Drivers behind Residential Electricity Demand Fluctuations Due to COVID-19 Restrictions
Abstract
:1. Introduction
2. Background and Hypotheses
2.1. Australia’s COVID-19 Timeline
2.2. Understanding Load Profiles during Lockdown
2.3. Energy Monitoring
2.4. Hypotheses
- (1)
- Energy use among Queensland households will increase during lockdown compared to pre-lockdown, as per residential demand trends elsewhere [4].
- (2)
- Self-reported engagement with energy will increase during lockdown, as changes to routines and circumstances transition users into another Discovery phase (based on Li et al. [24]).
3. Methods
3.1. Smart Inverter Data
3.2. Per-Circuit Energy Data
3.3. Self-Reported Data and Analysis
3.4. Data Quality and Analysis
4. Results
4.1. Smart Inverter Data
4.2. Comparison to 2019
4.3. Per-Circuit Monitoring
4.4. Consumption Changes per Household
4.5. Self-Reported Changes in Energy Use
4.6. Agreement with Quantitative Results
4.7. Energy Use Feedback
5. Discussion
5.1. Engagement with Energy Use Feedback
5.2. Implications
5.3. Limitations
Author Contributions
Funding
Conflicts of Interest
References
- Liasi, S.G.; Shahbazian, A.; Bina, M.T. COVID-19 Pandemic; Challenges and Opportunities in Power Systems. IEEE Smart Grid 2020, in press. [Google Scholar]
- Graff, M.; Carley, S. COVID-19 assistance needs to target energy insecurity. Nat. Energy 2020, 5, 352–354. [Google Scholar] [CrossRef]
- Le Quéré, C.; Jackson, R.B.; Jones, M.W.; Smith, A.J.P.; Abernethy, S.; Andrew, R.M.; De-Gol, A.J.; Willis, D.R.; Shan, Y.; Canadell, J.G.; et al. Temporary reduction in daily global CO2 emissions during the COVID-19 forced confinement. Nat. Clim. Chang. 2020, 1–8. [Google Scholar] [CrossRef]
- Energy Networks Australia Commercial down v Residential up: COVID-19′s Electricity Impact. Available online: https://www.energynetworks.com.au/news/energy-insider/2020-energy-insider/commercial-down-v-residential-up-covid-19s-electricity-impact/ (accessed on 19 June 2020).
- DelosDelta The Smart Meter Revolution: How Australia Fell Behind, and How We Can Get Back on Track. Available online: https://delosdelta.com/wp-content/uploads/2018/10/The-Smart-Meter-Revolution-Delos-Delta-Report-FINAL-Oct-2018.pdf (accessed on 5 June 2019).
- Strengers, Y. Smart Energy Technologies in Everyday Life: Smart Utopia? Palgrave Macmillan: London, UK, 2013. [Google Scholar]
- Russell-Bennett, R.; Mulcahy, R.; McAndrew, R.; Letheren, K.; Swinton, T.; Ossington, R.; Horrocks, N. Taking advantage of electricity pricing signals in the digital age: Householders have their say. A summary report. July 2017, pp. 1–98. Available online: https://energyconsumersaustralia.worldsecuresystems.com/grants/821/Segmentation-model-for-engaging-consumers-digitally_final-report.pdf. (accessed on 2 October 2020).
- Australian Energy Market Operator COVID-19 Demand Impact in Australia. Available online: https://aemo.com.au/en/news/demand-impact-australia-covid19 (accessed on 11 July 2020).
- Anderson, B.; Torriti, J. Explaining shifts in UK electricity demand using time use data from 1974 to 2014. Energy Policy 2018, 123, 544–557. [Google Scholar] [CrossRef]
- Queensland Government COVID-19 Household Utility Relief. Available online: https://www.qld.gov.au/community/cost-of-living-support/concessions/energy-concessions/covid-19-household-utility-relief (accessed on 29 June 2020).
- Energy Matters Queensland Receives Support through Stimulus Package and Utility Bill Relief. Available online: https://www.energymatters.com.au/renewable-news/queensland-receives-support-through-stimulus-package-and-utility-bill-relief/ (accessed on 22 October 2020).
- Liu, Y.; Nair, N.K.; Renton, A.; Wilson, S. Impact of the Kaikōura earthquake on the electrical power system infrastructure. Bull. N. Z. Soc. Earthq. Eng. 2017, 44, 425–430. [Google Scholar] [CrossRef]
- Aloul, F.; Al-Ali, A.R.; Al-Dalky, R.; Al-Mardini, M.; El-Hajj, W. Smart Grid Security: Threats, Vulnerabilities and Solutions. Int. J. Smart Grid Clean Energy 2013. [Google Scholar] [CrossRef] [Green Version]
- Nye, M.; Burgess, J. Promoting Durable Change in Household Waste and Energy Use Behaviour; Report prepared for the Department for the Environment; Food and Rural Affairs (DEFRA): UK, 2008; Available online: https://ueaeprints.uea.ac.uk/id/eprint/25463/ (accessed on 20 October 2020).
- Carrie Armel, K.; Gupta, A.; Shrimali, G.; Albert, A. Is disaggregation the holy grail of energy efficiency? The case of electricity. Energy Policy 2013, 52, 213–234. [Google Scholar] [CrossRef] [Green Version]
- Fischer, C. Feedback on household electricity consumption: A tool for saving energy? Energy Effic. 2008, 1, 79–104. [Google Scholar] [CrossRef]
- Froehlich, J.; Findlater, L.; Landay, J. The design of eco-feedback technology. In Proceedings of the 28th International Conference on Human Factors in Computing Systems—CHI’10, Atlanta, GA, USA, 10–15 April 2010; ACM: New York, NY, USA, 2010; p. 1999. [Google Scholar]
- Darby, S. Smart metering: What potential for householder engagement? Build. Res. Inf. 2010, 38, 442–457. [Google Scholar] [CrossRef]
- Buchanan, K.; Russo, R.; Anderson, B. The question of energy reduction: The problem(s) with feedback. Energy Policy 2015, 77, 89–96. [Google Scholar] [CrossRef] [Green Version]
- Australian Energy Regulator My Energy Bill. Available online: https://www.aer.gov.au/consumers/my-energy-bill (accessed on 18 June 2020).
- Hargreaves, T.; Nye, M.; Burgess, J. Keeping energy visible? Exploring how householders interact with feedback from smart energy monitors in the longer term. Energy Policy 2013, 52, 126–134. [Google Scholar] [CrossRef]
- Schwartz, T.; Denef, S.; Stevens, G.; Ramirez, L.; Wulf, V. Cultivating energy literacy-results from a longitudinal living lab study of a home energy management system. In Proceedings of the Conference on Human Factors in Computing Systems, Paris, France, 27 April–2 May 2013. [Google Scholar]
- Snow, S.; Viller, S.; Glencross, M.; Horrocks, N. Where Are They Now? Revisiting Energy Use Feedback a Decade after Deployment; Association for Computing Machinery: New York, NY, USA, 2019. [Google Scholar]
- Li, I.; Dey, A.K.; Forlizzi, J. Understanding my data, myself. In Proceedings of the 13th International Conference on Ubiquitous Computing—UbiComp’11, Beijing, China, 17–21 September 2011; p. 405. [Google Scholar]
- Phisaver Phisaver Energy Monitoring. Available online: www.phisaver.com (accessed on 19 June 2020).
- Queensland Health Movement and Gathering Direction. Available online: https://www.health.qld.gov.au/system-governance/legislation/cho-public-health-directions-under-expanded-public-health-act-powers/movement-gathering-direction (accessed on 22 June 2020).
- Darby, S. The Effectiveness of Feedback on Energy Consumption: A Review of the Literature on Metering, Billing and Direct Displays; Environmental Change Institute, University of Oxford: Oxford, UK, 2006; Volume 486, p. 26. [Google Scholar]
- Swanston, M. Two million plus solar roofs: What’s in it for the consumers? Behind Beyond Meter 2020, 381–406. [Google Scholar] [CrossRef]
- Lundberg, D.C.; Tang, J.A.; Attari, S.Z. Easy but not effective: Why “turning off the lights” remains a salient energy conserving behaviour in the United States. Energy Res. Soc. Sci. 2019, 58. [Google Scholar] [CrossRef]
- Braun, V.; Clarke, V. Using thematic analysis in psychology. Qual. Res. Psychol. 2006, 3, 77–101. [Google Scholar] [CrossRef] [Green Version]
- Bureau of Meterology Climate Statistics for Australian Locations: Summary Statistics. Available online: http://www.bom.gov.au/climate/averages (accessed on 18 June 2020).
- Di Napoli, C.; Pappenberger, F.; Cloke, H.L. Assessing heat-related health risk in Europe via the Universal Thermal Climate Index (UTCI). Int. J. Biometeorol. 2018, 62, 1155–1165. [Google Scholar] [CrossRef] [Green Version]
- Kellogg, R.; Wolff, H. Daylight time and energy: Evidence from an Australian experiment. J. Environ. Econ. Manag. 2008, 56, 207–220. [Google Scholar] [CrossRef]
- Kipping, A.; Trømborg, E. Modeling hourly consumption of electricity and district heat in non-residential buildings. Energy 2017, 123, 473–486. [Google Scholar] [CrossRef]
- Melzi, F.N.; Zayani, M.H.; Hamida, A.B.; Same, A.; Oukhellou, L. Identifying Daily Electric Consumption Patterns from Smart Meter Data by Means of Clustering Algorithms. In Proceedings of the IEEE 14th International Conference on Machine Learning and Applications (ICMLA), Orlando, FL, USA, 14–16 December 2006; IEEE: Miami, FL, USA, 2016; pp. 1136–1141. [Google Scholar]
- Daniel, L.; Baker, E.; Williamson, T. Cold housing in mild-climate countries: A study of indoor environmental quality and comfort preferences in homes, Adelaide, Australia. Build. Environ. 2019, 151, 207–218. [Google Scholar] [CrossRef]
- Hayn, M.; Bertsch, V.; Fichtner, W. Electricity load profiles in Europe: The importance of household segmentation. Energy Res. Soc. Sci. 2014, 3, 30–45. [Google Scholar] [CrossRef]
- Li, I.; Dey, A.K.; Forlizzi, J. Understanding my data, myself: Supporting self-reflection with ubicomp technologies. In Proceedings of the UbiComp’11—Proceedings of the 2011 ACM Conference on Ubiquitous Computing, Beijing, China, 17–21 September 2011. [Google Scholar]
- Charpentier, C.J.; Bromberg-Martin, E.S.; Sharot, T. Valuation of knowledge and ignorance in mesolimbic reward circuitry. Proc. Natl. Acad. Sci. USA 2018, 115, 7255–7264. [Google Scholar] [CrossRef] [PubMed] [Green Version]
- Taylor, J.; Daveys, M. Coronavirus Australia: Melbourne in six-week lockdown after Victoria records 191 new cases. The Guardian, 6 July 2020; 2. [Google Scholar]
- Cretikos, M.; Eastwood, K.; Dalton, C.; Merritt, T.; Tuyl, F.; Winn, L.; Durrheim, D. Household disaster preparedness and information sources: Rapid cluster survey after a storm in New South Wales, Australia. BMC Public Health 2008, 8, 1–9. [Google Scholar] [CrossRef] [PubMed] [Green Version]
- Bruinen de Bruin, Y.; Lequarre, A.S.; McCourt, J.; Clevestig, P.; Pigazzani, F.; Zare Jeddi, M.; Colosio, C.; Goulart, M. Initial impacts of global risk mitigation measures taken during the combatting of the COVID-19 pandemic. Saf. Sci. 2020, 128, 104773. [Google Scholar] [CrossRef]
Date | Description |
---|---|
16 March | Some Queensland universities suspend all classroom teaching, instigating a move online 1 |
20 March | Australian borders closed to all non-residents 2 |
22 March | Level 2 lockdown: Social distancing rules imposed, non-essential services cut, pubs, clubs, bars, gyms, entertainment venues shut, restaurants, cafes etc., restricted to take-away service only 3 |
30 March | Schools begin going student-free, aside from children of essential workers 4 |
2 April | Level 3 lockdown: “A person must not leave their principal place of residence except for essential needs including work, food, medical and exercise, outdoor gatherings only up to 2 persons or with members of household” 5 |
3 April | Beginning of Queensland school holidays 6 |
11 April | Queensland state borders fully closed to all except those with a permit 7 |
2 May | Relaxation of some Level 3 lockdown measures: national parks and non-essential shops and services reopen, small gatherings outside allowed 8 |
11 May | Kindergarten, Prep, Year 1, Year 11, Year 12 resume school 9 |
25 May | Other year levels return to school 10 |
1 June | Restaurants, pubs and other venues allowed to re-open with restrictions on capacity and distancing 11 |
10 July | Easing of restrictions on gatherings, sporting events 12 |
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- 8
- 9
- 10
- 11
- 12
ID | House Type | Family Composition | Ages | AC | PV | Pool | HW | Typical Bill |
---|---|---|---|---|---|---|---|---|
P1 | Detached weatherboard, 1 story | 2 adults, 2 children | 40, 36, 6, 1 | ✓ | ✓ | HP | $120 credit | |
P2 | Detached brick, 2 story | 2 adults, 2 children | 38, 36, 6, 6 | ✓ | ✓ | E | $250 | |
P3 | Detached, weatherboard, 1 story | 2 adults | 49, 46 | GS | $600–$700 | |||
P4 | Detached brick, 1 story | 1 adult, 4 children | 53, 7, 9, 11, 16 | ✓ | ✓ | S | $650–$700 | |
P5 | Detached weatherboard, 1 story | 2 adults, 2 children | 41, 37, 3, 1 | ✓ | ✓ | E | $200 | |
P6 | Detached brick, 1 story | 2 adults, 4 children | 44, 43, 5,7,12,14 | ✓ | E | $600 | ||
P7 | Detached brick, 1 story | 2 adults | 70s | ✓ | ✓ | S | $395 | |
P8 | Detached weatherboard, 1 story | 2 adults, 3 children | 40, 37, 13, 12, 9 | ✓ | GI | $400 | ||
P9 | Detached weatherboard, 1 story | 3 adults | 55, 54, 21 | ✓ | ✓ | GI | No data | |
P10 | Town house, brick 2 story | 2 adults | 25, 27 | ✓ | GI | $200 | ||
P11 | Detached brick, 1 story | 2 adults, 2 teenagers | 52, 50, 17, 14 | ✓ | ✓ | S | $200 | |
P12 | Detached weatherboard, 1 story | 2 adults | 60s | ✓ | GI | $390 | ||
P13 | Detached weatherboard, 2 story | 2 adults, 2 teenagers | 56, 49, 17, 15 | ✓ | ✓ | ✓ | GI | $500 |
P14 | Detached brick, 2 story | 2 adults, 3 children | 47, 39, 4, 4, 4 | ✓ | ✓ | ✓ | GS | $270 |
P15 | Detached brick, 2 story | 2 adults, 2 children | 50, 46, 14, 10 | ✓ | ✓ | E | $300 | |
P16 | Apartment, brick, 1 story | 2 adults | 30, 30 | ✓ | E | $400 | ||
P17 | Detached weatherboard, 1 story | 2 adults, 4 children | 38, 38, 13, 11, 8, 6 | ✓ | ✓ | S | $800 | |
P18 | Detached brick, 1 story | 3 adults, 1 child | 55, 46, 19, 15 | ✓ | E | $600 | ||
P19 | Town house, brick, 3 story | 2 adults, 1 baby | 33, 30, 1 | ✓ | E | $350 |
a: Overall Weekdays | |||||
Location | Home Count | Mean Daily Consumption Pre-Lockdown (kWh) | Change in Energy Use (kWh) (95% CI) | Percent Change | p-Value |
Queensland (QLD) | 119 | 20.14 | −2.54 (−3.73–−1.34) | ↓ 12.6% | <0.01 |
New South Wales (NSW) * | 78 | 17.13 | 0.74 (−0.43–1.91) | ↑ 4.3% | 0.21 |
Victoria (VIC) | 134 | 14.67 | 2.80 (1.97–3.64) | ↑ 19.1% | <0.01 |
South Australia (SA) | 75 | 13.18 | 0.87 (−0.12–1.87) | ↑ 6.6% | 0.084 |
Western Australia (WA) | 53 | 22.22 | −1.66 (−3.51–0.19) | ↑ 7.5% | 0.077 |
Tasmania (TAS) | 32 | 17.48 | 3.46 (0.98–5.94) | ↑ 19.9% | <0.01 |
Total | 491 | ||||
b: 9 am to 5 pm Weekdays | |||||
Location | Home Count | Mean Daily Consumption Pre-Lockdown (kWh) | Change in Energy Use (kWh) (95% CI) | Percent Change | p-Value |
Queensland (QLD) | 119 | 7.27 | −1.01 (−1.52–−0.50) | ↓ 13.1% | <0.01 |
New South Wales (NSW) * | 78 | 6.05 | −0.04 (−0.59–0.51) | ↓ 0.7% | 0.88 |
Victoria (VIC) | 134 | 5.00 | 0.74 (0.43–1.05) | ↑ 14.8% | <0.01 |
South Australia (SA) | 75 | 4.21 | 0.00 (−0.35–0.36) | 0% | 0.98 |
Western Australia (WA) | 53 | 6.72 | −0.17 (−0.83–0.48) | ↓ 2.5% | 0.59 |
Tasmania (TAS) | 32 | 6.60 | 0.24 (−1.06–1.53) | ↑ 3.6% | 0.71 |
Total | 491 |
a: Overall Weekdays | |||||
Location | Home Count | Mean Daily Consumption 1 February to 19 March 2019 (kWh) | Change in Energy Use (kWh) (95% CI) | Percent Change | p-Value |
Queensland (QLD) | 26 | 23.26 | −5.09 (−7.03–−3.16) | ↓ 21.9% | <0.01 |
New South Wales (NSW) * | 19 | 17.38 | 0.82 (−5.90–7.54) | ↑ 4.7% | 0.80 |
Victoria (VIC) | 27 | 18.13 | −0.09 (−1.60–1.42) | ↓ 0.5% | 0.90 |
South Australia (SA) | 11 | 15.58 | −0.95 (−2.55–0.65) | ↓ 6.1% | 0.21 |
Western Australia (WA) | 12 | 20.87 | 0.15 (−4.88–5.18) | ↑ 0.7% | 0.95 |
Tasmania (TAS) | 4 | 12.85 | 1.80 (−3.28–6.87) | ↑ 14.0% | 0.34 |
Total | 99 | ||||
b: 9 am to 5 pm Weekdays | |||||
Location | Home Count | Mean Daily Consumption 1 February to 19 March 2019 (kWh) | Change in Energy Use (kWh) (95% CI) | Percent Change | p-Value |
Queensland (QLD) | 26 | 9.27 | −2.19 (−3.09–−1.29) | ↓ 23.6% | <0.01 |
New South Wales (NSW) * | 19 | 6.58 | 0.10 (−3.68–3.87) | ↑ 1.5% | 0.96 |
Victoria (VIC) | 27 | 7.38 | −1.01 (−1.75–−0.27) | ↓ 13.7% | <0.01 |
South Australia (SA) | 11 | 5.52 | −0.89 (−1.88–0.11) | ↓ 16.1% | 0.075 |
Western Australia (WA) | 12 | 5.93 | −0.03 (−1.02–0.96) | ↓ 0.5% | 0.94 |
Tasmania (TAS) | 4 | 4.81 | 0.09 (−0.65–0.83) | ↓ 1.9% | 0.72 |
Total | 99 |
1 February to 19 March 2019 | 21 March to 11 May 2019 | 1 February to 19 Mar 2020 | 21 March to 11 May 2020 | ||
---|---|---|---|---|---|
All weekdays | Brisbane (QLD) | 24.9 | 18.7 | 24.2 | 18.6 |
Sydney (NSW) | 21.1 | 15.3 | 19.4 | 13.4 | |
Melbourne (VIC) | 17.6 | 9.8 | 15.6 | 8.1 | |
Adelaide (SA) | 15.7 | 9.6 | 14.1 | 8.3 | |
Perth (WA) | 21.3 | 13.1 | 22.1 | 14.7 | |
Hobart (TAS) | 11.5 | 6 | 10.3 | 6.4 | |
Peak weekdays (9 am–5 pm) | Brisbane (QLD) | 30.3 | 24 | 28.7 | 24.6 |
Sydney (NSW) | 25.7 | 21.4 | 23.6 | 19.1 | |
Melbourne (VIC) | 24.5 | 16.5 | 21.8 | 14.2 | |
Adelaide (SA) | 20.9 | 14.8 | 19.6 | 13 | |
Perth (WA) | 26.6 | 17.8 | 26.6 | 19.1 | |
Hobart (TAS) | 16.2 | 11 | 15.6 | 11 |
Location | Pre vs. during Lockdown Period 2019 (Overall) | Pre vs. during Lockdown Period 2020 (Overall) | Pre vs. during Lockdown Period 2019 (9 am–5 pm) | Pre vs. during Lockdown Period 2020 (9 am–5 pm) |
---|---|---|---|---|
Queensland (QLD) | ↓ 21.9% | ↓ 12.6% | ↓ 23.6% | ↓ 13.1% |
New South Wales (NSW) * | ↑ 4.7% | ↑ 4.3% | ↑ 1.5% | ↓ 0.7% |
Victoria (VIC) | ↓ 0.5% | ↑ 19.1% | ↓ 13.7% | ↑ 14.8% |
South Australia (SA) | ↓ 6.1% | ↑ 6.6% | ↓ 16.1% | 0% |
Western Australia (WA) | ↑ 0.7% | ↑ 7.5% | ↓ 0.5% | ↓ 2.5% |
Tasmania (TAS) | ↑ 14.0% | ↑ 19.9% | ↓ 1.9% | ↑ 3.6% |
Total |
a: Overall Weekdays | |||||
Home Count | Mean Daily Energy Use Pre-Lockdown (kWh) | Changes in ENERGY use (kWh) (95% CI) | Percent Change | p-Value | |
Power points | 17 | 10.44 | 0.34 (−0.43–1.11) | ↑ 3.3% | 0.37 |
Cooking | 17 | 0.80 | 0.28 (0.17–0.39) | ↑ 35.0% | <0.01 |
Lighting | 17 | 2.11 | −0.12 (−0.59–0.35) | ↓ 5.7% | 0.59 |
All (excl. HW and AC) | 17 | 16.17 | −0.06 (−1.05–0.93) | ↓ 0.4% | 0.90 |
All (incl. HW and AC) | 17 | 23.00 | −3.00 (−5.60–−0.40) | ↓ 13.0% | 0.027 |
b: 9 am to 5 pm Weekdays | |||||
Home count | Mean daily consumption pre-lockdown (kWh) | Changes in energy use (kWh) (95% CI) | Percent change | p-value | |
Power points | 17 | 3.87 | 0.46 (0.03–0.89) | ↑ 11.9% | 0.037 |
Cooking | 17 | 0.56 | 0.21 (0.12–0.30) | ↑ 37.5% | <0.01 |
Lighting | 17 | 0.56 | 0.10 (−0.05–0.25) | ↑ 17.9% | 0.17 |
All (excl. HW and AC) | 17 | 6.40 | 0.43 (−0.36–1.21) | ↑ 6.7% | 0.27 |
All (incl. HW and AC) | 17 | 8.86 | −0.88 (−2.12–0.36) | ↓ 9.9% | 0.15 |
ID | PP % Change | PP p-Value | Cook % Change | Cook p-Value | Lights % Change | Lights p-Value | All % Change | All p-Value | Total Cons. (AC + HW incl) (%) | Total Cons. (AC + HW incl.) p-Value |
---|---|---|---|---|---|---|---|---|---|---|
P12 | 4.6% | 0.290 | −60.2% | 0.290 | −18.1% | <0.001 | 0.4% | 0.923 | −1.3% | 0.742 |
P23 * | −13.4% | <0.001 | 3.7% | 0.950 | −10.6% | 0.101 | −12.9% | 0.001 | −12.9% | 0.001 |
P26 | 4.1% | 0.362 | 33.0% | 0.018 | −26.7% | <0.001 | 3.5% | 0.469 | −10.1% | 0.086 |
P33 | −4.3% | 0.280 | 83.9% | 0.119 | 45.2% | <0.001 | 3.6% | 0.381 | −28.4% | <0.001 |
P37 | 9.5% | <0.001 | 16.3% | 0.380 | −42.0% | 0.001 | −0.9% | 0.589 | −12.0% | 0.006 |
P45 * | −8.4% | <0.001 | 59.7% | 0.022 | −3.6% | 0.682 | −2.6% | 0.372 | −16.3% | 0.001 |
P48 * | −3.5% | 0.190 | 124.3% | 0.027 | 14.0% | 0.172 | −15.6% | 0.009 | −15.0% | 0.012 |
P49 * | 84.0% | <0.001 | 91.5% | 0.028 | −1.9% | 0.850 | 71.1% | <0.001 | 49.7% | <0.001 |
P56 | 9.3% | 0.077 | 32.0% | 0.168 | −18.0% | 0.042 | 8.3% | 0.107 | −40.4% | 0.002 |
P57 * | 1.0% | 0.872 | 129.7% | 0.006 | 5.6% | 0.619 | 4.7% | 0.487 | −29.7% | 0.003 |
P61 * | 0.7% | 0.532 | 21.1% | 0.363 | 7.0% | 0.167 | 1.2% | 0.553 | −5.6% | 0.375 |
P67 * | 3.3% | 0.469 | 55.2% | 0.210 | 7.8% | 0.248 | −2.3% | 0.403 | −11.7% | 0.005 |
P68 | 1.8% | 0.582 | 3.0% | 0.844 | 16.9% | <0.001 | 5.0% | 0.097 | −20.7% | 0.005 |
P75 | −1.3% | 0.809 | 77.8% | 0.036 | 5.0% | 0.649 | 5.2% | 0.390 | 11.9% | 0.007 |
P85 | 21.5% | <0.001 | 11.0% | 0.348 | 2.6% | 0.626 | 7.1% | 0.029 | 9.1% | 0.026 |
P88 | 23.7% | <0.001 | 44.8% | 0.070 | −6.7% | 0.313 | 18.6% | <0.001 | 6.5% | 0.320 |
P92 | 4.3% | 0.504 | 14.4% | 0.600 | −55.6% | <0.001 | −5.6% | 0.345 | −9.7% | 0.081 |
Number increased | 12 | 4 | 16 | 6 | 8 | 2 | 11 | 3 | 4 | 3 |
Number decreased | 5 | 2 | 0 | 0 | 9 | 5 | 6 | 2 | 13 | 9 |
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Snow, S.; Bean, R.; Glencross, M.; Horrocks, N. Drivers behind Residential Electricity Demand Fluctuations Due to COVID-19 Restrictions. Energies 2020, 13, 5738. https://doi.org/10.3390/en13215738
Snow S, Bean R, Glencross M, Horrocks N. Drivers behind Residential Electricity Demand Fluctuations Due to COVID-19 Restrictions. Energies. 2020; 13(21):5738. https://doi.org/10.3390/en13215738
Chicago/Turabian StyleSnow, Stephen, Richard Bean, Mashhuda Glencross, and Neil Horrocks. 2020. "Drivers behind Residential Electricity Demand Fluctuations Due to COVID-19 Restrictions" Energies 13, no. 21: 5738. https://doi.org/10.3390/en13215738
APA StyleSnow, S., Bean, R., Glencross, M., & Horrocks, N. (2020). Drivers behind Residential Electricity Demand Fluctuations Due to COVID-19 Restrictions. Energies, 13(21), 5738. https://doi.org/10.3390/en13215738