Optimizing Service Stipulation Uncertainty with Deep Reinforcement Learning for Internet Vehicle Systems
Özet
Fog computing brings computational services near the network
edge to meet the latency constraints of cyber-physical System (CPS) applications. Edge devices enable limited computational capacity and energy availability that hamper end user performance. We designed a novel performance
measurement index to gauge a device’s resource capacity. This examination
addresses the offloading mechanism issues, where the end user (EU) offloads
a part of its workload to a nearby edge server (ES). Sometimes, the ES
further offloads the workload to another ES or cloud server to achieve reliable
performance because of limited resources (such as storage and computation).
The manuscript aims to reduce the service offloading rate by selecting a
potential device or server to accomplish a low average latency and service
completion time to meet the deadline constraints of sub-divided services. In
this regard, an adaptive online status predictive model design is significant
for prognosticating the asset requirement of arrived services to make float
decisions. Consequently, the development of a reinforcement learning-based
flexible x-scheduling (RFXS) approach resolves the service offloading issues,
where x = service/resource for producing the low latency and high performance of the network. Our approach to the theoretical bound and computational complexity is derived by formulating the system efficiency. A quadratic
restraint mechanism is employed to formulate the service optimization issue
according to a set of measurements, as well as the behavioural association rate
and adulation factor. Our system managed an average 0.89% of the service
offloading rate, with 39 ms of delay over complex scenarios (using three servers
with a 50% service arrival rate). The simulation outcomes confirm that the
proposed scheme attained a low offloading uncertainty, and is suitable for
simulating heterogeneous CPS frameworks.
Cilt
74Sayı
3Bağlantı
https://hdl.handle.net/11363/4251Koleksiyonlar
Aşağıdaki lisans dosyası bu öğe ile ilişkilidir: