Skripsi
PENENTUAN JALUR TERBAIK PADA SMART TRANSPORTATION DALAM SMART CITY MENGGUNAKAN METODE RECURRENT NEURAL NETWORK (RNN) DAN LONG SHORT-TERM MEMORY (LSTM) YANG DIOPTIMASI DENGAN BAYESIAN OPTIMIZATION (RNN-BO DAN LSTM-BO)
The best route determining system is part of the Intelligent Transportation concept where cities that implement this concept are called Smart Cities. The study used an object detection system called You Only Look Once version 8 (YOLOv8) to detect and calculate the number of vehicles based on CCTV recordings. In addition, it uses Recurrent Neural Network (RNN) and Long Short-Term Memory (LSTM) optimized with Bayesian Optimization (RNN-BO and LSTM-BO) to predict road density conditions. The graph theory algorithm is used to determine the best path. The data set consists of 4224 images of motorcycle vehicles and cars and a road conditions reference table with 5 columns and 320 rows. YOLOv8 produced models with Mean Average Precision (mAP) of 85.4%, with motorcycle detection accuracy of 76% and cars of 86%. And for the accuracy of the readings YOLOv8 gets 78.61%. The RNN model has an accuracy of 50.16% and a reading accuration of 85.75%, while the LSTM model has a accurate of 50.48% and reading accurateness of 86.76%. After optimization using Bayesian Optimization, the accuracy of the RNN-BO model increased to 55.56% and the LSTM-BO to 54.60%. However, there were no changes in the accuracy of the reading, which is 85.75% for RNN-BO and 86.76% for LSTM-BO. In the implementation of Graph Theory for determining the best path, a consistent result is obtained: Route 4 in all road conditions, based on the parameters of road conditions and the mileage that produces the smallest weight.
Inventory Code | Barcode | Call Number | Location | Status |
---|---|---|---|---|
2307005153 | T121444 | T1214442023 | Central Library (Referens) | Available but not for loan - Not for Loan |
No other version available