MOHHO: multi-objective Harris hawks optimization algorithm for service placement in fog computing

Arezoo Ghasemi
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Abstract

The fog computing model is a new computing model that has been proposed in recent years by increasing the number of requests sent to the cloud to reduce the delay and workload of the cloud computing model. In addition to its advantages, the fog computing model also has challenges, among which we can mention the issue of service placement in this computing model, which is very effective in the performance of the computing model. So far, many works have been presented to solve the problem of service deployment by considering different goals such as energy consumption, end-to-end delay, load balancing, resource efficiency, etc. Considering the importance of all the mentioned parameters, it is very important to provide a multi-objective method. In multi-objective problems, the method of evaluating the generated solutions is a separate challenge. Therefore, in this paper, a service placement method is presented by considering end-to-end delay criteria and energy consumption based on the modified Harris hawks algorithm to solve multi-objective problems. To increase accuracy, in the proposed method called multi-objective Harris hawks optimization, a multi-objective problem is modeled as several single-objective problems. The simulation results in CloudSim show that the proposed method has achieved better results than other algorithms in terms of reducing energy consumption, end-to-end delay, and network utilization.

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MOHHO:用于雾计算服务安置的多目标哈里斯鹰优化算法
雾计算模型是近年来提出的一种新型计算模型,它通过增加发送到云端的请求数量来减少云计算模型的延迟和工作量。除了优势之外,雾计算模式也存在挑战,其中我们可以提到的是该计算模式中的服务放置问题,这对计算模式的性能影响非常大。迄今为止,已有许多作品通过考虑能耗、端到端延迟、负载平衡、资源效率等不同目标来解决服务部署问题。考虑到上述所有参数的重要性,提供一种多目标方法非常重要。在多目标问题中,评估所生成解决方案的方法是一个单独的挑战。因此,本文基于改进的哈里斯鹰算法,考虑端到端延迟标准和能耗,提出了一种服务安置方法,以解决多目标问题。为了提高准确性,在所提出的多目标哈里斯鹰优化方法中,一个多目标问题被建模为多个单目标问题。在 CloudSim 中的仿真结果表明,在降低能耗、端到端延迟和网络利用率方面,所提出的方法比其他算法取得了更好的效果。
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