Konkuk Aerospace Design-Airworthiness Research Institute (KADA), Konkuk University, Seoul 05029, Korea.
Programa de Pós-Graduação em Ciência da Computação, Campus Universitário Ministro Petrônio Portella, Universidade Federal do Piauí (UFPI), Ininga, Teresina 64049-550, PI, Brazil.
Sensors (Basel). 2021 Sep 17;21(18):6253. doi: 10.3390/s21186253.
The aggressive waves of ongoing world-wide virus pandemics urge us to conduct further studies on the performability of local computing infrastructures at hospitals/medical centers to provide a high level of assurance and trustworthiness of medical services and treatment to patients, and to help diminish the burden and chaos of medical management and operations. Previous studies contributed tremendous progress on the dependability quantification of existing computing paradigms (e.g., cloud, grid computing) at remote data centers, while a few works investigated the performance of provided medical services under the constraints of operational availability of devices and systems at local medical centers. Therefore, it is critical to rapidly develop appropriate models to quantify the operational metrics of medical services provided and sustained by medical information systems (MIS) even before practical implementation. In this paper, we propose a comprehensive performability SRN model of an edge/fog based MIS for the performability quantification of medical data transaction and services in local hospitals or medical centers. The model elaborates different failure modes of fog nodes and their VMs under the implementation of fail-over mechanisms. Sophisticated behaviors and dependencies between the performance and availability of data transactions are elaborated in a comprehensive manner when adopting three main load-balancing techniques including: (i) probability-based, (ii) random-based and (iii) shortest queue-based approaches for medical data distribution from edge to fog layers along with/without fail-over mechanisms in the cases of component failures at two levels of fog nodes and fog virtual machines (VMs). Different performability metrics of interest are analyzed including (i) recover token rate, (ii) mean response time, (iii) drop probability, (iv) throughput, (v) queue utilization of network devices and fog nodes to assimilate the impact of load-balancing techniques and fail-over mechanisms. Discrete-event simulation results highlight the effectiveness of the combination of these for enhancing the performability of medical services provided by an MIS. Particularly, performability metrics of medical service continuity and quality are improved with fail-over mechanisms in the MIS while load balancing techniques help to enhance system performance metrics. The implementation of both load balancing techniques along with fail-over mechanisms provide better performability metrics compared to the separate cases. The harmony of the integrated strategies eventually provides the trustworthiness of medical services at a high level of performability. This study can help improve the design of MIS systems integrated with different load-balancing techniques and fail-over mechanisms to maintain continuous performance under the availability constraints of medical services with heavy computing workloads in local hospitals/medical centers, to combat with new waves of virus pandemics.
当前,全球范围内的病毒大流行浪潮汹涌,促使我们对医院/医疗中心的本地计算基础设施的性能进行进一步研究,以提供高水平的医疗服务保证和可信度,并帮助减轻医疗管理和运营的负担和混乱。以前的研究在远程数据中心的现有计算范式(例如,云、网格计算)的可靠性量化方面取得了巨大进展,而少数工作则研究了在本地医疗中心的设备和系统运行可用性的约束下提供的医疗服务的性能。因此,即使在实际实施之前,快速开发适当的模型来量化医疗信息系统(MIS)提供和维持的医疗服务的运行指标至关重要。在本文中,我们提出了一种基于边缘/雾的 MIS 的全面性能 SRN 模型,用于对本地医院或医疗中心的医疗数据交易和服务的性能进行量化。该模型详细说明了故障转移机制下雾节点及其虚拟机的不同故障模式。在采用三种主要的负载均衡技术(包括:(i)基于概率的、(ii)基于随机的和(iii)基于最短队列的)从边缘到雾层分配医疗数据时,以及在雾节点和雾虚拟机(VM)的两个级别发生组件故障时采用故障转移机制的情况下,全面阐述了数据事务的性能和可用性之间的复杂行为和依赖关系。分析了不同的性能指标,包括(i)恢复令牌率、(ii)平均响应时间、(iii)丢失概率、(iv)吞吐量、(v)网络设备和雾节点的队列利用率,以吸收负载均衡技术和故障转移机制的影响。离散事件仿真结果突出了这些技术组合的有效性,可提高 MIS 提供的医疗服务的性能。特别是,在 MIS 中采用故障转移机制可以提高医疗服务连续性和质量的性能指标,而负载均衡技术有助于提高系统性能指标。与单独情况相比,同时采用负载均衡技术和故障转移机制可以提供更好的性能指标。综合策略的协调最终在高性能水平上提供了医疗服务的可信度。这项研究有助于改进与不同负载均衡技术和故障转移机制集成的 MIS 系统的设计,以在本地医院/医疗中心的具有繁重计算工作量的医疗服务的可用性约束下保持连续性能,以应对新一波的病毒大流行。