
3.062009
🇮🇶Irak
0.012009
🇮🇱Israel
0.002009
🇮🇹Italien
0.012009
🇯🇲Jamaika
1.142009
🇯🇴Jordanien
0.372009
🇯🇵Japan
0.022009
🇰🇿Kasachstan
0.222009
🇰🇪Kenia
6.482009
🇰🇬Kirgisistan
2.072009
🇰🇭Kambodscha
6.642009
🇰🇮Kiribati
5.002009
🇰🇷Südkorea
0.082009
🇰🇼Kuwait
0.002009
🇱🇦Laos
2.692009
🇱🇧Libanon
0.022009
🇱🇷Liberia
1.872009
🇱🇾Libyen
0.002009
🇱🇰Sri Lanka
2.162009
🇱🇸Lesotho
3.402009
🇱🇹Litauen
0.002009
🇱🇺Luxemburg
0.002009
🇱🇻Lettland
0.002009
🇲🇦Marokko
0.082009
🇲🇩Moldau
0.342009
🇲🇬Madagaskar
0.862009
🇲🇻Malediven
0.032009
🇲🇽Mexiko
0.152009
🇲🇭Marshallinseln
0.062009
🇲🇰North Macedonia
0.302009
🇲🇱Mali
0.652009
🇲🇲Myanmar
0.092009
🇲🇪Montenegro
0.012009
🇲🇳Mongolei
2.562009
🇲🇿Mosambik
3.662009
🇲🇷Mauretanien
3.082009
🇲🇺Mauritius
0.002009
🇲🇼Malawi
8.822009
🇲🇾Malaysia
0.102009
🇳🇦Namibia
3.402009
🇳🇪Niger
7.532009
🇳🇬Nigeria
0.062009
🇳🇮Nicaragua
0.832009
🇳🇱Niederlande
0.002009
🇳🇴Norwegen
0.012009
🇳🇵Nepal
0.702009
🇳🇿Neuseeland
0.012009
🇵🇰Pakistan
1.062009
🇵🇦Panama
0.202009
🇵🇪Peru
1.952009
🇵🇭Philippinen
0.812009
🇵🇬Papua-Neuguinea
0.732009
🇵🇱Polen
0.032009
🇵🇷Puerto Rico
0.022009
🇰🇵Nordkorea
2.502009
🇵🇹Portugal
0.002009
🇵🇾Paraguay
0.712009
🇷🇴Rumänien
0.082009
🇷🇺Russian Federation
0.132009
🇷🇼Ruanda
1.302009
🇸🇦Saudi-Arabien
0.012009
🇸🇩Sudan
2.772009
🇸🇳Senegal
0.602009
🇸🇧Salomonen
0.092009
🇸🇱Sierra Leone
0.252009
🇸🇻El Salvador
0.362009
🇸🇴Somalia
4.602009
🇷🇸Serbien
0.012009
🇸🇷Surinam
0.342009
🇸🇰Slowakei
0.042009
🇸🇮Slowenien
0.002009
🇸🇪Schweden
0.002009
🇸🇿Eswatini
9.232009
🇸🇨Seychellen
0.082009
🇸🇾Syrien
0.512009
🇹🇩Tschad
2.712009
🇹🇬Togo
0.512009
🇹🇭Thailand
3.752009
🇹🇯Tadschikistan
5.382009
🇹🇲Turkmenistan
0.002009
🇹🇱Osttimor
0.032009
🇹🇹Trinidad und Tobago
0.002009
🇹🇳Tunesien
0.102009
🇹🇷Türkei
0.142009
🇹🇿Tansania
1.502009
🇺🇬Uganda
0.852009
🇺🇦Ukraine
0.272009
🇺🇾Uruguay
0.262009
🇺🇸Vereinigte Staaten
0.212009
🇺🇿Usbekistan
0.122009
🇻🇨St. Vincent und die Grenadinen
0.012009
🇻🇪Venezuela
0.162009
🇻🇳Vietnam
1.602009
🇻🇺Vanuatu
0.112009
🇼🇸Samoa
0.002009
🇾🇪Jemen
0.102009
🇿🇦Südafrika
1.812009
🇿🇲Sambia
4.202009
See all countries for this indicator →