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首页> 外文期刊>Journal of circuits, systems and computers >Scalable Anomaly Detection for Large-Scale Heterogeneous Data in Cloud Using Optimal Elliptic Curve Cryptography and Gaussian Kernel Fuzzy C-Means Clustering
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Scalable Anomaly Detection for Large-Scale Heterogeneous Data in Cloud Using Optimal Elliptic Curve Cryptography and Gaussian Kernel Fuzzy C-Means Clustering

机译:使用最佳椭圆曲线加密和高斯内核模糊C-MERIAL聚类的云中大规模异构数据的可扩展异常检测

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摘要

In most systems, a smart functionality is enabled through an essential vital service such as detecting anomalies from complex, large-scale and dynamic data. However, ensuring the privacy and security for the cloud data is the most crucial and challenging task in the present world. Moreover, it is important to safeguard the security of sensitive data and its privacy from unauthorized parties who are trying to access the data. Therefore, to accomplish this task, several encryption, decryption and key generation mechanisms were introduced in the existing works for privacy preserving in cloud platform. But, there still remain open issues such as increased communication overhead, reduced security and increased time consumption. Also, these existing works followed the symmetric key cryptographic mechanism for privacy preservation of data; hence, a single secret key is shared by several users for accessing the original data. Due to this fact, a high security risk arises and it allows unauthorized parties to access the data. Thus, this work introduces a cloud-based privacy preserving model for offering a scalable and reliable anomaly detection service for sensor data through holding the benefits of cloud resources. Also, this paper aims to impose a newly developed Elliptic Curve Cryptography-based Collective Decision Optimization (ECDO) approach over the proposed framework for improving the privacy and security of the data. Furthermore, to perform the data clustering computation we used the Gaussian kernel fuzzy c-means clustering (GKFCM) algorithm within the cloud platform, especially for data partitioning and to classify the anomalies. Thus, the computational difficulties are limited by adopting this suitable privacy preserving model which collaborates a private server and a set of public servers through a cloud data center. Moreover, on encrypted data the granular anomaly detection operations are performed by the virtual nodes executed over public servers. Experimental validation was performed on four datasets resulting from Intel Labs publicly available sensor data. The experimental outcomes demonstrate the ability of the proposed framework in providing high anomaly detection accuracy without any degradation in data privacy.
机译:在大多数系统中,通过基本的重要服务使能智能功能,例如检测来自复杂,大规模和动态数据的异常。但是,确保云数据的隐私和安全性是本世界中最重要的,具有挑战性的任务。此外,重要的是保障敏感数据的安全性及其隐私,从试图访问数据的未经授权的缔约方。因此,要完成此任务,在云平台中的隐私保存的现有工作中引入了多种加密,解密和关键生成机制。但是,仍然存在开放的问题,例如增加通信开销,减少安全性和增加的时间消耗。此外,这些现有的作品遵循对对称密钥加密机制进行数据保存;因此,单个密钥由用于访问原始数据的几个用户共享。由于这一事实,出现了高安全性风险,它允许未经授权的各方访问数据。因此,该工作引入了基于云的隐私保存模型,用于通过持有云资源的好处为传感器数据提供可扩展和可靠的异常检测服务。此外,本文旨在通过建议的框架施加新开发的基于椭圆曲线加密的集体决策优化(ECDO)方法,以提高数据的隐私和安全性。此外,为了执行数据聚类计算,我们使用云平台内的高斯内核模糊C-means群集(GKFCM)算法,尤其是用于数据分区并分类异常。因此,通过采用这种合适的隐私保留模型,通过采用合作私人服务器和一组公用服务器通过云数据中心来限制计算困难。此外,在加密数据上,通过在公共服务器上执行的虚拟节点执行粒子异常检测操作。实验验证是在英特尔实验室公开可用的传感器数据产生的四个数据集上进行的。实验结果证明了所提出的框架在提供高异常检测准确性的情况下,没有任何数据隐私的退化。

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