The Instrumental Record Flashcards

ESD

1
Q

the instrumental record

A

refers to pieces of evidence which can be collated to highlight global climate change

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2
Q

interpolation

A

process in which statistical methods would be used to fill in gaps within the climate record -> uncertainty (Gulev et al., 2021)

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3
Q

CO2 concentrations -> Mauna Loa Observatory (1960->)

A

increasing overtime -> peak during the 1997/98 El Niño (6th IPCC, Gulev et al., 2021).

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4
Q

Temperature Records -> often divided based on land and SSTs and NH/SH

A

450 million reports across regions/times -> International Surface Temperature Initiative = 35,000 stations created for land temperatures (6th IPCC, Gulev et al., 2021)

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5
Q

Temperature Record -> HadCRUT4 (1850->) -> collates HADGT3 and CRUTEM4 = 5x5 resolution (Morice et al., 2012)

A

84% of the data is taken from the surface -> Africa and poles = missing data (Cowtan and Way, 2014)

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6
Q

Gridding -> anomalies at each latitude and longitude are collected -> step-change is analysed in comparison to local stations to determine whether it was anomalous or a climate signal -> produces 12 maps (1/month) and collates them into data points on a time series/year -> uses these to create grid boxes

A

anomalies -> needed to avoid biases and cover a greater spatial scale -> technicality would appear that the poles are cooling if absolute data taken (Rhein et al., 2013 - 5th IPCC Report)

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7
Q

realisations -> model runs of the climatic conditions to determine the certainty of the data set

A

statistical means are then taken to represent the magnitude of warming in the grid boxes (Morice et al., 2012)

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8
Q

HadCRUT4 -> does not use interpolation -> leaves regions without data as the average - problematic due to arctic amplification not being represented (were improvements in data sets from HadCRUT3-4 though with Siberia included)

A

Cowtan and Way (2014) -> filled in the gaps via interpolation/satellite data -> earth has warmed 2x faster in the last 15yrs than the data implies

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9
Q

HadCRUT5 (Met Office) -> 5,000 stations

A

MSLOT (NOAA) -> 7,000 stations (Pidcock, 2015) -> digitisation has also improves spatial coverage (Morice et al., 2012)

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10
Q

Land/Sea Data Sets -> GISS/GISTEMP (NASA) -> operates at 2x2 resolution and has 99% data so requires less interpolation (Pidcock, 2015; Cowtan and Way, 2014)

A

MSLOT (NOAA) and Japan Meterological Agency -> different resolution of grid boxes = similar trends though (Pidcock, 2015)

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11
Q

World Meteorological Organisation and Global Climate Observation System

A

land stations -> smooth the data and share it through the WMO (Morice et al., 2021)

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12
Q

5th IPCC Report -> 0.85 increase in ocean temp and land surface (1880-2021) -> small differences between data sets = reproducibility

A

clear obvious trend of increasing
1960-1970 -> aerosol emissions led to a plateau

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13
Q

SST interannual/interdecadal variability

A

ENSO -> 2022 temp drop due to a La Niña -> 1997/98 temp rise due to El Niño (Gulev et al., 2021 - 6th IPCC Report)

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14
Q

Arctic Amplification

A

poles are warming 2x quicker -> ice-albedo feedback -> melting ice has an albedo of 0.8-0.9 while polar water has one of 0.1 (Simmonds, 2015)

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15
Q

SST records -> Southern Ocean and Atlantic Ocean

A

massive heat store -> facilitated by AMOC heat transfers (Cheng et al., 2017)

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16
Q

SSTs -> 1,200 drifting buoys and 4,000 ships

A

1.5million observations monthly

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17
Q

Corrections -> inhomogeneities and urbanisation account for <0.05 (Folland and Parker, 1995)

A

wooden buckets -> 0.42 correction as water evaporated from buckets and leaked out (Hartmann et al., 2013) -> engine room warmed the buckets but HadCRUT4 used an error model to amend this (Morice et al., 2021)

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18
Q

Corrections -> instrumental data

A

historical SST -> 0.1 estimated error in dating at the start of the dating -> exacerbated by differences in ground/air observations

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19
Q

Lower troposphere = warming

A

greenhouse effect enhanced so less heat released to stratosphere
tropospheric ozone increased 30-70% (1970-2010)
tropopause increased in height from 1980 (Gulev et al., 2021)

20
Q

Asymmetry in tropical upper atmosphere -> warmed 1k (2010-2020)

A

more SH warming than NH -> due to land asymmetry and differences in ozone concentrations (Ladstädter et al., 2023).

21
Q

stratosphere = cooling

A

decrease in ozone = less UV
Montreal Protocol 2013 -> Antarctic ozone hole so called to reduce HCFC production -> more recovery in the NH (Gulev et al., 2021)

22
Q

radiosondes -> measure atmospheric depth at certain temperatures (Hartmann et al., 2013)

A

ozonesondes -> measure ozone (Gulev et al., 2021)

23
Q

Global Navigation Satellite System -> measures the earth’s vertical profile

A

uses satellites and produces data to a high-resolution (Ladstädter et al., 2023)

24
Q

atmospheric interannual variability

A

Quasi-Biennial Oscillation (Ladstädter et al., 2023)

25
Q

Corrections - instrumental differernces e.g. satellites vs weather balloons (would underestimate temp change and would pop) (Ladstädter et al., 2023).

A

there was a slowdown in rates of warming in the troposphere -> CMIP5 models were unable to simulate this due to residual error/uncertainties -> highlights complexities (Santer et al., 2017)

26
Q

sub-surface ocean temps recording started in the 1960s

A

argofloats used -> 4,000 in 2018 now 3,887 in 2022 (Cheng et al., 2017)

27
Q

sub-surface ocean temp gaps -> if earth is split into 1x1 -> in 1960 <10% coverage, 2003 > 20% and 2015 <30% (Chen et al., 2016)

A

warming has occurred for upper-700m from 1871 and occured for 700m-2000m from 1971 (Gulev et al., 2021)

28
Q

PERSIANN-CDR (NCEI) -> 1982 to present day using IR and Microwave radiation on a 2.5x2.5 resolution -> not sufficient to show regional change

A

Rain Sphere -> finer resolution and more local observations using IR on geostationary satellites (Nguyen et al., 2018)

29
Q

Global Rain Gauge -> shares data

A

but limited global coverage - only sports field worth of area is monitored for precipitation (Kidd, 2017)

30
Q

Clausius Claperyon -> air can hold more water vapour as it warms (7% increase in temp) = more precipitation (Gulev et al., 2021)

A

trend complicated however -> often easier to split places into regions to examine -> consider variability e.g. NAO, ENSO = noise

31
Q

Precipitation increase = N.A, Tropical Africa, C.A, Maritime Continent, part of Eur

A

precipitation decrease = S.A., west N.A. north Africa, Middle East (Gulev et al., 2021)

32
Q

5th IPCC Report -> precipitation over the midlatitudes =

A

increase from 1901 (Hartmann et al., 2013)

33
Q

corrections precipitation -> big uncertainty between model projections = different variables and parameterisation (simplifies processes)

A

(Hartmann et al., 2013)

34
Q

Satellites used to determine precipitation rates -> based on idea that clouds cause preciptation

A

midlatitudes examines for eddies, tropics examined for deep, convective clouds -> satellites use IR to look at cloud top temperature to inform precipitation rates – but it is harder to get satellite data for the midlatitudes than the tropics as there is deeper convection in the tropics -> can also underestimate precipitation as warmer rain occurs from mountain induced uplift but would not be detected by cloud top temperature.

35
Q

Sea Level Rise = satellite monitoring via LIDAR altimeters (time it takes for the satellite to reach the surface and back)

A

e.g. Jason-2 and Poseidon/TOPEX (Nerem et al., 2018)

36
Q

3mm/year rise in global sea levels from 1933 = contribution of melting glaciers not thermal expansion (Nerem et al., 2018) -> global uniformity.

A

The 5th IPCC report -> sea levels increased 0.19m from 1901-2010, 1.7mm 1991-1993 and 3.2mm 1993-2010 (Rhein et al., 2013).

37
Q

SLR -> collected from the 1700s

A

1800s = tide gauges
1900s = satellites (Rhein et al., 2013)

38
Q

SLR variability

A

episodic variation -> Mt Pinatubo 1991 -> drop in sea levels and led to the TOPEX satellite being launched and impacted the start of the data set (Nerem et al., 2018)

39
Q

SLR correction

A

tide gauges -> implicated by variability as they are local -> while SLR signal during an ENSO needs eof analysis to make it more accurate (Nerem et al., 2018)

40
Q

problems with data = noise makes depicting the signal more difficult = corrections are required

A

calibrations, methods shifting, inhomogeneities etc… complicates the noise to signal ratio

41
Q

GRACE mission -> LIDAR/RADAR = ice thickness (Nerem et al., 2018)

A

Operation IceBridge -> more sophisticated tech to analyse ice sheet thickness -> lidar altimeter, snow camera etc (Lindsay and Schweiger, 2015).

42
Q

ice extent -> submarines and sonar or electromagnetic sensors on helicopters

A

more limitations due to seasonal variability and limitations in recording data (Lindsay and Schweiger, 2015).

43
Q

Sea ice extent NH = clear cumulative loss in ice, SH = trend harder to discern

A

West Antarctica e.g Thwaites Glacier = thinning, East Antarctica = thickening event despite CMIP modelling (Simmonds, 2015)

44
Q

AR5 highlighted that the Arctic loss around 1.3 to 2.3m of thickness between 1980 and 2008 indicating clear thinning (Gulav et al., 2021).

A

Antarctic sea ice change has been different, there has been a decrease in the volume of sea ice though this decrease was only by a small amount, with a loss of 1.2-1.8% from 1979 to 2012 -> entire regional change is small for Antarctica due to some regions thinning and others thickening (Gulav et al., 2021).

45
Q

glacial extent -> global decrease in mass from the 1970s and most in retreat (Gulev et al., 2021)

A

rates can be variable -> variability e.g. Hindu Kush-Karokoram-Himalaya region with low thinning around Karakoram -> due to the Asian Monsoon and westerly atmospheric circulation pattern (Kaab et al., 2021)

46
Q

ice extent corrections

A

need to account for the different techniques being drawn upon e.g. snow influences ULS (upward looking sonar) instruments but not Air-EM (plane-based electromagnetic waves) (Lindsay and Schweiger, 2015).