The paper introduces the Traffic Research Agent (TR-Agent), an AI-driven system designed to autonomously develop and refine traffic models through an iterative, closed-loop process. TR-Agent divides the research pipeline into four key stages: idea generation, theory formulation, theory evaluation, and iterative optimization, which are supported by four corresponding modules: Idea Generator, Code Generator, Evaluator, and Analyzer.
The Idea Generator leverages Retrieval-Augmented Generation (RAG) technology to expand the memory of large language models (LLMs) and generate novel ideas for improving traffic models. The Code Generator translates these ideas into executable Python functions, while the Evaluator assesses the performance of the new models using prepared testing datasets. The Analyzer reviews the experiment reports, identifies deficiencies, and provides feedback to the Idea Generator, initiating a new iteration to refine the model further.
The authors validate TR-Agent across multiple traffic models, including the Intelligent Driver Model (IDM) for car following, the MOBIL lane-changing model, and the Lighthill-Whitham-Richards (LWR) traffic flow model. TR-Agent demonstrates its ability to autonomously enhance the performance of these models by over 25%, 75%, and 90%, respectively, compared to their baseline versions. Additionally, TR-Agent provides clear explanations for its optimizations, making it easier for researchers to understand and build upon its advancements.
The paper highlights the potential of TR-Agent to revolutionize traffic research and extend its applicability to other scientific domains that rely on model-based problem-solving. By streamlining the research process and enhancing model development, TR-Agent can significantly improve efficiency and productivity in various fields.
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by Xusen Guo, X... às arxiv.org 09-26-2024
https://arxiv.org/pdf/2409.16876.pdfPerguntas Mais Profundas