Electricity Usage Efficiency and Electricity Demand Modeling in the Case of Germany and the UK
Abstract
:1. Introduction
2. Development of Electricity Consumption, GDP, and Industrial Output in Germany
- Long-term historical trends, as rising economical output has been associated with higher power consumption in Europe for decades;
- Increasing usage of electricity in the energy-intensive industries instead of oil and gas (as mentioned in the UK ministerial statement above), while the point that the demand for electricity will decline was supported by the following factors [1];
- The shift of European economies to sectors other than industries, which are less power consuming [18];
- Slower expected economic output growth in Europe in the future [19];
- More efficient electricity usage in the future as for the unit of output less electricity is needed every year.
3. The Methodology of Electricity Demand Model Creation
- The monthly average temperature in Germany (measured as an average of 10 different places in Germany) in Celsius degrees (variable X1);
- Dataset measuring subtraction between average temperature in Germany and 17 degrees Celsius. In the case of a negative value, the dataset value returns to zero. This dataset is designed to account for increased electricity usage due to air conditioning in summer (variable X2);
- The monthly industrial production in Germany based on Eurostat data (variable X3);
- The number of days in a month (variable X4);
- Yearly GDP data for Germany (variable X5);
- Electricity efficiency usage coefficient with a gradually decreasing value for every month. We assume that electricity efficiency improves gradually and regularly, which is certainly not the case, but such an approach still leads to much better results than neglecting this factor completely (variable X6).
4. Model Output
- Generation costs are a relatively small part of the final electricity prices;
- Feed-in tariffs for renewable generation are set for 20 years, meaning that technological advances will not lower the final electricity prices immediately;
- With the advance of renewable generation, prices of coal and other energies decrease;
- Whole infrastructures for the new electricity industries would need to be built.
5. Conclusions
Author Contributions
Funding
Conflicts of Interest
References
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Y | X1 | X2 | X3 | X4 | X5 | X6 | |
---|---|---|---|---|---|---|---|
Month-Year | Demand | Temperature | Temp. over 17 °C | Industrial Output | Days | GDP | Efficiency |
Janaunry-2005 | 50,927 | 2.75 | 0 | 87 | 31 | 100.00 | 100 |
February-2005 | 48,766 | −0.4 | 0 | 89 | 28 | 100.00 | 99.70089731 |
March-2005 | 49,467 | 4.55 | 0 | 98.3 | 31 | 100.00 | 99.40268924 |
April-2005 | 45,074 | 10.15 | 0 | 97.7 | 30 | 100.00 | 99.10537312 |
May-2005 | 43,240 | 13.7 | 0 | 90.4 | 31 | 100.00 | 98.80894628 |
June-2005 | 43,598 | 17.05 | 0.05 | 102.7 | 30 | 100.00 | 98.51340606 |
July-2005 | 43,805 | 19 | 2 | 93.5 | 31 | 100.00 | 98.21874981 |
⁞ | ⁞ | ⁞ | ⁞ | ⁞ | ⁞ | ⁞ | ⁞ |
May-2006 | 43,565 | 13.75 | 0 | 102.7 | 31 | 103.40 | 95.32022782 |
June-2006 | 43,178 | 17.6 | 0.6 | 102 | 30 | 103.40 | 95.03512246 |
July-2006 | 45,224 | 23.15 | 6.15 | 98.5 | 31 | 103.40 | 94.75086985 |
August-2006 | 43,645 | 16.2 | 0 | 97 | 31 | 103.40 | 94.46746744 |
⁞ | ⁞ | ⁞ | ⁞ | ⁞ | ⁞ | ⁞ | ⁞ |
July-07 | 45,204 | 18.05 | 1.05 | 107.4 | 31 | 106.20 | 91.40543281 |
August20-07 | 44,619 | 17.5 | 0.5 | 102.2 | 31 | 106.20 | 91.1320367 |
September-2007 | 42,259 | 12.8 | 0 | 109 | 30 | 106.20 | 90.85945832 |
⁞ | ⁞ | ⁞ | ⁞ | ⁞ | ⁞ | ⁞ | ⁞ |
July-08 | 46,350 | 18.8 | 1.8 | 111 | 31 | 107.00 | 88.17811552 |
August-2008 | 44,225 | 18.1 | 1.1 | 97.2 | 31 | 107.00 | 87.9143724 |
September-2008 | 43,347 | 12.3 | 0 | 114.8 | 30 | 107.00 | 87.65141815 |
⁞ | ⁞ | ⁞ | ⁞ | ⁞ | ⁞ | ⁞ | ⁞ |
May-2009 | 40,591 | 14.45 | 0 | 84.5 | 31 | 101.60 | 85.57590151 |
June-2009 | 41,487 | 15.65 | 0 | 90.8 | 30 | 101.60 | 85.31994168 |
July-2009 | 42,644 | 18.7 | 1.7 | 91.4 | 31 | 101.60 | 85.06474744 |
⁞ | ⁞ | ⁞ | ⁞ | ⁞ | ⁞ | ⁞ | ⁞ |
April-2010 | 42,082 | 9.25 | 0 | 96.4 | 30 | 105.20 | 82.8020749 |
May-10 | 42,788 | 11.15 | 0 | 95.5 | 31 | 105.20 | 82.55441167 |
June-2010 | 44,736 | 17.3 | 0.3 | 103.6 | 30 | 105.20 | 82.3074892 |
July-2010 | 44,225 | 20.7 | 3.7 | 99 | 31 | 105.20 | 82.06130528 |
⁞ | ⁞ | ⁞ | ⁞ | ⁞ | ⁞ | ⁞ | ⁞ |
June-2011 | 43,093 | 17.6 | 0.6 | 103 | 30 | 108.50 | 79.40139954 |
July-2011 | 43,307 | 16.7 | 0 | 104.7 | 31 | 108.50 | 79.16390782 |
August-2011 | 41,915 | 18.3 | 1.3 | 102.7 | 31 | 108.50 | 78.92712644 |
⁞ | ⁞ | ⁞ | ⁞ | ⁞ | ⁞ | ⁞ | ⁞ |
Jane-2012 | 49,492 | 2.65 | 0 | 100.3 | 31 | 109.20 | 77.75380056 |
February-2012 | 50,031 | −2.55 | 0 | 105.5 | 29 | 109.20 | 77.52123685 |
⁞ | ⁞ | ⁞ | ⁞ | ⁞ | ⁞ | ⁞ | ⁞ |
October-2013 | 44,571 | 9.73125 | 0 | 111 | 31 | 109.746 | 73.01330926 |
November-2013 | 45,651 | 6.13125 | 0 | 111.8 | 30 | 109.746 | 72.79492448 |
December-2013 | 44,871 | 1.975 | 0 | 94.6 | 31 | 109.746 | 72.5771929 |
Variable in Model | p-Value |
---|---|
Monthly average temperature | 2.1 × 10−29 |
Temperature over 17 °C | 1.35 × 10−5 |
Monthly industrial production | 0.043171 |
Days in a month | 0.001391 |
Yearly GDP | 0.025366 |
Efficiency | 3.63 × 10−7 |
Y | X1 | X2 | X3 | X4 | X5 | X6 | |
---|---|---|---|---|---|---|---|
Month-Year | Demand | Temperature | Temp. over 17 °C | Industrial Output | Days | GDP | Efficiency |
January-2014 | 49,515 | 1.2625 | 0 | 100.798 | 31 | 111.6117 | 72.3571929 |
February-2014 | 44,684 | 1.29375 | 0 | 103.4745 | 28 | 111.6117 | 72.1371929 |
March-2014 | 45,846 | 5.225 | 0 | 112.8675 | 31 | 111.6117 | 71.9171929 |
April-2014 | 41,714 | 10.16875 | 0 | 105.7975 | 30 | 111.6117 | 71.6971929 |
May-2014 | 41,770 | 14.075 | 0 | 104.2825 | 31 | 111.6117 | 71.4771929 |
June-2014 | 39,959 | 17.2125 | 0.2125 | 108.07 | 30 | 111.6117 | 71.2571929 |
July-2014 | 43,542 | 19.15625 | 2.15625 | 108.5245 | 31 | 111.6117 | 71.0371929 |
⁞ | ⁞ | ⁞ | ⁞ | ⁞ | ⁞ | ⁞ | ⁞ |
May-2015 | 39,607 | 14.075 | 0 | 105.325325 | 31 | 113.8439 | 68.8371929 |
June-2015 | 39,875 | 17.2125 | 0.2125 | 109.1507 | 30 | 113.8439 | 68.6171929 |
July-2015 | 41,470 | 19.15625 | 2.15625 | 109.609745 | 31 | 113.8439 | 68.3971929 |
⁞ | ⁞ | ⁞ | ⁞ | ⁞ | ⁞ | ⁞ | ⁞ |
August-2016 | 41,953.76 | 17.8125 | 0.8125 | 103.6482806 | 31 | 116.1208 | 65.5371929 |
September-2016 | 42,673.66 | 14.51875 | 0 | 108.3876652 | 30 | 116.1208 | 65.3171929 |
October-2016 | 45,622.56 | 9.73125 | 0 | 114.363411 | 31 | 116.1208 | 65.0971929 |
⁞ | ⁞ | ⁞ | ⁞ | ⁞ | ⁞ | ⁞ | ⁞ |
May-2017 | 43,376.11 | 14.075 | 0 | 107.442364 | 31 | 118.4432 | 63.5571929 |
June-2017 | 40,637.28 | 17.2125 | 0.2125 | 111.3446291 | 30 | 118.4432 | 63.3371929 |
July-2017 | 41,789.89 | 19.15625 | 2.15625 | 111.8129009 | 31 | 118.4432 | 63.1171929 |
⁞ | ⁞ | ⁞ | ⁞ | ⁞ | ⁞ | ⁞ | ⁞ |
Octcober-2018 | 45,113.71 | 9.73125 | 0 | 116.6621156 | 31 | 120.8121 | 59.8171929 |
November-2018 | 47,585.15 | 6.13125 | 0 | 117.5029236 | 30 | 120.8121 | 59.5971929 |
December-2018 | 46,681.36 | 1.975 | 0 | 99.42555074 | 31 | 120.8121 | 59.3771929 |
⁞ | ⁞ | ⁞ | ⁞ | ⁞ | ⁞ | ⁞ | ⁞ |
January-2019 | - | 1.2625 | 0 | 105.939711 | 31 | 123.2283 | 59.1571929 |
February-2019 | - | 1.29375 | 0 | 108.7527394 | 28 | 123.2283 | 58.9371929 |
March-2019 | - | 5.225 | 0 | 118.6248768 | 31 | 123.2283 | 58.7171929 |
April-2019 | - | 10.16875 | 0 | 111.1942358 | 30 | 123.2283 | 58.4971929 |
⁞ | ⁞ | ⁞ | ⁞ | ⁞ | ⁞ | ⁞ | ⁞ |
August-2020 | - | 17.8125 | 0.8125 | 107.8568164 | 31 | 125.6929 | 54.9771929 |
September-2020 | - | 14.51875 | 0 | 112.788639 | 30 | 125.6929 | 54.7571929 |
October-2020 | - | 9.73125 | 0 | 119.0070241 | 31 | 125.6929 | 54.5371929 |
November-2020 | - | 6.13125 | 0 | 119.8647324 | 30 | 125.6929 | 54.3171929 |
December-2020 | - | 1.975 | 0 | 101.4240043 | 31 | 125.6929 | 54.0971929 |
Year | Real Demand | Modeled Demand |
---|---|---|
2005 | 556 | 553 |
2006 | 559 | 561 |
2007 | 556 | 560 |
2008 | 557 | 559 |
2009 | 527 | 529 |
2010 | 547 | 545 |
2011 | 544 | 540 |
2012 | 540 | 540 |
2013 | 531 | 532 |
2014 | 529 | 532 |
2015 | 521 | 532 |
2016 | 538 | 534 |
2017 | 539 | 534 |
2018 | 538 | 535 |
2019 | 536 | |
2020 | 538 |
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Dudic, B.; Smolen, J.; Kovac, P.; Savkovic, B.; Dudic, Z. Electricity Usage Efficiency and Electricity Demand Modeling in the Case of Germany and the UK. Appl. Sci. 2020, 10, 2291. https://doi.org/10.3390/app10072291
Dudic B, Smolen J, Kovac P, Savkovic B, Dudic Z. Electricity Usage Efficiency and Electricity Demand Modeling in the Case of Germany and the UK. Applied Sciences. 2020; 10(7):2291. https://doi.org/10.3390/app10072291
Chicago/Turabian StyleDudic, Branislav, Jan Smolen, Pavel Kovac, Borislav Savkovic, and Zdenka Dudic. 2020. "Electricity Usage Efficiency and Electricity Demand Modeling in the Case of Germany and the UK" Applied Sciences 10, no. 7: 2291. https://doi.org/10.3390/app10072291
APA StyleDudic, B., Smolen, J., Kovac, P., Savkovic, B., & Dudic, Z. (2020). Electricity Usage Efficiency and Electricity Demand Modeling in the Case of Germany and the UK. Applied Sciences, 10(7), 2291. https://doi.org/10.3390/app10072291