Indoor Genetic Algorithm-Based 5G Network Planning Using a Machine Learning Model for Path Loss Estimation
Accurate wireless network planning is crucial for the deployment of new wireless services. This usually requires the consecutive evaluation of many candidate solutions, which is only feasible for simple path loss models, such as one-slope models or multi-wall models. However, such path loss models a...
| Published in: | Applied Sciences |
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| Main Authors: | , , , , , |
| Format: | Article |
| Language: | English |
| Published: |
MDPI AG
2022-04-01
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| Subjects: | |
| Online Access: | https://www.mdpi.com/2076-3417/12/8/3923 |
| _version_ | 1850130467888562176 |
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| author | Yosvany Hervis Santana Rodney Martinez Alonso Glauco Guillen Nieto Luc Martens Wout Joseph David Plets |
| author_facet | Yosvany Hervis Santana Rodney Martinez Alonso Glauco Guillen Nieto Luc Martens Wout Joseph David Plets |
| author_sort | Yosvany Hervis Santana |
| collection | DOAJ |
| container_title | Applied Sciences |
| description | Accurate wireless network planning is crucial for the deployment of new wireless services. This usually requires the consecutive evaluation of many candidate solutions, which is only feasible for simple path loss models, such as one-slope models or multi-wall models. However, such path loss models are quite straightforward and often do not deliver satisfactory estimations, eventually impacting the quality of the proposed network deployment. More advanced models, such as Indoor Dominant Path Loss models, are usually more accurate, but as their path loss calculation is much more time-consuming, it is no longer possible to evaluate a large set of candidate deployment solutions. Out of necessity, a heuristic network planning algorithm is then typically used, but the outcomes heavily depend on the quality of the heuristic. Therefore, this paper investigates the use of Machine Learning to approximate a complex 5G path loss model. The much lower calculation time allows using this model in a Genetic Algorithm-based network planning algorithm. The Machine Learning model is trained for two buildings and is validated on three other buildings, with a Mean Absolute Error below 3 dB. It is shown that the new approach is able to find a wireless network deployment solution with an equal, or smaller, amount of access points, while still providing the required coverage for at least 99.4% of the receiver locations and it does this 15 times faster. Unlike a heuristic approach, the proposed one also allows accounting for additional design criteria, such as maximal average received power throughout the building, or minimal exposure to radiofrequency signals in certain rooms. |
| format | Article |
| id | doaj-art-277707d845ea46f28d2de4d3e91c50ff |
| institution | Directory of Open Access Journals |
| issn | 2076-3417 |
| language | English |
| publishDate | 2022-04-01 |
| publisher | MDPI AG |
| record_format | Article |
| spelling | doaj-art-277707d845ea46f28d2de4d3e91c50ff2025-08-19T23:52:56ZengMDPI AGApplied Sciences2076-34172022-04-01128392310.3390/app12083923Indoor Genetic Algorithm-Based 5G Network Planning Using a Machine Learning Model for Path Loss EstimationYosvany Hervis Santana0Rodney Martinez Alonso1Glauco Guillen Nieto2Luc Martens3Wout Joseph4David Plets5Departament of Information Technology, Ghent University/IMEC, Technologiepark-Zwijnaarde 126, 9052 Ghent, BelgiumDepartament of Information Technology, Ghent University/IMEC, Technologiepark-Zwijnaarde 126, 9052 Ghent, BelgiumLACETEL, Research and Development Telecommunications Institute, Havana 19210, CubaDepartament of Information Technology, Ghent University/IMEC, Technologiepark-Zwijnaarde 126, 9052 Ghent, BelgiumDepartament of Information Technology, Ghent University/IMEC, Technologiepark-Zwijnaarde 126, 9052 Ghent, BelgiumDepartament of Information Technology, Ghent University/IMEC, Technologiepark-Zwijnaarde 126, 9052 Ghent, BelgiumAccurate wireless network planning is crucial for the deployment of new wireless services. This usually requires the consecutive evaluation of many candidate solutions, which is only feasible for simple path loss models, such as one-slope models or multi-wall models. However, such path loss models are quite straightforward and often do not deliver satisfactory estimations, eventually impacting the quality of the proposed network deployment. More advanced models, such as Indoor Dominant Path Loss models, are usually more accurate, but as their path loss calculation is much more time-consuming, it is no longer possible to evaluate a large set of candidate deployment solutions. Out of necessity, a heuristic network planning algorithm is then typically used, but the outcomes heavily depend on the quality of the heuristic. Therefore, this paper investigates the use of Machine Learning to approximate a complex 5G path loss model. The much lower calculation time allows using this model in a Genetic Algorithm-based network planning algorithm. The Machine Learning model is trained for two buildings and is validated on three other buildings, with a Mean Absolute Error below 3 dB. It is shown that the new approach is able to find a wireless network deployment solution with an equal, or smaller, amount of access points, while still providing the required coverage for at least 99.4% of the receiver locations and it does this 15 times faster. Unlike a heuristic approach, the proposed one also allows accounting for additional design criteria, such as maximal average received power throughout the building, or minimal exposure to radiofrequency signals in certain rooms.https://www.mdpi.com/2076-3417/12/8/39235Ggenetic algorithmindoor environmentmachine learningnetwork planningpath loss |
| spellingShingle | Yosvany Hervis Santana Rodney Martinez Alonso Glauco Guillen Nieto Luc Martens Wout Joseph David Plets Indoor Genetic Algorithm-Based 5G Network Planning Using a Machine Learning Model for Path Loss Estimation 5G genetic algorithm indoor environment machine learning network planning path loss |
| title | Indoor Genetic Algorithm-Based 5G Network Planning Using a Machine Learning Model for Path Loss Estimation |
| title_full | Indoor Genetic Algorithm-Based 5G Network Planning Using a Machine Learning Model for Path Loss Estimation |
| title_fullStr | Indoor Genetic Algorithm-Based 5G Network Planning Using a Machine Learning Model for Path Loss Estimation |
| title_full_unstemmed | Indoor Genetic Algorithm-Based 5G Network Planning Using a Machine Learning Model for Path Loss Estimation |
| title_short | Indoor Genetic Algorithm-Based 5G Network Planning Using a Machine Learning Model for Path Loss Estimation |
| title_sort | indoor genetic algorithm based 5g network planning using a machine learning model for path loss estimation |
| topic | 5G genetic algorithm indoor environment machine learning network planning path loss |
| url | https://www.mdpi.com/2076-3417/12/8/3923 |
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