Optimizing Real-Time Intelligent Traffic Systems with LSTM Forecasting and A* Search: An Evaluation of Hypervisor Schedulers
Optimizing Real-Time Intelligent Traffic Systems with LSTM Forecasting and A* Search: An Evaluation of Hypervisor Schedulers
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Azizul Hakim Rafi. (2024). Optimizing Real-Time Intelligent Traffic Systems with LSTM Forecasting and A* Search: An Evaluation of Hypervisor Schedulers. Global Journal of Computer Science and Technology, 24(D2), 25–36. Retrieved from https://gjcst.com/index.php/gjcst/article/view/1660

Abstract

This research explores an Intelligent Traffic System ITS designed for real-time optimal routing using traffic forecasting and an A search algorithm Leveraging a pre-trained Long Short-Term Memory LSTM neural network I predict traffic flow based on historical data to inform heuristic functions ensuring optimal route calculations The heuristic is constructed to be permissible and consistent by incorporating predicted traffic flow and average speed measurements The experimental setup involves a messaging virtual machine VM and a real-time VM within a Xen hypervisor environment utilizing Apache Kafka and Apache Flink for data flow and processing I empirically evaluate the latency performance of the ITS under three different Xen schedulers RTDS Credit and Credit2 My findings indicate that the RTDS scheduler provides superior latency guarantees making it suitable for applications requiring ultra-low latency whereas the Credit and Credit2 schedulers offer better median performance These insights highlight the impact of hypervisor scheduler choice on the efficiency and responsiveness of real-time ITS applications
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