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Exploring Socioeconomic and Temporal Characteristics of British and German Residential Energy Demand

This study investigates the socioeconomic and temporal factors influencing residential energy demand in the UK and Germany, using Time Use Survey data and the CREST model. It analyzes the impact of household factors such as income, age, and household size, as well as temporal factors like heating behavior and appliance usage. The results demonstrate the importance of these variables in understanding and simulating energy demand patterns.

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Exploring Socioeconomic and Temporal Characteristics of British and German Residential Energy Demand

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  1. Exploring socioeconomic and temporal characteristics of British and German residential energy demand Russell McKenna1, Max Kleinebrahm1, Timur Yunusov2, Máté Janos Lorincz2, Jacopo Torriti2 1 Chair of Energy Economics, KIT, Karlsruhe, Germany 2 School of Built Environment, University of Reading, UK

  2. Contents Exploring socioeconomic and temporal characteristics of British and German residential energy demand • Introduction and objectives • Importantsocioeconomic variables forenergy and power demand • Methodology • Overall approach • Occupancy and activityprobabalitiesfrom TU data • DerivingloadprofileswithMarkovchains and TPMs • Results: • Somelessonslearnedfromanalysingtwodatasets • “Validation” with standard load profiles • Comparisonoftwo countries in activities and loadprofiles • Comparisonof different socioeconomicgroups • Discussion • Conclusions and outlook

  3. Introduction and motivation • Objectives: • Extend CREST model to German context • How well can socioeconomic variables explain the diversity… • …and be employed in simulation models to reproduce it? • What about load profile characteristics, e.g. peak? Exploring socioeconomic and temporal characteristics of British and German residential energy demand Energy transition means the demand side is becoming more important Flexibility: dynamic tariffs and/or capacity charges may be implemented There is a lot of diversity between households, much of which is accounted for by socioeconomic variables Several demand simulation tools based on Time Use Surveys available, but not all open source (e.g. UK CREST: Richardson et al. 2010, Germany Synpro: Fischer et al. 2015, Sweden: Widén & Wäckelgård 2010)

  4. Socio-demographicimpacts on energy and power demand Exploring socioeconomic and temporal characteristics of British and German residential energy demand • Household factors: • Total energydemand: • Incomeisassociatedwithhouseholdenergyuse and carbonemission (e.g. Druckman et al. 2008, Craig et al. 2014). • Age and numberofhouseholderhas a positive impact on energydemand (Jones et al. 2015, McLoughlin et al. 2013). • Couples with children are more likely to have a higher appliance-related carbon footprint than couples without children (Craig et al. 2014) • Dwellings with similar built vary in their annual electricity consumption (Firth et al. 2008) • Temporal factors: • Heatingbehaviour • Appliance ownership and frequencyofuse • Household size, income, workingstatus and applicationof LCTs (Hayn et al. 2015) • Behaviour canaccountforover 50% ofthevariance in energydemand (Haldi et al. 2011). • Selectedsocio-demographicfactors: • Family structure (includesage and numberofchildren),  • Income,  • Household size,  • Property Type,  • Tenure.

  5. Metadataavailability, from TUS and metereddata Exploring socioeconomic and temporal characteristics of British and German residential energy demand

  6. Methodology: overallapproach Time Usedata Load Profile Model (CREST) Produceaggregatedprofiles Producedifferentiatedprofiles Validatewith Standard loadProfiles Validatewith Smart Meter data Exploring socioeconomic and temporal characteristics of British and German residential energy demand

  7. Methodofderivingoccupancy/activityprofilesfrom TUS data Exploring socioeconomic and temporal characteristics of British and German residential energy demand

  8. DerivingMarkovchainstoproduceloadprofiles: inputfor CREST model Richardson et al. 2010 Exploring socioeconomic and temporal characteristics of British and German residential energy demand • Input for CREST model: • 24 houroccupancyprobabilities • Startingstates • TPMs • Activityprobabilitydistibutions • Untilnowdifferentiatedbyno. ofpeople, 1-5 • Noseasonaldifferences in occupancy

  9. Results: lessonslearnedwith 2 TUS datasets Exploring socioeconomic and temporal characteristics of British and German residential energy demand Althoughbroadlysimilar, thetwosurveyshavesomekeystructuraldifferences (e.g. noofdiaries)

  10. Results: synethetic vs. standardloadprofilesforwholepopulation NRMSE 0.0999 NRMSE 0.0948 NRMSE 0.1365 NRMSE 0.1395 DE UK Exploring socioeconomic and temporal characteristics of British and German residential energy demand Resultsshow a goodagreementwith NRMSE forboth countries and seasons Seasonaleffectsare not considered in thesefigures Summer eveningpeaks not wellcaptured in CREST model – twopeaks!

  11. Results: (re-)producingprofilesforsocioeconomicgroups Exploring socioeconomic and temporal characteristics of British and German residential energy demand Presence ofchildren on median profilesleft LCL, right CREST, 150 households: Higher morning and eveningpeaks in LCL data Onlymorningpeakiswellreproduced in CREST

  12. Results: (re-)producingprofilesforsocioeconomicgroups Exploring socioeconomic and temporal characteristics of British and German residential energy demand Presence ofover 65s on median profilesleft LCL, right CREST, 150 households: Similarpeaks but higherdaytimedemand in LCL data CREST modelshowshighermorningpeakforover 65s

  13. Results: comparingactivitiesbetween Germany and the UK Exploring socioeconomic and temporal characteristics of British and German residential energy demand Probabilityof >=1 activepersonundertakingoneofthesesixactivities Strongermiddaypeak in DE, morningpeakmorepronounced in UK Higher eveningpeak in DE, comparedtoflatter/broaderone in UK Strong similarities in evening TV watchinghabits

  14. Results: comparingactivitiesbetween Germany and the UK Exploring socioeconomic and temporal characteristics of British and German residential energy demand Childrenmorepronounced in DE, leadingtohighermorningpeak Young peoplecoupleshave a broadereveningpeak Both in UK and DE, singlehouseholdstendtobelessconsistent Evening peaks in UK are broader and gender-related (women occupancy from 4 PM increases significantly) along with presence of children

  15. Results: comparingactivitiesbetween Germany and the UK Exploring socioeconomic and temporal characteristics of British and German residential energy demand Noofresidentsleadsto a highermorningpeak, asexpected Little differencebetweenincomelevels (not shownhere): wouldseemtosuggestthatappliances / ownershiparemoreimportantthanactivities per se More peakyprofileswith 5+ occupants due tosmall sample sizes

  16. Resultsforthepeakperiod UK DE Exploring socioeconomic and temporal characteristics of British and German residential energy demand Flatter, broaderpeakforretiredcouples Presence ofchildrentendstoheighten and broadentheeveningpeakforboth countries

  17. Resultsforthepeakperiod: income in DE DE Exploring socioeconomic and temporal characteristics of British and German residential energy demand Little/nodiscernableeffect on profiles But theonlydifferencesbetweenthesehouseholdsistheiractivities/occupancy The presumeddependency on appliance stock is not capturedhere.

  18. Discussion Exploring socioeconomic and temporal characteristics of British and German residential energy demand • Time Use Data: • Some issues with parallel activities in TUS as well as locations unclear (DE) • Issue of small sample sizes for some household types as well as large inner-sample variance – should consider sample sizes for results • CREST Model: • Seasonality not (yet) well considered in approach • Problem of the six/seven groups of activities in CREST • Night-time profile shape as fundamental issue • Flexibility of load profiles depends on appliances, so perhaps need different allocation of activities • Appliances not updated for DE: where to get data for this? • Model not well reproducing empirical profiles, e.g. due to appliance stock, building etc. • Smart meter data: • Regional differences between habits and use of LCL • London sample, urban, wealthy etc.

  19. Conclusion and outlook Exploring socioeconomic and temporal characteristics of British and German residential energy demand • There are some clear differences between groups and countries, revealed by empirical data • The differences between the two countries are a reminder of the importance of non-energy policy (e.g. school hours) in determining peaks • These differences have implications for dynamic tariff and/or capacity charging • Extended CREST model to German context, but missing appliance stock • The CREST (or similar) model can be reliably employed for ‘typical’ households but is less robust for socioeconomic groups • Extensions should focus on (for discussion) • Sharpening the specification of socioeconomic subgroups to include appliances etc. • The quantification of qualitative trends explored, e.g. by using load indicators like mean daily peak, time and extent of peak etc. • Regional effects and differences, where data allows • Appliance level profiles between the countries

  20. Exploring socioeconomic and temporal characteristics of British and German residential energy demand Thankyouforyourattention! Thanks also totheDemand Centreforpartly fundingthisresearch.

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