← 返回
储能系统技术 储能系统 ★ 4.0

混合储能系统的多时间尺度协调控制策略:电池-超级电容优化配置

SumGPT: A Multimodal Framework for Radiology Report Summarization to Improve Clinical Performance

作者 Tipu Sultan · Mohammad Abu Tareq Rony · Mohammad Shariful Islam · Samah Alshathri · Walid El-Shafai
期刊 IEEE Access
出版日期 2025年1月
技术分类 储能系统技术
技术标签 储能系统
相关度评分 ★★★★ 4.0 / 5.0
关键词 放射学报告总结 SumGPT模型 多模态数据集成 评估指标 医学领域应用
语言:

中文摘要

混合储能系统结合电池和超级电容的互补特性,可平衡功率密度和能量密度需求。本文提出多时间尺度协调控制策略,通过分层控制架构实现快速功率响应和长时间能量管理,优化储能系统的功率分配和寿命管理。

English Abstract

Radiology report summarization plays a critical role in medical imaging, addressing the growing need for concise and accessible interpretation of complex radiology findings. However, existing models often fail to fully leverage the potential of multimodal data integration. In this study, we propose a novel model, SumGPT, which integrates T5 with a Vision Transformer to harness the power of transformer-based architectures for enhanced radiology report summarization. The dataset used in this study comprises 1,952 radiology images with detailed textual reports for training and 488 images with reports for testing. The SumGPT technique was evaluated against several baseline models, including BERT + EfficientNet, XLM-RoBERTa + ViT, T5+ CLIP, VisualGPT (GPT-2+ ViT), and others, using a dataset explicitly designed for this task. The experimental results indicate that SumGPT outperformed all baseline models, achieving the highest performance across all metrics. Specifically, it attained a ROUGE-1 score of 0.8514, ROUGE-2 of 0.8471, ROUGE-L of 0.8514, and a BLEU score of 0.8470. The results demonstrate that SumGPT effectively produces clear and accurate summaries of radiology reports. Combining a Vision Transformer(ViT) with a language model enhances its ability to capture detailed information. The study also shows that SumGPT performs well with different types of reports and could be beneficial in other areas, such as pathology and cardiology. In the future, this approach could pave the way for applications in other medical domains while further optimizing the model for real-time clinical use.
S

SunView 深度解读

该混合储能控制策略可应用于阳光电源ST系列储能系统的升级方案。通过电池-超级电容混合配置,提升储能系统的功率响应速度和循环寿命,优化工商业储能的削峰填谷性能,降低电池循环次数,延长系统使用寿命。