Litcius/Paper detail

Multiobjective Demand Response for Internet Data Centers

Wei‐Yu Chiu, Wei-Kang Hsieh, Chia‐Ming Chen, Yu-Chieh Chuang

2021IEEE Transactions on Emerging Topics in Computational Intelligence13 citationsDOIOpen Access PDF

Abstract

Optimizing the workload distribution and dictating the number of active servers at Internet data centers (IDCs) over a dynamic pricing scheme in power markets can be a challenging task. This paper develops an efficient multiobjective approach to demand response at IDCs. Two objectives are considered: maximize the data center profits under some constraints and optimize quality of service (QoS) measured by a delay probability. A multiobjective optimization problem is formulated and Pareto optimality is adopted. A multiobjective solution method is proposed, which consists of an algorithm generating feasible points, a mechanism that preserves the feasibility, and a multiobjective evolutionary algorithm (MOEA) for producing Pareto optimal workload and energy scheduling. Scalability and feasibility of the proposed approach are analyzed. Simulation results using real-world data reveal that the proposed demand response approach can systematically achieve an excellent balance between the profits for IDCs and QoS for clients. In contrast with comparable MOEAs, the proposed approach finds feasible points in the decision variable space during the evolution process with a 100% success rate.

Topics & Concepts

Mathematical optimizationComputer scienceScalabilityMulti-objective optimizationPareto principleWorkloadScheduling (production processes)Quality of serviceEvolutionary algorithmMathematicsComputer networkDatabaseOperating systemSmart Grid Energy ManagementCloud Computing and Resource ManagementGreen IT and Sustainability