Identification of Fast Radio Bursts using Transfer Learning Approach with Data Augmentation
Main Article Content
Abstract
The universe has many mysteries, such as pulsars, dying stars, supernovae, and fast radio bursts (FRBs), FRBs are millisecond long radio signals, detected as a spike in radio-telescope data. Identification of Fast Radio Bursts from available data involves manual inspection of exhaustive data/plots. Radio Frequency Interference in pose a major challenge in identification of Fast Radio Bursts due to their abundance in the observatory data. We present a machine-learning-aided system, which screens telescope-generated data and identifies potential Fast Radio Burst candidates in it. Proposed system employs Convolutional Neural Networks and Transfer Learning to classify potential Fast Radio Bursts from Radio Frequency Interference from data recorded by the uGMRT. We have used data simulation tools to synthesize additional samples in order to make up for the paucity of data. The VGG16-based model displayed the best receiver operating characteristics curve with the area under curve being 0.90 along with an accuracy of 90.67%.
Article Details
References
Petroff E. et al., Fast Radio Bursts, 2019, Astron Astrophys rev. 27-4
D. R. Lorimer et al. A Bright Millisecond Radio Burst of Extragalactic Origin.Science318,777-780(2007)
Lynch R. S., http:// pulsarsearchcollaboratory.com/wp- content/uploads/2016/01/PSC_search_ guide.pdf
Wagstaff K.L. et al., A Machine Learning Classifier for Fast Radio Burst Detection at the VLBA 2016, The Astronomical Society of the Pacific, vol. 128, no. 966,
The CHIME/FRB Collaboration, The CHIME Fast Radio Burst Project: System Overview 2018, The Astrophysical Journal, vol. 863, no. 1
Zhang Y. G. et al., Fast Radio Burst 121102 Pulse Detection and Periodicity: A Machine Learning Approach ., 2018, The Astronomical Journal, vol. 866, no. 2.
Pang D.et al. A novel single-pulse search approach to detection of dispersed radio pulses using clustering and supervised machine learning, 2018, Monthly Notices of the Royal Astronomical Society, 3302–3323, vol. 480, issue 3.
Liam Connor et al, Applying Deep Learning to Fast Radio Burst Classification, The Astronomical Journal 2018 AJ 156 256
Agarwal, Devansh et al., FETCH: A deep-learning based classifier for fast transient classification, Monthly Notices of the Royal Astronomical Society 497 (2020): 1661-1674.B.
Bhattacharyya et al., The GMRT high resolution southern sky survey for pulsars and transients: survey description and initial discoveries, The astronomical journal, vol. 2016 ApJ 817 130
J. W. T. Hessels et al. FRB 121102 Bursts Show Complex Time–Frequency Structure, 2019 ApJL 876 L23
Pilia, Maura, The Low Frequency Perspective on Fast Radio Bursts, 2022, Universe 8, no. 1: 9.
Niu, CH., Aggarwal, K., Li, D. et al. A repeating fast radio burst associated with a persistent radio source. Nature 606, 873–877 (2022)
K M Rajwade, et al., Possible periodic activity in the repeating FRB 121102, Monthly Notices of the Royal Astronomical Society, Volume 495, Issue 4, July 2020, Pages 3551–3558.
Bussons Gordo, J., Fernández Ruiz, M., Prieto Mateo, M. et al. Automatic Burst Detection in Solar Radio Spectrograms Using Deep Learning: deARCE Method. Sol Phys 298, 82 (2023).
Aya Nabil Sayed, et al., Deep and transfer learning for building occupancy detection: A review and comparative analysis, Engineering Applications of Artificial Intelligence, Volume 115,2022
F. Zhuang et al., A Comprehensive Survey on Transfer Learning, in Proceedings of the IEEE, vol. 109, no. 1, pp. 43-76, Jan. 2021.
Hussain, Mahbub et al. ,A Study on CNN Transfer Learning for Image Classification, UK Workshop on Computational Intelligence, 2018.
Lu, Ying., Transfer Learning for Image Classification, 2017.
Sara Hosseinzadeh Kassani, at el., Deep transfer learning based model for colorectal cancer histopathology segmentation: A comparative study of deep pre-trained models, International Journal of Medical Informatics,Volume 159,2022.
B. Bamne, et al., Transfer learning-based Object Detection by using Convolutional Neural Networks, 2020 International Conference on Electronics and Sustainable Communication Systems (ICESC), Coimbatore, India, 2020, pp. 328-332 (conf)
Ioffe, Sergey, and Christian Szegedy, Batch normalization: Accelerating deep network training by reducing internal covariate shift, International conference on machine learning. pmlr, 2015.
Sandeep Kadam, & T. Srinivasarao. (2023). ElitGA : Elitism Based Genetic Algorithm for Evaluation of Mutation Testing on Heterogeneous Dataset. International Journal of Intelligent Systems and Applications in Engineering, 11(4s), 509–516. Retrieved from https://ijisae.org/index.php/IJISAE/article/view/2720.
D. L. Jones et al., "Big data challenges for large radio arrays," 2012 IEEE Aerospace Conference, Big Sky, MT, USA, 2012, pp. 1-6, doi: 10.1109/AERO.2012.6187090.
C. Patel et al PALFA Single-pulse Pipeline: New Pulsars, Rotating Radio Transients, and a Candidate Fast Radio Burst, 2018 ApJ 869 181
FETCH, https://github.com/devanshkv/fetch
single pulse ml, https://github.com/ liamconnor/single_pulse_ml
HEIMDALL, https://sourceforge.net/p/ heimdall-astro/wiki/Home/
Billings Lee, 2013, Scientific American, https://www.scientificamerican.com/article/a-brilliant-flash-then-nothing-new-fast- radio-bursts-mystify-astronomers/
https://towardsdatascience.com/a- comprehensive-hands-on-guide-to- transfer-learning-with-real-world- applications-in-deep-learning- 212bf3b2f27a.
https://machinelearningmastery.com/how- to-use-transfer-learning-when- developing-convolutional-neural- network-models/
Prof. C. Ranjeeth Kumar. (2020). Malware Detection Using Remedimorbus Application. International Journal of New Practices in Management and Engineering, 9(01), 08 - 15. https://doi.org/10.17762/ijnpme.v9i01.82.
Sable, N.P., Rathod, V.U. (2023). Rethinking Blockchain and Machine Learning for Resource-Constrained WSN. In: Neustein, A., Mahalle, P.N., Joshi, P., Shinde, G.R. (eds) AI, IoT, Big Data and Cloud Computing for Industry 4.0. Signals and Communication Technology. Springer, Cham. https://doi.org/10.1007/978-3-031-29713-7_17.
N. P. Sable, V. U. Rathod, R. Sable and G. R. Shinde, "The Secure E-Wallet Powered by Blockchain and Distributed Ledger Technology," 2022 IEEE Pune Section International Conference (PuneCon), Pune, India, 2022, pp. 1-5, doi: 10.1109/PuneCon55413.2022.10014893.
V. U. Rathod and S. V. Gumaste, "Role of Routing Protocol in Mobile Ad-Hoc Network for Performance of Mobility Models," 2023 IEEE 8th International Conference for Convergence in Technology (I2CT), Lonavla, India, 2023, pp. 1-6, doi: 10.1109/I2CT57861.2023.10126390.
N. P. Sable, V. U. Rathod, P. N. Mahalle and D. R. Birari, "A Multiple Stage Deep Learning Model for NID in MANETs," 2022 International Conference on Emerging Smart Computing and Informatics (ESCI), Pune, India, 2022, pp. 1-6, doi: 10.1109/ESCI53509.2022.9758191.
N. P. Sable, M. D. Salunke, V. U. Rathod and P. Dhotre, "Network for Cross-Disease Attention to the Severity of Diabetic Macular Edema and Joint Retinopathy," 2022 International Conference on Smart Generation Computing, Communication and Networking (SMART GENCON), Bangalore, India, 2022, pp. 1-7, doi: 10.1109/SMARTGENCON56628.2022.10083936.
Dwarkanath Pande, S. ., & Hasane Ahammad, D. S. . (2022). Cognitive Computing-Based Network Access Control System in Secure Physical Layer. Research Journal of Computer Systems and Engineering, 3(1), 14–20. Retrieved from https://technicaljournals.org/RJCSE/index.php/journal/article/view/36.
V. U. Rathod, N. P. Sable, N. N. Thorat and S. N. Ajani, "Deep Learning Techniques Using Lightweight Cryptography for IoT Based E-Healthcare System," 2023 3rd International Conference on Intelligent Technologies (CONIT), Hubli, India, 2023, pp. 1-5, doi: 10.1109/CONIT59222.2023.10205808.
V. U. Rathod and S. V. Gumaste, “Role of Deep Learning in Mobile Ad-hoc Networks”, IJRITCC, vol. 10, no. 2s, pp. 237–246, Dec. 2022.
N. P. Sable, V. U. Rathod, P. N. Mahalle, and P. N. Railkar, “An Efficient and Reliable Data Transmission Service using Network Coding Algorithms in Peer-to-Peer Network”, IJRITCC, vol. 10, no. 1s, pp. 144–154, Dec. 2022.
N. P. Sable, R. Sonkamble, V. U. Rathod, S. Shirke, J. Y. Deshmukh, and G. T. Chavan, “Web3 Chain Authentication and Authorization Security Standard (CAA)”, IJRITCC, vol. 11, no. 5, pp. 70–76, May 2023.
Vijay U. Rathod* & Shyamrao V. Gumaste, “Effect Of Deep Channel To Improve Performance On Mobile Ad-Hoc Networks”, J. Optoelectron. Laser, vol. 41, no. 7, pp. 754–756, Jul. 2022.
Rathod, V.U. and Gumaste, S.V., 2022. Role of Neural Network in Mobile Ad Hoc Networks for Mobility Prediction. International Journal of Communication Networks and Information Security, 14(1s), pp.153-166.
Y. Mali, “A Comparative Analysis of Machine Learning Models for Soil Health Prediction and Crop Selection”, International Journal of Intelligent Systems and Applications in Engineering (IJISAE), vol. 11, no. 10s, pp. 811–828, Aug. 2023.
N. P. Sable, V. U. Rathod, M. D. . Salunke, H. B. Jadhav, R. S. . Tambe, and S. R. . Kothavle, “Enhancing Routing Performance in Software-Defined Wireless Sensor Networks through Reinforcement Learning”, International Journal of Intelligent Systems and Applications in Engineering (IJISAE), vol. 11, no. 10s, pp. 73–83, Aug. 2023.