Implementation and evaluation of digital twin framework for Internet of Things based healthcare systems

IF 1.5 Q3 TELECOMMUNICATIONS
Ahmed K. Jameil, Hamed Al-Raweshidy
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引用次数: 0

Abstract

The integration of digital twins (DTs) in healthcare is critical but remains limited in real-time patient monitoring due to challenges in achieving low-latency telemetry transmission and efficient resource management. This paper addresses these limitations by presenting a novel cloud-based DT framework that optimises real-time healthcare monitoring, providing a timely solution for critical healthcare needs. The framework incorporates a Pyomo-based dynamic optimisation model, which reduces telemetry latency by 32% and improves response time by 52%, surpassing existing systems. Leveraging low-cost, low-latency multimodal sensors, the system continuously monitors critical physiological parameters, including SpO2, heart rate, and body temperature, enabling proactive health interventions. A DT definition language (Digital Twin Definition Language)-based time series analysis and twin graph platform further enhance sensor connectivity and scalability. Additionally, the integration of machine learning (ML) strengthens predictive accuracy, achieving 98% real-time accuracy and 99.58% under cross-validation (cv = 20) using the XGBoost algorithm. Empirical results demonstrate substantial improvements in processing time, system stability, and learning capacity, with real-time predictions completed in 17 ms. This framework represents a significant advancement in healthcare monitoring, offering a responsive and scalable solution to latency and resource constraints in real-time applications. Future research could explore incorporating additional sensors and advanced ML models to further expand its impact in healthcare applications.

Abstract Image

基于物联网的医疗保健系统数字孪生框架的实施与评估
数字孪生体(DTs)在医疗保健中的集成至关重要,但由于在实现低延迟遥测传输和有效资源管理方面存在挑战,因此在实时患者监测方面仍然有限。本文通过提出一种新的基于云的DT框架来解决这些限制,该框架优化了实时医疗保健监控,为关键医疗保健需求提供了及时的解决方案。该框架结合了基于pyomo的动态优化模型,可以将遥测延迟减少32%,将响应时间提高52%,超过现有系统。该系统利用低成本、低延迟的多模态传感器,持续监测关键生理参数,包括SpO2、心率和体温,从而实现主动健康干预。基于DT定义语言(数字孪生定义语言)的时间序列分析和双图平台进一步增强了传感器的连接性和可扩展性。此外,机器学习(ML)的集成增强了预测准确性,使用XGBoost算法实现了98%的实时准确性和99.58%的交叉验证(cv = 20)。实验结果表明,在处理时间、系统稳定性和学习能力方面有了实质性的改进,实时预测在17毫秒内完成。该框架代表了医疗保健监控方面的重大进步,为实时应用程序中的延迟和资源限制提供了响应性和可扩展的解决方案。未来的研究可以探索结合更多的传感器和先进的机器学习模型,以进一步扩大其在医疗保健应用中的影响。
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来源期刊
IET Wireless Sensor Systems
IET Wireless Sensor Systems TELECOMMUNICATIONS-
CiteScore
4.90
自引率
5.30%
发文量
13
审稿时长
33 weeks
期刊介绍: IET Wireless Sensor Systems is aimed at the growing field of wireless sensor networks and distributed systems, which has been expanding rapidly in recent years and is evolving into a multi-billion dollar industry. The Journal has been launched to give a platform to researchers and academics in the field and is intended to cover the research, engineering, technological developments, innovative deployment of distributed sensor and actuator systems. Topics covered include, but are not limited to theoretical developments of: Innovative Architectures for Smart Sensors;Nano Sensors and Actuators Unstructured Networking; Cooperative and Clustering Distributed Sensors; Data Fusion for Distributed Sensors; Distributed Intelligence in Distributed Sensors; Energy Harvesting for and Lifetime of Smart Sensors and Actuators; Cross-Layer Design and Layer Optimisation in Distributed Sensors; Security, Trust and Dependability of Distributed Sensors. The Journal also covers; Innovative Services and Applications for: Monitoring: Health, Traffic, Weather and Toxins; Surveillance: Target Tracking and Localization; Observation: Global Resources and Geological Activities (Earth, Forest, Mines, Underwater); Industrial Applications of Distributed Sensors in Green and Agile Manufacturing; Sensor and RFID Applications of the Internet-of-Things ("IoT"); Smart Metering; Machine-to-Machine Communications.
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