Papers
Topics
Authors
Recent
Gemini 2.5 Flash
Gemini 2.5 Flash
133 tokens/sec
GPT-4o
7 tokens/sec
Gemini 2.5 Pro Pro
46 tokens/sec
o3 Pro
4 tokens/sec
GPT-4.1 Pro
38 tokens/sec
DeepSeek R1 via Azure Pro
28 tokens/sec
2000 character limit reached

Joint Energy Minimization and Resource Allocation in C-RAN with Mobile Cloud (1509.00374v2)

Published 1 Sep 2015 in cs.NI

Abstract: Cloud radio access network (C-RAN) has emerged as a potential candidate of the next generation access network technology to address the increasing mobile traffic, while mobile cloud computing (MCC) offers a prospective solution to the resource-limited mobile user in executing computation intensive tasks. Taking full advantages of above two cloud-based techniques, C-RAN with MCC are presented in this paper to enhance both performance and energy efficiencies. In particular, this paper studies the joint energy minimization and resource allocation in C-RAN with MCC under the time constraints of the given tasks. We first review the energy and time model of the computation and communication. Then, we formulate the joint energy minimization into a non-convex optimization with the constraints of task executing time, transmitting power, computation capacity and fronthaul data rates. This non-convex optimization is then reformulated into an equivalent convex problem based on weighted minimum mean square error (WMMSE). The iterative algorithm is finally given to deal with the joint resource allocation in C-RAN with mobile cloud. Simulation results confirm that the proposed energy minimization and resource allocation solution can improve the system performance and save energy.

Citations (222)

Summary

  • The paper proposes a joint optimization approach for energy minimization and resource allocation in integrated C-RAN and Mobile Cloud systems, addressing challenges of increasing mobile traffic and device computational demands.
  • The authors reformulate the non-convex optimization problem using WMMSE into a solvable convex form, demonstrating improved system performance and reduced energy consumption compared to separate optimization methods.
  • Numerical results show the joint approach achieves superior energy savings and performance efficiency, offering practical implications for mobile network operators seeking cost and energy reductions in cloud-assisted future networks.

Joint Energy Minimization and Resource Allocation in C-RAN with Mobile Cloud

The paper addresses the challenges associated with increasing mobile traffic and the computational demands of mobile devices by proposing an integrated approach leveraging both Cloud Radio Access Network (C-RAN) and Mobile Cloud Computing (MCC). This paper focuses on optimizing energy consumption and resource allocation within such an integrated system, while also considering task execution time constraints.

The proposed system integrates C-RAN and MCC to optimize energy efficiency in mobile networks. In a C-RAN architecture, traditional base stations are decoupled into Remote Radio Heads (RRHs) and centralized Baseband Unit (BBU) pools connected via fronthaul links. This allows computationally intensive tasks to be offloaded to the cloud, thereby enhancing the network's energy efficiency and overall performance. The authors formulate the energy minimization and resource allocation task as a non-convex optimization problem, constrained by task execution time, transmission power, computation capacity, and fronthaul data rates.

The authors employ a method based on Weighted Minimum Mean Square Error (WMMSE) to reformulate the original non-convex problem into a convex one, making it feasible to solve using iterative algorithms. The paper outlines that the combination of cloud computing capabilities in MCC and C-RAN architectures provides improvements in system performance. The proposed method significantly reduces energy consumption while adhering to the stringent task execution time requirements. Simulation results demonstrate that their proposed algorithms effectively enhance system performance and reduce energy consumption compared to separate optimization approaches.

Critical numerical results indicate that the joint optimization approach achieves superior energy savings compared to the separate optimization of energy costs in the cloud and C-RAN environments. For example, energy savings increase with longer time constraints and decrease computational intensity. Moreover, integrated solutions outperform configurations where task execution in the mobile cloud and signal transmission in C-RAN are optimized independently.

This research holds practical implications for mobile network operators who are tasked with managing operational and capital expenditures while maximizing processing efficiency. The findings support significant energy savings in next-generation mobile networks that employ cloud-assisted technologies, which is crucial for large-scale deployments. On a theoretical level, the work lays a groundwork for further explorations into integrated cloud and network resource management strategies.

Future developments might focus on integrating both uplink and downlink transmissions, thus providing a more comprehensive platform for real-time, large-scale data processing and transfer. Additionally, more sophisticated modeling of fronthaul constraints could further refine resource allocation strategies. These efforts will be crucial as mobile data demands continue to escalate, pointing towards a future where energy-efficient, cloud-based solutions become integral components of mobile network infrastructure.