Sustainable Design and Development


Paul Appleby provides strategic advice to design and masterplanning teams on the integrated sustainable design of buildings, based on the premises set out in his 2010 book covering:

• Sustainability and low carbon design strategy for developments and buildings

• Passive design measures for masterplans and buildings

• Low carbon technologies and renewables

• Land use, density, massing and microclimate

• Social and economic requirements for sustainable communities

• Policy, legislation and planning - history and requirements

• Sustainability and environmental impact assessment methodologies

• Sustainable construction and demolition

• Integrated sustainable transport planning

• Computer simulation of building environments

• Thermal comfort

• Air quality hygiene and ventilation

• Waste management and recycling

• Materials and pollution

• Water conservation

• Landscaping, ecology and flood risk

• Light and lighting

• Noise and vibration

• Security and future proofing

Paul Appleby has been involved in the sustainable design of buildings for much of his career including recent high profile projects such as the award-winning Great Glen House, the Strata tower and the proposed masterplan for the iconic and challenging Battersea Power Station site (see postings below).

E mail paul at paul.appleby7@btinternet.com if you want to get in touch














Monday, 2 December 2013

Smart meters and energy efficient behaviour

If there is one thing that is certain about the current Coalition Government in the England it is that there is nothing certain about its energy policy. That having been said it has invested significant time and effort into developing a programme for smart meters to be installed in all households from the end of 2015.

As part of my role in a UK Green Building Council Task Group developing incentives to encourage people to take up the Green Deal or other energy efficiency strategies I produced a report on how smart users might encourage energy efficient behaviour which is reproduced below:


UKGBC Green Deal Incentives EEFiT Sub-Task Group


 

Briefing Note:


Smart meters as part of an energy efficient behaviour incentive scheme


Paul Appleby


 

Rev 2: December2013

 

Introduction


 

This note has been produced as a result of discussions held by a working group considering one of a number of alternative schemes to incentivise energy efficient retrofit. The EEFiT (Energy Efficiency Feed-in Tariff) sub-task group was investigating potential financial rewards based on either deemed or measured energy savings.

The aim of this offshoot has been to investigate the potential for linking smart meters to an incentive scheme that rewards reduction in energy consumption due to the actions taken by the householder: whether through installation of energy saving measures or energy saving behaviours.

A smart meter system installed in a home as part of a supplier’s roll out obligation comprises an electricity meter, a communications hub, a gas meter and an in-home display (IHD). It is expected that over time a market for other devices that connect to the system to access consumption and pricing information will develop. These devices have a generic name “CAD” (consumer access device) and could come in a variety of forms.

CADs may be integrated into a number of devices, for example as part of a home network that can communicate with thermostats, fridges etc. This could allow communication through broadband so that third parties can access data.

The foundation stage of smart meter roll-out is based around Smart Metering Equipment Technical Specification #1 (SMETS1) which includes a CAD interface, but not the communications standard for the interface. However the next generation (SMETS2) mandates the ZigBee communication standard and will be rolled out in Britain from the end of 2015.

It is likely that the large majority of SMETS1 installations will use an earlier version of the ZigBee standard than that planned for SMETS2. It is also likely that IHDs and other CADs will have some degree of interoperability.

Two out of the 6 big energy suppliers are committed to early roll out of smart meters. British Gas and EON are the most advanced. It is thought that over 1 million will be installed before the beginning of mass roll out of SMETS2 meters. However it is understood that the approximately 500,000 meters that British Gas has installed under Phase 2 of its programme are not SMETS1 compatible, whilst its Phase 3 meters are SMETS1 capable using a remote firmware update.

A number of contracts have been let to handle the development and operation of the communications infrastructure for connecting smart meters to the energy suppliers and handling the data. This includes a Data Communications Company (DCC), Data Services Provider (DSP), Communications Service Providers (CSP) and Smart Energy Code Administrator (SECA).

The DCC will provide data and communication services for the whole of GB, with responsibility for managing the link between meters and suppliers, as well as other authorised third parties. It will have a mandate to attempt to connect to all smart meters. Time has been allowed in the roll-out programme to allow for this and avoid the risk of stranded assets. However data from SMETS1 meters not enrolled into DCC will be managed by energy suppliers. The DSP will develop and operate the system controlling the movement of messages to and from smart meters, the CSPs will provide wide area communications to and from the smart meters and the SECA will maintain and update the industry code governing the use of smart meters across the energy industry.

Subject to consumer consent, data will be available over the wide area network (WAN) including 13 months of half hourly data.

Algorithms for analysing data from smart meters would be run on central servers since SMETS compliant meters would not have the computational means to implement them locally. The data from all versions of SMETS compliant meters will be the same and hence can be run by anyone who can get access to the data.

 

Discussion


 

It is interesting to note that Guy Newey of the UK Policy Exchange think tank in his report Smarter, Greener, Cheaper, dated January 2013, supports the introduction of an EEFIT but expresses some doubt on its relationship to ‘behaviour change programmes’:

Measures to subsidise changes in energy behaviour in the domestic sector through ECO should not preclude introducing an energy efficiency feed-in tariff (EEFIT), to offer fixed payments for verifiable reductions in electricity demand (as the Government is consulting on). Such an instrument should allow electricity demand reduction programmes to compete with new low carbon generation, potentially bringing down the overall cost of meeting the UK's carbon targets and energy bills. However, it is unlikely such a measure will support behaviour change programmes in homes.

The following is extracted from a Box towards the end of the report setting out the ‘Practicalities of proving cuts in demand have taken place’:

One of the complexities of a market that rewards demand reduction is proving that such reductions would not have happened anyway, i.e. that the cuts in energy use are additional. A reduction in energy use could be the result of several factors, unrelated to any intervention. This could include warmer weather reducing the demand for heating. Such a problem is not impossible to overcome and methodologies have been successfuly used in the United States.

(Weather compensated controls have been used in commercial buildings for many years of course, but have had limited success when applied to residential applications, possibly due to the lack of experience amongst installers and householders)

 There are two broad options for making comparisons:

1. Compare energy use for individual households following the intervention to energy use (before) the intervention. This requires suppliers (or whoever runs the programme) to establish a baseline. The data would have to be normalised depending on weather.

2. Compare the energy use of those households who get the intervention to a control group who do not. This is the approach used by Opower in the United States. Households with similar charactersitics are identified and those who do not have the intervention are used to provide a benchmark (this allows for factors such as different weather in different years to be less important). Any energy savings from those within the group who have the intervention are then scored, and would (be) paid a subsidy.

Such approaches are not perfect and may not account for changes such as different levels of occupancy. Robust methodologies need to be developed before behavioural programmes can be rolled-out nationally and allowed to fully compete with insulation measures for subsidy, which is why the first step for Government should allow new pilots to be subsidised through ECO. It is worth stressing that current support for technical measures relies on assumed or 'nominal' savings rather than actual savings. A comparison approach based on real energy (and therefore carbon) savings helps tackle problems like the rebound effect.

Another problem is ensuring that the changes people make in behaviour are sustained. While there is a reasonable certainty that insulation will continue to work for several decades (although no guarantee it will lead to overall reductions in energy use), there is a concern that behavioural steps will 'wear off' and people will revert to old habits.

Currently, there is some evidence that changes in how people use energy are sustained over a period of more than two years. Improved data collection, aided by smart meters, should make it easier to monitor whether changes in behaviour have been sustained (although checking will add extra cost). The subsidy could be paid for each year the savings can be shown to continue compared to a baseline (or) benchmark.

In a recent study that pulled together the results from ‘publicly available large-scale independent evaluations of comparative energy use feedback programs in the United States Agnew et al of energy consultants DNV KEMA concluded that:

·         Energy savings of between 1 and 3% resulted from providing householders with comparison data with their neighbours’ energy use

·         Savings increased year-on-year and with the frequency of reports

·         Householders found comparison reports useful

·         Savings were generally smaller than confidence intervals.

The critical factor in any scheme that rewards behaviour is the determination of the baseline or benchmark referred to by Newey above. The approach by US-based Opower uses what it refers to as ‘Big Data Analytics’4.  It claims that data is analysed from some 35 million smart meters and in-home displays across the US to determine trends in energy consumption, determine benchmarks and assess the success of energy efficiency programmes. However it is understood that Opower’s platform is struggling with the volume of data incoming, and it may be towards the end of 2014 before it has been upgraded to handle this volume.

Without detailed information from individual households it is not easy to determine what factors are impacting energy use at any point in time.

Key factors that impact on energy use that are not dependent upon behaviour or energy efficiency measures being installed  include weather, number and type of occupants, number and type of appliances and change of use. Essentially there are two methods of differentiating between behaviour/measure dependent and other changes to energy profiles:

1.       Compare energy consumption against average for homes with similar accommodation, normalised for local climate.

2.       Compare with previous year’s energy profile, corrected for differences in weather and atypical changes in profile.

If, for example, a baby is born into a family home then energy and water consumption are likely to rise quite suddenly. Similarly if an occupant retires or starts working from home, hours of occupancy will increase with correspondingly greater energy and water use. These will result in steps in the energy profile which can be identified through trend analysis in a similar manner to water leak detection.

In the research for this note the author has spoken to a number of authorities who are involved with developing the software and technologies for the smart meter roll out in the UK, as well as civil servants and energy suppliers involved in the programme (see Annex). None of those consulted were involved in developing systems that would provide this trend analysis, although Onzo6 has developed IHDs that can discriminate between different types of appliance through using data that is collected at 1 second intervals.

Clearly DECC understands the potential power of smart meters to collect information and augment energy efficiency programmes. This is illustrated in the following extracts from DECC’s consultation document for its Smart Metering Implementation Programme Consumer engagement strategy dated April 2012:

There is some evidence from supplier trials that customers with smart meters are more likely to take up offers of energy efficiency products. There is also some evidence that providing detailed feedback and information alongside ‘retrofit’ energy efficiency programmes can significantly increase energy saving levels. With smart metering, it will also be possible to interpret consumption patterns and offer additional advice on how to reduce waste. Accurate feedback on savings could also be valuable in increasing credibility and providing reassurance on the achievement of projected savings under the Green Deal.

It also leaves the door open for using smart meters as part of an energy efficiency incentive scheme:

In the medium term we will also carry out further policy analysis to decide whether there is a positive case for adjusting specific policy levers in order to provide additional incentives for suppliers to help consumers save energy in ways enabled by smart metering.

Conclusions and Recommendations


 

It is the author’s view that there is scope for developing a scheme that can be used to monitor and analyse data from individual smart meters designed to distinguish energy saving behaviour from other factors that might change energy consumption. An alternative scheme that compares energy consumption against similar dwellings has already been piloted by Opower in the United States. In the UK DECC should consider a pilot, perhaps in concert with an energy provider such as British Gas, that is designed to compare these two schemes. This pilot should address the following issues/questions:

1.       Can a methodology be developed that accurately separates energy savings due to behaviour or installed measures from other factors?

2.       The extent to which the rebound effect can increase energy consumption

3.       Will year-on-year comparisons better promote long term behaviour change than using a fixed benchmark?

4.       Can a scheme be developed that is accessible by all, including those in fuel poverty?

5.       Does this scheme need to reward the installation of energy saving measures and if so how can the resultant energy savings be distinguished from other factors?

 


 

Annex: Notes of meetings and telephone conversations


 

1.       Telecon with Peter Morgan, Smart Meters and Fuel Poverty Team, DECC - 28/3/2013

Meters store 13 months of half hourly consumption that can be accessed via a consumer access device via HAN or the WAN.  . In addition, real time consumption and pricing data is available to the CAD over the HAN.

An authorised third party such as an aggregator or ESCO will be able to access the data via the WAN ( as a Data & Communications Company (DCC) service) subject to consumer consent.  In addition, any party can enter into an arrangement with a consumer (subject to consumer consent) to access data over the HAN. This avoids complication of rewriting billing software – hence a traditional trend analysis algorithm can be applied similar to that used to identify major water leaks.

 

2.       Telecon with Chris Shelley, Smart meter consultant – 28/3/2013

DECC are keen that smart meters be used to change behaviour.

Smart meter system in home comprises electricity meter with integral comms hub (CAD) and gas meter which talks to comms hub, and an in home display (IHD): all wireless.

The foundation stage of smart meter roll-out is based around Smart Metering Equipment Technical Specification #1 (SMETS1) which does includes and interface for a consumer access device (CAD). CADs may be integrated into the IHD and establish a wireless home network that can communicate with thermostats, fridges etc. This would allow communication through broadband so that third parties can access data.

3.       Meeting with Peter Morgan (PM) and Charlotte Middleton (CM), DECC Smart Meter and Fuel Poverty Team – 14/5/2013

The potential for using smart meter consumer access devices (CAD) as a hub for an energy efficiency incentive scheme was discussed. This could use the energy demand profile or signature for a home as a basis for comparing year-on-year changes in energy use based on behaviour. It was agreed that there is potential to develop an algorithm that adjusts the baseline profile for both step changes that might occur due to change of use and atypical weather conditions – using either outdoor sensors or Met Office data.

 

PM referred to an extensive programme of work being carried out by British Gas (BG), including a survey of 18,000 of its customers fitted with smart meters, who are providing regular feedback on behaviour-related factors. BG has access to ring-fenced Warm Front money and may be able to assist in assessing the feasibility of a measured incentive scheme.

 

PM also suggested that the Consumer Energy Display Interest Group (CEDIG - a part of BEAMA) might be able to help The key is being able to demonstrate that access by the vulnerable and fuel poor will be improved by this incentive. It is possible that for many the very fact of having a smart meter with an in-home display (IHD) will improve their energy saving behaviour – for example a major international review of smart meter programmes by VaasaETT in 2011 reported that across some 450,000 homes worldwide IHDs resulted in an average reduction in energy use of 8.7% compared with between 5 and 6% for detailed billing or information provided over the internet, although whether this will lessen as the novelty wears off is uncertain. The VaasaETT report concludes that where consumer engagement is maintained reductions tend to continue over time.

 

PM agreed to supply contacts at the Energy Services Trade Association (ESTA) 

The roll-out of SMETS2 meters has been delayed and will now occur between 2015 and 2020.

 

Based on DECC consumer research and feedback from energy suppliers already deploying smart meters. CM suggested that uptake of smart meters is likely to be very high. There is no Government policy at present that will require those that refuse a smart meter to be charged extra.* 

 

CM also referred to Acorn profiling, that uses census data and consumer profiles, but we didn’t elaborate on how this might be used.

 

*In their response to a question concerning this issue from the Energy & Climate Change Committee published in their 7th report of the 2013/14 session published in October 2013, Ofgem stated that:

 

Our Retail Market Review reforms forbid the levying of additional surcharges, such as a surcharge for opting out of smart meters. However, as the roll-out progresses, the underlying costs of serving traditional consumers may increase, due to reductions in economies of scale and scope as the number of smart meters increase. Suppliers may look for ways to recover these increased costs from consumers who have traditional meters. Smart meters will also lead to efficiencies for suppliers and they may, over time, choose to pass related savings on to consumers with smart meters only.

 

Note: according to its own publicity ‘Acorn is a powerful consumer classification that segments the UK population. By analysing demographic data, social factors, population and consumer behaviour, it provides precise information and an understanding of different types of people. Acorn provides valuable consumer insight helping you target, acquire and develop profitable customer relationships and improve service delivery.’ (http://acorn.caci.co.uk/)

 

4    Telecon with Simon Anderson, Chief Strategy Officer at Green Energy Options – 24/05/2013

 

SA is a member of the IHD group of CEDIG.

 

He suggested that consumers should be rewarded with lower tariff for using less energy than typical for type of property. Consumers should be bracketed within peer groups for comparison purposes.

 

Those working in this area include Opower in US*, Tom Hargreaves at UEA.

 

*Opower has developed a customer engagement platform which they call Big Data Analytics, which in the US has involved storing and processing data from tens of millions of smart meters at 15-minute intervals, as well as second-level data from in-home devices (http://opower.com/products/big-data-analytics)

 

5    Telecon with Alastair Manson, engage-consulting/Energy UK – 20/06/2013

 

AM is not aware of anyone having developed a method of filtering out non-behaviour based changes in energy consumption.

 

CAD has not yet been defined but IHD has been specified to operate with 10 second updates. This interval is independent of Broadband performance.

 

AM is working on Home Area Network standard for appliances, taking into account conformity with ZigBee home automation standards (http://www.zigbee.org/Standards/ZigBeeHomeAutomation/Overview.aspx) which is intended for use worldwide but is US based.

 

6    Telecon with Nick Hunn, Onzo – 26/6/2013

 

Onzo has developed an IHD using funding from SSE (Scottish & Southern Energy). He has been working on disaggregation of energy consumption data using resolutions of down to 1 per second, producing large amounts of data which are compressed at source. NH is also looking at being able to identify energy saving behaviours.

 

NH reported that some $85bn is being spent in the US on smart metering and energy education (TV advertising is 1/3 of this). Studies have indicated that this has resulted in 1-2% reduction in energy condumption, although the contribution of smart meters has not been determined.

 

He is worried that the CAD specification being developed in UK is so complex that it will not be compatible with anyone else in the world.

 

7    Telecon with Michael Harrison, Head of Benefits & Evaluation, Smart Meter Implementation Programme, DECC – 27/6/2013

 

MH referred to the report ‘Smarter, Greener, Cheaper’ by Guy Newey of Policy Exchange, which advocates sharing data on energy consumption between similar dwellings. He also mentioned the Opower big data analytics model (see above) and work being done by Cambridge Architectural Research and Loughborough University for DECC analysing the results of the 2012 Household Electricity Survey. (https://www.gov.uk/government/publications/early-findings-demand-side-management). Loughborough Uni are also involved with a study measuring the impact of smart meters on energy consumption.

 

DECC has also published the most recent analysis of the National Energy Efficiency Data (NEED) Framework (https://www.gov.uk/government/publications/national-energy-efficiency-data-framework-need-report-summary-of-analysis-2013-part-1)

 

Approximately 1 million smart meters have been installed in UK (mostly by British Gas – see below)

 

8    Meeting with Jacqueline Mitchell, Head of Energy Insight at Centrica/British Gas – 8/7/2013

 

BG has supplied around 500,000 smart meters to their customers and are planning to offer a free Energy Report based on smart meter data. This will provide both historical energy use and benchmarking against similar homes, using an algorithm to provide an estimated break down between different appliances (based on typical energy use). IHD uses a 30 min interval. BG’s smart meters are upgradeable to SMETS1, but JM is unsure whether they will upgrade to SMETS2. In later communications it was gleaned that BG’s Phase 2 meters cannot be upgraded to SMETS1 or 2, whilst the Phase 3 meters, which currently constitute 20% of its installed meters, will be upgraded by a remote firmware update.