Growing remote health monitoring system allows constant monitoring of the patient's condition and performance of preventive and control check-ups outside medical facilities. However, the real-time smart-healthcare application poses a delay constraint that has to be solved efficiently. Fog computing is emerging as an efficient solution for such real-time applications. Moreover, different medical centers are getting attracted to the growing IoT-based remote healthcare system in order to make a profit by hiring Fog computing resources. However, there is a need for an efficient algorithmic model for allocation of limited fog computing resources in the criticality-aware smart-healthcare system considering the profit of medical centers. Thus, the objective of this work is to maximize the system utility calculated as a linear combination of the profit of the medical center and the loss of patients. To measure profit, we propose a flat-pricing-based model. Further, we propose a swapping-based heuristic to maximize the system utility. The proposed heuristic is tested on various parameters and shown to perform close to the optimal with criticality-awareness in its core. Through extensive simulations, we show that the proposed heuristic achieves an average utility of $96\%$ of the optimal, in polynomial time complexity.
翻译:然而,考虑到医疗中心的利润和病人损失的线性结合,这项工作的目标是尽量扩大计算系统效用,这是医疗中心利润和病人损失的线性结合。为了衡量利润,我们提议一个以单价为基础的模式。此外,我们提议一种基于交换的超理论模式,以尽量扩大系统效用。拟议的超理论学根据各种参数进行测试,并显示其核心的临界值与临界度智能保健系统最接近于临界度认知度的最佳值。我们通过广泛模拟,显示拟议的超理论性能在9-6年中达到一个最高值。