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Evaluation of Climate Model – Bias and Uncertainty in Climate Prediction


AcademicPaper–ClimateModel


PaperTitle Model


1 Quantitativeurbanclimatemappingbasedonageographical GIS-basedsimulation


database:AsimulationapproachusingHongKongasacase approach–MeansofSVF


study(Chen&Ng,2011) andFADsimulation


2 Applyingurbanclimatemodelinpredictionmode–evaluation MUKLIMO_3


ofMUKLIMO_3modelperformanceforAustriancitiesbased


onthesummerperiodof2019(Hollósietal.,2021)


3 Reanalysis-drivenclimatesimulationoverCORDEXNorth CandianRegionalClimate


AmericadomainusingtheCanadianRegionalClimateModel, Model


version5:modelperformanceevaluation(Martynovetal.,


2013)


4 Evaluationofextremeclimateeventsusingaregionalclimate RegionalClimateModel


modelforChina(Ji&Kang,2014) Version4.0


5 ExtremeclimateeventsinChina:IPCC-AR4modelevaluation RegionalClimateModel–


andprojection(Jiangetal.,2011) IPCCAR4


6 Afutureclimatescenarioofregionalchangesinextreme PRECIS,aregionalclimate


climateeventsoverChinausingthePRECISclimatemodel modelsystem


(Zhangetal.,2006)


7 ClimatechangeinChinainthe21stcenturyassimulatedbya RegionalClimateModel


high-resolutionregionalclimatemodel(Gaoetal.,2012) version3(RegCM3)


8 AregionalclimatemodeldownscalingprojectionofChina RegionalClimateModel


futureclimatechange(Liu,Gao&Liang,2012) version3(RegCM3)


9 ChangesinExtremeClimateEventsinChinaUnder1.5°C–4 RegionalClimateModel


°CGlobalWarmingTargets:ProjectionsUsinganEnsembleof (RgCM4)


RegionalClimateModelSimulations(Wuetal.,2020)


10 ClimateChangeoverChinainthe21stCenturyas RegionalClimateModel


SimulatedbyBCC_CSM1.1-RegCM4.0(Gao,Wang&Giorgi, (RgCM4)


2013)


Introduction


The climate model is an extension of weather forecasting, it usually predicts how average conditions


will change in a region over the coming decades (Harper, 2018). To understand how to evaluate a


climate model, we should understand the components of a climate system. A Climate system is a


systemcombiningtheatmosphere,ocean,cryosphereandbiota,therefore,therearelotsofparameters


thatwillaffecttheclimatesituationofaregion.


The climate model is usually used by researchers to understand complex earth systems. The model


inputs will be the past climate data which acts as a starting point for typical climate systems analysis


and a model can be created and used to predict the future climatic situation as the model output.


Therefore, the more we learn from the past and present climatic situation, the more accuracy of the


modeltopredictthefutureclimaticsituation.


Model accuracy and precision depended on the following three major parts, includingInput, which is


related to the data quality and quantity; model which depended on the quality and quantity of


parameters,temporalandspatialextentsettings;andoutput,whichisabouttheaccuracyandprecision


oftheforecastingofthemodel.


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Evaluation


A) Complexityofmodel


Problemofparameters


There are increasing statistical methods of multimode climate projections, the complexity of the


model in analyzing different parameters also hence to enhance to predict different possibilities of the


futureclimaticsituation. However,mostoftheresearchersmentionedinthispaperareonlyinterested


in ranking the importance of the different parameters in affecting and controlling the climate system.


They will try to do some correlation between the parameters and the climate result to find which


parameters should be included in the climate model for prediction and analysis. However, what we


need to focus on is how these models predict the changes in the climate of the region, their ability to


predict the accurate trends of the climatic situation. It is important to note the complexity of the


climatemodelisnotinalinearrelationshipwithitsaccuracyinpredictingfuturetrends.


B) UncertaintyandBiasofthemodel


The uncertainty of the model causing overestimation and underestimation of the model in predicting


thetemperatureandprecipitation.


The issue of uncertainty and bias are the core parts of the climate change prediction problem. Due to


the complexity of these issues on both concept and speciality, uncertainty and bias will remain an


inevitableissuesinthedebateofclimatechange.


Theproblemoftopography


As indicated by much research on climate models based in China, the problem of topography is the


major limitation for the collection of data in the first stage. China is known as a country with


complicated topography, including mountains, basins, plateaus, hills, and plains. It is important to


note that complicated topography largely affects the climate models stability (Mesinger & Veljovic,


2020), and this topography characteristic has been reviewed by Martynov et al. (2013), Jiang et al


(2011)andZhangetal(2006)asthebarriersindatacollection.


For example, as stated in research of Martynov et al (2013), the horizontal resolution in the climate


simulation is insufficient for such a complex topographical situation, while the vertical interpolation


of the pressure gradient simulation is also affected by the complex topographical factors. Similar to


theresults as statedintheresearchof Jianget al(2011),the complexityofthe topology inChina also


affect the accuracy of the model in predicting future precipitation, especially for the case of


topography-driven precipitation, the related data is not well measured and recorded by the coarse


resolution model. Mountainous regions of China also induced bias issues. Some weather stations


locatedinthevalleyorlowelevationregionsmayalsoresultinthecoldbiasoftheclimatemodelling


results. As reviewed in the regional climate model in research of Zhang et al (2006), the operation of


complex topography in China with the strong monsoon system causing a large spatial variability in


thepredictionaccuracyoftheclimatesystem.


Theproblemofhumidity


Both humidity and temperature are the major components in the climate model while humidity has


long struggled in the climate models in whether it has been adequately represented the cloud systems


to tropospheric humidity in the calculation of the climate system. In the research done by Ji & Kang


(2014), the factor of humidity in the formulation of climate systems becomes the greatest uncertainty


inclimatemodelprediction.TheclimatemodelstatedinJi&Kang(2014)researchalsoindicatedthe


relative humidity prediction appears to be much less credible and show a large variety of model


predictionskills.


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It is necessary to include a comprehensive analysis of the dynamic cloud processes so to evaluate the


humidityeffect inthe climate model. Moreover,humidityis highlyvariable over small scales of time


andspace,whichisahugeuncertaintyfortheregionalclimatemodel,thiswillleadtoalargerangeof


potential results in the future, directly affect the forecasting ability of the model. (Maslin & Austin,


2012).


Theavailabilityofobservationaldata


Climate observations are used as a baseline for accessing climate changes. As revealed in some


researches, complicated topography that falls within a large range of elevation largely affect data


quality and quantities of climate data collected. For instance, the temperature and humidity related


data are hardly collected. For example, for the Hollósi et al (2021) research on applying climate


models for Austrian cities, the problem of uneven distribution of weather stations is found. In other


cities of Austria, because of the limited number andsparsely placeddata collection stations, there are


muchlessobservationaldataofsome ruralregions.Evenifthecitieshavearelativelyhighamount of


weather stations, due to the building geometry differences between rural and urban cities


environmentalsetting,somepatternssuchasheatloadisnotproperlyinvestigatedandmonitored.


Therefore, the quality and quantities of the observational data are not stable and reliable for some


climate modes, resulting in large uncertainties and difficulties when analysing the climatic difference


betweenurbanandruralareas.


C) Theforecastingabilityofthemodel


The limited forecasting ability of the climate model is not inevitable. It is so hard to predict climate


changes, which highly depends on the data quality measured and captured by the measurement


stationsorequipment(Maslin& Austin,2012).Also,ouratmosphericstructureis socomplicatedand


the climatic situation is affected by many external factors that cannot be analyzed and found out by


onesingleclimaticmodel(Herrington,2019).


Theproblemofusingpastclimaticdatainpredictingextremeweather


It is important to note that climate has changed so extremely and intensely that the frequency of past


extreme eventsisnolongerareliablepredictor, especiallyforthehuman-inducedwarminghasonthe


extremeevents.Hence,theuseoftemporallylaggedperiodsofextremeeventsprobablywillprobably


underestimatethehistoricalimpacts,andalsounderratetherisksoftheoccurrenceofextremeweather.


As stated by Foley (2010), the technique that using historical observation data to calibrate future


model projections is not precise enough when the model is trying to simulate and validate a state of


the system that has not been experienced before. This is an inevitable barrier for the model


computationsofthenaturalsystems.


Researches done by Ji & Kang (2014), Jiang et al (2011) and Gao, Wang & Giorgi (2013) tries to


predict extreme weather by using the historical data at different ranges, basically using the range of


the temperature as the observational data as the input of the model. Sometimes the problem of


complicated topography of China will also induce large biases in the collection of climatic data,


includes the daily mean temperature and the records minimum and maximum temperature. As


mentioned by Sillmann et. al., (2017), predicting extreme weather needed to depend on the presence


of large scale drivers, which should be the major contributors to the existence of extreme weather.


Therefore, instead of using the separate dynamic and physical processes in the predictive model to


predict climate changes as stated in research Ji & Kang (2014), Jiang et al (2011) and Gao, Wang &


Giorgi (2013), the researches should focus on the interrelationship between the processes, a better


understandingof the processes canallowus torealize the underlyingdrivers of theresults of extreme


weather.


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OverestimationandUnderestimation


The climate models overestimated the interannual variability of temperature. As indicated in the Ji &


Kang(2014)research,thenetworkofprecipitationpatternsthatareprocessedfromstationsinthearid


areas may underestimate the precipitation over the northern topography of China. While the Jiang et


al (2011) research indicated the regional climate model tends to overestimate the precipitation


situationinthenorthernandwesternpartsofChinawhereintenseprecipitationisrarelyfound.Onthe


other hand, the climate model also underestimatedthe precipitation that will exist in the southern and


northeastern parts of China in the future. A similar result was also found in the Zhang et al (2006)


research,whichindicatedthattheclimatemodelunderestimatedtheexistenceofextremeprecipitation


eventsinthesouthernpartofChina.


For the climate model researches done in Hong Kong (Chen & Ng, 2011), only building geometry is


takingintoconsiderationinclimatesimulation,bothtopographyandvegetationcoverarenotincluded,


indicated that the results may overestimate the real temperature for the location located in higher


elevationwithlargevegetationcover.


LimitationoftheRegionalSimulationsinRegionalClimateModel


Mostoftheresearchesindicatedinthispaperfocusontheregionalclimatemodel,whichisthehigher


resolution model compared to the global climate model. Therefore, with a finer resolution of the


regional climate model, scientists can have a higher ability in resolving mesoscale phenomena that


contributing to heavy precipitation (Jones, Murphy & Noguer, 1995). However, as the regional


climate model onlycover certainparts ofthecontinental, thelateral boundaryconditionis requiredin


the model simulation. Therefore the accuracy of regional simulations is highly dependent on the


boundaryconditions of the observations. When the regional climate model is affected by some cross-


boundary external forcings, uncertainties must have easily existed when the climate model trying to


forecastorprojectthefutureclimateinboundaryconditions.(CCSP,2008)


Conclusion


Formulation and using a climate model to analyze the climate data and making the prediction is


becoming a new trend for scientists and researchers to enhance our understandings of the earth we


lived on. With the increased complexity of the climate model, more and more factors are putting into


considerations when we trying to predict the climate situation. However, despite the climate model


are more sophisticated in today’s society, biases and uncertainties still existed, but we should also


needtounderstandthat there is noperfect modelwith nobias anduncertainty. As longas the climate


modelisabletoensureanddecidethesensitivityoftheactualclimatesystemtosmallexternaldrivers,


theweightof scientificevidence isalreadyenoughtogive us the informationandmake anacceptable


predictionoftheclimaticsituationofourworld.


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