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Experimental Machine Learning Approach for Optical Turbulence and FSO Outage Performance Modeling
- Citation Author(s):
- Submitted by:
- Kostas Peppas
- Last updated:
- Tue, 08/27/2024 - 07:53
- DOI:
- 10.21227/8bqw-gy72
- License:
- Categories:
- Keywords:
Abstract
A laser beam propagating in the free space suffers numerous degradation effects. In the context of free space optical communications (FSOCs), this results in reduced link’s availability. This study provides a comprehensive comparison between six machine learning (ML) regression algorithms for modeling the refractive index structure parameter Cn^2. A single neural network (ANN), a random forest (RF), a decision tree (DT), a gradient boosting regressor (GBR), a k-nearest neighbors (KNN) and a deep neural network (DNN) model are applied to estimate Cn^2from experimentally measured macroscopic meteorological parameters obtained from several devices installed at the Naval Postgraduate School (NPS) campus over a period of 11 months. The data set was divided into four quarters and the performance of each algorithm in every quarter was determined based on the R2 and the RMSE metric. The second part of the study investigated the influence of atmospheric turbulence in the availability of a notional FSOC link, by calculating the outage probability (Pout) assuming a gamma gamma (GG) modeled turbulent channel. A threshold value of 99% availability was assumed for the link to be functional. A DNN classification algorithm was then developed to model the link status (On-Off) based on the previously mentioned meteorological parameters
Please rename files data1.zip, data2.zip, data13.zip, data4.zip, data5.zip, data6.zip, data7.zip, data8.zip as
data.zip.001, data.zip.002, data.zip.003, data.zip.004, data.zip.005, data.zip.006, data.zip.007 and data.zip.008, respectively and extract them.
You will find four excel files, namely Sklavounos and Cohn, Autumn. 2022.xlsx Sklavounos and Cohn, Spring 2022.xlsx, Sklavounos and Cohn, Summer. 2022.xlsx and Sklavounos and Cohn, Winter. 2022.xlsx
Dataset Files
- data1.zip (10.00 MB)
- data2.zip (10.00 MB)
- data3.zip (10.00 MB)
- data4.zip (10.00 MB)
- data5.zip (10.00 MB)
- data6.zip (10.00 MB)
- data7.zip (10.00 MB)
- data8.zip (6.19 MB)
- Sklavounos and Cohn, Autumn. 2022.xlsx (16.52 MB)
- Sklavounos and Cohn, Spring. 2022.xlsx (24.83 MB)
- Sklavounos and Cohn, Summer. 2022.xlsx (17.92 MB)
- Sklavounos and Cohn, Winter. 2022.xlsx (18.40 MB)
Comments
We have uploaded the 4 Excel files for easier download.
- IEEE DataPort Admin
Thanks Alexander for sharing the data in excel format. Would you be able to explain each column in the dataset?
The IEEE DataPort platform enables authors to share their datasets and applicable metadata. As a platform administrator, I do not have detailed knowledge or insight into the specifics of each dataset and therefore cannot provide the requested explanation.
Would you be able to share full paper as we are not able to download.
It appears that the related paper can be found here: https://www.mdpi.com/2079-9292/12/3/506