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Optimized Hierarchical Tree Deep Convolutional Neural Network of a Tree-Based Workload Prediction Scheme for Enhancing Power Efficiency in Cloud Computing

Thirumalai Selvan Chenni Chetty, Vadim Bolshev, Siva Shankar Subramanian, Tulika Chakrabarti, Prąsun Chakrabarti, Владимир Панченко, Igor Yudaev, Yu. V. Daus

2023Energies23 citationsDOIOpen Access PDF

Abstract

Workload prediction is essential in cloud data centers (CDCs) for establishing scalability and resource elasticity. However, the workload prediction accuracy in the cloud data center could be better due to noise, redundancy, and low performance for workload prediction. This paper designs a hierarchical tree-based deep convolutional neural network (T-CNN) model with sheep flock optimization (SFO) to enhance CDCs’ power efficiency and workload prediction. The kernel method is used to preprocess historical information from the CDCs. Additionally, T-CNN model weight parameters are optimized using SFO. The suggested TCNN-SFO technology has successfully reduced excessive power consumption while correctly forecasting the incoming demand. Further, the proposed model is assessed using two benchmark datasets: Saskatchewan HTTP traces and NASA. The developed model is executed in a Java tool. Therefore, associated with existing methods, the developed technique has achieved higher accuracy of 20.75%, 19.06%, 29.09%, 23.8%, and 20.5%, as well as lower energy consumption of 20.84%, 18.03%, 28.64%, 30.72%, and 33.74% when validating the Saskatchewan HTTP traces dataset. It has also achieved higher accuracy of 32.95%, 12.05%, 32.65%, and 26.54%.

Topics & Concepts

Computer scienceWorkloadCloud computingBenchmark (surveying)ScalabilityConvolutional neural networkData miningArtificial neural networkRedundancy (engineering)Data redundancyTree (set theory)Artificial intelligenceDatabaseOperating systemGeodesyMathematicsMathematical analysisGeographyIoT and Edge/Fog ComputingCloud Computing and Resource ManagementAdvanced Data and IoT Technologies