24 خرداد 1405
رحمن دشتي

رحمن دشتی

مرتبه علمی: دانشیار
نشانی: دانشکده مهندسی سیستم های هوشمند و علوم داده - گروه مهندسی برق
تحصیلات: دکترای تخصصی / مهندسی برق
تلفن: +98-7731222756
دانشکده: دانشکده مهندسی سیستم های هوشمند و علوم داده

مشخصات پژوهش

عنوان
A Data-Driven Framework for Forecasting EV Charging Infrastructure Using Large Language Models
نوع پژوهش مقالات در همایش ها
کلیدواژه‌ها
Electric Vehicle Charging Stations (EVCS), Large Language Model (LLM), Location Prediction, Machine Learning, K-Nearest Neighbors (KNN), Population Density, Points of Interest (POI)
پژوهشگران محمدرضا منصوری (نفر اول) ، رضا غریبی (نفر دوم) ، علی درویشی (نفر سوم) ، بهنام رنجبر (نفر چهارم) ، رحمن دشتی (نفر پنجم)

چکیده

With increasing electric vehicle (EV) adoption, optimal charging station (EVCS) installation is vital for urban planning. Determining suitable locations remains a significant challenge. Previous Dubai studies used traditional machine learning like K-Nearest Neighbors (KNN), Logistic Regression, Neural Networks, and Support Vector Machines. Trained on 80% of the dataset, these achieved up to 89% KNN accuracy, using features like geographic coordinates, population density, Points of Interest (POI), and security cameras. This paper introduces a novel Large Language Model (LLM) approach. Structured data is converted to text; Llama 3 8B is fine-tuned via QLoRA for EVCS classification. Results show substantial accuracy and data efficiency: 98% (60% data) and 97% (50% data). This contrasts significantly with the 89% accuracy from 80% training data in prior methods. Fine-tuned LLMs prove a powerful, highly dataefficient tool for optimizing EVCS distribution and advancing smart city infrastructure.