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Optimal Cryptography Scheme and Efficient Neutrosophic C-Means Clustering for Anomaly Detection in Cloud Environment

机译:云环境中异常检测的最佳加密方案和高效中性学C均值聚类

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This paper introduces an efficient and scalable cloud-based privacy preserving model using a new optimal cryptography scheme for anomaly detection in large-scale sensor data. Our proposed privacy preserving model has maintained a better tradeoff between reliability and scalability of the cloud computing resources by means of detecting anomalies from the encrypted data. Conventional data analysis methods have used complex and large numerical computations for the anomaly detection. Also, a single key used by the symmetric key cryptographic scheme to encrypt and decrypt the data has faced large computational complexity because the multiple users can access the original data simultaneously using this single shared secret key. Hence, a classical public key encryption technique called RSA is adopted to perform encryption and decryption of secure data using different key pairs. Furthermore, the random generation of public keys in RSA is controlled in the proposed cloud-based privacy preserving model through optimizing a public key using a new hybrid local pollination-based grey wolf optimizer (LPGWO) algorithm. For ease of convenience, a single private server handling the organization data within a collaborative public cloud data center when requiring the decryption of secure sensor data are allowed to decrypt the optimal secure data using LPGWO-based RSA optimal cryptographic scheme. The data encrypted using an optimal cryptographic scheme are then encouraged to perform data clustering computations in collaborative public servers of cloud platform using Neutrosophic c-Means Clustering (NCM) algorithm. Hence, this NCM algorithm mainly focuses for data partitioning and classification of anomalies. Experimental validation was conducted using four datasets obtained from Intel laboratory having publicly available sensor data. The experimental outcomes have proved the efficiency of the proposed framework in providing data privacy with high anomaly detection accuracy.
机译:本文介绍了使用新的最佳加密方案进行大规模传感器数据中的异常检测的高效和可扩展的云的隐私保留模型。我们所提出的隐私保存模型通过从加密数据中检测异常来维持云计算资源的可靠性和可扩展性之间的更好的权衡。传统的数据分析方法使用复杂和大量数值进行异常检测。此外,由对称密钥加密方案用于加密和解密数据的单个密钥面临的计算复杂性很大,因为多个用户可以使用该单个共享密钥同时访问原始数据。因此,采用称为RSA的经典公钥加密技术来使用不同的键对执行安全数据的加密和解密。此外,通过使用新的混合本地授粉的灰狼优化器(LPGWO)算法,通过优化公钥,在所提出的云的隐私保存模型中对RSA中的随机产生公钥。为了便于方便,允许使用基于LPGWO的RSA最佳加密方案进行解密,从而允许在协作公共云数据中心内处理组织数据的单个私人服务器。然后,鼓励使用最佳加密方案加密的数据来使用中性学C-Means聚类(NCM)算法在云平台的协同公共服务器中执行数据聚类计算。因此,该NCM算法主要侧重于异常的数据分区和分类。使用来自Intel实验室的四个数据集进行了实验验证,该数据集具有公开的传感器数据。实验结果证明了提出框架的效率,在提供高异常检测精度提供数据隐私。

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