1. Introduction
Europe’s buildings are responsible for 40% of its energy consumption and 36% of its greenhouse gas emissions [
1]. This means that upgrading its building stock is one of the most important solutions to some of the challenges the continent faces in addressing climate change. Renovating buildings has a very significant impact on a house’s energy consumption: for example, a 1 °C increase in room temperature generates a 6% increase in energy consumption [
2]. A specific indoor air temperature is often targeted, but different people find different temperatures comfortable [
3]. The reality is that with better insulation it becomes easier to maintain a desired room temperature.
Denmark’s building stock is complex, consisting of buildings of different ages and different sizes built with different materials and for different purposes. The majority, however, are residential dwellings, this is because we must all live somewhere, whether in a single-family dwelling or a multi-story building with apartments. When we then want to reduce the energy consumption of Denmark’s building stock, we do not find it easy to decide how to go about it and which buildings to target. In some countries like Denmark, basic data for each building are collected in a common national database. Denmark has a building registry database (BBR), which is described in detail in [
4]. It contains basic data about the buildings in relation to their size, age and heating source. However, as entering data in the database is voluntary on the part of the building’s owners, the data are not necessarily up to date. This is a critical problem, but it is the only detailed data we have on Denmark’s building stock. The BBR data cover the physical data which describe the building, and the data are often used to categorize archetypes of buildings, which are then used to evaluate the demand for energy. This reduces the complexity involved in modelling the buildings.
When, therefore, the BBR data are used to calculate a specific room temperature, such as 21 °C, it is based solely on the physical data of the buildings and the building statistics. No account is taken of the likelihood that the inhabitants of a building may heat it to below or above 21 °C, thus changing the building’s actual heating demand. Actual energy consumption data are now more readily available due to the installation of individual smart meters [
5]. All things being equal, these data may give a more precise result than the calculation based on the BBR data and the archetype categories. However, actual consumption then depends on who is living in the house, and its energy consumption will probably change when a new family moves in with different heating requirements. It also only covers buildings which have a smart meter.
In this study, we use the data from the BBR database together with sustainability indicators to evaluate the renovation potential in each detached dwelling in Rudersdal municipality, Denmark, which amounts to 10,228 buildings. We do not use actual energy consumption data, nor cluster the buildings into archetypes. We evaluate the energy renovation potential of each building using its BBR data. The aim is first and foremost to identify the buildings which we consider to have the highest renovation potential based on four sustainability indicators.
The energy-saving potential of a building depends on how the heat is supplied to it. Across Denmark, on average 65% of buildings are supplied by district heating (DH). The DH cover in Rudersdal municipality is lower than average, and one of the municipality’s goals is to expand it. We will address the supply parameter by applying different energy-supply scenarios.
Building regulations have become much stricter over the last thirty years, with the aim of making new buildings much more energy efficient. The new building stock is therefore much more energy efficient than the old building stock, which is achieved either by adding new buildings to the existing stock or replacing the latter entirely. The country’s building stock grew by 1% per year from 1970 to 2010. If we maintain the same rate of growth, we will still have 70–80% of the ‘old’ buildings and 20–30% new buildings in 2050 [
6]. Introducing regulations for old building stock is difficult, but this stock is nonetheless being addressed strongly in a new proposed regulation, whereby the least energy efficient houses will have to be upgraded. [
7].
The European Union (EU) drew up a target of a 20% improvement in energy efficiency by 2020, which was achieved across the EU [
8] with the help of low energy consumption in 2019/2020. The target for the residential sector was 26% [
9]. New EU legislation has established a legally binding target by which to reduce the EU’s final energy consumption by 11.7% by 2030 (relative to the 2020 reference scenario) [
10]. The present annual increase in energy savings of 0.8% should increase to 1.3% (2024–2025), then to 1.5% (2026–2027) and finally to 1.9% from 2028 onwards, amounting to an average of 1.49% of new annual savings for the period 2024–2030 [
9]. The new Energy Efficiency Directive is part of the ‘Clean Energy for all Europeans’ package, which went through significant amendments in 2018. An updated energy efficiency target was adopted of at least 32.5% in savings by 2030, based on 2007 projections. On 14 March 2023 the European Parliament also adopted a new version of the Energy Performance of Buildings Directive (EPBD) to address the problem [
7]. This new version includes ambitious energy efficiency requirements, which will lead to an upgrade of Europe’s buildings.
In a proposal to the European Parliament the worst-performing residential buildings will need to reach at least class F by 2030 and class E by 2033. According to an analysis by Jyske Bank, the new EPBD initiative will have consequences for 800,000 Danish families, who will need to spend a total of EUR 16 billion on energy-efficient upgrades to their homes. The initiative might lead to some houses being declared illegal by 2030 because homes with an energy label of G would have to be renovated to reach at least an energy label of F before 2030. Moreover, by 2033, these houses will have to be renovated to a minimum energy label of E. The initiative will be enforced on the building’s owner, who will not be able to sell the property without a valid energy label [
11], which should be less than ten years old [
12]. Moreover, it will become difficult to sell these properties before 2030, as buyers will not be interested in buying houses that do not meet these energy label requirements. It may not make sense to renovate older houses, especially in rural areas, and some homeowners cannot afford to do so. This raises the possibility that the initiative may end up trapping property owners in a situation in which they are able to neither renovate nor sell [
11]. However, the proposed use of energy labels has not been agreed upon. The agreement is that each member state will adopt its own national trajectory toward the reduction of average primary energy use of residential buildings by 16% by 2030 and 20–22% by 2035 [
13]. In this study we will still use the original idea behind the proposal to the European Parliament of using energy labels.
The energy efficiency gap [
1,
14,
15] is described as the technical optimum of carrying out energy efficiency projects, despite their absence [
14]. Ref. [
16] calculates the profitable space-heating savings potential as applying to about 80% of Danish residential building stock up to 2050. Although the barriers [
16] identified are not technical or economic but due to a lack of knowledge and interest, [
17] finds that barriers can be technical, economic or behavioural. Then there are perceived barriers, where people delay retrofitting until a more extensive renovation of the house is carried out [
15].
We use Rudersdal municipality as our example in this study. It is situated north of Copenhagen and has its own goal to reduce CO
2 emissions by 85% by 2030 compared with 1990 [
18]. Denmark’s goal is to reduce CO
2 emissions by 70% by 2030 compared with 1990 [
19]. Rudersdal municipality is mostly residential, with little industry or farming. Therefore, its biggest contributor to CO
2 emissions is the heating of buildings, which accounts for 36% of its CO
2 emissions. One of Rudersdal’s largest plans for reducing CO
2 emissions is to phase out oil and gas heaters by expanding DH [
18].
This study investigates how a municipality and its residents can prepare for the new possible energy efficiency initiative. According to BBR data extracted in July 2023, 57% of the buildings in Rudersdal municipality are detached dwellings, which are therefore the focus of the study. In addition, there are more data on detached dwellings compared with other types of buildings, and they are easier to analyse because they do not share walls or floors with neighbours [
20].
Our contribution consists in developing a specific indicator framework with the goal of evaluating the energy renovation potential of residential dwellings in Rudersdal municipality in Denmark using both environmental and economic criteria. The framework can easily be used in other countries. Our method requires access to specific data regarding each house in the municipality. This article therefore contributes to a better understanding and visualization of the renovation potential of the municipality’s building stock. It provides a background for the complex decision to design the coming energy renovation strategy in the municipality.
This paper is structured as follows:
Section 2 describes the methodology for selecting and developing the indicator framework.
Section 3 describes the overall methodology for developing the indicator framework and
Section 4 describes the specific methodology used for quantifying each of the indicators.
Section 5 presents the findings, and
Section 6 discusses the results. The paper concludes in
Section 7.
3. Methodology: General Background for All Indicators
We will now describe each of the four indicators in more detail and how they were developed. As well as describing each indicator, the overall scale and overall data processing of each will be explained, including how the data for each indicator were collected and how the scale works for each indicator.
3.1. Methodology: The Overall Scale
We have chosen to use a five-point scale for all of our indicators, with grade one representing the lowest renovation potential and grade five the highest. A five-point scale is sufficiently detailed to show differences and makes it possible to draw conclusions. The data found on the detached dwellings are expressed as an average for the whole of Denmark, and there is therefore no reason to choose a more detailed scale.
However, a sixth grade was needed when we saw the results of the scenarios, including that of switching the heating supplier. This was because grade one represented the lowest renovation potential, meaning that a renovation potential exists, but when we looked at the results there were no potential savings. This includes energy consumption for the same scenario, where the difference in consumption before and after the renovation would be zero. A grade representing no renovation potential, labelled grade zero, was therefore added for the three indicators that consist of scenarios as sub-indicators, giving them a six-point scale.
3.2. Methodology: Overall Data Processing
All of the data processing for the four indicators was undertaken in Excel (2019). The BBR data on detached dwellings were downloaded from KMD Cognito Access 2.1.0 on 18 July 2023 as CSV files and imported to Excel. Then, 686 protected and conservation-worthy buildings were removed. Additionally, duplicates consisting of six buildings that have been demolished, but not yet removed from BBR, were removed, resulting in a total of 10,228 detached dwellings used in this analysis.
3.3. Methodology: Grading Method for the Indicators Consisting of Scenarios
We used percentiles as the grading method when distributing the detached dwellings among the indicators consisting of scenarios. Percentiles are generally used to show a proportion or ranking by comparing one case with several others. The percentile is given as a number between zero and one, and represents a percentage of values found within specific values. An example of this would be if ten people had taken a test, one of the subjects answered 80% of the questions correctly, and the other nine answered more than 90% correctly. Though the first subject had scored 80% on the test, they are ranked in the bottom 10th percentile among the other participants. The grading scale is described further in [
20].
The percentile method assigned the bottom 20% of detached dwellings to grade five, the highest renovation potential. This fits neatly with the sustainability goal of helping the municipality and residents prepare for the new EPBD initiative. This is because the new possible labelling system puts the bottom 15% of energy efficient residences in label G, and buildings with both labels G and F need to be improved by 2033.
3.4. Methodology: Assigning Which Heating Supplier to Switch to
The scenario involving just switching the heating supplier and the scenario involving both switching the heating supplier and improving the building’s envelope, each include the switch to a different heating supplier. This was used to check the impact of Rudersdal’s Heating Plan on preparations for the EU initiative.
The heating plan consists of three phases. Buildings within phase one will be offered DH in 2023–2025, and those in phase two in 2026–2027. Phase three has not yet been decided, but the plan will be developed in 2028–2029 and will hopefully be able to supply DH between 2028–2035. The following was therefore decided regarding the switching of heating suppliers:
Detached dwellings within phases one and two switch to DH. Detached dwellings within phase three that are not included in the plan switch to HPs.
Detached dwellings that already have DH or heat pumps (HP)s keep this as their heating supply.
The result of doing this was that the detached dwellings had either DH or a HP after the change. The reason for not including phase three in DH was because this has not been planned as yet. This means that, to have buildings ready for the initiative’s mandatory date of 2030, the building’s owner should look for another alternative. As detached dwellings with DH or HPs are both seen as sustainable solutions, owners have no reason to change. Connecting as many detached dwellings as possible to DH is the plan for Rudersdal. HPs are in general new to the market, and all HPs should therefore be able to give five to ten years of service or more.
4. Methodology: Individual Indicator
4.1. Methodology—Indicator 1: Energy Consumption
The energy consumption indicator was developed from
Figure 2, which shows the consumption of a detached dwelling today, and
Figure 3, which shows the consumption after improving the building’s envelope, including increased comfort levels. Both figures use the unit kWh/m
2 p.a., depending on the year built. By using the year built and area extracted from BBR, consumption before and after improving the building’s envelope in kWh p.a. was found. To find the possible savings by improving the building’s envelope, the following formula was used:
where ∆EC represents possible savings of energy, EC
before represents the energy consumption before interventions and ECi
after represents energy consumption after the intervention, which in this case is improving the building’s envelope.
This was the explanation for the scenario for improving the building’s envelope. The scenario involving switching the heating supplier is zero for all detached dwellings. As a result the last scenario, involving both switching the heating supplier and improving the building’s envelope, can utilise exactly the same formula and offer the same results as in the scenario involving improving the building’s envelope.
4.2. Methodology: CO2 Emissions
The CO
2 emissions indicator was developed from
Table 1, which shows the CO
2 emissions for detached dwellings, depending on the different heating suppliers, using the unit kg CO
2/MWh. The first scenario, involving improving the building’s envelope, was developed using energy consumption before and after improving the building’s envelope, calculated in the energy consumption indicator, dividing that by 1000 to go from kWh to MWh, and then multiplying it with the kg CO
2/MWh values found in
Table 1, depending on the heating supplier registered in BBR.
The following two formulas are used to calculate the CO
2 emissions:
where E
before represents the CO
2 emissions before the intervention, EC represents the energy consumption before the intervention and F represents the fuels emission factor.
where E
after represents the CO
2 emissions after the intervention, EC
after represents the energy consumption after the invention and F represents the fuel emission factor.
To find the possible savings by improving the building’s envelope, the following formula was used:
where ∆E represents the possible savings of CO
2 after the intervention, E
before represents the CO
2 emissions before the intervention and E
after the CO
2 emissions after the intervention.
The second scenario, involving switching the heating supplier, represents a combination of
Table 1 and the change of heating supplier, as explained in the section describing determining which heating supplier to switch to. This was achieved by using formulas (2) and (4) and:
where E
after represents the CO
2 emissions after switching the heating supplier, EC
before represents the energy consumption before switching the heating supplier and F represents the fuels emission factor.
It can be seen that the first formula for switching the heating supplier is the same as that for improving the building’s envelope. The difference between the first and second set of formulas is in the change of heating supplier and indicates the possible savings for CO2 emissions after switching.
The last scenario, involving both switching the heating supplier and improving the building’s envelope, is a combination of the two earlier scenarios. We use (2) and the following two formulas:
where E
total represents the total CO
2 emissions of both switching the heating supplier and improving the building envelope, Es
after represents the CO
2 emissions from switching the heating supplier, Ei
after represents the CO
2 emissions after improving the building’s envelope, ECi
after represents the energy consumption after improving the envelope and F represents the fuels emission factor.
where ∆E
total represents the possible total CO
2 emission savings, ∆Es
after represents the CO
2 emission savings from switching the heating supplier, ∆Ei
after represents the CO
2 emission savings after improving the building’s envelope, ECi
after represents the energy consumption after improving the envelope and F represents the fuels emission factor.
It can be seen that the first formula is the same as the other two scenarios, and that the second formula is a combination of the two scenarios, resulting in the discovery of the possible savings of switching the heating supplier and after improving the building’s envelope.
4.3. Methodology: Cost of Heating
The cost of heating indicator was developed using the prices taken from Bolius’s continuously updated website [
30], as shown in
Table 2. It can be seen that DH has, in addition to a price per kWh, a fixed charge. Bolius lists two prices for electricity, one called electricity and another called electric heating.
This indicator uses electric heating, whereas electricity is assumed to refer to other uses of electricity beyond heating. Prices for different HPs can also be seen in Bolius, where an air-to-water HP is chosen which represents the worst-case scenario (most expensive) and the most typical. Lastly, there are two types of biomass to choose from, beechwood and wood pellets. Beechwood was chosen for the same reasons as the HP.
To find the possible savings in the costs for each scenario, the same formulas as in the CO2 emissions indicator have been used, but with CO2 emissions changed in accordance with the price of heating and divided by 1000, due to the cost unit being in DKK/kWh. The costs are matched with the type of heating supplier, bearing in mind that DH has a fixed charge, which is added at the end of both the first and second formula of each scenario, before the possible savings for the cost of heating are calculated at the end for each scenario.
4.4. Methodology: Energy Label
The energy label indicator investigates the status quo and does not include any scenarios. A username and password were provided by Rudersdal municipality, which made it possible to collect data on detached dwellings in Rudersdal by downloading a CSV file and importing it into Excel. The data included three buildings without any addresses and 23 buildings that were not included in the BBR data, which were assumed to have been demolished, and were therefore removed from the dataset. Additionally, protected and conservation-worthy buildings were removed, amounting to 299 buildings.
Twelve duplicates were found and removed from the dataset. These duplicate buildings have been demolished, but still have a valid energy label, probably because they received an energy label before being sold and then demolished by the new owners. This resulted in a total of 3973 energy labels used in this analysis.
To be able to give all of the 10,228 detached dwellings a grade and later to map them, the data from the building analysis had to be connected to the data from the BBR. This was achieved by using the VLOOKUP function in Excel, connecting ‘ADG ID’ from the BBR with Access-ID from the building analysis, which both represent the same value and have the same value for each detached dwelling. The result was a column in Excel showing whether a detached dwelling had an energy label, and if so which one.
How each detached dwelling received its grade can be seen in
Table 3. For the indicator energy label, decimals were introduced. Today, the energy labelling system has a total of nine energy labels, which cannot be divided by five and thus fitted into the indicators’ five-point scale. The decimals solved this problem and ensured that all energy labels were weighted equally. Energy labels are today required for all new buildings. This requirement has been law since 2010, which means that buildings built in the last thirteen years have been labelled. A label is valid for ten years, resulting in all new buildings that have been built in the last ten years being a part of the data provided by the building analysis.
Based on this information, it was decided that detached dwellings without an energy label would be given a grade five, representing the highest renovation potential with regard to energy labelling. In addition, this ensured that buildings built in the last ten years were not given a grade five.
4.5. Methodology: Evaluation of the Potential Indicators
As explained above, all four indicators were fully developed and were made ready for evaluation based on the selection criteria defined in Step 4. The result of this evaluation can be seen in
Table 4, where all of the selection criteria can be seen to be fulfilled except for the ‘based on raw and available data’ criterion, which was almost fulfilled for three of the indicators. All three indicators were based on the available data, but one could argue that they were not based on raw data for each detached dwelling. The energy consumption indicator, the CO
2 emissions indicator, and the cost of heating indicator use data from [
29], which is an average of detached dwellings with an energy label in all of Denmark, depending on the year of construction. This means that it has an achievable renovation potential, from which [
29] has calculated how much a building can save by renovating its energy supply. This is the most likely condition for buildings today, but as it does not represent raw data, it does not describe the true condition of the detached dwelling. Unfortunately, no data were available on this.
6. Discussion
The DH data on CO
2 and cost, used in the indicator analyses, are based on averages for all of Denmark. There can be a big difference in both CO
2 and cost when it comes to assessing the different DH networks in the country. According to
Forsyningstilsynet, the cost depends on the choice of heating supplier, the network itself, whether heat loss is included in the wiring, the location in relation to customers, the size, and the ownership [
31,
32].
Table 7 shows that there is a big difference in kg CO
2 depending on the heating supplier, which can differ within the different DH networks. Additionally, heat loss in the wiring and the CO
2 emissions emitted in DH can differ considerably. All of this means that detached dwellings with DH in Rudersdal can have a greater or smaller renovation potential than is seen for the average Danish detached dwelling. According to Rudersdal’s heating plan, there are two DH networks in Rudersdal, Holte Fjernvarme and Norfors. It would be interesting to follow up this study by determining the specific fuel mix used in these DH networks.
When using the results of these indicators, one should bear in mind that [
25] uses detailed data from The Danish Energy Label Scheme on everything that is included when obtaining an energy label for all detached dwellings that had one in October 2020. Though 61% of Rudersdal’s detached dwellings do not have an energy label, it would have been useful to have obtained these detailed data on the detached dwellings that do have one.
All of the indicators have a grade of zero, representing no renovation potential, except the energy label. One could argue that a detached dwelling that has the best energy label, A2020, has no renovation potential and should therefore have been assigned a zero. By changing A2020 to zero, all other energy labels might also have been assigned a lower grade, except for those buildings without any energy labels, which would still receive a grade of five. On the other hand, the requirement for the new EPBD initiative is that buildings with an energy label of G must be energy renovated before 2030, which would argue for G keeping the grade five. Using the same argument, F should also receive a grade five, whereas buildings with an energy label of F must be energy renovated before 2033. If G and F should both receive a grade of five, and grade A2020 a grade of zero, how would the other grades be assigned? There would be six remaining, which would need to be distributed between four grades (one to four). This might not be a problem if the grading system for the new initiative were different from the one we have today. One cannot be sure if the buildings that have a grade F today will receive an F after implementing the initiative. The best way of preparing for the new initiative would be to include everything that is included when an energy consultant calculates the energy label today (if the data had been available), use this to assign an energy label to all the detached dwellings, and from this find the bottom 15% and assign it a grade G, as the new labelling system will if implemented. If this is done correctly, one would need to assess all of the residences in Denmark to find the bottom 15%, and one would still not be sure that what is included when calculating the energy label today will be exactly the same after implementation.
Regarding the energy consumption, CO2 emissions and price of heating indicators, it can be seen that, generally, the scenario describing the period after switching a heating supplier and improving the building’s envelope is the one that represents the highest renovation potential because most detached dwellings receive a grade of five when this scenario is applied.
Switching the heating supplier to DH or HPs generally reduces the potential to save money. This is because the heat is supplied by gas in most of the detached dwellings in Rudersdal, which is one of the cheapest heating options today. The only way a gas-supplied detached dwelling might have the potential to save money would be to switch to a HP or to improve the building’s envelope, as the consumption would be lower and would therefore cost less. However, gas, when switched to DH or heat pumps, has one of the biggest potentials in CO2 emissions. In terms of gas heat supply and biomass heat supply and switching to DH or HPs, there will be some give and take. While biomass is better for the environment but costs more, as seen by biomass receiving a grade of zero for CO2 emissions but mainly receiving a grade of five for cost, gas costs less but is worse for the environment, as seen by the way in which it mainly receives a grade of zero or one for cost but five for CO2 emissions. This means that detached dwellings with gas or biomass as their heat supply received a high grade in either one of the indicators CO2 emissions or cost of heating, but a low grade in the other. Electric heating and heating oil suppliers are more straightforward because the potential to switch is relatively high. For CO2 emissions the detached dwellings with these heat suppliers mainly received a grade of three, and because of the cost they mainly received a grade of five.
To truly help the municipality and its residents to prepare for the new EPBD initiative, more raw detailed data on detached dwellings are needed, as well as information on renovation processes. In addition, the social pillar of sustainability needs to be measured to truly call it a domain-based framework.
7. Conclusions
Europe has, in general, an old building stock, and this old building stock is not energy efficient. The EU is therefore introducing new legislation to increase the rate of energy renovations in Europe. It is a significant challenge to find out which houses should be renovated, because that also depends on the heating supply. This paper reports on an indicator framework with four indicators that was created to investigate the energy efficient renovation potential of detached dwellings in Rudersdal municipality, Denmark. These were (i) energy consumption, (ii) CO2 emissions, (iii) heating costs and (iv) energy labels. These indicators were developed based on the sustainability factors that were found in the literature review and are listed above. Three different scenarios were created to investigate which energy efficient renovation methods was the best option for residents in Rudersdal, these being as follows: (a) improving the building’s envelope, (b) switching the heating supplier, and (c) both.
From the results, it can be concluded that the scenario with the highest renovation potential was the scenario involving switching the heating supplier and improving the building’s envelope, in that most detached dwellings in this scenario received a grade of five. For the indicator CO2 emissions, 60% of the detached dwellings that had received a grade of five were in the scenario involving switching the heating supplier and improving the building’s envelope. From this indicator, it can be seen that switching the heating supplier had a big effect on the detached dwellings in that almost all of those (99.75%) that received a grade of five were in the two scenarios where the heating supplier was changed. In terms of CO2 emissions, it can be seen that switching from a biomass heating supplier to DH or a heat pump resulted in no renovation potential, but that switching from gas, oil or electric heating would reduce CO2 emissions substantially. For the indicator cost of heating, it could be seen that 44% of detached dwellings that received a grade of five were in the scenario involving switching the heating supplier and improving the building’s envelope. For this indicator, it can be seen that switching from gas heating to DH or a heat pump was the least beneficial, whereas for biomass, electric heating and heating oil, it was very beneficial to switch to DH or a heat pump.
For the energy label indicator, it can be seen that 39% of the detached dwellings in Rudersdal have a valid energy label, leaving 61% without. The indicator results show that most buildings in Rudersdal would receive a grade of five with a high energy renovation potential. This is because so many detached dwellings in Rudersdal do not have a valid energy label and 1% of the detached dwellings in Rudersdal have an energy label of G, resulting in 62% of the detached dwellings receiving a grade of five.