SlideShare ist ein Scribd-Unternehmen logo
1 von 10
Downloaden Sie, um offline zu lesen
Location-Based Spatial Query Processing in
Wireless Broadcast Environments

(Synopsis)
Abstract
Location-based spatial queries (LBSQ s) refer to
spatial queries whose answers rely on the location of the inquirer.
Efficient processing of LBSQ s is of critical importance with the everincreasing deployment and use of mobile technologies. We show that
LBSQ s has certain unique characteristics that the traditional spatial
query processing in centralized databases does not address. For
example, a significant challenge is presented by wireless broadcasting
environments, which have excellent scalability but often exhibit highlatency database access. In this paper, we present a novel query
processing technique that, though maintaining high scalability and
accuracy, manages to reduce the latency considerably in answering
LBSQ s. Our approach is based on peer-to-peer sharing, which enables
us to process queries without delay at a mobile host by using query
results cached in its neighboring mobile peers. We demonstrate the
feasibility of our approach through a probabilistic analysis, and we
illustrate the appeal of our technique through extensive simulation
results.
Existing System

•

Existing techniques cannot be used effectively in a wireless
broadcast environment, where only sequential data access
is supported.

•

It may not scale to very large user populations.

•

In an existing system to communicate with the server, a
client must most likely use a fee-based cellular-type
network to achieve a reasonable operating range.

•

Third, users must reveal their current location and send it
to the server, which may be undesirable for privacy
reasons

Proposed System

•

This System is a novel approach for reducing the spatial
query access latency by leveraging results from nearby peers
in wireless broadcast environments.

•

Our scheme allows a mobile client to locally verify whether
candidate objects received from peers are indeed part of its
own spatial query result set.

•

The method exhibits great scalability: the higher the mobile
peer density, the more the queries answered by peers.

•

The query access latency can be decreased with the increase
in clients.
System Requirement Specification
Software Interface
• JDK 1.5
• Java Swing
• SQL Server

Hardware Interface
• PROCESSOR

:

PENTIUM IV 2.6 GHz

• RAM

:

512 MB DD RAM

• MONITOR

:

15” COLOR

• HARD DISK

:

40 GB

• KEYBOARD

:

STANDARD 102 KEYS

• MOUSE

:

3 BUTTON
Scope of the Project
The scope of the project is to reduce the latency considerably in
answering LBSQs. Our approach is based on peer-to-peer sharing,
which enables us to process queries without delay at a mobile host by
using query results cached in its neighboring mobile peers.

Introduction
Location-based spatial queries (LBSQ s) refer to spatial queries
whose answers rely on the location of the inquirer. Efficient processing
of LBSQ s is of critical importance with the ever-increasing deployment
and use of mobile technologies. We show that LBSQ s has certain
unique characteristics that the traditional spatial query processing in
centralized databases does not address. For example, a significant
challenge is presented by wireless broadcasting environments, which
have excellent scalability but often exhibit high-latency database
access. In this paper, we present a novel query processing technique
that, though maintaining high scalability and accuracy, manages to
reduce the latency considerably in answering LBSQ s. We demonstrate
the feasibility of our approach through a probabilistic analysis, and we
illustrate the appeal of our technique through extensive simulation
results.
Modules
• Multiple peer simulation Module
• Server Module
• Sharing-based nearest neighbor query visualization Module

Module Description
Multiple peer simulation Module
The multiple peer simulation modules concurrently
models a predefined number of mobile hosts. It implements
all the functionality of a single mobile host and
provides the communication facilities among peers and
from peers to remote spatial database servers.
Server Module
The server module is responsible for storing points
of interest indexed by an R-tree structure. It performs
NN queries from peers with pruning bounds and
records the I/O load and access frequency of the spatial
database server.
Sharing-based nearest neighbor query
visualization Module
The sharing-based nearest neighbor query visualization
Module provides a rendering of the verification process of a
sharing-based NN query in a step-by-step
manner. Users can arbitrarily select a mobile host and
launch a location-based NN query within the simulation
region.
In module given input and expected output
The Query location and preferred criteria are the input for
Mobile Host.
The Mobile Host gets the results for the corresponding location and
criteria, with considerably reducing latency while getting results from
neighboring peers.

Module 1

Mobile Host1

Finding nearest
Neighbor

Mobile Host 2
Module 2

Mobile Host

Centralized Server

Module 3
MH2

MH1

Server

MH3
Data Flow Diagram

MH4

Centralized
Server

MH
3
MH
1

MH
2

MH-Mobile Host
Technique used or algorithm used
•
•
•
•

Peer to Peer Communication technique
Nearest Neighbor Verification Method
Sharing Based Nearest Neighbor
Sharing Based Window Query

Advantages
• Maintaining high scalability and accuracy.
• Reducing the latency while processing query to neighboring
peers.

Applications
Now a day this is used in mobile search application to get the
approximate result in short time instead of getting accurate results in
long time.

Weitere ähnliche Inhalte

Was ist angesagt?

Privacy - Preserving Reputation with Content Protecting Location Based Queries
Privacy - Preserving Reputation with Content Protecting Location Based QueriesPrivacy - Preserving Reputation with Content Protecting Location Based Queries
Privacy - Preserving Reputation with Content Protecting Location Based Queriesiosrjce
 
PERTURBED ANONYMIZATION: TWO LEVEL SMART PRIVACY FOR LBS MOBILE USERS
PERTURBED ANONYMIZATION: TWO LEVEL SMART PRIVACY FOR LBS MOBILE USERS PERTURBED ANONYMIZATION: TWO LEVEL SMART PRIVACY FOR LBS MOBILE USERS
PERTURBED ANONYMIZATION: TWO LEVEL SMART PRIVACY FOR LBS MOBILE USERS cscpconf
 
Preserving location privacy in geo social applications
Preserving location privacy in geo social applicationsPreserving location privacy in geo social applications
Preserving location privacy in geo social applicationsShakas Technologies
 
USER-DEFINED PRIVACY GRID SYSTEM FOR CONTINUOUS LOCATION-BASED SERVICES
USER-DEFINED PRIVACY GRID SYSTEM FOR CONTINUOUS LOCATION-BASED SERVICESUSER-DEFINED PRIVACY GRID SYSTEM FOR CONTINUOUS LOCATION-BASED SERVICES
USER-DEFINED PRIVACY GRID SYSTEM FOR CONTINUOUS LOCATION-BASED SERVICESnexgentechnology
 
Preserving location privacy in geo social applications
Preserving location privacy in geo social applications Preserving location privacy in geo social applications
Preserving location privacy in geo social applications Adz91 Digital Ads Pvt Ltd
 
preserving location privacy in geosocial applications
preserving location privacy in geosocial applicationspreserving location privacy in geosocial applications
preserving location privacy in geosocial applicationsswathi78
 
Pppppppppttttttttttttttttttttt
PpppppppptttttttttttttttttttttPppppppppttttttttttttttttttttt
PpppppppptttttttttttttttttttttRahul kulshrestha
 
USER-DEFINED PRIVACY GRID SYSTEM FOR CONTINUOUS LOCATION-BASED SERVICES - IEE...
USER-DEFINED PRIVACY GRID SYSTEM FOR CONTINUOUS LOCATION-BASED SERVICES - IEE...USER-DEFINED PRIVACY GRID SYSTEM FOR CONTINUOUS LOCATION-BASED SERVICES - IEE...
USER-DEFINED PRIVACY GRID SYSTEM FOR CONTINUOUS LOCATION-BASED SERVICES - IEE...Nexgen Technology
 
User defined privacy grid system for continuous location based services abstract
User defined privacy grid system for continuous location based services abstractUser defined privacy grid system for continuous location based services abstract
User defined privacy grid system for continuous location based services abstractSoftroniics india
 
Privacy preserving optimal meeting location determination on mobile devices
Privacy preserving optimal meeting location determination on mobile devicesPrivacy preserving optimal meeting location determination on mobile devices
Privacy preserving optimal meeting location determination on mobile devicesAdz91 Digital Ads Pvt Ltd
 
Hiding in the mobile crowd location privacy through collaboration
Hiding in the mobile crowd location privacy through collaborationHiding in the mobile crowd location privacy through collaboration
Hiding in the mobile crowd location privacy through collaborationJPINFOTECH JAYAPRAKASH
 
User defined privacy grid system for continuous location-based services
User defined privacy grid system for continuous location-based servicesUser defined privacy grid system for continuous location-based services
User defined privacy grid system for continuous location-based servicesLeMeniz Infotech
 
Privacy preserving location sharing services for social networks(1)
Privacy preserving location sharing services for social networks(1)Privacy preserving location sharing services for social networks(1)
Privacy preserving location sharing services for social networks(1)Kamal Spring
 
Extending Mobile Devices with Spatially Arranged Gateways to Pervasive Services.
Extending Mobile Devices with Spatially Arranged Gateways to Pervasive Services.Extending Mobile Devices with Spatially Arranged Gateways to Pervasive Services.
Extending Mobile Devices with Spatially Arranged Gateways to Pervasive Services.Dominique Guinard
 
IRJET- Quantify Mutually Dependent Privacy Risks with Locality Data
IRJET- Quantify Mutually Dependent Privacy Risks with Locality DataIRJET- Quantify Mutually Dependent Privacy Risks with Locality Data
IRJET- Quantify Mutually Dependent Privacy Risks with Locality DataIRJET Journal
 
privacy preserving abstract
 privacy preserving abstract privacy preserving abstract
privacy preserving abstractmuhammed jassim k
 
Analysis the Privacy preserving and content protecting location based on queries
Analysis the Privacy preserving and content protecting location based on queriesAnalysis the Privacy preserving and content protecting location based on queries
Analysis the Privacy preserving and content protecting location based on querieskavidhapr
 

Was ist angesagt? (19)

Privacy - Preserving Reputation with Content Protecting Location Based Queries
Privacy - Preserving Reputation with Content Protecting Location Based QueriesPrivacy - Preserving Reputation with Content Protecting Location Based Queries
Privacy - Preserving Reputation with Content Protecting Location Based Queries
 
PERTURBED ANONYMIZATION: TWO LEVEL SMART PRIVACY FOR LBS MOBILE USERS
PERTURBED ANONYMIZATION: TWO LEVEL SMART PRIVACY FOR LBS MOBILE USERS PERTURBED ANONYMIZATION: TWO LEVEL SMART PRIVACY FOR LBS MOBILE USERS
PERTURBED ANONYMIZATION: TWO LEVEL SMART PRIVACY FOR LBS MOBILE USERS
 
Preserving location privacy in geo social applications
Preserving location privacy in geo social applicationsPreserving location privacy in geo social applications
Preserving location privacy in geo social applications
 
USER-DEFINED PRIVACY GRID SYSTEM FOR CONTINUOUS LOCATION-BASED SERVICES
USER-DEFINED PRIVACY GRID SYSTEM FOR CONTINUOUS LOCATION-BASED SERVICESUSER-DEFINED PRIVACY GRID SYSTEM FOR CONTINUOUS LOCATION-BASED SERVICES
USER-DEFINED PRIVACY GRID SYSTEM FOR CONTINUOUS LOCATION-BASED SERVICES
 
Preserving location privacy in geo social applications
Preserving location privacy in geo social applications Preserving location privacy in geo social applications
Preserving location privacy in geo social applications
 
Seminar
SeminarSeminar
Seminar
 
preserving location privacy in geosocial applications
preserving location privacy in geosocial applicationspreserving location privacy in geosocial applications
preserving location privacy in geosocial applications
 
Pppppppppttttttttttttttttttttt
PpppppppptttttttttttttttttttttPppppppppttttttttttttttttttttt
Pppppppppttttttttttttttttttttt
 
USER-DEFINED PRIVACY GRID SYSTEM FOR CONTINUOUS LOCATION-BASED SERVICES - IEE...
USER-DEFINED PRIVACY GRID SYSTEM FOR CONTINUOUS LOCATION-BASED SERVICES - IEE...USER-DEFINED PRIVACY GRID SYSTEM FOR CONTINUOUS LOCATION-BASED SERVICES - IEE...
USER-DEFINED PRIVACY GRID SYSTEM FOR CONTINUOUS LOCATION-BASED SERVICES - IEE...
 
User defined privacy grid system for continuous location based services abstract
User defined privacy grid system for continuous location based services abstractUser defined privacy grid system for continuous location based services abstract
User defined privacy grid system for continuous location based services abstract
 
Privacy preserving optimal meeting location determination on mobile devices
Privacy preserving optimal meeting location determination on mobile devicesPrivacy preserving optimal meeting location determination on mobile devices
Privacy preserving optimal meeting location determination on mobile devices
 
Hiding in the mobile crowd location privacy through collaboration
Hiding in the mobile crowd location privacy through collaborationHiding in the mobile crowd location privacy through collaboration
Hiding in the mobile crowd location privacy through collaboration
 
User defined privacy grid system for continuous location-based services
User defined privacy grid system for continuous location-based servicesUser defined privacy grid system for continuous location-based services
User defined privacy grid system for continuous location-based services
 
Privacy preserving location sharing services for social networks(1)
Privacy preserving location sharing services for social networks(1)Privacy preserving location sharing services for social networks(1)
Privacy preserving location sharing services for social networks(1)
 
Extending Mobile Devices with Spatially Arranged Gateways to Pervasive Services.
Extending Mobile Devices with Spatially Arranged Gateways to Pervasive Services.Extending Mobile Devices with Spatially Arranged Gateways to Pervasive Services.
Extending Mobile Devices with Spatially Arranged Gateways to Pervasive Services.
 
IRJET- Quantify Mutually Dependent Privacy Risks with Locality Data
IRJET- Quantify Mutually Dependent Privacy Risks with Locality DataIRJET- Quantify Mutually Dependent Privacy Risks with Locality Data
IRJET- Quantify Mutually Dependent Privacy Risks with Locality Data
 
H0944649
H0944649H0944649
H0944649
 
privacy preserving abstract
 privacy preserving abstract privacy preserving abstract
privacy preserving abstract
 
Analysis the Privacy preserving and content protecting location based on queries
Analysis the Privacy preserving and content protecting location based on queriesAnalysis the Privacy preserving and content protecting location based on queries
Analysis the Privacy preserving and content protecting location based on queries
 

Andere mochten auch

ast nearest neighbor search with keywords
ast nearest neighbor search with keywordsast nearest neighbor search with keywords
ast nearest neighbor search with keywordsswathi78
 
Building a Location-based platform with MongoDB from Zero.
Building a Location-based platform with MongoDB from Zero.Building a Location-based platform with MongoDB from Zero.
Building a Location-based platform with MongoDB from Zero.Ravi Teja
 
Fast nearest neighbor search with keywords
Fast nearest neighbor search with keywordsFast nearest neighbor search with keywords
Fast nearest neighbor search with keywordsIEEEFINALYEARPROJECTS
 
Fast nearest neighbor search with keywords
Fast nearest neighbor search with keywordsFast nearest neighbor search with keywords
Fast nearest neighbor search with keywordsLeMeniz Infotech
 
Nearest keyword set search in multi dimensional datasets
Nearest keyword set search in multi dimensional datasetsNearest keyword set search in multi dimensional datasets
Nearest keyword set search in multi dimensional datasetsShakas Technologies
 
Spatial data mining
Spatial data miningSpatial data mining
Spatial data miningMITS Gwalior
 
ppt spatial data
ppt spatial datappt spatial data
ppt spatial dataRahul Kumar
 

Andere mochten auch (8)

ast nearest neighbor search with keywords
ast nearest neighbor search with keywordsast nearest neighbor search with keywords
ast nearest neighbor search with keywords
 
Building a Location-based platform with MongoDB from Zero.
Building a Location-based platform with MongoDB from Zero.Building a Location-based platform with MongoDB from Zero.
Building a Location-based platform with MongoDB from Zero.
 
Fast nearest neighbor search with keywords
Fast nearest neighbor search with keywordsFast nearest neighbor search with keywords
Fast nearest neighbor search with keywords
 
Fast nearest neighbor search with keywords
Fast nearest neighbor search with keywordsFast nearest neighbor search with keywords
Fast nearest neighbor search with keywords
 
Nearest keyword set search in multi dimensional datasets
Nearest keyword set search in multi dimensional datasetsNearest keyword set search in multi dimensional datasets
Nearest keyword set search in multi dimensional datasets
 
Optimizing spatial database
Optimizing spatial databaseOptimizing spatial database
Optimizing spatial database
 
Spatial data mining
Spatial data miningSpatial data mining
Spatial data mining
 
ppt spatial data
ppt spatial datappt spatial data
ppt spatial data
 

Ähnlich wie Location based spatial query processing in wireless broadcast environments(synopsis)

JPJ1437 Exploiting Service Similarity for Privacy in Location-Based Search Q...
JPJ1437  Exploiting Service Similarity for Privacy in Location-Based Search Q...JPJ1437  Exploiting Service Similarity for Privacy in Location-Based Search Q...
JPJ1437 Exploiting Service Similarity for Privacy in Location-Based Search Q...chennaijp
 
4 Sw 2009 Ieee Abstracts Dot Net, Ncct Chennai
4   Sw   2009 Ieee Abstracts   Dot Net, Ncct Chennai4   Sw   2009 Ieee Abstracts   Dot Net, Ncct Chennai
4 Sw 2009 Ieee Abstracts Dot Net, Ncct Chennaincct
 
Best Final Year Projects Latest New Innovative And Ieee 2009 2010 (1)
Best Final Year Projects Latest New Innovative And Ieee 2009 2010 (1)Best Final Year Projects Latest New Innovative And Ieee 2009 2010 (1)
Best Final Year Projects Latest New Innovative And Ieee 2009 2010 (1)ncct
 
Software Projects A Sp.Net Projects Ieee Projects Domains
Software Projects A Sp.Net Projects Ieee Projects DomainsSoftware Projects A Sp.Net Projects Ieee Projects Domains
Software Projects A Sp.Net Projects Ieee Projects Domainsncct
 
J2 M E Projects, I E E E Projects 2009
J2 M E  Projects,  I E E E  Projects 2009J2 M E  Projects,  I E E E  Projects 2009
J2 M E Projects, I E E E Projects 2009ncct
 
Ieee Software Projects Java Projects Ieee Projects Domains
Ieee Software Projects Java Projects Ieee Projects DomainsIeee Software Projects Java Projects Ieee Projects Domains
Ieee Software Projects Java Projects Ieee Projects Domainsncct
 
Java Projects Ieee Projects
Java Projects Ieee ProjectsJava Projects Ieee Projects
Java Projects Ieee Projectsncct
 
Vb.Net Projects, Final Year Projects
Vb.Net Projects, Final Year ProjectsVb.Net Projects, Final Year Projects
Vb.Net Projects, Final Year Projectsncct
 
College Projects, Be Projects, B Tech Projects, Me Projects, M Tech Projects,...
College Projects, Be Projects, B Tech Projects, Me Projects, M Tech Projects,...College Projects, Be Projects, B Tech Projects, Me Projects, M Tech Projects,...
College Projects, Be Projects, B Tech Projects, Me Projects, M Tech Projects,...ncct
 
College Projects, Be Projects, B Tech Projects, Me Projects, M Tech Projects,...
College Projects, Be Projects, B Tech Projects, Me Projects, M Tech Projects,...College Projects, Be Projects, B Tech Projects, Me Projects, M Tech Projects,...
College Projects, Be Projects, B Tech Projects, Me Projects, M Tech Projects,...ncct
 
Software Projects Asp.Net Java Ncct Chenai
Software Projects Asp.Net Java Ncct ChenaiSoftware Projects Asp.Net Java Ncct Chenai
Software Projects Asp.Net Java Ncct Chenaincct
 
Final Year Engineering Projects
Final  Year  Engineering  ProjectsFinal  Year  Engineering  Projects
Final Year Engineering Projectsncct
 
Wireless Networks Projects, Network Security Projects, Networking Project
Wireless Networks Projects, Network Security Projects, Networking ProjectWireless Networks Projects, Network Security Projects, Networking Project
Wireless Networks Projects, Network Security Projects, Networking Projectncct
 
Polytechnic Projects
Polytechnic ProjectsPolytechnic Projects
Polytechnic Projectsncct
 
Benefits Of Final Year Projects, Ncct
Benefits Of Final Year Projects, NcctBenefits Of Final Year Projects, Ncct
Benefits Of Final Year Projects, Ncctncct
 
Wireless Sensor Network Using Six Sigma Multi Hop Routing
Wireless Sensor Network Using Six Sigma Multi Hop RoutingWireless Sensor Network Using Six Sigma Multi Hop Routing
Wireless Sensor Network Using Six Sigma Multi Hop RoutingIOSR Journals
 
Wireless Sensor Network Using Six Sigma Multi Hop Routing
Wireless Sensor Network Using Six Sigma Multi Hop RoutingWireless Sensor Network Using Six Sigma Multi Hop Routing
Wireless Sensor Network Using Six Sigma Multi Hop RoutingIOSR Journals
 
Ad hoc & WSN Routing protocols (Geetha) (2).pptx
Ad hoc & WSN Routing protocols (Geetha) (2).pptxAd hoc & WSN Routing protocols (Geetha) (2).pptx
Ad hoc & WSN Routing protocols (Geetha) (2).pptxGomathi454280
 

Ähnlich wie Location based spatial query processing in wireless broadcast environments(synopsis) (20)

JPJ1437 Exploiting Service Similarity for Privacy in Location-Based Search Q...
JPJ1437  Exploiting Service Similarity for Privacy in Location-Based Search Q...JPJ1437  Exploiting Service Similarity for Privacy in Location-Based Search Q...
JPJ1437 Exploiting Service Similarity for Privacy in Location-Based Search Q...
 
Continuous query processing for mobile users
Continuous query processing for mobile usersContinuous query processing for mobile users
Continuous query processing for mobile users
 
4 Sw 2009 Ieee Abstracts Dot Net, Ncct Chennai
4   Sw   2009 Ieee Abstracts   Dot Net, Ncct Chennai4   Sw   2009 Ieee Abstracts   Dot Net, Ncct Chennai
4 Sw 2009 Ieee Abstracts Dot Net, Ncct Chennai
 
Best Final Year Projects Latest New Innovative And Ieee 2009 2010 (1)
Best Final Year Projects Latest New Innovative And Ieee 2009 2010 (1)Best Final Year Projects Latest New Innovative And Ieee 2009 2010 (1)
Best Final Year Projects Latest New Innovative And Ieee 2009 2010 (1)
 
Software Projects A Sp.Net Projects Ieee Projects Domains
Software Projects A Sp.Net Projects Ieee Projects DomainsSoftware Projects A Sp.Net Projects Ieee Projects Domains
Software Projects A Sp.Net Projects Ieee Projects Domains
 
J2 M E Projects, I E E E Projects 2009
J2 M E  Projects,  I E E E  Projects 2009J2 M E  Projects,  I E E E  Projects 2009
J2 M E Projects, I E E E Projects 2009
 
Ieee Software Projects Java Projects Ieee Projects Domains
Ieee Software Projects Java Projects Ieee Projects DomainsIeee Software Projects Java Projects Ieee Projects Domains
Ieee Software Projects Java Projects Ieee Projects Domains
 
Java Projects Ieee Projects
Java Projects Ieee ProjectsJava Projects Ieee Projects
Java Projects Ieee Projects
 
Vb.Net Projects, Final Year Projects
Vb.Net Projects, Final Year ProjectsVb.Net Projects, Final Year Projects
Vb.Net Projects, Final Year Projects
 
College Projects, Be Projects, B Tech Projects, Me Projects, M Tech Projects,...
College Projects, Be Projects, B Tech Projects, Me Projects, M Tech Projects,...College Projects, Be Projects, B Tech Projects, Me Projects, M Tech Projects,...
College Projects, Be Projects, B Tech Projects, Me Projects, M Tech Projects,...
 
College Projects, Be Projects, B Tech Projects, Me Projects, M Tech Projects,...
College Projects, Be Projects, B Tech Projects, Me Projects, M Tech Projects,...College Projects, Be Projects, B Tech Projects, Me Projects, M Tech Projects,...
College Projects, Be Projects, B Tech Projects, Me Projects, M Tech Projects,...
 
Software Projects Asp.Net Java Ncct Chenai
Software Projects Asp.Net Java Ncct ChenaiSoftware Projects Asp.Net Java Ncct Chenai
Software Projects Asp.Net Java Ncct Chenai
 
Final Year Engineering Projects
Final  Year  Engineering  ProjectsFinal  Year  Engineering  Projects
Final Year Engineering Projects
 
Wireless Networks Projects, Network Security Projects, Networking Project
Wireless Networks Projects, Network Security Projects, Networking ProjectWireless Networks Projects, Network Security Projects, Networking Project
Wireless Networks Projects, Network Security Projects, Networking Project
 
Polytechnic Projects
Polytechnic ProjectsPolytechnic Projects
Polytechnic Projects
 
Benefits Of Final Year Projects, Ncct
Benefits Of Final Year Projects, NcctBenefits Of Final Year Projects, Ncct
Benefits Of Final Year Projects, Ncct
 
Wireless Sensor Network Using Six Sigma Multi Hop Routing
Wireless Sensor Network Using Six Sigma Multi Hop RoutingWireless Sensor Network Using Six Sigma Multi Hop Routing
Wireless Sensor Network Using Six Sigma Multi Hop Routing
 
Wireless Sensor Network Using Six Sigma Multi Hop Routing
Wireless Sensor Network Using Six Sigma Multi Hop RoutingWireless Sensor Network Using Six Sigma Multi Hop Routing
Wireless Sensor Network Using Six Sigma Multi Hop Routing
 
Presence cloud
Presence cloudPresence cloud
Presence cloud
 
Ad hoc & WSN Routing protocols (Geetha) (2).pptx
Ad hoc & WSN Routing protocols (Geetha) (2).pptxAd hoc & WSN Routing protocols (Geetha) (2).pptx
Ad hoc & WSN Routing protocols (Geetha) (2).pptx
 

Mehr von Mumbai Academisc

Mehr von Mumbai Academisc (20)

Non ieee java projects list
Non  ieee java projects list Non  ieee java projects list
Non ieee java projects list
 
Non ieee dot net projects list
Non  ieee dot net projects list Non  ieee dot net projects list
Non ieee dot net projects list
 
Ieee java projects list
Ieee java projects list Ieee java projects list
Ieee java projects list
 
Ieee 2014 java projects list
Ieee 2014 java projects list Ieee 2014 java projects list
Ieee 2014 java projects list
 
Ieee 2014 dot net projects list
Ieee 2014 dot net projects list Ieee 2014 dot net projects list
Ieee 2014 dot net projects list
 
Ieee 2013 java projects list
Ieee 2013 java projects list Ieee 2013 java projects list
Ieee 2013 java projects list
 
Ieee 2013 dot net projects list
Ieee 2013 dot net projects listIeee 2013 dot net projects list
Ieee 2013 dot net projects list
 
Ieee 2012 dot net projects list
Ieee 2012 dot net projects listIeee 2012 dot net projects list
Ieee 2012 dot net projects list
 
Spring ppt
Spring pptSpring ppt
Spring ppt
 
Ejb notes
Ejb notesEjb notes
Ejb notes
 
Java web programming
Java web programmingJava web programming
Java web programming
 
Java programming-examples
Java programming-examplesJava programming-examples
Java programming-examples
 
Hibernate tutorial
Hibernate tutorialHibernate tutorial
Hibernate tutorial
 
J2ee project lists:-Mumbai Academics
J2ee project lists:-Mumbai AcademicsJ2ee project lists:-Mumbai Academics
J2ee project lists:-Mumbai Academics
 
Web based development
Web based developmentWeb based development
Web based development
 
Jdbc
JdbcJdbc
Jdbc
 
Java tutorial part 4
Java tutorial part 4Java tutorial part 4
Java tutorial part 4
 
Java tutorial part 3
Java tutorial part 3Java tutorial part 3
Java tutorial part 3
 
Java tutorial part 2
Java tutorial part 2Java tutorial part 2
Java tutorial part 2
 
Engineering
EngineeringEngineering
Engineering
 

Kürzlich hochgeladen

Landscape Catalogue 2024 Australia-1.pdf
Landscape Catalogue 2024 Australia-1.pdfLandscape Catalogue 2024 Australia-1.pdf
Landscape Catalogue 2024 Australia-1.pdfAarwolf Industries LLC
 
Genislab builds better products and faster go-to-market with Lean project man...
Genislab builds better products and faster go-to-market with Lean project man...Genislab builds better products and faster go-to-market with Lean project man...
Genislab builds better products and faster go-to-market with Lean project man...Farhan Tariq
 
Assure Ecommerce and Retail Operations Uptime with ThousandEyes
Assure Ecommerce and Retail Operations Uptime with ThousandEyesAssure Ecommerce and Retail Operations Uptime with ThousandEyes
Assure Ecommerce and Retail Operations Uptime with ThousandEyesThousandEyes
 
Irene Moetsana-Moeng: Stakeholders in Cybersecurity: Collaborative Defence fo...
Irene Moetsana-Moeng: Stakeholders in Cybersecurity: Collaborative Defence fo...Irene Moetsana-Moeng: Stakeholders in Cybersecurity: Collaborative Defence fo...
Irene Moetsana-Moeng: Stakeholders in Cybersecurity: Collaborative Defence fo...itnewsafrica
 
How to Effectively Monitor SD-WAN and SASE Environments with ThousandEyes
How to Effectively Monitor SD-WAN and SASE Environments with ThousandEyesHow to Effectively Monitor SD-WAN and SASE Environments with ThousandEyes
How to Effectively Monitor SD-WAN and SASE Environments with ThousandEyesThousandEyes
 
Tampa BSides - The No BS SOC (slides from April 6, 2024 talk)
Tampa BSides - The No BS SOC (slides from April 6, 2024 talk)Tampa BSides - The No BS SOC (slides from April 6, 2024 talk)
Tampa BSides - The No BS SOC (slides from April 6, 2024 talk)Mark Simos
 
UiPath Community: Communication Mining from Zero to Hero
UiPath Community: Communication Mining from Zero to HeroUiPath Community: Communication Mining from Zero to Hero
UiPath Community: Communication Mining from Zero to HeroUiPathCommunity
 
Time Series Foundation Models - current state and future directions
Time Series Foundation Models - current state and future directionsTime Series Foundation Models - current state and future directions
Time Series Foundation Models - current state and future directionsNathaniel Shimoni
 
Kuma Meshes Part I - The basics - A tutorial
Kuma Meshes Part I - The basics - A tutorialKuma Meshes Part I - The basics - A tutorial
Kuma Meshes Part I - The basics - A tutorialJoão Esperancinha
 
So einfach geht modernes Roaming fuer Notes und Nomad.pdf
So einfach geht modernes Roaming fuer Notes und Nomad.pdfSo einfach geht modernes Roaming fuer Notes und Nomad.pdf
So einfach geht modernes Roaming fuer Notes und Nomad.pdfpanagenda
 
Microsoft 365 Copilot: How to boost your productivity with AI – Part two: Dat...
Microsoft 365 Copilot: How to boost your productivity with AI – Part two: Dat...Microsoft 365 Copilot: How to boost your productivity with AI – Part two: Dat...
Microsoft 365 Copilot: How to boost your productivity with AI – Part two: Dat...Nikki Chapple
 
Bridging Between CAD & GIS: 6 Ways to Automate Your Data Integration
Bridging Between CAD & GIS:  6 Ways to Automate Your Data IntegrationBridging Between CAD & GIS:  6 Ways to Automate Your Data Integration
Bridging Between CAD & GIS: 6 Ways to Automate Your Data Integrationmarketing932765
 
Top 10 Hubspot Development Companies in 2024
Top 10 Hubspot Development Companies in 2024Top 10 Hubspot Development Companies in 2024
Top 10 Hubspot Development Companies in 2024TopCSSGallery
 
Generative AI - Gitex v1Generative AI - Gitex v1.pptx
Generative AI - Gitex v1Generative AI - Gitex v1.pptxGenerative AI - Gitex v1Generative AI - Gitex v1.pptx
Generative AI - Gitex v1Generative AI - Gitex v1.pptxfnnc6jmgwh
 
A Glance At The Java Performance Toolbox
A Glance At The Java Performance ToolboxA Glance At The Java Performance Toolbox
A Glance At The Java Performance ToolboxAna-Maria Mihalceanu
 
Testing tools and AI - ideas what to try with some tool examples
Testing tools and AI - ideas what to try with some tool examplesTesting tools and AI - ideas what to try with some tool examples
Testing tools and AI - ideas what to try with some tool examplesKari Kakkonen
 
Decarbonising Buildings: Making a net-zero built environment a reality
Decarbonising Buildings: Making a net-zero built environment a realityDecarbonising Buildings: Making a net-zero built environment a reality
Decarbonising Buildings: Making a net-zero built environment a realityIES VE
 
A Journey Into the Emotions of Software Developers
A Journey Into the Emotions of Software DevelopersA Journey Into the Emotions of Software Developers
A Journey Into the Emotions of Software DevelopersNicole Novielli
 
Transcript: New from BookNet Canada for 2024: BNC SalesData and LibraryData -...
Transcript: New from BookNet Canada for 2024: BNC SalesData and LibraryData -...Transcript: New from BookNet Canada for 2024: BNC SalesData and LibraryData -...
Transcript: New from BookNet Canada for 2024: BNC SalesData and LibraryData -...BookNet Canada
 
Design pattern talk by Kaya Weers - 2024 (v2)
Design pattern talk by Kaya Weers - 2024 (v2)Design pattern talk by Kaya Weers - 2024 (v2)
Design pattern talk by Kaya Weers - 2024 (v2)Kaya Weers
 

Kürzlich hochgeladen (20)

Landscape Catalogue 2024 Australia-1.pdf
Landscape Catalogue 2024 Australia-1.pdfLandscape Catalogue 2024 Australia-1.pdf
Landscape Catalogue 2024 Australia-1.pdf
 
Genislab builds better products and faster go-to-market with Lean project man...
Genislab builds better products and faster go-to-market with Lean project man...Genislab builds better products and faster go-to-market with Lean project man...
Genislab builds better products and faster go-to-market with Lean project man...
 
Assure Ecommerce and Retail Operations Uptime with ThousandEyes
Assure Ecommerce and Retail Operations Uptime with ThousandEyesAssure Ecommerce and Retail Operations Uptime with ThousandEyes
Assure Ecommerce and Retail Operations Uptime with ThousandEyes
 
Irene Moetsana-Moeng: Stakeholders in Cybersecurity: Collaborative Defence fo...
Irene Moetsana-Moeng: Stakeholders in Cybersecurity: Collaborative Defence fo...Irene Moetsana-Moeng: Stakeholders in Cybersecurity: Collaborative Defence fo...
Irene Moetsana-Moeng: Stakeholders in Cybersecurity: Collaborative Defence fo...
 
How to Effectively Monitor SD-WAN and SASE Environments with ThousandEyes
How to Effectively Monitor SD-WAN and SASE Environments with ThousandEyesHow to Effectively Monitor SD-WAN and SASE Environments with ThousandEyes
How to Effectively Monitor SD-WAN and SASE Environments with ThousandEyes
 
Tampa BSides - The No BS SOC (slides from April 6, 2024 talk)
Tampa BSides - The No BS SOC (slides from April 6, 2024 talk)Tampa BSides - The No BS SOC (slides from April 6, 2024 talk)
Tampa BSides - The No BS SOC (slides from April 6, 2024 talk)
 
UiPath Community: Communication Mining from Zero to Hero
UiPath Community: Communication Mining from Zero to HeroUiPath Community: Communication Mining from Zero to Hero
UiPath Community: Communication Mining from Zero to Hero
 
Time Series Foundation Models - current state and future directions
Time Series Foundation Models - current state and future directionsTime Series Foundation Models - current state and future directions
Time Series Foundation Models - current state and future directions
 
Kuma Meshes Part I - The basics - A tutorial
Kuma Meshes Part I - The basics - A tutorialKuma Meshes Part I - The basics - A tutorial
Kuma Meshes Part I - The basics - A tutorial
 
So einfach geht modernes Roaming fuer Notes und Nomad.pdf
So einfach geht modernes Roaming fuer Notes und Nomad.pdfSo einfach geht modernes Roaming fuer Notes und Nomad.pdf
So einfach geht modernes Roaming fuer Notes und Nomad.pdf
 
Microsoft 365 Copilot: How to boost your productivity with AI – Part two: Dat...
Microsoft 365 Copilot: How to boost your productivity with AI – Part two: Dat...Microsoft 365 Copilot: How to boost your productivity with AI – Part two: Dat...
Microsoft 365 Copilot: How to boost your productivity with AI – Part two: Dat...
 
Bridging Between CAD & GIS: 6 Ways to Automate Your Data Integration
Bridging Between CAD & GIS:  6 Ways to Automate Your Data IntegrationBridging Between CAD & GIS:  6 Ways to Automate Your Data Integration
Bridging Between CAD & GIS: 6 Ways to Automate Your Data Integration
 
Top 10 Hubspot Development Companies in 2024
Top 10 Hubspot Development Companies in 2024Top 10 Hubspot Development Companies in 2024
Top 10 Hubspot Development Companies in 2024
 
Generative AI - Gitex v1Generative AI - Gitex v1.pptx
Generative AI - Gitex v1Generative AI - Gitex v1.pptxGenerative AI - Gitex v1Generative AI - Gitex v1.pptx
Generative AI - Gitex v1Generative AI - Gitex v1.pptx
 
A Glance At The Java Performance Toolbox
A Glance At The Java Performance ToolboxA Glance At The Java Performance Toolbox
A Glance At The Java Performance Toolbox
 
Testing tools and AI - ideas what to try with some tool examples
Testing tools and AI - ideas what to try with some tool examplesTesting tools and AI - ideas what to try with some tool examples
Testing tools and AI - ideas what to try with some tool examples
 
Decarbonising Buildings: Making a net-zero built environment a reality
Decarbonising Buildings: Making a net-zero built environment a realityDecarbonising Buildings: Making a net-zero built environment a reality
Decarbonising Buildings: Making a net-zero built environment a reality
 
A Journey Into the Emotions of Software Developers
A Journey Into the Emotions of Software DevelopersA Journey Into the Emotions of Software Developers
A Journey Into the Emotions of Software Developers
 
Transcript: New from BookNet Canada for 2024: BNC SalesData and LibraryData -...
Transcript: New from BookNet Canada for 2024: BNC SalesData and LibraryData -...Transcript: New from BookNet Canada for 2024: BNC SalesData and LibraryData -...
Transcript: New from BookNet Canada for 2024: BNC SalesData and LibraryData -...
 
Design pattern talk by Kaya Weers - 2024 (v2)
Design pattern talk by Kaya Weers - 2024 (v2)Design pattern talk by Kaya Weers - 2024 (v2)
Design pattern talk by Kaya Weers - 2024 (v2)
 

Location based spatial query processing in wireless broadcast environments(synopsis)

  • 1. Location-Based Spatial Query Processing in Wireless Broadcast Environments (Synopsis)
  • 2. Abstract Location-based spatial queries (LBSQ s) refer to spatial queries whose answers rely on the location of the inquirer. Efficient processing of LBSQ s is of critical importance with the everincreasing deployment and use of mobile technologies. We show that LBSQ s has certain unique characteristics that the traditional spatial query processing in centralized databases does not address. For example, a significant challenge is presented by wireless broadcasting environments, which have excellent scalability but often exhibit highlatency database access. In this paper, we present a novel query processing technique that, though maintaining high scalability and accuracy, manages to reduce the latency considerably in answering LBSQ s. Our approach is based on peer-to-peer sharing, which enables us to process queries without delay at a mobile host by using query results cached in its neighboring mobile peers. We demonstrate the feasibility of our approach through a probabilistic analysis, and we illustrate the appeal of our technique through extensive simulation results.
  • 3. Existing System • Existing techniques cannot be used effectively in a wireless broadcast environment, where only sequential data access is supported. • It may not scale to very large user populations. • In an existing system to communicate with the server, a client must most likely use a fee-based cellular-type network to achieve a reasonable operating range. • Third, users must reveal their current location and send it to the server, which may be undesirable for privacy reasons Proposed System • This System is a novel approach for reducing the spatial query access latency by leveraging results from nearby peers in wireless broadcast environments. • Our scheme allows a mobile client to locally verify whether candidate objects received from peers are indeed part of its own spatial query result set. • The method exhibits great scalability: the higher the mobile peer density, the more the queries answered by peers. • The query access latency can be decreased with the increase in clients.
  • 4. System Requirement Specification Software Interface • JDK 1.5 • Java Swing • SQL Server Hardware Interface • PROCESSOR : PENTIUM IV 2.6 GHz • RAM : 512 MB DD RAM • MONITOR : 15” COLOR • HARD DISK : 40 GB • KEYBOARD : STANDARD 102 KEYS • MOUSE : 3 BUTTON
  • 5. Scope of the Project The scope of the project is to reduce the latency considerably in answering LBSQs. Our approach is based on peer-to-peer sharing, which enables us to process queries without delay at a mobile host by using query results cached in its neighboring mobile peers. Introduction Location-based spatial queries (LBSQ s) refer to spatial queries whose answers rely on the location of the inquirer. Efficient processing of LBSQ s is of critical importance with the ever-increasing deployment and use of mobile technologies. We show that LBSQ s has certain unique characteristics that the traditional spatial query processing in centralized databases does not address. For example, a significant challenge is presented by wireless broadcasting environments, which have excellent scalability but often exhibit high-latency database access. In this paper, we present a novel query processing technique that, though maintaining high scalability and accuracy, manages to reduce the latency considerably in answering LBSQ s. We demonstrate the feasibility of our approach through a probabilistic analysis, and we illustrate the appeal of our technique through extensive simulation results.
  • 6. Modules • Multiple peer simulation Module • Server Module • Sharing-based nearest neighbor query visualization Module Module Description Multiple peer simulation Module The multiple peer simulation modules concurrently models a predefined number of mobile hosts. It implements all the functionality of a single mobile host and provides the communication facilities among peers and from peers to remote spatial database servers. Server Module The server module is responsible for storing points of interest indexed by an R-tree structure. It performs NN queries from peers with pruning bounds and records the I/O load and access frequency of the spatial database server. Sharing-based nearest neighbor query visualization Module The sharing-based nearest neighbor query visualization Module provides a rendering of the verification process of a sharing-based NN query in a step-by-step manner. Users can arbitrarily select a mobile host and launch a location-based NN query within the simulation region.
  • 7. In module given input and expected output The Query location and preferred criteria are the input for Mobile Host. The Mobile Host gets the results for the corresponding location and criteria, with considerably reducing latency while getting results from neighboring peers. Module 1 Mobile Host1 Finding nearest Neighbor Mobile Host 2
  • 8. Module 2 Mobile Host Centralized Server Module 3 MH2 MH1 Server MH3
  • 10. Technique used or algorithm used • • • • Peer to Peer Communication technique Nearest Neighbor Verification Method Sharing Based Nearest Neighbor Sharing Based Window Query Advantages • Maintaining high scalability and accuracy. • Reducing the latency while processing query to neighboring peers. Applications Now a day this is used in mobile search application to get the approximate result in short time instead of getting accurate results in long time.