Skripsi
PENERAPAN SMART TRANSPORTATION PADA SMART CITY UNTUK MENENTUKAN RUTE TERBAIK MENGGUNAKAN METODE RECURRENT NEURAL NETWORK YANG DIOPTIMASI DENGAN GRID SEARCH (RNN-GS)
In this study using the You Only Look Once Version 8 (YOLOv8) algorithm to detect and count the number of vehicles based on CCTV recordings, The Recurrent Neural Network (RNN) method optimized with Grid Search (GS) is used to predict road density conditions so as to get smooth, medium, congested output, and to determine the best route using the A-Star algorithm. This study uses a dataset of vehicle images totaling 4224 images and a reference table of 5 columns and 320 rows of road conditions in .csv form. The use of YOLOv8 in this study resulted in an mAP model of 85.4% and an accuracy of 78.61%. Next, the RNN method resulted in model accuracy of 49.84% and prediction accuracy of readings of 95.75%, followed by optimization using Grid Search so as to get model accuracy of 50.48% and reading accuracy of 95.75%, So there was an increase in model accuracy by 0.64% and for reading accuracy remained the same by 95.75%. Finally, the A-Star algorithm determines the best route using the parameters of road conditions and mileage so as to get the best route results on route 4, because route 4 has the smallest weight in all conditions 08.00 am and 09.00 am, 01.00 pm and 02.00 pm, 04.00 PM and 05.00 pm.
Inventory Code | Barcode | Call Number | Location | Status |
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2307005145 | T121786 | T1217862023 | Central Library (Referens) | Available but not for loan - Not for Loan |
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