Search engine for discovering works of Art, research articles, and books related to Art and Culture
ShareThis
Javascript must be enabled to continue!

Brower blowfish nash secured stochastic neural network based disease diagnosis for medical WBAN in cloud environment

View through CrossRef
The trending technology in Wireless Sensor Networks (WSN) is to improve the healthcare system by using Wireless Body Area Networks (WBANs). Implantable Sensor and wearable sensors are inexpensive technology, which are designed to track the body signals and to get intermediate physical activity status. This is considered as an unremarkable choice for continuous health monitoring. In recent years, various routing protocols had been designed to provide reliable data transmission in WBAN. However, many of these protocols are not focused more on security aspects such as data confidentiality and data integrity in medical data transmission. And also, the energy efficient communication methods have significantly vulnerable to various attacks due to the lack of computationally efficient authentication and authorization process. To rectify the drawbacks of existing system a new approach Brower Blowfish Nash-secured Stochastic Neural Network-based (Brower BNSNN) is proposed for medical data transmission through WBAN in cloud environment. The Brower BNSNN method is designed to perform data collection, compression, encryption/decryption and anomaly detection for medical WBAN disease diagnosis in cloud environment. First, distinct numbers of sensor nodes that are attached in the bodies of multiple patients collected for further validation and anomaly detection. Secondly Fixed Point-based compression is performed in the cloud by the cloud user. The sensor nodes compress their sensed data into WBAN messages and sent to cloud server for further processing and from this data confidentiality and data integrity are ensured. Third step is Blowfish Nash Equilibrium-based encryption and decryption is applied to the compressed data to ensure security during the communication between devices or cloud server. Finally, Stochastic Neural Network-based anomaly detection model is designed to perform anomaly detection via authorization process. The designed network performs two-stage authorization such as validating sub-keys and checking kernel process attacks and network logs attacks. Simulations are performed to measure and validate the performance metrics in terms of data confidentiality, data integrity, disease diagnosis accuracy, authentication, in Health Monitoring System.
Title: Brower blowfish nash secured stochastic neural network based disease diagnosis for medical WBAN in cloud environment
Description:
The trending technology in Wireless Sensor Networks (WSN) is to improve the healthcare system by using Wireless Body Area Networks (WBANs).
Implantable Sensor and wearable sensors are inexpensive technology, which are designed to track the body signals and to get intermediate physical activity status.
This is considered as an unremarkable choice for continuous health monitoring.
In recent years, various routing protocols had been designed to provide reliable data transmission in WBAN.
However, many of these protocols are not focused more on security aspects such as data confidentiality and data integrity in medical data transmission.
And also, the energy efficient communication methods have significantly vulnerable to various attacks due to the lack of computationally efficient authentication and authorization process.
To rectify the drawbacks of existing system a new approach Brower Blowfish Nash-secured Stochastic Neural Network-based (Brower BNSNN) is proposed for medical data transmission through WBAN in cloud environment.
The Brower BNSNN method is designed to perform data collection, compression, encryption/decryption and anomaly detection for medical WBAN disease diagnosis in cloud environment.
First, distinct numbers of sensor nodes that are attached in the bodies of multiple patients collected for further validation and anomaly detection.
Secondly Fixed Point-based compression is performed in the cloud by the cloud user.
The sensor nodes compress their sensed data into WBAN messages and sent to cloud server for further processing and from this data confidentiality and data integrity are ensured.
Third step is Blowfish Nash Equilibrium-based encryption and decryption is applied to the compressed data to ensure security during the communication between devices or cloud server.
Finally, Stochastic Neural Network-based anomaly detection model is designed to perform anomaly detection via authorization process.
The designed network performs two-stage authorization such as validating sub-keys and checking kernel process attacks and network logs attacks.
Simulations are performed to measure and validate the performance metrics in terms of data confidentiality, data integrity, disease diagnosis accuracy, authentication, in Health Monitoring System.

Related Results

Computational Complexity of Modified Blowfish Cryptographic Algorithm on Video Data
Computational Complexity of Modified Blowfish Cryptographic Algorithm on Video Data
Background: The technological revolution has allowed users to exchange data and information in various fields, and this is one of the most prevalent uses of computer technologies. ...
CLOUD COMPUTING - NAVIGATING THE DIGITAL SKY
CLOUD COMPUTING - NAVIGATING THE DIGITAL SKY
“Cloud Computing – Navigating the Digital Sky” is an extensive guide designed to provide a thorough understanding of cloud computing, an essential technology in today’s digital age...
An efficient cluster optimization framework for internet of things (IoT) based Wireless Body Area Networks
An efficient cluster optimization framework for internet of things (IoT) based Wireless Body Area Networks
PurposeWireless Body Area Network (WBAN) technology envisions a network in which sensors continuously operate on and obtained critical physical and physiological readings. Sensors ...
Novel Data Transmission Schemes for Inter-WBAN Networks using Markov Decision Process
Novel Data Transmission Schemes for Inter-WBAN Networks using Markov Decision Process
Abstract This work proposes a stochastic model of the coordinator units of each wireless body area network (WBAN) in a multi-WBAN scenario. In a Smart Home environment, mul...
1038 Outcomes of Non-Alcoholic Steatohepatitis in African American Patients With Human Immunodeficiency Virus (HIV)
1038 Outcomes of Non-Alcoholic Steatohepatitis in African American Patients With Human Immunodeficiency Virus (HIV)
INTRODUCTION: Non-alcoholic steatohepatitis (NASH) is the hepatic manifestation of metabolic syndrome and is highly prevalent in patients with HIV, ranging from 13% to ...
Frequency of Common Chromosomal Abnormalities in Patients with Idiopathic Acquired Aplastic Anemia
Frequency of Common Chromosomal Abnormalities in Patients with Idiopathic Acquired Aplastic Anemia
Objective: To determine the frequency of common chromosomal aberrations in local population idiopathic determine the frequency of common chromosomal aberrations in local population...
An Integrated Grasshopper Optimization Algorithm with Artificial Neural Network for Trusted Nodes Classification Problem
An Integrated Grasshopper Optimization Algorithm with Artificial Neural Network for Trusted Nodes Classification Problem
Wireless Body Area Network (WBAN) is a tool that improves real-time patient health observation in hospitals, asylums, especially at home. WBAN has grown popularity in recent years ...
Exploring Large Language Models Integration in the Histopathologic Diagnosis of Skin Diseases: A Comparative Study
Exploring Large Language Models Integration in the Histopathologic Diagnosis of Skin Diseases: A Comparative Study
Abstract Introduction The exact manner in which large language models (LLMs) will be integrated into pathology is not yet fully comprehended. This study examines the accuracy, bene...

Back to Top