TY - JOUR
T1 - TOWARDS IMPROVING 5G QUALITY OF EXPERIENCE
T2 - FUZZY AS A MATHEMATICAL MODEL TO MIGRATE VIRTUAL MACHINE SERVER IN THE DEFINED TIME FRAME
AU - Hidayat, Taufik
AU - Ramli, Kalamullah
AU - Mardian, R. Deiny
AU - Mahardiko, Rahutomo
N1 - Publisher Copyright:
© 2023, Intellectual Research and Development Education Foundation (YRPI). All rights reserved.
PY - 2023
Y1 - 2023
N2 - The industry and government have recently acknowledged and used virtual machines (VM) to promote their businesses. During the process of VM, some problems might occur. The issues, such as a heavy load of memory, a large load of CPU, a massive load of a disk, a high load of network and time-defined migration, might interrupt the business processes. This paper identifies the migration process among hosts for VM to overcome the problem within the defined time frame of migration. The introduction of VMs migration in a timely manner is to detect a problem earlier. There are workload parameters, such as network, CPU, disk and memory as our parameters. To overcome the issue, we have to follow the Model named Fuzzy rule. The rule follows the basic of tree model for decision-making. The application of the fuzzy Model for the study is to determine VMs allocation from busy VMs to vacant VMs for balancing purposes. The result of the study showed that the use of the fuzzy Model to forecast VMs migration based on the defined rule had 2 positive impacts. The positive impacts are (1) Time frame live migration of VMs can reduce workload by 80 %. This aims to reduce failures in performing a live migration of VMs to increase data center performance. (2) In testing, the fuzzy Model can provide results with an accuracy of 90 %, so this model can perform a live migration of VMs precisely in determining the execution time. Next, the workload could be balanced among VMs. This research could be used further to improve 5G Quality of Experience (QoE) shortly.
AB - The industry and government have recently acknowledged and used virtual machines (VM) to promote their businesses. During the process of VM, some problems might occur. The issues, such as a heavy load of memory, a large load of CPU, a massive load of a disk, a high load of network and time-defined migration, might interrupt the business processes. This paper identifies the migration process among hosts for VM to overcome the problem within the defined time frame of migration. The introduction of VMs migration in a timely manner is to detect a problem earlier. There are workload parameters, such as network, CPU, disk and memory as our parameters. To overcome the issue, we have to follow the Model named Fuzzy rule. The rule follows the basic of tree model for decision-making. The application of the fuzzy Model for the study is to determine VMs allocation from busy VMs to vacant VMs for balancing purposes. The result of the study showed that the use of the fuzzy Model to forecast VMs migration based on the defined rule had 2 positive impacts. The positive impacts are (1) Time frame live migration of VMs can reduce workload by 80 %. This aims to reduce failures in performing a live migration of VMs to increase data center performance. (2) In testing, the fuzzy Model can provide results with an accuracy of 90 %, so this model can perform a live migration of VMs precisely in determining the execution time. Next, the workload could be balanced among VMs. This research could be used further to improve 5G Quality of Experience (QoE) shortly.
KW - Comparison Research
KW - Fuzzy Model
KW - Live Migration
KW - Virtual Machine Server
UR - http://www.scopus.com/inward/record.url?scp=85162020141&partnerID=8YFLogxK
U2 - 10.37385/jaets.v4i2.1646
DO - 10.37385/jaets.v4i2.1646
M3 - Article
AN - SCOPUS:85162020141
SN - 2715-6087
VL - 4
SP - 711
EP - 721
JO - Journal of Applied Engineering and Technological Science
JF - Journal of Applied Engineering and Technological Science
IS - 2
ER -