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Time of use pricing:
    an experiment
John Williams, Rob Lawson and Paul Thorsnes
Agenda


Why the research was done
Sample description
Nature of data
Results
Conclusions
Overview of the experiment
In 2008 we were approached by a major electricity retailer
to help them design a trial of Time of Use (TOU) pricing for
their household market

Aim: to shift electricity use from peak to off-peak times
Theory: simple economics (price elasticity of demand)


    “Peak” is 7AM to 7PM, Monday to Friday

    “Off-peak” is 7PM to 7AM, weekends and public holidays

    The trial ran from August 1st 2008 to July 31st 2009
Participating households


    332 households participated in the survey and the
    experiment (400 recruited)


    82 households only received information on energy
    saving behaviours


    84 received information and were given a 4₵ price
    differential


    78 information and a 10₵ differential


    88 information with a 20₵ price differential


    Control group of 55 households
Household characteristics




    Median age: 50–54 bracket


    Median household income: $90,000–$99,999 per annum
    before tax


    19% of the households without paid employment


    35% have at least two people in full-time employment


    Average time spent away from home during a normal
    weekday is 6 hours
Household characteristics




    Few Māori (22) or Pacific Island (12) people in the sample
    (7% & 4% respectively)


    233 of the 322 households (72%) have lived the majority
    of their life in Auckland


    21 households (7%) have moved from other parts of New
    Zealand


    68 households (21%) from outside NZ; main origins
    being China (19), India (10) and the U.K. (9)
Characteristics of meter data


Analysis was extremely complex because of:

  Huge variation between seemingly similar households


    Missing (estimated) data – especially in the year prior to
    the study


    Systematic variations in consumption between the
    different groups before the experiment started


    Seasonality


    Existence of different pricing plans with different fixed
    prices
Total electricity use
Total use: group effect


          Start of Experiment
Proportion of off-peak use




           ANZAC

Waitangi   Easter                       Christmas
Total use & proportion of off peak use




    Two readings of total kWh used for each household, for
    each day: one for total kWh at peak times; one for off-
    peak


    Households could switch their use within each weekday;
    or from weekdays to weekends, hence smallest valid
    period for aggregation is weekly


    However people probably react to monthly power bills, so
    we choose the smallest sensible aggregation period to be
    monthly


    Used Linear Mixed Effects modeling
Within and between household
Explanatory variables




    Experimental group


    Time


    Pricing plan (daily fixed charge, per kWh, controlled)


    House: floor area, age, value, number of rooms, number
    of heated rooms, whether a non-electric source of water
    heating is available


    Household: number of people, has special needs, use of
    appliances, income, hours away from home


    Householder: motivations for changing electricity use,
Explaining total use




    Significant explanatory variables: time, plan, hot water,
    floor area, special needs, “The Earth is like a spaceship”,
    income (before, not during), hours at home


    There is no difference between the households in the
    experiment and the control group; nor between any
    experimental group and any other experimental group


    TOU pricing has no effect on total electricity usage
Explaining proportional use




    Quantified load shifting by the proportion of use at off-
    peak times relative to total use, i.e. OP / (OP + P)


    Explanatory variables as for Total use


    Significant explanatory variables: time, plan, income,
    hours at home


    No difference between either
    l (a) the control group and the experimental groups; or
    l (b) any experimental group and any other experimental
      group
Summary of use modelling


Dependent    Period   Comparison   GoF           GoF          Group Effect?
Variable                           Between       Within           (p)


Total        Before   Control      0.59          0.91     0.856
                      Info         0.67          0.90     0.851

             During   Control      0.52          0.82     0.939

                      Info         0.62          0.81     0.932

Proportion   Before   Control      0.06          0.78     0.058
                      Info         0.25          0.79     0.163

             During   Control      0.05          0.64     0.042

                      Info         0.23          0.64     0.165
Post-trial survey

Change made               %      Main methods
Installed insulation       7     Ceiling (batts)
                                 Water cylinder and pipes
New heating appliances    19     Heat pumps

New lighting methods      11     Low energy bulbs

New appliances            33     TVs
                                 Dehumidifiers
Use of heating            44     Closing doors
                                 Not heating unused areas
                                 Turning off towel rails
                                 Substituting (electric blankets)
                                 Reducing time heaters on

Use of lighting           41     Turning off unused lights
Use of hot water          34     Washing clothes in cold water
                                 Shorter showers
                                 Reduced hot water temperature
Use of other appliances   45     Reduced use of clothes driers
                                 Turned off appliances at wall (tv)
Changed time of use       66     Dishwasher, heaters,
                                 Washing machines, showers
Attitudes to the TOU pricing trial



% endorsing each response      Strongly     Agree         Neither    Disagree   Strongly
to the question                 agree                    agree or               disagree
                                                         disagree

The differences in prices        25           49            12         12          2
was an incentive to change
the time of use



The difference in prices was      7           30            12         41          6
too small to make the effort



Easy to change to take           14           50            15         17          3
advantage of prices


Too much trouble to change        1           17            11         60          9
Summary


    Post-trial sentiments very positive — saving dollars?


    Lot of change during trial period


    Across the whole of the study TOU pricing has no effect
    on either of
    
       a) total electricity use by households in the study area;
      or
    
       b) proportion of electricity used at off-peak times


    Factors that influence both variables are:
    
      Time, plan, number of people in the household,
      personal values regarding conservation, hours at home,
      (possibly) income

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Time of Use tariff experiment

  • 1. Time of use pricing: an experiment John Williams, Rob Lawson and Paul Thorsnes
  • 2. Agenda Why the research was done Sample description Nature of data Results Conclusions
  • 3. Overview of the experiment In 2008 we were approached by a major electricity retailer to help them design a trial of Time of Use (TOU) pricing for their household market Aim: to shift electricity use from peak to off-peak times Theory: simple economics (price elasticity of demand)  “Peak” is 7AM to 7PM, Monday to Friday  “Off-peak” is 7PM to 7AM, weekends and public holidays  The trial ran from August 1st 2008 to July 31st 2009
  • 4. Participating households  332 households participated in the survey and the experiment (400 recruited)  82 households only received information on energy saving behaviours  84 received information and were given a 4₵ price differential  78 information and a 10₵ differential  88 information with a 20₵ price differential  Control group of 55 households
  • 5. Household characteristics  Median age: 50–54 bracket  Median household income: $90,000–$99,999 per annum before tax  19% of the households without paid employment  35% have at least two people in full-time employment  Average time spent away from home during a normal weekday is 6 hours
  • 6. Household characteristics  Few Māori (22) or Pacific Island (12) people in the sample (7% & 4% respectively)  233 of the 322 households (72%) have lived the majority of their life in Auckland  21 households (7%) have moved from other parts of New Zealand  68 households (21%) from outside NZ; main origins being China (19), India (10) and the U.K. (9)
  • 7. Characteristics of meter data Analysis was extremely complex because of:  Huge variation between seemingly similar households  Missing (estimated) data – especially in the year prior to the study  Systematic variations in consumption between the different groups before the experiment started  Seasonality  Existence of different pricing plans with different fixed prices
  • 9. Total use: group effect Start of Experiment
  • 10. Proportion of off-peak use ANZAC Waitangi Easter Christmas
  • 11. Total use & proportion of off peak use  Two readings of total kWh used for each household, for each day: one for total kWh at peak times; one for off- peak  Households could switch their use within each weekday; or from weekdays to weekends, hence smallest valid period for aggregation is weekly  However people probably react to monthly power bills, so we choose the smallest sensible aggregation period to be monthly  Used Linear Mixed Effects modeling
  • 12. Within and between household
  • 13. Explanatory variables  Experimental group  Time  Pricing plan (daily fixed charge, per kWh, controlled)  House: floor area, age, value, number of rooms, number of heated rooms, whether a non-electric source of water heating is available  Household: number of people, has special needs, use of appliances, income, hours away from home  Householder: motivations for changing electricity use,
  • 14. Explaining total use  Significant explanatory variables: time, plan, hot water, floor area, special needs, “The Earth is like a spaceship”, income (before, not during), hours at home  There is no difference between the households in the experiment and the control group; nor between any experimental group and any other experimental group  TOU pricing has no effect on total electricity usage
  • 15. Explaining proportional use  Quantified load shifting by the proportion of use at off- peak times relative to total use, i.e. OP / (OP + P)  Explanatory variables as for Total use  Significant explanatory variables: time, plan, income, hours at home  No difference between either l (a) the control group and the experimental groups; or l (b) any experimental group and any other experimental group
  • 16. Summary of use modelling Dependent Period Comparison GoF GoF Group Effect? Variable Between Within (p) Total Before Control 0.59 0.91 0.856 Info 0.67 0.90 0.851 During Control 0.52 0.82 0.939 Info 0.62 0.81 0.932 Proportion Before Control 0.06 0.78 0.058 Info 0.25 0.79 0.163 During Control 0.05 0.64 0.042 Info 0.23 0.64 0.165
  • 17. Post-trial survey Change made % Main methods Installed insulation 7 Ceiling (batts) Water cylinder and pipes New heating appliances 19 Heat pumps New lighting methods 11 Low energy bulbs New appliances 33 TVs Dehumidifiers Use of heating 44 Closing doors Not heating unused areas Turning off towel rails Substituting (electric blankets) Reducing time heaters on Use of lighting 41 Turning off unused lights Use of hot water 34 Washing clothes in cold water Shorter showers Reduced hot water temperature Use of other appliances 45 Reduced use of clothes driers Turned off appliances at wall (tv) Changed time of use 66 Dishwasher, heaters, Washing machines, showers
  • 18. Attitudes to the TOU pricing trial % endorsing each response Strongly Agree Neither Disagree Strongly to the question agree agree or disagree disagree The differences in prices 25 49 12 12 2 was an incentive to change the time of use The difference in prices was 7 30 12 41 6 too small to make the effort Easy to change to take 14 50 15 17 3 advantage of prices Too much trouble to change 1 17 11 60 9
  • 19. Summary  Post-trial sentiments very positive — saving dollars?  Lot of change during trial period  Across the whole of the study TOU pricing has no effect on either of  a) total electricity use by households in the study area; or  b) proportion of electricity used at off-peak times  Factors that influence both variables are:  Time, plan, number of people in the household, personal values regarding conservation, hours at home, (possibly) income