Developing and Validating Heating Energy Consumption Models for Schools in Osijek-Baranja County, Croatia
Abstract
1. Introduction
2. Legal Framework
3. Literature Review
3.1. Review of Heating Energy Consumption in School Buildings
3.2. Predicting Heating Energy Consumption
4. Methodology and Data Analysis
5. Developed Models for Predicting Heating Energy Consumption
5.1. MLR Model
- TNU: Independent variable representing the total number of users, including employees and students (number);
- Ak: Independent variable representing the area of the useful surface of the heated part of the building (m2);
- Ve: Independent variable representing the volume of the heated part of the building (m3).
5.2. ANN Model
5.3. RF Model
6. Results and Discussion
6.1. Model Validation
6.2. Validation on an External Sample of School Buildings
7. Conclusions
- Climatic differences—coastal regions experience milder winters and higher humidity, affecting heating demand;
- Building typologies—schools in coastal areas often differ in age, insulation quality, and size compared to inland schools;
- Heating systems—many coastal schools rely on electricity or heating oil rather than gas or centralized heating systems, leading to greater variability in energy consumption.
8. Recommendations for Future Research
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
Abbreviations
| AE | Autoencoder |
| Ak | Area of the Useful Surface of the Heated Part of the Building |
| ANN | Artificial Neural Network |
| ANS | Automated Network Search |
| CART | Classification and Regression Tree |
| CNN | Convolutional Neural Network |
| CO2 | Carbon Dioxide |
| CPG | Carbon Performance Gap |
| CVRMSE | Coefficient of Variation of the Root Mean Squared Error |
| EED | Energy Efficiency Directive |
| EMIS | Energy Management Information System |
| EPBD | Energy Performance of Buildings Directive |
| EPG | Energy Performance Gap |
| EU | European Union |
| GBR | Gradient Boosting Regressor |
| LSTM | Long Short-Term Memory Network |
| MAPE | Mean Absolute Percentage Error |
| MLP | Multilayer Perceptron |
| MLR | Multiple Linear Regression |
| nZEB | Nearly Zero Energy Building |
| R2 | Coefficient of Determination |
| RF | Random Forest |
| RMSE | Root Mean Squared Error |
| RNN | Recurrent Neural Network |
| SDG | Sustainable Development Goals |
| SVM | Support Vector Machine |
| TNU | Total Number of Users |
| Ve | Volume of the Heated Part of the Building |
| ZEB | Zero Energy Building |
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| Author (Reference) | Country | N (School Buildings) | Energy-Use Intensity—kWh/m2/Year (Main Values) |
|---|---|---|---|
| Butala & Novak [39] | Slovenia | 24 | 192 |
| Kim et al. [40] | South Korea | 10 | electricity 289; oil 26; gas 90 |
| Wang [41] | Taiwan | 231 | 55.8 (senior HS); 22.5 (junior HS); 20.1 (elementary) |
| Antunes & Ghisi [22] | Brazil | 100 | 0.31–66.47 kWh/student/month |
| Hung & Yeung [42] | Hong Kong | 121 | 105.61 |
| Katafygiotou & Serghides [7] | Cyprus | - | 62.75 |
| Daly et al. [43] | Ireland | 3701 | 38.0 |
| Beusker et al. [44] | Germany | 105 | 31–205 (avg. 93) |
| Kim et al. [44] | South Korea | 9 | 67–240 (avg. 133) |
| Hernandez et al. [46] | Ireland | 88 | 96 |
| Santamouris et al. [47] | - | 10 | 57 (heating); 20 (electricity) |
| Hong et al. [24,48] | England | 7731 | 166 (primary); 172 (secondary) |
| Attia et al. [49] | Belgium | - | 59 (primary); 42 (secondary) |
| Katić et al. [50] | Bosnia & Herzegovina | 185 | 171.90 |
| Jurišević et al. [51] | Serbia | - | 176 (primary); 186 (kindergartens) |
| Obradović [52] | Croatia | 1 | natural gas consumption 57.45 |
| Variables | Label | Unit | References |
|---|---|---|---|
| Total number of users | TNU | Number of users | [58,69,70,71] |
| Total useful surface area | Ak | m2 | [58,72,73,74] |
| Volume of the building | Ve | m3 | [58,72,75] |
| Total number of floors | TNF | Number of floors | [58,76] |
| Age of building | AoB | Year | [74,77,78,79] |
| Age of renovation | AoR | year | [77,80,81] |
| Window-to-wall ratio | WWR | % | [14,76,82,83,84] |
| Form factor | fo | m−1 | [76,85,86] |
| Heat transfer coefficient | HT | W/m2K | [58,87,88] |
| Variable | Label | Unit |
|---|---|---|
| Annual Heating Energy Consumption | AHC | kWh/year |
| r | Correlation Description |
|---|---|
| −1 | Completely negative correlation |
| −0.7 to −1 | Strong negative correlation |
| −0.3 to −0.7 | Moderate negative correlation |
| −0.3 to +0.3 | Weak correlation |
| 0 | No correlation |
| +0.3 to +0.7 | Moderate positive correlation |
| +0.7 to +1 | Strong positive correlation |
| +1 | Completely positive correlation |
| Variable | Correlation with the Output Variable AHC |
|---|---|
| TNU | 0.7839 |
| Ak | 0.8513 |
| Ve | 0.8830 |
| TNF | 0.6052 |
| AoB | −0.0042 |
| AoR | −0.1245 |
| WWR | 0.3214 |
| fo | −0.3256 |
| HT | 0.3134 |
| Type of Variable | Variable | Unit | N | Mean | Min. | Max. | St. Dev. |
|---|---|---|---|---|---|---|---|
| Input | TNU | Number of users | 149 | 145.30 | 3.00 | 730.00 | 182.4 |
| Ak | m2 | 149 | 1183.60 | 60.00 | 6210.3 | 1324.9 | |
| Ve | m3 | 149 | 4703.00 | 116.00 | 21,185.1 | 5217.1 | |
| Output | AHC | kWh/year | 149 | 121,612.82 | 8070.21 | 508,983.2 | 126,492.7 |
| Target Value [kWh/Year] (Historical Data) | Calculated Value [kWh/Year] (MLR Model) | TNU | Ak [m2] | Ve [m3] |
|---|---|---|---|---|
| 290,160.50 | 318,066.67 | 730 | 2596.55 | 10,408.98 |
| 22,874.67 | 25,681.45 | 7 | 234.6 | 938.4 |
| 112,670.55 | 131,584.09 | 299 | 1820.54 | 2688 |
| Variable | Variable Rank | Importance |
|---|---|---|
| Ve | 100 | 1.000000 |
| TNU | 98 | 0.984450 |
| Ak | 89 | 0.894564 |
| No. | Coefficient | Expression | Ref. |
|---|---|---|---|
| 1 | R2 | [104] | |
| 2 | MSE | [105] | |
| 3 | RMSE | [106] | |
| 4 | CVRMSE | [107] | |
| 5 | MAPE | [108] |
| No. | Model Type | Dependent Variable | R2 | MSE | RMSE | CVRMSE | MAPE |
|---|---|---|---|---|---|---|---|
| 1 | MLR | AHC | 0.913 | 1.31 × 109 | 36,803.43 | 29.65% | 35.67% |
| 2 | ANN | 0.943 | 9.07 × 108 | 30,110.14 | 24.26% | 27.51% | |
| 3 | RF | 0.872 | 1.64 × 109 | 40,517.16 | 32.64% | 28.87% |
| No. | Model Type | Dependent Variable | R2 | MSE | RMSE | CVRMSE | MAPE |
|---|---|---|---|---|---|---|---|
| 1 | MLR | AHC | 0.897 | 1.34 × 109 | 36,574.16 | 31.63% | 39.93% |
| 2 | ANN | 0.888 | 1.39 × 109 | 37,307.65 | 32.27% | 36.54% | |
| 3 | RF | 0.732 | 2.23 × 109 | 47,207.78 | 40.83% | 34.65% |
| Coefficient of Determination R2 | Meaning |
|---|---|
| 0.00 | No connection |
| 0.00–0.25 | Weak connection |
| 0.25–0.64 | Medium connection |
| 0.64–1.00 | Strong connection |
| 1.00 | Full connection |
| No. | Model Type | Dependent Variable | R2 | MSE | RMSE | CVRMSE | MAPE |
|---|---|---|---|---|---|---|---|
| 1 | MLR | AHC | 0.185 | 2.84 × 1010 | 168,640.65 | 64.36% | 39.43% |
| 2 | ANN | 0.119 | 2.42 × 1010 | 155,425.85 | 59.32% | 48.96% | |
| 3 | RF | 0.174 | 2.98 × 1010 | 172,501.61 | 65.84% | 47.34% |
| No. | Model Type | Dependent Variable | R2 | MSE | RMSE | CVRMSE | MAPE |
|---|---|---|---|---|---|---|---|
| 1 | MLR | AHC | 0.890 | 4.90 × 109 | 69,992.11 | 25.66% | 20.94% |
| 2 | ANN | 0.314 | 1.71 × 1010 | 130,601.75 | 47.88% | 34.59% | |
| 3 | RF | 0.239 | 1.03 × 1010 | 101,490.47 | 37.21% | 27.52% |
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Share and Cite
Begić Juričić, H.; Krstić, H.; Obradović, D. Developing and Validating Heating Energy Consumption Models for Schools in Osijek-Baranja County, Croatia. Urban Sci. 2026, 10, 187. https://doi.org/10.3390/urbansci10040187
Begić Juričić H, Krstić H, Obradović D. Developing and Validating Heating Energy Consumption Models for Schools in Osijek-Baranja County, Croatia. Urban Science. 2026; 10(4):187. https://doi.org/10.3390/urbansci10040187
Chicago/Turabian StyleBegić Juričić, Hana, Hrvoje Krstić, and Dino Obradović. 2026. "Developing and Validating Heating Energy Consumption Models for Schools in Osijek-Baranja County, Croatia" Urban Science 10, no. 4: 187. https://doi.org/10.3390/urbansci10040187
APA StyleBegić Juričić, H., Krstić, H., & Obradović, D. (2026). Developing and Validating Heating Energy Consumption Models for Schools in Osijek-Baranja County, Croatia. Urban Science, 10(4), 187. https://doi.org/10.3390/urbansci10040187

