The document describes a study that tested demand response interventions in the UK using a large randomized controlled trial approach. Over 4,000 households were recruited and randomly assigned to control and intervention groups. Initial results found that messages encouraging shifting electricity use away from peak hours had little impact, while the addition of a financial incentive reduced consumption by up to 5% in the targeted hours. The study is using high frequency electricity consumption data and modeling techniques to analyze flexibility at a local level, which could help target interventions and inform network investment decisions.
2. The menu
§ Flexibility:
– What’s the problem?
§ Flexibility:
– What do we (not) know?
§ The SAVE study design
– Finding out what we don’t know
§ Initial Results
– Recruitment
– ‘Peak demand’ reduction trial I
– Local area demand profiles
§ What we’ve learnt so far
2
3. Flexibility: The (UK) problem
3
1. Dirty power
2. Expensive power
3. System inefficiencies
4. Import overload
5. Export overload
3
UK Housing Energy Fact File
Graph 7a: HES average 24-hour electricity use profile for owner-occupied
homes, England 2010-11
Gas consumption
0
100
200
300
400
500
600
700
800
00:00 02:00 04:00 06:00 08:00 10:00 12:00 14:00 16:00 18:00 20:00 22:00
Heating
Water heating
Electric showers
Washing/drying
Cooking
Lighting
Cold appliances
ICT
Audiovisual
Other
Unknown
Watts
Peak load
Source: DECC Home Electricity Survey, 2011
Maximum
trough
Intermittent
supply…
4. What to do?
4
UK Housing Energy Fact File
Graph 7a: HES average 24-hour electricity use profile for owner-occupied
homes, England 2010-11
Gas consumption
0
100
200
300
400
500
600
700
800
00:00 02:00 04:00 06:00 08:00 10:00 12:00 14:00 16:00 18:00 20:00 22:00
Heating
Water heating
Electric showers
Washing/drying
Cooking
Lighting
Cold appliances
ICT
Audiovisual
Other
Unknown
Watts
Reducing/
shifting
peak load
Source: DECC Home Electricity Survey, 2011
Filling the
trough
Storage
Flexibility…
6. (How do we know) What we know?
6DOI: 10.1016/j.erss.2016.08.020
7. § There have been quite a lot of ‘demand
response’ trials
§ We reviewed over 30 major (published)
studies
How does the literature stack up?
7
“a representative random sample of
households with random allocation to
control and intervention groups of
sufficient size to robustly detect the
effect observed was achieved only by
the Irish Smart Meter trial.”
@tom_rushby
8. What do we know?
8
“a representative random sample of
households with random allocation to
control and intervention groups of
sufficient size to robustly detect the
effect observed was achieved only by
the Irish Smart Meter trial.”
@tom_rushby
Not a lot. Well, OK we do know a few
things but they are mostly
neither statistically robust nor
generalizable
9. The menu
§ Flexibility:
– What’s the problem?
§ Flexibility:
– What do we (not) know?
§ The SAVE study design
– Finding out what we don’t know
§ Initial Results
– Recruitment
– ‘Peak demand’ reduction trial I
– Local area demand profiles
§ What we’ve learnt so far
10
10. SAVE Objectives
§ Test ‘Demand Response’ interventions:
11
Households
1. Data informed
engagement
Other trials suggest
reductions of around 6%
2. Data informed
engagement + price
signals
Other trials suggest
reductions of around 6-
7%
3. LED lighting
trials
Lighting is responsible
for 19% of evening peak
demand
11. SAVE Design Criteria
12
• => Random sample
• => Large enough sample
Statistically robust:
•=> Representative sample
Generalisable:
•=> Randomly allocated trial & control groups
Controlled
Image source: pixabay.com
12. Large ‘enough’?
13
0
2
4
6
8
10
12
14
200 400 600 800 1000 1200 1400
Detectable % effect (p = 0.05)
Trial Group Size Required
Designed
effect size
Required trial group size
Source: UoS analysis of Irish CER Domestic Demand Response pre-trial consumption data
Mean kWh 16:00 – 20:00 (“Evening peak”)
p = 0.05, P = 0.8
Statistical Pow
er
Analysis
=> Each trial group > 1000
13. Recruitment process
•Hampshire, Isle of Wight, Southampton, Portsmouth
Select study area
•Stratify census areas by deprivation quintile
•Randomly select n census areas within deprivation
quintiles
•Randomly select 50 address per census area from
PAF
Select Addresses
•Letter sent by research agency
Contact
•Field visit: research agency staff
Survey & install kit
14
4,318 households
32,000 letters
14. SAVE: Study Design
Trial
Period 3
Trial
Period 2
Trial
Period 1
Trial
Groups
Survey
Representative
Random Sample
N > 4000
Group 1:
Control
Group 2:
(LEDs)
Group 3:
(Engagement)
Group 4:
(Engagement
+ £)
15
Updatesurveys&TimeUseDiaries
Updatesurveys&TimeUseDiaries
Updatesurveys&TimeUseDiaries
Random allocation
15. What was done first
§ Install Meter Clamp
– ‘30 minute’ Wh
§ 20 minute household survey
– Deferred to telephone/web
16
Clamp Database UoS
19. The menu
§ Flexibility:
– What’s the problem?
§ Flexibility:
– What do we (not) know?
§ The SAVE study design
– Finding out what we don’t know
§ Initial Results
– Recruitment
– ‘Peak demand’ reduction trial I
– Local area demand profiles
§ What we’ve learnt so far
20
20. Testing sample bias
21
§ Age § Occupancy
Error bars: 95% Confidence Intervals
Source: UoS analysis of SAVE vs Understanding Society Wave 4 sample for South East England
(weighted for non-response)
21. Testing sample bias
22
§ Income § Environmental
attitudes
Error bars: 95% Confidence Intervals
Source: UoS analysis of SAVE vs Understanding Society Wave 4 sample for South East England
(weighted for non-response)
22. Illustrative results: daily profiles
23
Household Response Person: Employment status
Error bars: 95% CI (assuming normality)
Sunday
Peak?
23. Illustrative results: daily profiles
24
Dwelling: Main heat source
Error bars: 95% CI (assuming normality)
N = 120
N = 18
N = 155
N = 2,581
24. The menu
§ Flexibility:
– What’s the problem?
§ Flexibility:
– What do we (not) know?
§ The SAVE study design
– Finding out what we don’t know
§ Initial Results
– Recruitment
– ‘Peak demand’ reduction trial I
– Local area demand profiles
§ What we’ve learnt so far
25
25. Trial 1 4-8: Preliminary results
26
• Weekly coms
◦ Jan – Feb 2017
• 16:00 – 20:00
period
◦ Control Group
• Nothing
◦ Group 2
• Online &
postal
◦ Group 3
• Online only
◦ Group 4
• Postal only
SRDC 4 Evidence Report SSET206 SAVE
Solent Achieving Value from Efficiency
Figure 16: Interior page of initial engagement booklet
Over the next nine weeks, this booklet was followed up with one general knowledge postcard and five
postcards with specific asks, such as:
Waiting until after 8pm to do the washing or running it only with full loads
Waiting until after 8pm to charge mobiles and tablets
Waiting until after 8pm to use the tumble dryer
Waiting until after 8pm to run the dishwasher or using its timer/delay function
Waiting until after 8pm to watch television or turn the television off in rooms that are not being
used
SRDC 4 Evidence Report SSET206 SAVE
Solent Achieving Value from Efficiency
Figure 17 Sample Postcard (Front and Back)
All three treatment groups received some sort of consumer engagement messaging:
Group 2 received emails and web portal notifications
Group 3 (data informed engagement and price signals) received emails, web portal
Basically nothing
much happened
26. Trial 1 4-8: Preliminary results
28
SRDC 4 Evidence Report SSET206 SAVE
Solent Achieving Value from Efficiency
Page 44
The price levels in TP1 were determined based upon analysis put together in the SAVE business case
(Appendix N of full submission) and ensuring any level was deemed market competitive (this is
important to consider for aggregator models of domestic DSR). Given the ‘event day’ structure of the
trials present clear similarities to National Grid’s triads; commercial analysis was performed between
average household demand and £/kW payment levels for triads, the outcome of which suggested a
£10 incentive would require at least a 7% load-reduction from each household to be cost-competitive.
Accounting behavioural economics in this equation it was determined that consumer responsiveness
would benefit from a more relatable, less precise figure of load-reduction and hence this was rounded
to 10% for £10.
Below is an example of the email message group 2 received two days before the event day. Group 3
received a similar email but with a note about the incentive.
Figure 18: Event day messaging
5.2 Trial Outcomes
5.2.1 LED Trial
As described earlier, mailers directed the LED trial participants to http://saveled.co.uk, which was set
up by RS Components. This website allowed participants to purchase discounted LEDs from a
• Specific Day
◦ 15th March 2017
• 16:00 – 20:00
period
◦ Control Group
• Nothing
◦ Group 2
• Messages
◦ Group 3
• Messages +
• £ Incentive
A few interesting
things happened
• Weekly coms
◦ Jan – Feb 2017
• 16:00 – 20:00
period
◦ Control Group
• Nothing
◦ Group 2
• Online &
postal
◦ Group 3
• Online only
◦ Group 4
• Postal only
Basically nothing
much happened
Source: pixabay.com
27. Trial 1 4-8 Event: Preliminary resultsFigure 5: Temporal profiles of consumption around the event day (with 95% CI)
The set of charts below in Figure 6 show the overall mean for the 16:00 - 20:00 periods of each day
compared to the 4 hours before/after and as above, the 95% confidence intervals give an indication
of the statistical significance of any numerical difference.
Ben Anderson 5/7/2017 14:58
Deleted: 9
Ben Anderson 5/7/2017 14:58
Deleted: Figure 10 29
Day before
Day of
Day after
31. Trial 1 4-8 Event: Results summary
Pre 4-8
pm
• Group 3 (£ incentive): +5% (95% CI : -3% to +15%)
• Especially where opened pre-event email (extra +2%)
4-8 pm
• Group 2: -3% (-11% to +5%)
• Group 3 (£ incentive): -1% (-9% to +7%)
• Especially where opened pre-event email (extra -2%)
• Possibly correlates with ’going/staying’ out of home
After 8
pm
• Group 2: +4% (-4% to +12%)
• Group 3: +6% (-2% to +15%)
33
32. The menu
§ Flexibility:
– What’s the problem?
§ Flexibility:
– What do we (not) know?
§ The SAVE study design
– Finding out what we don’t know
§ Initial Results
– Recruitment
– ‘Peak demand’ reduction trial I
– Local area demand profiles
§ What we’ve learnt so far
34
33. Modeling ‘local’ flexibility
§ What we know (now):
– Sample kWh profiles
– Effects of interventions
§ What we want to know:
– Where is the demand?
– Who might shift & where are they?
35
1. Targeted interventions
2. Network investment decisions £££
36. Example results: Baseline
39
To illustrate the output from the small area estimation, two highly
contrasting OAs are selected as the ‘target’ areas:
the OA with highest % of single person households: E00167003
the OA with the lowest % of single person households: E00115898
The OAs have been selected in this way to provide test cases that tease out
any limitations in the modelling technique. The household counts for these
OAs are shown in Table 20 and the resulting weighted household counts are
expected to match these.
Table 20 Census counts and % single-person households for selected OAs
OA Code Total household
count
Number of single-
person households
% single-person
households
E00115898 85 0 0
E00167003 200 182 91
The OA with the lowest percentage of single-person households (0
households, 0%) has 85 households in total, whilst the OA with the highest
percentage (182 households, 91%) has rather more at 200.
As each of the four illustrative models described in Section 5.1 above will
draw upon the consumption data from a different pool of SAVE sample
households, the weighting file generated by the IPF procedure for each
separate model is applied to each of the two OAs in turn. The following
sections describe briefly the results gained from each model. The results for
each model include tables to illustrate that each of the different treatment
groups produce different ‘pools’ of SAVE households, and that the weights
resulting from the IPF process change according to their different
characteristics.
5.6.1 Baseline model (all households)
Having established that two quite different OAs have been selected, kWh
profile data for the first (non-holiday) Sunday in January 2017 (8/1/2017) is
attached as a ‘baseline’ test. Half-hourly (sum) kWh consumption data is
merged to the households that were pushed through the IPF process.19
First, the weighted counts for each household size type (single, two person
etc) are checked. Table 21 contains the number of households in the SAVE
sample ‘pool’ (N unweighted column) for each household size in both test
OAs, along with the mean, minimum and maximum weights that the IPF
Source: http://datashine.org.uk
SAVE-SDRC-2.2-Updated-Customer-Model-v2.3_final.docx PROJECT CONFIDENTIAL
Figure 24 Simulated OA consumption profiles by household size (colours indicate number of
people in household), baseline data, all groups
The analysis is repeated for the mean kWh for households by size (Figure
Sunday 8th January 2017
??
37. The menu
§ Flexibility:
– What’s the problem?
§ Flexibility:
– What do we (not) know?
§ The SAVE study design
– Finding out what we don’t know
§ Initial Results
– Recruitment
– ‘Peak demand’ reduction trial I
– Local area demand profiles
§ What we’ve learnt so far
41
38. What have we learnt (so far)?
Do:
Mind the
gaps
Record
provenance
Practice on
samples
Use
commodity
hardware
Don’t:
Suppress
variation
Impute or
delete
Use
commodity
hardware
42
Patchy GSM
#Iridis4
People unplug
stuff