Araştırma Makalesi
BibTex RIS Kaynak Göster
Yıl 2024, Cilt: 42 Sayı: 3, 621 - 632, 12.06.2024

Öz

Kaynakça

  • REFERENCES
  • [1] Liu X, Miao X, Jiang H, Chen J. Data analysis in visual power line inspection: An in-depth review of deep learning for component detection and fault diagnosis. Annu Rev Control. 2020;50:253277. [CrossRef]
  • [2] Jenssen R, Roverso D. Automatic autonomous vision-based power line inspection: A review of current status and the potential role of deep learning. Int J Electr Power Energy Syst 2018;99:107120. [CrossRef]
  • [3] Aggarwal S, Kumar N. Path planning techniques for unmanned aerial vehicles: A review, solutions, and challenges. Comput Commun 2020;149:270299. [CrossRef]
  • [4] Ye L, Hu Z, Li C, Zhang Y, Jiang S, Yang Z, Zhang D. The reasonable range of life cycle utilization rate of distribution network equipment. IEEE Access 2018;6:2394823959. [CrossRef]
  • [5] Song Q, Zeng Y, Xu J, Jin S. A survey of prototype and experiment for UAV communications. Sci China Inf Sci 2021;64:121. [CrossRef]
  • [6] Dobson I, Carreras BA, Lynch VE, Newman DE. An initial model for complex dynamics in electric power system blackouts. In: HICSS. 2001 January.
  • [7] Carreras B, Lynch V, Sachtjen M, Dobson I, Newman D. Modeling blackout dynamics in power transmission networks with simple structure. In: Proceedings of the 34th Annual Hawaii International Conference on System Sciences (Vol. 3). IEEE Computer Society. 2001;2018.
  • [8] Samotyj M. The Cost of power disturbance to industrial and digital economy companies. Consortium for Electrical Infrastructure to Support a Digital Society, an Initiative by EPRI and the Electrical Innovation Institute. 2001.
  • [9] Matikainen L, Lehtomäki M, Ahokas E, Hyyppä J, Karjalainen M, Jaakkola A, Heinonen T. Remote sensing methods for power line corridor surveys. ISPRS J Photogramm Remote Sens 2016;119:1031. [CrossRef]
  • [10] Katrasnik J, Pernus F, Likar B. A survey of mobile robots for distribution power line inspection. IEEE Trans Power Deliv 2009;25:485493. [CrossRef]
  • [11] Ahmed Md F, Yeole SN. Fabrication and Testing of Quadcopter Prototype for Surveillance. Int J Mech Prod Eng Res Dev 2018;99105.
  • [12] Ahmed MF, Mohanta JC, Zafar MN. Development of smart quadcopter for autonomous overhead power transmission line inspections. Mater Today Proc 2022;51:261268. [CrossRef]
  • [13] Wilken NJ, Gouws R. Development of a quadcopter for power line inspection. 22th Southern African Universities Power Engineering Conference, 30 - 31 January 2014, Durban, South Africa.
  • [14] Mohanta JC, Parhi DR, Mohanty SR, Keshari A. A control scheme for navigation and obstacle avoidance of autonomous flying agent. Arabian J Sci Eng. 2018;43:13951407. [CrossRef]
  • [15] Sanyal A, Zafar N, Mohanta JC, Ahmed F. Path Planning Approaches for Mobile Robot Navigation in Various Environments: A Review. Adv Interdiscip Eng 2021;555572. [CrossRef]
  • [16] Miao X, Liu X, Chen J, Zhuang S, Fan J, Jiang H. Insulator detection in aerial images for transmission line inspection using single shot multibox detector. IEEE Access 2019;7:99459956. [CrossRef]
  • [17] Ahmed MF, Zafar MN, Mohanta JC. Modeling and Analysis of Quadcopter F450 Frame. In: 2020 International Conference on Contemporary Computing and Applications (IC3A). 2020;196201. [CrossRef]
  • [18] Use of Drones in GCC Will Disrupt Logistics, Shipping and E-commerce Marmore MENA.
  • [19] Zhao Z, Xu G, Qi Y, Liu N, Zhang T. Multi-patch deep features for power line insulator status classification from aerial images. In: 2016 International Joint Conference on Neural Networks (IJCNN). IEEE. 2016;31873194. [CrossRef]
  • [20] Zhao Z, Xu G, Qi Y. Representation of binary feature pooling for detection of insulator strings in infrared images. IEEE Trans Dielectr Electr Insul. 2016;23:28582866. [CrossRef]
  • [21] Wang B, Zhao D, Li W, Wang Z, Huang Y, You Y, Becker S. Current technologies and challenges of applying fuel cell hybrid propulsion systems in unmanned aerial vehicles. Prog Aerosp Sci 2020;116:100620. [CrossRef] [22] Osco LP, de Arruda MDS, Gonçalves DN, Dias A, Batistoti J, de Souza M, Gonçalves WN. A CNN approach to simultaneously count plants and detect plantation-rows from UAV imagery. ISPRS J Photogramm Remote Sens 2021;174:117. [CrossRef]

Inspection of power transmission line insulators with autonomous quadcopter and SSD network

Yıl 2024, Cilt: 42 Sayı: 3, 621 - 632, 12.06.2024

Öz

In the next generation of smart cities, Unmanned Aerial Vehicles (UAV) also known as drones are playing a vital role in many advanced applications such as power transmission line in-spection, transportation, aerospace and surveillance etc. Due to the excessively high and wide transmission tower heights, the conventional methods of power line inspection are generally ineffective. This manuscript’s primary focus is the development of an autonomous UAV/quadcopter that can hover over transmission towers and capture photographs and videos by flying along pre-planned routes. Quadcopters have a distinct feature that distinguishes them with the existing aerial vehicles and have a vital role in wide range of applications such as live monitoring of traffic and crowded areas, remote locations, delivery and inspection. This man-uscript also explains about the advanced sensors & components such as Global Navigation Satellite System (GNSS), optical flow sensor and Here Link etc. required for fabrication of an autonomous quadcopter for power transmission line applications. The fabricated quadcopter includes a light weight S-500 frame equipped with intelligent controller such as Pixhawk cube orange (2.1) and NVIDIA nano board for receiving and analyzing the data from the onboard sensors and camera based on pre-determined criteria. The proposed approach increases effectiveness and accuracy, has a promising future for intelligent insulator detection and inspection which is a valuable addition to power networks. The suggested deep learning technique has a detection speed of 51.8 frames/sec and a detection accuracy of up to 90.31 percent. The suggested DL algorithm has a promising future in terms of intelligent insulator inspection in power grids.

Kaynakça

  • REFERENCES
  • [1] Liu X, Miao X, Jiang H, Chen J. Data analysis in visual power line inspection: An in-depth review of deep learning for component detection and fault diagnosis. Annu Rev Control. 2020;50:253277. [CrossRef]
  • [2] Jenssen R, Roverso D. Automatic autonomous vision-based power line inspection: A review of current status and the potential role of deep learning. Int J Electr Power Energy Syst 2018;99:107120. [CrossRef]
  • [3] Aggarwal S, Kumar N. Path planning techniques for unmanned aerial vehicles: A review, solutions, and challenges. Comput Commun 2020;149:270299. [CrossRef]
  • [4] Ye L, Hu Z, Li C, Zhang Y, Jiang S, Yang Z, Zhang D. The reasonable range of life cycle utilization rate of distribution network equipment. IEEE Access 2018;6:2394823959. [CrossRef]
  • [5] Song Q, Zeng Y, Xu J, Jin S. A survey of prototype and experiment for UAV communications. Sci China Inf Sci 2021;64:121. [CrossRef]
  • [6] Dobson I, Carreras BA, Lynch VE, Newman DE. An initial model for complex dynamics in electric power system blackouts. In: HICSS. 2001 January.
  • [7] Carreras B, Lynch V, Sachtjen M, Dobson I, Newman D. Modeling blackout dynamics in power transmission networks with simple structure. In: Proceedings of the 34th Annual Hawaii International Conference on System Sciences (Vol. 3). IEEE Computer Society. 2001;2018.
  • [8] Samotyj M. The Cost of power disturbance to industrial and digital economy companies. Consortium for Electrical Infrastructure to Support a Digital Society, an Initiative by EPRI and the Electrical Innovation Institute. 2001.
  • [9] Matikainen L, Lehtomäki M, Ahokas E, Hyyppä J, Karjalainen M, Jaakkola A, Heinonen T. Remote sensing methods for power line corridor surveys. ISPRS J Photogramm Remote Sens 2016;119:1031. [CrossRef]
  • [10] Katrasnik J, Pernus F, Likar B. A survey of mobile robots for distribution power line inspection. IEEE Trans Power Deliv 2009;25:485493. [CrossRef]
  • [11] Ahmed Md F, Yeole SN. Fabrication and Testing of Quadcopter Prototype for Surveillance. Int J Mech Prod Eng Res Dev 2018;99105.
  • [12] Ahmed MF, Mohanta JC, Zafar MN. Development of smart quadcopter for autonomous overhead power transmission line inspections. Mater Today Proc 2022;51:261268. [CrossRef]
  • [13] Wilken NJ, Gouws R. Development of a quadcopter for power line inspection. 22th Southern African Universities Power Engineering Conference, 30 - 31 January 2014, Durban, South Africa.
  • [14] Mohanta JC, Parhi DR, Mohanty SR, Keshari A. A control scheme for navigation and obstacle avoidance of autonomous flying agent. Arabian J Sci Eng. 2018;43:13951407. [CrossRef]
  • [15] Sanyal A, Zafar N, Mohanta JC, Ahmed F. Path Planning Approaches for Mobile Robot Navigation in Various Environments: A Review. Adv Interdiscip Eng 2021;555572. [CrossRef]
  • [16] Miao X, Liu X, Chen J, Zhuang S, Fan J, Jiang H. Insulator detection in aerial images for transmission line inspection using single shot multibox detector. IEEE Access 2019;7:99459956. [CrossRef]
  • [17] Ahmed MF, Zafar MN, Mohanta JC. Modeling and Analysis of Quadcopter F450 Frame. In: 2020 International Conference on Contemporary Computing and Applications (IC3A). 2020;196201. [CrossRef]
  • [18] Use of Drones in GCC Will Disrupt Logistics, Shipping and E-commerce Marmore MENA.
  • [19] Zhao Z, Xu G, Qi Y, Liu N, Zhang T. Multi-patch deep features for power line insulator status classification from aerial images. In: 2016 International Joint Conference on Neural Networks (IJCNN). IEEE. 2016;31873194. [CrossRef]
  • [20] Zhao Z, Xu G, Qi Y. Representation of binary feature pooling for detection of insulator strings in infrared images. IEEE Trans Dielectr Electr Insul. 2016;23:28582866. [CrossRef]
  • [21] Wang B, Zhao D, Li W, Wang Z, Huang Y, You Y, Becker S. Current technologies and challenges of applying fuel cell hybrid propulsion systems in unmanned aerial vehicles. Prog Aerosp Sci 2020;116:100620. [CrossRef] [22] Osco LP, de Arruda MDS, Gonçalves DN, Dias A, Batistoti J, de Souza M, Gonçalves WN. A CNN approach to simultaneously count plants and detect plantation-rows from UAV imagery. ISPRS J Photogramm Remote Sens 2021;174:117. [CrossRef]
Toplam 22 adet kaynakça vardır.

Ayrıntılar

Birincil Dil İngilizce
Konular Biyokimya ve Hücre Biyolojisi (Diğer)
Bölüm Research Articles
Yazarlar

Faiyaz Ahmed Bu kişi benim 0000-0003-1885-2255

J. C. Mohanta Bu kişi benim 0000-0003-4708-3045

Yayımlanma Tarihi 12 Haziran 2024
Gönderilme Tarihi 20 Nisan 2022
Yayımlandığı Sayı Yıl 2024 Cilt: 42 Sayı: 3

Kaynak Göster

Vancouver Ahmed F, Mohanta JC. Inspection of power transmission line insulators with autonomous quadcopter and SSD network. SIGMA. 2024;42(3):621-32.

IMPORTANT NOTE: JOURNAL SUBMISSION LINK https://eds.yildiz.edu.tr/sigma/