Core Concepts and Methods in Load Forecasting : : With Applications in Distribution Networks / / Stephen Haben, Marcus Voss, William Holderbaum.
This comprehensive open access book enables readers to discover the essential techniques for load forecasting in electricity networks, particularly for active distribution networks. From statistical methods to deep learning and probabilistic approaches, the book covers a wide range of techniques and...
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Place / Publishing House: | Cham : : Springer International Publishing,, 2023. |
Year of Publication: | 2023 |
Edition: | 1st ed. |
Language: | English |
Physical Description: | 1 online resource (xv, 331 pages) |
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Haben, Stephen, author. Core Concepts and Methods in Load Forecasting : With Applications in Distribution Networks / Stephen Haben, Marcus Voss, William Holderbaum. 1st ed. Cham : Springer International Publishing, 2023. 1 online resource (xv, 331 pages) text txt rdacontent computer c rdamedia online resource cr rdacarrier Description based on publisher supplied metadata and other sources. This comprehensive open access book enables readers to discover the essential techniques for load forecasting in electricity networks, particularly for active distribution networks. From statistical methods to deep learning and probabilistic approaches, the book covers a wide range of techniques and includes real-world applications and a worked examples using actual electricity data (including an example implemented through shared code). Advanced topics for further research are also included, as well as a detailed appendix on where to find data and additional reading. As the smart grid and low carbon economy continue to evolve, the proper development of forecasting methods is vital. This book is a must-read for students, industry professionals, and anyone interested in forecasting for smart control applications, demand-side response, energy markets, and renewable utilization. Chapter 1. Introduction -- Chapter 2. Primer on Distribution Electricity Networks -- Chapter 3. Primer on Statistics and Probability -- Chapter 4. Primer on Machine Learning -- Chapter 5. Time Series Forecasting: Core Concepts and Definitions -- Chapter 6. Load Data: Preparation, Analysis and Feature Generation -- Chapter 7. Verification and Evaluation of Load Forecast Models -- Chapter 8. Load Forecasting Model Training and Selection -- Chapter 9. Benchmark and Statistical Point Forecast Methods -- Chapter 10. Machine Learning Point Forecasts Methods -- Chapter 11. Probabilistic Forecast Methods -- Chapter 12. Load Forecast Process -- Chapter 13. Advanced and Additional Topics -- Chapter 14. Case Study: Low Voltage Demand Forecasts -- Chapter 15. Selected Applications and Examples -- Appendix. Electric power distribution. 3-031-27851-8 Holderbaum, William, author. Voss, Marcus, author. |
language |
English |
format |
eBook |
author |
Haben, Stephen, Holderbaum, William, Voss, Marcus, |
spellingShingle |
Haben, Stephen, Holderbaum, William, Voss, Marcus, Core Concepts and Methods in Load Forecasting : With Applications in Distribution Networks / Chapter 1. Introduction -- Chapter 2. Primer on Distribution Electricity Networks -- Chapter 3. Primer on Statistics and Probability -- Chapter 4. Primer on Machine Learning -- Chapter 5. Time Series Forecasting: Core Concepts and Definitions -- Chapter 6. Load Data: Preparation, Analysis and Feature Generation -- Chapter 7. Verification and Evaluation of Load Forecast Models -- Chapter 8. Load Forecasting Model Training and Selection -- Chapter 9. Benchmark and Statistical Point Forecast Methods -- Chapter 10. Machine Learning Point Forecasts Methods -- Chapter 11. Probabilistic Forecast Methods -- Chapter 12. Load Forecast Process -- Chapter 13. Advanced and Additional Topics -- Chapter 14. Case Study: Low Voltage Demand Forecasts -- Chapter 15. Selected Applications and Examples -- Appendix. |
author_facet |
Haben, Stephen, Holderbaum, William, Voss, Marcus, Holderbaum, William, Voss, Marcus, |
author_variant |
s h sh w h wh m v mv |
author_role |
VerfasserIn VerfasserIn VerfasserIn |
author2 |
Holderbaum, William, Voss, Marcus, |
author2_role |
TeilnehmendeR TeilnehmendeR |
author_sort |
Haben, Stephen, |
title |
Core Concepts and Methods in Load Forecasting : With Applications in Distribution Networks / |
title_sub |
With Applications in Distribution Networks / |
title_full |
Core Concepts and Methods in Load Forecasting : With Applications in Distribution Networks / Stephen Haben, Marcus Voss, William Holderbaum. |
title_fullStr |
Core Concepts and Methods in Load Forecasting : With Applications in Distribution Networks / Stephen Haben, Marcus Voss, William Holderbaum. |
title_full_unstemmed |
Core Concepts and Methods in Load Forecasting : With Applications in Distribution Networks / Stephen Haben, Marcus Voss, William Holderbaum. |
title_auth |
Core Concepts and Methods in Load Forecasting : With Applications in Distribution Networks / |
title_new |
Core Concepts and Methods in Load Forecasting : |
title_sort |
core concepts and methods in load forecasting : with applications in distribution networks / |
publisher |
Springer International Publishing, |
publishDate |
2023 |
physical |
1 online resource (xv, 331 pages) |
edition |
1st ed. |
contents |
Chapter 1. Introduction -- Chapter 2. Primer on Distribution Electricity Networks -- Chapter 3. Primer on Statistics and Probability -- Chapter 4. Primer on Machine Learning -- Chapter 5. Time Series Forecasting: Core Concepts and Definitions -- Chapter 6. Load Data: Preparation, Analysis and Feature Generation -- Chapter 7. Verification and Evaluation of Load Forecast Models -- Chapter 8. Load Forecasting Model Training and Selection -- Chapter 9. Benchmark and Statistical Point Forecast Methods -- Chapter 10. Machine Learning Point Forecasts Methods -- Chapter 11. Probabilistic Forecast Methods -- Chapter 12. Load Forecast Process -- Chapter 13. Advanced and Additional Topics -- Chapter 14. Case Study: Low Voltage Demand Forecasts -- Chapter 15. Selected Applications and Examples -- Appendix. |
isbn |
3-031-27852-6 3-031-27851-8 |
callnumber-first |
T - Technology |
callnumber-subject |
TK - Electrical and Nuclear Engineering |
callnumber-label |
TK3001 |
callnumber-sort |
TK 43001 H334 42023 |
illustrated |
Not Illustrated |
dewey-hundreds |
600 - Technology |
dewey-tens |
620 - Engineering |
dewey-ones |
621 - Applied physics |
dewey-full |
621.319 |
dewey-sort |
3621.319 |
dewey-raw |
621.319 |
dewey-search |
621.319 |
oclc_num |
1378166136 |
work_keys_str_mv |
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status_str |
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Core Concepts and Methods in Load Forecasting : With Applications in Distribution Networks / |
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