A Review on Automatic Visual Inspection for Railway Overhead Contact Line Systems

Penulis

DOI:

https://doi.org/10.37367/jpi.v8i2.346

Kata Kunci:

Railway, Overhead Catenary System, inspection method, Automatic inspection, Computer vision, Image processing, Artificial Intelligence

Abstrak

Inspeksi sistem overhead catenary meliputi pemeriksaan pada geometri kawat kontak, interaksi antara kawat kontak dan pantograf, cacat pada komponen, komponen yang aus, dan jarak bebas sangat diperlukan untuk memastikan keandalan, ketersediaan, pemeliharaan keselamatan infrastruktur dan operasi kereta api. Teknologi inspeksi visual otomatis pada sistem overhead catenary dapat meningkatkan efisiensi, efektivitas biaya, dan presisi jika dibandingkan dengan metode inspeksi konvensional. Makalah ini memberikan gambaran umum dan kontribusi penelitian yang dilakukan oleh para ahli di bidang ini, serta aplikasi dan kemajuan teknologi inspeksi visual otomatis untuk sistem overhead catenary kereta api. Proyeksi arah penelitian di masa depan untuk sistem inspeksi otomatis dalam kegiatan inspeksi sistem catenary overhead juga akan dibahas.

Unduhan

Data unduhan tidak tersedia.

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2024-10-31

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Achma, R., Wicaksono, S., & ferryanto. (2024). A Review on Automatic Visual Inspection for Railway Overhead Contact Line Systems. Jurnal Perkeretaapian Indonesia (Indonesian Railway Journal), 8(2), 50-61. https://doi.org/10.37367/jpi.v8i2.346

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