Computation Offloading and Service Caching for Mobile Edge Computing Under Personalized Service Preference

Citations

WEB OF SCIENCE

44
Citations

SCOPUS

50

초록

Mobile edge computing (MEC) has emerged as an attractive solution by executing computation-intensive services at a powerful edge server instead of mobiles. Two types of data are necessary to this end. One is user-specific data acquired from mobiles, called computation offloading (CO). The other is service-specific data downloaded from a central cloud, called service caching (SC). It is noteworthy that CO and SC decisions are coupled when each user's service preference (SP) is personalized. Specifically, noting that the optimal SC is to cache services likely to be requested more frequently, the resultant SC tends to be biased to the SP of the user whose offloading rate is high. On the other hand, such an SC decision causes longer computing latency of users with a relatively low offloading rate, which ultimately limits a CO decision for agile MEC services. This work tackles this issue from a sum-utility maximization perspective under radio-resource and computation-latency constraints. The average computation latency is first derived in closed-form by modeling a computation as a stochastic process following a hyper-exponential distribution. Based on it, we first consider the case for homogeneous SP where CO and SC decisions are decoupled. Thus, SC can be deterministically controlled using the homogeneous SP, while CO decision is independently determined, lying between water-filling and channel-inversion allocations. Next, we design a joint CO-and-SC policy for heterogeneous SP. CO and SC decisions are iteratively optimized with the other fixed by leveraging the homogeneous SP's result. The optimal stopping rules are derived, guaranteeing the sum-utility enhancement. The proposed algorithm's effectiveness is verified by simulations that the proposed CO-and-SC design for heterogenous SP always outperforms that for homogeneous SP.

키워드

ServersWireless communicationTask analysisImage edge detectionComputational modelingEnergy consumptionResource managementMobile edge computingcomputation offloadingservice cachingpersonalized service preferencecomputation latencysum-utility maximizationRESOURCE-ALLOCATIONNETWORKSPLACEMENT
제목
Computation Offloading and Service Caching for Mobile Edge Computing Under Personalized Service Preference
저자
Ko, Seung-WooKim, Seong JinJung, HaejoonChoi, Sang Won
DOI
10.1109/TWC.2022.3151131
발행일
2022-08
유형
Article
저널명
IEEE Transactions on Wireless Communications
21
8
페이지
6568 ~ 6583