SPOC: A Secure and Privacy-preserving Opportunistic Computing
Framework for Mobile-Healthcare Emergency
ABSTRACT:
With the pervasiveness of smart phones and the advance of wireless body sensor networks
(BSNs), mobile Healthcare (m-Healthcare), which extends the operation of Healthcare provider
into a pervasive environment for better health monitoring, has attracted considerable interest
recently. However, the flourish of m-Healthcare still faces many challenges including
information security and privacy preservation. In this paper, we propose a secure and privacy-
preserving opportunistic computing framework, called SPOC, for m-Healthcare emergency.
With SPOC, smart phone resources including computing power and energy can be
opportunistically gathered to process the computing-intensive personal health information (PHI)
during m-Healthcare emergency with minimal privacy disclosure. In specific, to leverage the
PHI privacy disclosure and the high reliability of PHI process and transmission in m-Healthcare
emergency, we introduce an efficient user-centric privacy access control in SPOC framework,
which is based on an attribute-based access control and a new privacy-preserving scalar product
computation (PPSPC) technique, and allows a medical user to decide who can participate in the
opportunistic computing to assist in processing his overwhelming PHI data. Detailed security
analysis shows that the proposed SPOC framework can efficiently achieve user-centric privacy
GLOBALSOFT TECHNOLOGIES
IEEE PROJECTS & SOFTWARE DEVELOPMENTS
IEEE FINAL YEAR PROJECTS|IEEE ENGINEERING PROJECTS|IEEE STUDENTS PROJECTS|IEEE
BULK PROJECTS|BE/BTECH/ME/MTECH/MS/MCA PROJECTS|CSE/IT/ECE/EEE PROJECTS
CELL: +91 98495 39085, +91 99662 35788, +91 98495 57908, +91 97014 40401
Visit: www.finalyearprojects.org Mail to:ieeefinalsemprojects@gmail.com
access control in m-Healthcare emergency. In addition, performance evaluations via extensive
simulations demonstrate the SPOC’s effectiveness in term of providing high reliable PHI
process and transmission while minimizing the privacy disclosure during m-Healthcare
emergency.
ARCHITECTURE:
EXISTING SYSTEM
The study of opportunistic computing has gained the great interest from the research
community recently.
The existing systems introduce the opportunistic computing paradigm in wireless sensor
network to solve the problem of storing and executing an application that exceeds the memory
resources available on a single sensor node. Especially, their solution is based on the idea of
partitioning the application code into a number of opportunistically cooperating modules, and
each node contributes to the execution of the original application by running a subset of the
application tasks and providing service to the neighboring nodes.
Passarella et al. evaluate the performance of service execution in opportunistic computing.
Specifically, they first abstract resources in pervasive computing as services, which are
opportunistically contributed by providers and invoked by seekers. Then, they present a
complete analytical model to depict the service invocation process between seekers and
providers, and derive the optimal number of replicas to be spawned on encountered nodes, in
order to minimize the execution time and optimize the computational and bandwidth resources
used.
In Existing System, According to the sensex over the age of 65 is expected to hit 70 million by
2030, having doubled since 2000. Health care expenditures projected to rise to 15.9% by 2010.
The cost of health care for the nation’s aging population has become a national concern are
important for understanding how the opportunistic computing paradigm work when resources
available on different nodes can be opportunistically gathered together to provide richer
functionality, they have not considered the potential security and privacy issues existing in the
opportunistic computing paradigm.
PROPOSED SYSTEM
In our proposed SPOC framework aims at the security and privacy issues, and develops a user-
centric privacy access control of opportunistic computing in m-Healthcare emergency. In this
paper, we propose a new secure and privacy preserving opportunistic computing framework,
called SPOC, to address this challenge. With the proposed SPOC framework, each medical user
in emergency can achieve the user-centric privacy access control to allow only those qualified
helpers to participate in the opportunistic computing to balance the high-reliability of PHI
process and minimizing PHI privacy disclosure in m-Healthcare emergency. Specifically, the
main contributions of this paper are threefold. • First, we propose SPOC, a secure and privacy-
preserving opportunistic computing framework for m-Healthcare emergency. With SPOC, the
resources available on other opportunistically contacted medical users’ smart phones can be
gathered together to deal with the computing intensive PHI process in emergency situation.
Since the PHI will be disclosed during the process in opportunistic computing, to minimize the
PHI privacy disclosure, SPOC introduces a user-centric two-phase privacy access control to
only allow those medical users who have similar symptoms to participate in opportunistic
computing. • Second, to achieve user-centric privacy access control in opportunistic computing,
we present an efficient attributebased access control and a novel non-homomorphic encryption
based privacy-preserving scalar product computation (PPSPC) protocol, where the attributed-
based access control can help a medical user in emergency to identify other medical users, and
PPSPC protocol can further control only those medical users who have similar symptoms to
participate in the opportunistic computing while without directly revealing users’ symptoms.
Note that, although PPSPC protocols have been well studied in privacy-preserving data mining,
yet most of them are relying on time-consuming homomorphic encryption technique. To the
best of our knowledge, our novel non-homomorphic encryption based PPSPC protocol is the
most efficient one in terms of computational and communication overheads. • Third, to validate
the effectiveness of the proposed SPOC framework in m-Healthcare emergency, we also
develop a custom simulator built in Java. Extensive simulation results show that the proposed
SPOC framework can help medical users to balance the high-reliability of PHI process and
minimizing the PHI privacy disclosure in m-Healthcare emergency
ADVANTAGES OF PROPOSED SYSTEM:
Shift from a clinic-oriented, centralized healthcare system to a patient oriented, distributed
healthcare system
Reduce healthcare expenses through more efficient use of clinical resources and earlier
detection of medical conditions
Challenges:
Performance, Reliability, Scalability, QoS, Privacy, Security …
More prone to failures, caused by power exhaustion, software and hardware faults, natural
disasters, malicious attacks, and human errors etc.
MODULES :
1. Pervasive health monitoring in M-Healthcare
2. Body Sensor Network
3. Security Analysis
4. Performance Evolution
5. Simulation Setup
6. Report Generation
MODULES DESCRIPTION:
Pervasive Health Monitoring in M-Healthcare
In this module, each mobile medical user’s personal health information (PHI) such as heart
beat, blood sugar level, blood pressure and temperature and others, can be first collected by
BSN, and then aggregated by smart phone via Bluetooth. Finally, they are further transmitted to
the remote healthcare center via 3G networks. Based on these collected PHI data, medical
professionals at healthcare center can continuously monitor medical users’ health conditions
and as well quickly react to users’ life-threatening situations and save their lives by dispatching
ambulance and medical personnel to an emergency location in a timely fashion.
Body Sensor Network
In this module, Body area network (BAN), wireless body area network (WBAN) or body
sensor network (BSN) are terms used to describe the application of wearable computing
devices. This will enable wireless communication between several miniaturized body sensor
units (BSU) and a single body central unit (BCU) worn at the human body.
– Deploy wearable sensors on the bodies of patients in a residential setting
– Continuously monitor physiological signals (such as ECG, blood oxygen Levels) and other
health related information (such as physical activity)
Security Analysis
In this Module to develop a secure and privacy-preserving opportunistic computing framework
to provide high reliability of PHI process and transmission while minimizing PHI privacy
disclosure in m-Healthcare emergency. Specifically, we
i) Apply opportunistic computing in m-Healthcare emergency to achieve high-reliability of PHI
process and transmission; and
ii) Develop user-centric privacy access control to minimize the PHI privacy disclosure.
Performance Evolution
In this module, the performance metrics used in the evaluation are :
1) The average number of qualified helpers (NQH), which indicates how many qualified helpers
can participate in the opportunistic computing within a given time period, and
2) The average resource consumption ratio (RCR), which is defined as the fraction of the
resources consumed by the medical user in emergency to the total resources consumed in
opportunistic computing for PHI process within a given time period.
Simulation Setup
In this Module, the simulator implements the application layer under the assumptions that the
communications between smart phones and the communications between BSNs and smart
phones are always workable when they are within each other’s transmission ranges.
Report generation
In this module, Health care center generate crystal report from the database collection for
future reference.
SYSTEM REQUIREMENTS:
HARDWARE REQUIREMENTS:
• System : Pentium IV 2.4 GHz.
• Hard Disk : 40 GB.
• Floppy Drive: 1.44 Mb.
• Monitor : 15 VGA Colour.
• Mouse : Logitech.
• Ram : 512 Mb.
SOFTWARE REQUIREMENTS:
• Operating system : Windows XP.
• Coding Language : ASP.Net with C#
• Data Base : SQL Server 2005
REFERENCE:
Rongxing, Xiaodong Lin, and Xuemin (Sherman) Shen, “SPOC: A Secure and Privacy-
preserving Opportunistic Computing Framework for Mobile-Healthcare Emergency”, IEEE
Transaction

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Spoc a secure and privacy preserving opportunistic computing framework for mobile-healthcare emergency

  • 1. SPOC: A Secure and Privacy-preserving Opportunistic Computing Framework for Mobile-Healthcare Emergency ABSTRACT: With the pervasiveness of smart phones and the advance of wireless body sensor networks (BSNs), mobile Healthcare (m-Healthcare), which extends the operation of Healthcare provider into a pervasive environment for better health monitoring, has attracted considerable interest recently. However, the flourish of m-Healthcare still faces many challenges including information security and privacy preservation. In this paper, we propose a secure and privacy- preserving opportunistic computing framework, called SPOC, for m-Healthcare emergency. With SPOC, smart phone resources including computing power and energy can be opportunistically gathered to process the computing-intensive personal health information (PHI) during m-Healthcare emergency with minimal privacy disclosure. In specific, to leverage the PHI privacy disclosure and the high reliability of PHI process and transmission in m-Healthcare emergency, we introduce an efficient user-centric privacy access control in SPOC framework, which is based on an attribute-based access control and a new privacy-preserving scalar product computation (PPSPC) technique, and allows a medical user to decide who can participate in the opportunistic computing to assist in processing his overwhelming PHI data. Detailed security analysis shows that the proposed SPOC framework can efficiently achieve user-centric privacy GLOBALSOFT TECHNOLOGIES IEEE PROJECTS & SOFTWARE DEVELOPMENTS IEEE FINAL YEAR PROJECTS|IEEE ENGINEERING PROJECTS|IEEE STUDENTS PROJECTS|IEEE BULK PROJECTS|BE/BTECH/ME/MTECH/MS/MCA PROJECTS|CSE/IT/ECE/EEE PROJECTS CELL: +91 98495 39085, +91 99662 35788, +91 98495 57908, +91 97014 40401 Visit: www.finalyearprojects.org Mail to:[email protected]
  • 2. access control in m-Healthcare emergency. In addition, performance evaluations via extensive simulations demonstrate the SPOC’s effectiveness in term of providing high reliable PHI process and transmission while minimizing the privacy disclosure during m-Healthcare emergency. ARCHITECTURE: EXISTING SYSTEM The study of opportunistic computing has gained the great interest from the research community recently. The existing systems introduce the opportunistic computing paradigm in wireless sensor network to solve the problem of storing and executing an application that exceeds the memory resources available on a single sensor node. Especially, their solution is based on the idea of partitioning the application code into a number of opportunistically cooperating modules, and
  • 3. each node contributes to the execution of the original application by running a subset of the application tasks and providing service to the neighboring nodes. Passarella et al. evaluate the performance of service execution in opportunistic computing. Specifically, they first abstract resources in pervasive computing as services, which are opportunistically contributed by providers and invoked by seekers. Then, they present a complete analytical model to depict the service invocation process between seekers and providers, and derive the optimal number of replicas to be spawned on encountered nodes, in order to minimize the execution time and optimize the computational and bandwidth resources used. In Existing System, According to the sensex over the age of 65 is expected to hit 70 million by 2030, having doubled since 2000. Health care expenditures projected to rise to 15.9% by 2010. The cost of health care for the nation’s aging population has become a national concern are important for understanding how the opportunistic computing paradigm work when resources available on different nodes can be opportunistically gathered together to provide richer functionality, they have not considered the potential security and privacy issues existing in the opportunistic computing paradigm. PROPOSED SYSTEM In our proposed SPOC framework aims at the security and privacy issues, and develops a user- centric privacy access control of opportunistic computing in m-Healthcare emergency. In this paper, we propose a new secure and privacy preserving opportunistic computing framework, called SPOC, to address this challenge. With the proposed SPOC framework, each medical user in emergency can achieve the user-centric privacy access control to allow only those qualified helpers to participate in the opportunistic computing to balance the high-reliability of PHI process and minimizing PHI privacy disclosure in m-Healthcare emergency. Specifically, the main contributions of this paper are threefold. • First, we propose SPOC, a secure and privacy-
  • 4. preserving opportunistic computing framework for m-Healthcare emergency. With SPOC, the resources available on other opportunistically contacted medical users’ smart phones can be gathered together to deal with the computing intensive PHI process in emergency situation. Since the PHI will be disclosed during the process in opportunistic computing, to minimize the PHI privacy disclosure, SPOC introduces a user-centric two-phase privacy access control to only allow those medical users who have similar symptoms to participate in opportunistic computing. • Second, to achieve user-centric privacy access control in opportunistic computing, we present an efficient attributebased access control and a novel non-homomorphic encryption based privacy-preserving scalar product computation (PPSPC) protocol, where the attributed- based access control can help a medical user in emergency to identify other medical users, and PPSPC protocol can further control only those medical users who have similar symptoms to participate in the opportunistic computing while without directly revealing users’ symptoms. Note that, although PPSPC protocols have been well studied in privacy-preserving data mining, yet most of them are relying on time-consuming homomorphic encryption technique. To the best of our knowledge, our novel non-homomorphic encryption based PPSPC protocol is the most efficient one in terms of computational and communication overheads. • Third, to validate the effectiveness of the proposed SPOC framework in m-Healthcare emergency, we also develop a custom simulator built in Java. Extensive simulation results show that the proposed SPOC framework can help medical users to balance the high-reliability of PHI process and minimizing the PHI privacy disclosure in m-Healthcare emergency ADVANTAGES OF PROPOSED SYSTEM: Shift from a clinic-oriented, centralized healthcare system to a patient oriented, distributed healthcare system Reduce healthcare expenses through more efficient use of clinical resources and earlier detection of medical conditions Challenges:
  • 5. Performance, Reliability, Scalability, QoS, Privacy, Security … More prone to failures, caused by power exhaustion, software and hardware faults, natural disasters, malicious attacks, and human errors etc. MODULES : 1. Pervasive health monitoring in M-Healthcare 2. Body Sensor Network 3. Security Analysis 4. Performance Evolution 5. Simulation Setup 6. Report Generation MODULES DESCRIPTION: Pervasive Health Monitoring in M-Healthcare In this module, each mobile medical user’s personal health information (PHI) such as heart beat, blood sugar level, blood pressure and temperature and others, can be first collected by BSN, and then aggregated by smart phone via Bluetooth. Finally, they are further transmitted to the remote healthcare center via 3G networks. Based on these collected PHI data, medical professionals at healthcare center can continuously monitor medical users’ health conditions and as well quickly react to users’ life-threatening situations and save their lives by dispatching ambulance and medical personnel to an emergency location in a timely fashion. Body Sensor Network In this module, Body area network (BAN), wireless body area network (WBAN) or body sensor network (BSN) are terms used to describe the application of wearable computing
  • 6. devices. This will enable wireless communication between several miniaturized body sensor units (BSU) and a single body central unit (BCU) worn at the human body. – Deploy wearable sensors on the bodies of patients in a residential setting – Continuously monitor physiological signals (such as ECG, blood oxygen Levels) and other health related information (such as physical activity) Security Analysis In this Module to develop a secure and privacy-preserving opportunistic computing framework to provide high reliability of PHI process and transmission while minimizing PHI privacy disclosure in m-Healthcare emergency. Specifically, we i) Apply opportunistic computing in m-Healthcare emergency to achieve high-reliability of PHI process and transmission; and ii) Develop user-centric privacy access control to minimize the PHI privacy disclosure. Performance Evolution In this module, the performance metrics used in the evaluation are : 1) The average number of qualified helpers (NQH), which indicates how many qualified helpers can participate in the opportunistic computing within a given time period, and 2) The average resource consumption ratio (RCR), which is defined as the fraction of the resources consumed by the medical user in emergency to the total resources consumed in opportunistic computing for PHI process within a given time period. Simulation Setup In this Module, the simulator implements the application layer under the assumptions that the communications between smart phones and the communications between BSNs and smart phones are always workable when they are within each other’s transmission ranges.
  • 7. Report generation In this module, Health care center generate crystal report from the database collection for future reference. SYSTEM REQUIREMENTS: HARDWARE REQUIREMENTS: • System : Pentium IV 2.4 GHz. • Hard Disk : 40 GB. • Floppy Drive: 1.44 Mb. • Monitor : 15 VGA Colour. • Mouse : Logitech. • Ram : 512 Mb. SOFTWARE REQUIREMENTS: • Operating system : Windows XP. • Coding Language : ASP.Net with C# • Data Base : SQL Server 2005 REFERENCE: Rongxing, Xiaodong Lin, and Xuemin (Sherman) Shen, “SPOC: A Secure and Privacy- preserving Opportunistic Computing Framework for Mobile-Healthcare Emergency”, IEEE Transaction