Data Integrity and Recovery Management in Cloud Systems

Data integrity and recovery management is a more important issue in cloud computing because data is located in everywhere. There is a big challenge in backup recovery and security. It is required to provide an efficient and more reliable system in data storage. In this paper, a new methodology is focused and proposed data recovery and data management to assure high-level scalability and high order reliability to provide fault recognition and fault tolerance cloud-based systems. We propose a methodology of segmenting data and generating tokens for the data split-up by adding the address of the cloud or locations of the cloud storage using the tailing method. Thus the missing segment of any faulty node is easily recognized within a short range of limits and will get the data backup from the neighboring nodes.

[1]  Sujata D. Salunkhe,et al.  Division and replication for data with public auditing scheme for cloud storage , 2016, 2016 International Conference on Computing Communication Control and automation (ICCUBEA).

[2]  Alka Londhe,et al.  Data Division and Replication Approach for Improving Security and Availability of Cloud Storage , 2018, 2018 Fourth International Conference on Computing Communication Control and Automation (ICCUBEA).

[3]  D. S. Jayalakshmi,et al.  Dynamic Data Replication Strategy in Cloud Environments , 2015, 2015 Fifth International Conference on Advances in Computing and Communications (ICACC).

[4]  Bin Tang,et al.  Profit-based file replication in data intensive cloud data centers , 2017, 2017 IEEE International Conference on Communications (ICC).

[5]  Turgay Celik,et al.  Toward a Smart Cloud: A Review of Fault-Tolerance Methods in Cloud Systems , 2018, IEEE Transactions on Services Computing.

[6]  Djamel Amar Bensaber,et al.  Fault tolerance model based on service delivery quality levels in cloud computing , 2017, 2017 International Conference on Mathematics and Information Technology (ICMIT).

[7]  Vijay K. Garg,et al.  Fault Tolerance in Distributed Systems Using Fused Data Structures , 2013, IEEE Transactions on Parallel and Distributed Systems.

[8]  Yun Yang,et al.  Ensuring Cloud Data Reliability with Minimum Replication by Proactive Replica Checking , 2016, IEEE Transactions on Computers.

[9]  Puneet Gupta,et al.  Measuring the Impact of Memory Errors on Application  Performance , 2017, IEEE Computer Architecture Letters.

[10]  J. M. Gnanasekar,et al.  Data integrity management for detection of redundancy and recurrence patterns in cloud , 2019 .

[11]  Gang Zeng,et al.  Quantitative Fault-Tolerance for Reliable Workflows on Heterogeneous IaaS Clouds , 2020, IEEE Transactions on Cloud Computing.

[12]  Jianhua Li,et al.  Big Data Analysis-Based Security Situational Awareness for Smart Grid , 2018, IEEE Transactions on Big Data.