SlideShare uma empresa Scribd logo
1 de 4
Baixar para ler offline
Do Your Projects With Domain Experts…
Copyright © 2015 LeMeniz Infotech. All rights reserved
LeMeniz Infotech
36, 100 Feet Road, Natesan Nagar, Near Indira Gandhi Statue,
Pondicherry-605 005.
Call: 0413-4205444, +91 9566355386, 99625 88976.
Web : www.lemenizinfotech.com / www.ieeemaster.com
Mail : projects@lemenizinfotech.com
Real-Time Big Data Analytical Architecture for Remote Sensing Application
ABSTRACT:
The assets of remote senses digital world daily generate massive volume of real-
time data (mainly referred to the term “Big Data”), where insight information has a potential
significance if collected and aggregated effectively. In today’s era, there is a great deal
added to real-time remote sensing Big Data than it seems at first, and extracting the useful
information in an efficient manner leads a system toward a major computational
challenges, such as to analyze, aggregate, and store, where data are remotely collected.
Keeping in view the above mentioned factors, there is a need for designing a system
architecture that welcomes both realtime, as well as offline data processing. Therefore, in
this paper, we propose real-time Big Data analytical architecture for remote sensing
satellite application. The proposed architecture comprises three main units, such as 1)
remote sensing Big Data acquisition unit (RSDU); 2) data processing unit (DPU); and 3)
data analysis decision unit (DADU). First, RSDU acquires data from the satellite and sends
this data to the Base Station, where initial processing takes place. Second, DPU plays a
vital role in architecture for efficient processing of real-time Big Data by providing filtration,
load balancing, and parallel processing. Third, DADU is the upper layer unit of the
proposed architecture, which is responsible for compilation, storage of the results, and
generation of decision based on the results received from DPU. The proposed architecture
has the capability of dividing, load balancing, and parallel processing of only useful data.
Thus, it results in efficiently analyzing real-time remote sensing Big Data using earth
observatory system. Furthermore, the proposed architecture has the capability of storing
incoming raw data to perform offline analysis on largely stored dumps, when required.
Finally, a detailed analysis of remotely sensed earth observatory Big Data for land and sea
area are provided using Hadoop. In addition, various algorithms are proposed for each
level of RSDU, DPU, and DADU to detect land as well as sea area to elaborate the
working of an architecture.
INTRODUCTION
RECENTLY, a great deal of interest in the field of Big Data and its analysis has risen,
mainly driven from extensive number of research challenges strappingly related to
bonafide applications, such as modeling, processing, querying, mining, and distributing
Do Your Projects With Domain Experts…
Copyright © 2015 LeMeniz Infotech. All rights reserved
LeMeniz Infotech
36, 100 Feet Road, Natesan Nagar, Near Indira Gandhi Statue,
Pondicherry-605 005.
Call: 0413-4205444, +91 9566355386, 99625 88976.
Web : www.lemenizinfotech.com / www.ieeemaster.com
Mail : projects@lemenizinfotech.com
large-scale repositories. The term “Big Data” classifies specific kinds of data sets
comprising formless data, which dwell in data layer of technical computing applications
and theWeb. The data stored in the underlying layer of all these technical computing
application scenarios have some precise individualities in common, such as 1) largescale
data, which refers to the size and the data warehouse; 2) scalability issues, which refer to
the application’s likely to be running on large scale (e.g., Big Data); 3) sustain extraction
transformation loading (ETL) method from low, raw data to well thought-out data up to
certain extent; and 4) development of uncomplicated interpretable analytical over Big Data
warehouses with a view to deliver an intelligent and momentous knowledge for them . Big
Data are usually generated by online transaction, video/audio, email, number of clicks,
logs, posts, social network data, scientific data, remote access sensory data, mobile
phones, and their applications . These data are accumulated in databases that grow
extraordinarily and become complicated to confine, form, store, manage, share, process,
analyze, and visualize via typical database software tools.
EXISTING SYSTEM
In Existing System the data collected from remote areas are not in a format ready
for analysis. Therefore, the second step refers us to data extraction, which drags out the
useful information from the underlying sources and delivers it in a structured formation
suitable for analysis. For instance, the data set is reduced to single-class label to facilitate
analysis, even though the first thing that we used to think about Big Data as always
describing the fact.
DisADVANTAGE OF Existing SYSTEM
 Sometimes we have to deal with erroneous data too, or some of the data might be
imprecise.
PROPOSED SYSTEM
In Proposed System the architecture for real-time Big Data analysis for remote
sensing application. The proposed architecture efficiently processed and analyzed real-
time and offline remote sensing Big Data for decision-making. The proposed architecture
is composed of three major units, such as 1) RSDU; 2) DPU; and 3) DADU. These units
Do Your Projects With Domain Experts…
Copyright © 2015 LeMeniz Infotech. All rights reserved
LeMeniz Infotech
36, 100 Feet Road, Natesan Nagar, Near Indira Gandhi Statue,
Pondicherry-605 005.
Call: 0413-4205444, +91 9566355386, 99625 88976.
Web : www.lemenizinfotech.com / www.ieeemaster.com
Mail : projects@lemenizinfotech.com
implement algorithms for each level of the architecture depending on the required analysis.
The architecture of real-time Big is generic (application independent) that is used for any
type of remote sensing Big Data analysis.
ADVANTAGE OF PROPOSED SYSTEM
 Capabilities of filtering, dividing, and parallel processing of only useful information
are performed by discarding all other extra data.
 These processes make a better choice for real-time remote sensing Big Data
analysis.
 The algorithms proposed in this paper for each unit and subunits are used to
analyze remote sensing data sets, which helps in better understanding of land and
sea area.
ARCHITECTURE:
Do Your Projects With Domain Experts…
Copyright © 2015 LeMeniz Infotech. All rights reserved
LeMeniz Infotech
36, 100 Feet Road, Natesan Nagar, Near Indira Gandhi Statue,
Pondicherry-605 005.
Call: 0413-4205444, +91 9566355386, 99625 88976.
Web : www.lemenizinfotech.com / www.ieeemaster.com
Mail : projects@lemenizinfotech.com
HRDWARE REQUIREMENTS:
 System : Pentium IV 2.4 GHz.
 Hard Disk : 40 GB.
 Floppy Drive : 44 Mb.
 Monitor : 15 VGA Colour.
SOFTWARE REQUIREMENTS:
 Operating system : Windows 7.
 Coding Language : Java 1.7 ,Hadoop 0.8.1
 Database : MySql 5
 IDE : Eclipse

Mais conteúdo relacionado

Mais procurados

Introducing the Big Data Ecosystem with Caserta Concepts & Talend
Introducing the Big Data Ecosystem with Caserta Concepts & TalendIntroducing the Big Data Ecosystem with Caserta Concepts & Talend
Introducing the Big Data Ecosystem with Caserta Concepts & TalendCaserta
 
Big data unit 2
Big data unit 2Big data unit 2
Big data unit 2RojaT4
 
The Big Data Stack
The Big Data StackThe Big Data Stack
The Big Data StackZubair Nabi
 
Big Data Analysis Patterns - TriHUG 6/27/2013
Big Data Analysis Patterns - TriHUG 6/27/2013Big Data Analysis Patterns - TriHUG 6/27/2013
Big Data Analysis Patterns - TriHUG 6/27/2013boorad
 
Big Data - An Overview
Big Data -  An OverviewBig Data -  An Overview
Big Data - An OverviewArvind Kalyan
 
big data and hadoop
 big data and hadoop big data and hadoop
big data and hadoopahmed alshikh
 
Future of Data - Big Data
Future of Data - Big DataFuture of Data - Big Data
Future of Data - Big DataShankar R
 
THE 3V's OF BIG DATA: VARIETY, VELOCITY, AND VOLUME from Structure:Data 2012
THE 3V's OF BIG DATA: VARIETY, VELOCITY, AND VOLUME from Structure:Data 2012THE 3V's OF BIG DATA: VARIETY, VELOCITY, AND VOLUME from Structure:Data 2012
THE 3V's OF BIG DATA: VARIETY, VELOCITY, AND VOLUME from Structure:Data 2012Gigaom
 
Hadoop - An Introduction
Hadoop - An IntroductionHadoop - An Introduction
Hadoop - An IntroductionShankar R
 
Overview of Big Data by Sunny
Overview of Big Data by SunnyOverview of Big Data by Sunny
Overview of Big Data by SunnyDignitasDigital1
 
Data mining & big data presentation 01
Data mining & big data presentation 01Data mining & big data presentation 01
Data mining & big data presentation 01Aseem Chakrabarthy
 
11. grid scheduling and resource managament
11. grid scheduling and resource managament11. grid scheduling and resource managament
11. grid scheduling and resource managamentDr Sandeep Kumar Poonia
 

Mais procurados (20)

Introducing the Big Data Ecosystem with Caserta Concepts & Talend
Introducing the Big Data Ecosystem with Caserta Concepts & TalendIntroducing the Big Data Ecosystem with Caserta Concepts & Talend
Introducing the Big Data Ecosystem with Caserta Concepts & Talend
 
Big data unit 2
Big data unit 2Big data unit 2
Big data unit 2
 
Bigdata
Bigdata Bigdata
Bigdata
 
The Big Data Stack
The Big Data StackThe Big Data Stack
The Big Data Stack
 
Big Data Analysis Patterns - TriHUG 6/27/2013
Big Data Analysis Patterns - TriHUG 6/27/2013Big Data Analysis Patterns - TriHUG 6/27/2013
Big Data Analysis Patterns - TriHUG 6/27/2013
 
Big data landscape
Big data landscapeBig data landscape
Big data landscape
 
Big data abstract
Big data abstractBig data abstract
Big data abstract
 
BIG DATA
BIG DATABIG DATA
BIG DATA
 
Big Data - An Overview
Big Data -  An OverviewBig Data -  An Overview
Big Data - An Overview
 
Expect More from Hadoop
Expect More from Hadoop Expect More from Hadoop
Expect More from Hadoop
 
big data and hadoop
 big data and hadoop big data and hadoop
big data and hadoop
 
Big data analysis concepts and references
Big data analysis concepts and referencesBig data analysis concepts and references
Big data analysis concepts and references
 
BigData
BigDataBigData
BigData
 
Future of Data - Big Data
Future of Data - Big DataFuture of Data - Big Data
Future of Data - Big Data
 
THE 3V's OF BIG DATA: VARIETY, VELOCITY, AND VOLUME from Structure:Data 2012
THE 3V's OF BIG DATA: VARIETY, VELOCITY, AND VOLUME from Structure:Data 2012THE 3V's OF BIG DATA: VARIETY, VELOCITY, AND VOLUME from Structure:Data 2012
THE 3V's OF BIG DATA: VARIETY, VELOCITY, AND VOLUME from Structure:Data 2012
 
Hadoop - An Introduction
Hadoop - An IntroductionHadoop - An Introduction
Hadoop - An Introduction
 
Overview of Big Data by Sunny
Overview of Big Data by SunnyOverview of Big Data by Sunny
Overview of Big Data by Sunny
 
Bigdata
BigdataBigdata
Bigdata
 
Data mining & big data presentation 01
Data mining & big data presentation 01Data mining & big data presentation 01
Data mining & big data presentation 01
 
11. grid scheduling and resource managament
11. grid scheduling and resource managament11. grid scheduling and resource managament
11. grid scheduling and resource managament
 

Destaque

Big Data Security Intelligence and Analytics for Advanced Threat Protection
Big Data Security Intelligence and Analytics for Advanced Threat ProtectionBig Data Security Intelligence and Analytics for Advanced Threat Protection
Big Data Security Intelligence and Analytics for Advanced Threat ProtectionBlue Coat
 
Big Data, Security Intelligence, (And Why I Hate This Title)
Big Data, Security Intelligence, (And Why I Hate This Title) Big Data, Security Intelligence, (And Why I Hate This Title)
Big Data, Security Intelligence, (And Why I Hate This Title) Coastal Pet Products, Inc.
 
Building hadoop based big data environment
Building hadoop based big data environmentBuilding hadoop based big data environment
Building hadoop based big data environmentEvans Ye
 
"Big Data" in the Energy Industry
"Big Data" in the Energy Industry"Big Data" in the Energy Industry
"Big Data" in the Energy IndustryPaige Bailey
 
Hdp security overview
Hdp security overview Hdp security overview
Hdp security overview Hortonworks
 
Mr. satish kumar, schnieder electric
Mr. satish kumar, schnieder electricMr. satish kumar, schnieder electric
Mr. satish kumar, schnieder electricRohan Pinto
 
MATATABI: Cyber Threat Analysis and Defense Platform using Huge Amount of Dat...
MATATABI: Cyber Threat Analysis and Defense Platform using Huge Amount of Dat...MATATABI: Cyber Threat Analysis and Defense Platform using Huge Amount of Dat...
MATATABI: Cyber Threat Analysis and Defense Platform using Huge Amount of Dat...APNIC
 
Big Data, Big Content, and Aligning Your Storage Strategy
Big Data, Big Content, and Aligning Your Storage StrategyBig Data, Big Content, and Aligning Your Storage Strategy
Big Data, Big Content, and Aligning Your Storage StrategyHitachi Vantara
 
BigDataEurope - Big Data & Energy
BigDataEurope - Big Data & EnergyBigDataEurope - Big Data & Energy
BigDataEurope - Big Data & EnergyBigData_Europe
 
Enterprise Approach towards Cost Savings and Enterprise Agility
Enterprise Approach towards Cost Savings and Enterprise AgilityEnterprise Approach towards Cost Savings and Enterprise Agility
Enterprise Approach towards Cost Savings and Enterprise AgilityNUS-ISS
 
Building Hadoop Data Applications with Kite by Tom White
Building Hadoop Data Applications with Kite by Tom WhiteBuilding Hadoop Data Applications with Kite by Tom White
Building Hadoop Data Applications with Kite by Tom WhiteThe Hive
 
Kerberos, Token and Hadoop
Kerberos, Token and HadoopKerberos, Token and Hadoop
Kerberos, Token and HadoopKai Zheng
 
Smart Analytics For The Utility Sector
Smart Analytics For The Utility SectorSmart Analytics For The Utility Sector
Smart Analytics For The Utility SectorHerman Bosker
 
Generating Insight from Big Data in Energy and the Environment
Generating Insight from Big Data in Energy and the EnvironmentGenerating Insight from Big Data in Energy and the Environment
Generating Insight from Big Data in Energy and the EnvironmentDavid Wallom
 
Open-BDA - Big Data Hadoop Developer Training 10th & 11th June
Open-BDA - Big Data Hadoop Developer Training 10th & 11th JuneOpen-BDA - Big Data Hadoop Developer Training 10th & 11th June
Open-BDA - Big Data Hadoop Developer Training 10th & 11th JuneInnovative Management Services
 
To Serve and Protect: Making Sense of Hadoop Security
To Serve and Protect: Making Sense of Hadoop Security To Serve and Protect: Making Sense of Hadoop Security
To Serve and Protect: Making Sense of Hadoop Security Inside Analysis
 

Destaque (20)

Big Data Security Intelligence and Analytics for Advanced Threat Protection
Big Data Security Intelligence and Analytics for Advanced Threat ProtectionBig Data Security Intelligence and Analytics for Advanced Threat Protection
Big Data Security Intelligence and Analytics for Advanced Threat Protection
 
Open-BDA Hadoop Summt 2014 - Post Summit Report
Open-BDA Hadoop Summt 2014 - Post Summit ReportOpen-BDA Hadoop Summt 2014 - Post Summit Report
Open-BDA Hadoop Summt 2014 - Post Summit Report
 
Big Data, Security Intelligence, (And Why I Hate This Title)
Big Data, Security Intelligence, (And Why I Hate This Title) Big Data, Security Intelligence, (And Why I Hate This Title)
Big Data, Security Intelligence, (And Why I Hate This Title)
 
Building hadoop based big data environment
Building hadoop based big data environmentBuilding hadoop based big data environment
Building hadoop based big data environment
 
"Big Data" in the Energy Industry
"Big Data" in the Energy Industry"Big Data" in the Energy Industry
"Big Data" in the Energy Industry
 
Hdp security overview
Hdp security overview Hdp security overview
Hdp security overview
 
Mr. satish kumar, schnieder electric
Mr. satish kumar, schnieder electricMr. satish kumar, schnieder electric
Mr. satish kumar, schnieder electric
 
Add
AddAdd
Add
 
MATATABI: Cyber Threat Analysis and Defense Platform using Huge Amount of Dat...
MATATABI: Cyber Threat Analysis and Defense Platform using Huge Amount of Dat...MATATABI: Cyber Threat Analysis and Defense Platform using Huge Amount of Dat...
MATATABI: Cyber Threat Analysis and Defense Platform using Huge Amount of Dat...
 
Big Data Security and Governance
Big Data Security and GovernanceBig Data Security and Governance
Big Data Security and Governance
 
Hadoop security
Hadoop securityHadoop security
Hadoop security
 
Big Data, Big Content, and Aligning Your Storage Strategy
Big Data, Big Content, and Aligning Your Storage StrategyBig Data, Big Content, and Aligning Your Storage Strategy
Big Data, Big Content, and Aligning Your Storage Strategy
 
BigDataEurope - Big Data & Energy
BigDataEurope - Big Data & EnergyBigDataEurope - Big Data & Energy
BigDataEurope - Big Data & Energy
 
Enterprise Approach towards Cost Savings and Enterprise Agility
Enterprise Approach towards Cost Savings and Enterprise AgilityEnterprise Approach towards Cost Savings and Enterprise Agility
Enterprise Approach towards Cost Savings and Enterprise Agility
 
Building Hadoop Data Applications with Kite by Tom White
Building Hadoop Data Applications with Kite by Tom WhiteBuilding Hadoop Data Applications with Kite by Tom White
Building Hadoop Data Applications with Kite by Tom White
 
Kerberos, Token and Hadoop
Kerberos, Token and HadoopKerberos, Token and Hadoop
Kerberos, Token and Hadoop
 
Smart Analytics For The Utility Sector
Smart Analytics For The Utility SectorSmart Analytics For The Utility Sector
Smart Analytics For The Utility Sector
 
Generating Insight from Big Data in Energy and the Environment
Generating Insight from Big Data in Energy and the EnvironmentGenerating Insight from Big Data in Energy and the Environment
Generating Insight from Big Data in Energy and the Environment
 
Open-BDA - Big Data Hadoop Developer Training 10th & 11th June
Open-BDA - Big Data Hadoop Developer Training 10th & 11th JuneOpen-BDA - Big Data Hadoop Developer Training 10th & 11th June
Open-BDA - Big Data Hadoop Developer Training 10th & 11th June
 
To Serve and Protect: Making Sense of Hadoop Security
To Serve and Protect: Making Sense of Hadoop Security To Serve and Protect: Making Sense of Hadoop Security
To Serve and Protect: Making Sense of Hadoop Security
 

Semelhante a Real time big data analytical architecture for remote sensing application

Data Virtualization: An Introduction
Data Virtualization: An IntroductionData Virtualization: An Introduction
Data Virtualization: An IntroductionDenodo
 
Sameer Kumar Das International Conference Paper 53
Sameer Kumar Das International Conference Paper 53Sameer Kumar Das International Conference Paper 53
Sameer Kumar Das International Conference Paper 53Mr.Sameer Kumar Das
 
Data Virtualization: An Introduction
Data Virtualization: An IntroductionData Virtualization: An Introduction
Data Virtualization: An IntroductionDenodo
 
Analytics as a Service in SL
Analytics as a Service in SLAnalytics as a Service in SL
Analytics as a Service in SLSkylabReddy Vanga
 
A time efficient approach for detecting errors in big sensor data on cloud
A time efficient approach for detecting errors in big sensor data on cloudA time efficient approach for detecting errors in big sensor data on cloud
A time efficient approach for detecting errors in big sensor data on cloudLeMeniz Infotech
 
Real World Application of Big Data In Data Mining Tools
Real World Application of Big Data In Data Mining ToolsReal World Application of Big Data In Data Mining Tools
Real World Application of Big Data In Data Mining Toolsijsrd.com
 
Real callenges in big data security
Real callenges in big data securityReal callenges in big data security
Real callenges in big data securitybalasahebcomp
 
Big Data Testing Using Hadoop Platform
Big Data Testing Using Hadoop PlatformBig Data Testing Using Hadoop Platform
Big Data Testing Using Hadoop PlatformIRJET Journal
 
IRJET- Systematic Review: Progression Study on BIG DATA articles
IRJET- Systematic Review: Progression Study on BIG DATA articlesIRJET- Systematic Review: Progression Study on BIG DATA articles
IRJET- Systematic Review: Progression Study on BIG DATA articlesIRJET Journal
 
A Comprehensive Study on Big Data Applications and Challenges
A Comprehensive Study on Big Data Applications and ChallengesA Comprehensive Study on Big Data Applications and Challenges
A Comprehensive Study on Big Data Applications and Challengesijcisjournal
 
Module 3_BETCK105H_Introduction to IoT.pdf
Module 3_BETCK105H_Introduction to IoT.pdfModule 3_BETCK105H_Introduction to IoT.pdf
Module 3_BETCK105H_Introduction to IoT.pdfRoopaDNDandally
 
A Logical Architecture is Always a Flexible Architecture (ASEAN)
A Logical Architecture is Always a Flexible Architecture (ASEAN)A Logical Architecture is Always a Flexible Architecture (ASEAN)
A Logical Architecture is Always a Flexible Architecture (ASEAN)Denodo
 
Big Data in Distributed Analytics,Cybersecurity And Digital Forensics
Big Data in Distributed Analytics,Cybersecurity And Digital ForensicsBig Data in Distributed Analytics,Cybersecurity And Digital Forensics
Big Data in Distributed Analytics,Cybersecurity And Digital ForensicsSherinMariamReji05
 
Future of Data Strategy
Future of Data StrategyFuture of Data Strategy
Future of Data StrategyDenodo
 
Big Data-Survey
Big Data-SurveyBig Data-Survey
Big Data-Surveyijeei-iaes
 
data mining with big data
data mining with big datadata mining with big data
data mining with big dataswathi78
 
White Paper: Advanced Cyber Analytics with Greenplum Database
White Paper: Advanced Cyber Analytics with Greenplum DatabaseWhite Paper: Advanced Cyber Analytics with Greenplum Database
White Paper: Advanced Cyber Analytics with Greenplum DatabaseEMC
 
JPJ1417 Data Mining With Big Data
JPJ1417   Data Mining With Big DataJPJ1417   Data Mining With Big Data
JPJ1417 Data Mining With Big Datachennaijp
 

Semelhante a Real time big data analytical architecture for remote sensing application (20)

Data Virtualization: An Introduction
Data Virtualization: An IntroductionData Virtualization: An Introduction
Data Virtualization: An Introduction
 
Sameer Kumar Das International Conference Paper 53
Sameer Kumar Das International Conference Paper 53Sameer Kumar Das International Conference Paper 53
Sameer Kumar Das International Conference Paper 53
 
Data Virtualization: An Introduction
Data Virtualization: An IntroductionData Virtualization: An Introduction
Data Virtualization: An Introduction
 
Analytics as a Service in SL
Analytics as a Service in SLAnalytics as a Service in SL
Analytics as a Service in SL
 
A time efficient approach for detecting errors in big sensor data on cloud
A time efficient approach for detecting errors in big sensor data on cloudA time efficient approach for detecting errors in big sensor data on cloud
A time efficient approach for detecting errors in big sensor data on cloud
 
Real World Application of Big Data In Data Mining Tools
Real World Application of Big Data In Data Mining ToolsReal World Application of Big Data In Data Mining Tools
Real World Application of Big Data In Data Mining Tools
 
Real callenges in big data security
Real callenges in big data securityReal callenges in big data security
Real callenges in big data security
 
Big Data Testing Using Hadoop Platform
Big Data Testing Using Hadoop PlatformBig Data Testing Using Hadoop Platform
Big Data Testing Using Hadoop Platform
 
Iot presentation
Iot presentationIot presentation
Iot presentation
 
IRJET- Systematic Review: Progression Study on BIG DATA articles
IRJET- Systematic Review: Progression Study on BIG DATA articlesIRJET- Systematic Review: Progression Study on BIG DATA articles
IRJET- Systematic Review: Progression Study on BIG DATA articles
 
A Comprehensive Study on Big Data Applications and Challenges
A Comprehensive Study on Big Data Applications and ChallengesA Comprehensive Study on Big Data Applications and Challenges
A Comprehensive Study on Big Data Applications and Challenges
 
Module 3_BETCK105H_Introduction to IoT.pdf
Module 3_BETCK105H_Introduction to IoT.pdfModule 3_BETCK105H_Introduction to IoT.pdf
Module 3_BETCK105H_Introduction to IoT.pdf
 
A Logical Architecture is Always a Flexible Architecture (ASEAN)
A Logical Architecture is Always a Flexible Architecture (ASEAN)A Logical Architecture is Always a Flexible Architecture (ASEAN)
A Logical Architecture is Always a Flexible Architecture (ASEAN)
 
Big Data in Distributed Analytics,Cybersecurity And Digital Forensics
Big Data in Distributed Analytics,Cybersecurity And Digital ForensicsBig Data in Distributed Analytics,Cybersecurity And Digital Forensics
Big Data in Distributed Analytics,Cybersecurity And Digital Forensics
 
Future of Data Strategy
Future of Data StrategyFuture of Data Strategy
Future of Data Strategy
 
Big Data-Survey
Big Data-SurveyBig Data-Survey
Big Data-Survey
 
data mining with big data
data mining with big datadata mining with big data
data mining with big data
 
White Paper: Advanced Cyber Analytics with Greenplum Database
White Paper: Advanced Cyber Analytics with Greenplum DatabaseWhite Paper: Advanced Cyber Analytics with Greenplum Database
White Paper: Advanced Cyber Analytics with Greenplum Database
 
Complete-SRS.doc
Complete-SRS.docComplete-SRS.doc
Complete-SRS.doc
 
JPJ1417 Data Mining With Big Data
JPJ1417   Data Mining With Big DataJPJ1417   Data Mining With Big Data
JPJ1417 Data Mining With Big Data
 

Mais de LeMeniz Infotech

A fast acquisition all-digital delay-locked loop using a starting-bit predict...
A fast acquisition all-digital delay-locked loop using a starting-bit predict...A fast acquisition all-digital delay-locked loop using a starting-bit predict...
A fast acquisition all-digital delay-locked loop using a starting-bit predict...LeMeniz Infotech
 
A fast fault tolerant architecture for sauvola local image thresholding algor...
A fast fault tolerant architecture for sauvola local image thresholding algor...A fast fault tolerant architecture for sauvola local image thresholding algor...
A fast fault tolerant architecture for sauvola local image thresholding algor...LeMeniz Infotech
 
A dynamically reconfigurable multi asip architecture for multistandard and mu...
A dynamically reconfigurable multi asip architecture for multistandard and mu...A dynamically reconfigurable multi asip architecture for multistandard and mu...
A dynamically reconfigurable multi asip architecture for multistandard and mu...LeMeniz Infotech
 
Interleaved digital power factor correction based on the sliding mode approach
Interleaved digital power factor correction based on the sliding mode approachInterleaved digital power factor correction based on the sliding mode approach
Interleaved digital power factor correction based on the sliding mode approachLeMeniz Infotech
 
Bumpless control for reduced thd in power factor correction circuits
Bumpless control for reduced thd in power factor correction circuitsBumpless control for reduced thd in power factor correction circuits
Bumpless control for reduced thd in power factor correction circuitsLeMeniz Infotech
 
A bidirectional single stage three phase rectifier with high-frequency isolat...
A bidirectional single stage three phase rectifier with high-frequency isolat...A bidirectional single stage three phase rectifier with high-frequency isolat...
A bidirectional single stage three phase rectifier with high-frequency isolat...LeMeniz Infotech
 
A bidirectional three level llc resonant converter with pwam control
A bidirectional three level llc resonant converter with pwam controlA bidirectional three level llc resonant converter with pwam control
A bidirectional three level llc resonant converter with pwam controlLeMeniz Infotech
 
Efficient single phase transformerless inverter for grid tied pvg system with...
Efficient single phase transformerless inverter for grid tied pvg system with...Efficient single phase transformerless inverter for grid tied pvg system with...
Efficient single phase transformerless inverter for grid tied pvg system with...LeMeniz Infotech
 
Highly reliable transformerless photovoltaic inverters with leakage current a...
Highly reliable transformerless photovoltaic inverters with leakage current a...Highly reliable transformerless photovoltaic inverters with leakage current a...
Highly reliable transformerless photovoltaic inverters with leakage current a...LeMeniz Infotech
 
Grid current-feedback active damping for lcl resonance in grid-connected volt...
Grid current-feedback active damping for lcl resonance in grid-connected volt...Grid current-feedback active damping for lcl resonance in grid-connected volt...
Grid current-feedback active damping for lcl resonance in grid-connected volt...LeMeniz Infotech
 
Delay dependent stability of single-loop controlled grid-connected inverters ...
Delay dependent stability of single-loop controlled grid-connected inverters ...Delay dependent stability of single-loop controlled grid-connected inverters ...
Delay dependent stability of single-loop controlled grid-connected inverters ...LeMeniz Infotech
 
Connection of converters to a low and medium power dc network using an induct...
Connection of converters to a low and medium power dc network using an induct...Connection of converters to a low and medium power dc network using an induct...
Connection of converters to a low and medium power dc network using an induct...LeMeniz Infotech
 
Stamp enabling privacy preserving location proofs for mobile users
Stamp enabling privacy preserving location proofs for mobile usersStamp enabling privacy preserving location proofs for mobile users
Stamp enabling privacy preserving location proofs for mobile usersLeMeniz Infotech
 
Sbvlc secure barcode based visible light communication for smartphones
Sbvlc secure barcode based visible light communication for smartphonesSbvlc secure barcode based visible light communication for smartphones
Sbvlc secure barcode based visible light communication for smartphonesLeMeniz Infotech
 
Read2 me a cloud based reading aid for the visually impaired
Read2 me a cloud based reading aid for the visually impairedRead2 me a cloud based reading aid for the visually impaired
Read2 me a cloud based reading aid for the visually impairedLeMeniz Infotech
 
Privacy preserving location sharing services for social networks
Privacy preserving location sharing services for social networksPrivacy preserving location sharing services for social networks
Privacy preserving location sharing services for social networksLeMeniz Infotech
 
Pass byo bring your own picture for securing graphical passwords
Pass byo bring your own picture for securing graphical passwordsPass byo bring your own picture for securing graphical passwords
Pass byo bring your own picture for securing graphical passwordsLeMeniz Infotech
 
Eplq efficient privacy preserving location-based query over outsourced encryp...
Eplq efficient privacy preserving location-based query over outsourced encryp...Eplq efficient privacy preserving location-based query over outsourced encryp...
Eplq efficient privacy preserving location-based query over outsourced encryp...LeMeniz Infotech
 
Analyzing ad library updates in android apps
Analyzing ad library updates in android appsAnalyzing ad library updates in android apps
Analyzing ad library updates in android appsLeMeniz Infotech
 
An exploration of geographic authentication scheme
An exploration of geographic authentication schemeAn exploration of geographic authentication scheme
An exploration of geographic authentication schemeLeMeniz Infotech
 

Mais de LeMeniz Infotech (20)

A fast acquisition all-digital delay-locked loop using a starting-bit predict...
A fast acquisition all-digital delay-locked loop using a starting-bit predict...A fast acquisition all-digital delay-locked loop using a starting-bit predict...
A fast acquisition all-digital delay-locked loop using a starting-bit predict...
 
A fast fault tolerant architecture for sauvola local image thresholding algor...
A fast fault tolerant architecture for sauvola local image thresholding algor...A fast fault tolerant architecture for sauvola local image thresholding algor...
A fast fault tolerant architecture for sauvola local image thresholding algor...
 
A dynamically reconfigurable multi asip architecture for multistandard and mu...
A dynamically reconfigurable multi asip architecture for multistandard and mu...A dynamically reconfigurable multi asip architecture for multistandard and mu...
A dynamically reconfigurable multi asip architecture for multistandard and mu...
 
Interleaved digital power factor correction based on the sliding mode approach
Interleaved digital power factor correction based on the sliding mode approachInterleaved digital power factor correction based on the sliding mode approach
Interleaved digital power factor correction based on the sliding mode approach
 
Bumpless control for reduced thd in power factor correction circuits
Bumpless control for reduced thd in power factor correction circuitsBumpless control for reduced thd in power factor correction circuits
Bumpless control for reduced thd in power factor correction circuits
 
A bidirectional single stage three phase rectifier with high-frequency isolat...
A bidirectional single stage three phase rectifier with high-frequency isolat...A bidirectional single stage three phase rectifier with high-frequency isolat...
A bidirectional single stage three phase rectifier with high-frequency isolat...
 
A bidirectional three level llc resonant converter with pwam control
A bidirectional three level llc resonant converter with pwam controlA bidirectional three level llc resonant converter with pwam control
A bidirectional three level llc resonant converter with pwam control
 
Efficient single phase transformerless inverter for grid tied pvg system with...
Efficient single phase transformerless inverter for grid tied pvg system with...Efficient single phase transformerless inverter for grid tied pvg system with...
Efficient single phase transformerless inverter for grid tied pvg system with...
 
Highly reliable transformerless photovoltaic inverters with leakage current a...
Highly reliable transformerless photovoltaic inverters with leakage current a...Highly reliable transformerless photovoltaic inverters with leakage current a...
Highly reliable transformerless photovoltaic inverters with leakage current a...
 
Grid current-feedback active damping for lcl resonance in grid-connected volt...
Grid current-feedback active damping for lcl resonance in grid-connected volt...Grid current-feedback active damping for lcl resonance in grid-connected volt...
Grid current-feedback active damping for lcl resonance in grid-connected volt...
 
Delay dependent stability of single-loop controlled grid-connected inverters ...
Delay dependent stability of single-loop controlled grid-connected inverters ...Delay dependent stability of single-loop controlled grid-connected inverters ...
Delay dependent stability of single-loop controlled grid-connected inverters ...
 
Connection of converters to a low and medium power dc network using an induct...
Connection of converters to a low and medium power dc network using an induct...Connection of converters to a low and medium power dc network using an induct...
Connection of converters to a low and medium power dc network using an induct...
 
Stamp enabling privacy preserving location proofs for mobile users
Stamp enabling privacy preserving location proofs for mobile usersStamp enabling privacy preserving location proofs for mobile users
Stamp enabling privacy preserving location proofs for mobile users
 
Sbvlc secure barcode based visible light communication for smartphones
Sbvlc secure barcode based visible light communication for smartphonesSbvlc secure barcode based visible light communication for smartphones
Sbvlc secure barcode based visible light communication for smartphones
 
Read2 me a cloud based reading aid for the visually impaired
Read2 me a cloud based reading aid for the visually impairedRead2 me a cloud based reading aid for the visually impaired
Read2 me a cloud based reading aid for the visually impaired
 
Privacy preserving location sharing services for social networks
Privacy preserving location sharing services for social networksPrivacy preserving location sharing services for social networks
Privacy preserving location sharing services for social networks
 
Pass byo bring your own picture for securing graphical passwords
Pass byo bring your own picture for securing graphical passwordsPass byo bring your own picture for securing graphical passwords
Pass byo bring your own picture for securing graphical passwords
 
Eplq efficient privacy preserving location-based query over outsourced encryp...
Eplq efficient privacy preserving location-based query over outsourced encryp...Eplq efficient privacy preserving location-based query over outsourced encryp...
Eplq efficient privacy preserving location-based query over outsourced encryp...
 
Analyzing ad library updates in android apps
Analyzing ad library updates in android appsAnalyzing ad library updates in android apps
Analyzing ad library updates in android apps
 
An exploration of geographic authentication scheme
An exploration of geographic authentication schemeAn exploration of geographic authentication scheme
An exploration of geographic authentication scheme
 

Último

Student Profile Sample - We help schools to connect the data they have, with ...
Student Profile Sample - We help schools to connect the data they have, with ...Student Profile Sample - We help schools to connect the data they have, with ...
Student Profile Sample - We help schools to connect the data they have, with ...Seán Kennedy
 
Transaction Management in Database Management System
Transaction Management in Database Management SystemTransaction Management in Database Management System
Transaction Management in Database Management SystemChristalin Nelson
 
How to do quick user assign in kanban in Odoo 17 ERP
How to do quick user assign in kanban in Odoo 17 ERPHow to do quick user assign in kanban in Odoo 17 ERP
How to do quick user assign in kanban in Odoo 17 ERPCeline George
 
Earth Day Presentation wow hello nice great
Earth Day Presentation wow hello nice greatEarth Day Presentation wow hello nice great
Earth Day Presentation wow hello nice greatYousafMalik24
 
Global Lehigh Strategic Initiatives (without descriptions)
Global Lehigh Strategic Initiatives (without descriptions)Global Lehigh Strategic Initiatives (without descriptions)
Global Lehigh Strategic Initiatives (without descriptions)cama23
 
ECONOMIC CONTEXT - PAPER 1 Q3: NEWSPAPERS.pptx
ECONOMIC CONTEXT - PAPER 1 Q3: NEWSPAPERS.pptxECONOMIC CONTEXT - PAPER 1 Q3: NEWSPAPERS.pptx
ECONOMIC CONTEXT - PAPER 1 Q3: NEWSPAPERS.pptxiammrhaywood
 
Activity 2-unit 2-update 2024. English translation
Activity 2-unit 2-update 2024. English translationActivity 2-unit 2-update 2024. English translation
Activity 2-unit 2-update 2024. English translationRosabel UA
 
ISYU TUNGKOL SA SEKSWLADIDA (ISSUE ABOUT SEXUALITY
ISYU TUNGKOL SA SEKSWLADIDA (ISSUE ABOUT SEXUALITYISYU TUNGKOL SA SEKSWLADIDA (ISSUE ABOUT SEXUALITY
ISYU TUNGKOL SA SEKSWLADIDA (ISSUE ABOUT SEXUALITYKayeClaireEstoconing
 
Food processing presentation for bsc agriculture hons
Food processing presentation for bsc agriculture honsFood processing presentation for bsc agriculture hons
Food processing presentation for bsc agriculture honsManeerUddin
 
ROLES IN A STAGE PRODUCTION in arts.pptx
ROLES IN A STAGE PRODUCTION in arts.pptxROLES IN A STAGE PRODUCTION in arts.pptx
ROLES IN A STAGE PRODUCTION in arts.pptxVanesaIglesias10
 
Daily Lesson Plan in Mathematics Quarter 4
Daily Lesson Plan in Mathematics Quarter 4Daily Lesson Plan in Mathematics Quarter 4
Daily Lesson Plan in Mathematics Quarter 4JOYLYNSAMANIEGO
 
Concurrency Control in Database Management system
Concurrency Control in Database Management systemConcurrency Control in Database Management system
Concurrency Control in Database Management systemChristalin Nelson
 
Virtual-Orientation-on-the-Administration-of-NATG12-NATG6-and-ELLNA.pdf
Virtual-Orientation-on-the-Administration-of-NATG12-NATG6-and-ELLNA.pdfVirtual-Orientation-on-the-Administration-of-NATG12-NATG6-and-ELLNA.pdf
Virtual-Orientation-on-the-Administration-of-NATG12-NATG6-and-ELLNA.pdfErwinPantujan2
 
ANG SEKTOR NG agrikultura.pptx QUARTER 4
ANG SEKTOR NG agrikultura.pptx QUARTER 4ANG SEKTOR NG agrikultura.pptx QUARTER 4
ANG SEKTOR NG agrikultura.pptx QUARTER 4MiaBumagat1
 
THEORIES OF ORGANIZATION-PUBLIC ADMINISTRATION
THEORIES OF ORGANIZATION-PUBLIC ADMINISTRATIONTHEORIES OF ORGANIZATION-PUBLIC ADMINISTRATION
THEORIES OF ORGANIZATION-PUBLIC ADMINISTRATIONHumphrey A Beña
 
MULTIDISCIPLINRY NATURE OF THE ENVIRONMENTAL STUDIES.pptx
MULTIDISCIPLINRY NATURE OF THE ENVIRONMENTAL STUDIES.pptxMULTIDISCIPLINRY NATURE OF THE ENVIRONMENTAL STUDIES.pptx
MULTIDISCIPLINRY NATURE OF THE ENVIRONMENTAL STUDIES.pptxAnupkumar Sharma
 
GRADE 4 - SUMMATIVE TEST QUARTER 4 ALL SUBJECTS
GRADE 4 - SUMMATIVE TEST QUARTER 4 ALL SUBJECTSGRADE 4 - SUMMATIVE TEST QUARTER 4 ALL SUBJECTS
GRADE 4 - SUMMATIVE TEST QUARTER 4 ALL SUBJECTSJoshuaGantuangco2
 
INTRODUCTION TO CATHOLIC CHRISTOLOGY.pptx
INTRODUCTION TO CATHOLIC CHRISTOLOGY.pptxINTRODUCTION TO CATHOLIC CHRISTOLOGY.pptx
INTRODUCTION TO CATHOLIC CHRISTOLOGY.pptxHumphrey A Beña
 

Último (20)

Student Profile Sample - We help schools to connect the data they have, with ...
Student Profile Sample - We help schools to connect the data they have, with ...Student Profile Sample - We help schools to connect the data they have, with ...
Student Profile Sample - We help schools to connect the data they have, with ...
 
Transaction Management in Database Management System
Transaction Management in Database Management SystemTransaction Management in Database Management System
Transaction Management in Database Management System
 
How to do quick user assign in kanban in Odoo 17 ERP
How to do quick user assign in kanban in Odoo 17 ERPHow to do quick user assign in kanban in Odoo 17 ERP
How to do quick user assign in kanban in Odoo 17 ERP
 
Earth Day Presentation wow hello nice great
Earth Day Presentation wow hello nice greatEarth Day Presentation wow hello nice great
Earth Day Presentation wow hello nice great
 
Global Lehigh Strategic Initiatives (without descriptions)
Global Lehigh Strategic Initiatives (without descriptions)Global Lehigh Strategic Initiatives (without descriptions)
Global Lehigh Strategic Initiatives (without descriptions)
 
ECONOMIC CONTEXT - PAPER 1 Q3: NEWSPAPERS.pptx
ECONOMIC CONTEXT - PAPER 1 Q3: NEWSPAPERS.pptxECONOMIC CONTEXT - PAPER 1 Q3: NEWSPAPERS.pptx
ECONOMIC CONTEXT - PAPER 1 Q3: NEWSPAPERS.pptx
 
Activity 2-unit 2-update 2024. English translation
Activity 2-unit 2-update 2024. English translationActivity 2-unit 2-update 2024. English translation
Activity 2-unit 2-update 2024. English translation
 
ISYU TUNGKOL SA SEKSWLADIDA (ISSUE ABOUT SEXUALITY
ISYU TUNGKOL SA SEKSWLADIDA (ISSUE ABOUT SEXUALITYISYU TUNGKOL SA SEKSWLADIDA (ISSUE ABOUT SEXUALITY
ISYU TUNGKOL SA SEKSWLADIDA (ISSUE ABOUT SEXUALITY
 
YOUVE_GOT_EMAIL_PRELIMS_EL_DORADO_2024.pptx
YOUVE_GOT_EMAIL_PRELIMS_EL_DORADO_2024.pptxYOUVE_GOT_EMAIL_PRELIMS_EL_DORADO_2024.pptx
YOUVE_GOT_EMAIL_PRELIMS_EL_DORADO_2024.pptx
 
Food processing presentation for bsc agriculture hons
Food processing presentation for bsc agriculture honsFood processing presentation for bsc agriculture hons
Food processing presentation for bsc agriculture hons
 
ROLES IN A STAGE PRODUCTION in arts.pptx
ROLES IN A STAGE PRODUCTION in arts.pptxROLES IN A STAGE PRODUCTION in arts.pptx
ROLES IN A STAGE PRODUCTION in arts.pptx
 
Daily Lesson Plan in Mathematics Quarter 4
Daily Lesson Plan in Mathematics Quarter 4Daily Lesson Plan in Mathematics Quarter 4
Daily Lesson Plan in Mathematics Quarter 4
 
Concurrency Control in Database Management system
Concurrency Control in Database Management systemConcurrency Control in Database Management system
Concurrency Control in Database Management system
 
Virtual-Orientation-on-the-Administration-of-NATG12-NATG6-and-ELLNA.pdf
Virtual-Orientation-on-the-Administration-of-NATG12-NATG6-and-ELLNA.pdfVirtual-Orientation-on-the-Administration-of-NATG12-NATG6-and-ELLNA.pdf
Virtual-Orientation-on-the-Administration-of-NATG12-NATG6-and-ELLNA.pdf
 
ANG SEKTOR NG agrikultura.pptx QUARTER 4
ANG SEKTOR NG agrikultura.pptx QUARTER 4ANG SEKTOR NG agrikultura.pptx QUARTER 4
ANG SEKTOR NG agrikultura.pptx QUARTER 4
 
THEORIES OF ORGANIZATION-PUBLIC ADMINISTRATION
THEORIES OF ORGANIZATION-PUBLIC ADMINISTRATIONTHEORIES OF ORGANIZATION-PUBLIC ADMINISTRATION
THEORIES OF ORGANIZATION-PUBLIC ADMINISTRATION
 
MULTIDISCIPLINRY NATURE OF THE ENVIRONMENTAL STUDIES.pptx
MULTIDISCIPLINRY NATURE OF THE ENVIRONMENTAL STUDIES.pptxMULTIDISCIPLINRY NATURE OF THE ENVIRONMENTAL STUDIES.pptx
MULTIDISCIPLINRY NATURE OF THE ENVIRONMENTAL STUDIES.pptx
 
GRADE 4 - SUMMATIVE TEST QUARTER 4 ALL SUBJECTS
GRADE 4 - SUMMATIVE TEST QUARTER 4 ALL SUBJECTSGRADE 4 - SUMMATIVE TEST QUARTER 4 ALL SUBJECTS
GRADE 4 - SUMMATIVE TEST QUARTER 4 ALL SUBJECTS
 
INTRODUCTION TO CATHOLIC CHRISTOLOGY.pptx
INTRODUCTION TO CATHOLIC CHRISTOLOGY.pptxINTRODUCTION TO CATHOLIC CHRISTOLOGY.pptx
INTRODUCTION TO CATHOLIC CHRISTOLOGY.pptx
 
YOUVE GOT EMAIL_FINALS_EL_DORADO_2024.pptx
YOUVE GOT EMAIL_FINALS_EL_DORADO_2024.pptxYOUVE GOT EMAIL_FINALS_EL_DORADO_2024.pptx
YOUVE GOT EMAIL_FINALS_EL_DORADO_2024.pptx
 

Real time big data analytical architecture for remote sensing application

  • 1. Do Your Projects With Domain Experts… Copyright © 2015 LeMeniz Infotech. All rights reserved LeMeniz Infotech 36, 100 Feet Road, Natesan Nagar, Near Indira Gandhi Statue, Pondicherry-605 005. Call: 0413-4205444, +91 9566355386, 99625 88976. Web : www.lemenizinfotech.com / www.ieeemaster.com Mail : projects@lemenizinfotech.com Real-Time Big Data Analytical Architecture for Remote Sensing Application ABSTRACT: The assets of remote senses digital world daily generate massive volume of real- time data (mainly referred to the term “Big Data”), where insight information has a potential significance if collected and aggregated effectively. In today’s era, there is a great deal added to real-time remote sensing Big Data than it seems at first, and extracting the useful information in an efficient manner leads a system toward a major computational challenges, such as to analyze, aggregate, and store, where data are remotely collected. Keeping in view the above mentioned factors, there is a need for designing a system architecture that welcomes both realtime, as well as offline data processing. Therefore, in this paper, we propose real-time Big Data analytical architecture for remote sensing satellite application. The proposed architecture comprises three main units, such as 1) remote sensing Big Data acquisition unit (RSDU); 2) data processing unit (DPU); and 3) data analysis decision unit (DADU). First, RSDU acquires data from the satellite and sends this data to the Base Station, where initial processing takes place. Second, DPU plays a vital role in architecture for efficient processing of real-time Big Data by providing filtration, load balancing, and parallel processing. Third, DADU is the upper layer unit of the proposed architecture, which is responsible for compilation, storage of the results, and generation of decision based on the results received from DPU. The proposed architecture has the capability of dividing, load balancing, and parallel processing of only useful data. Thus, it results in efficiently analyzing real-time remote sensing Big Data using earth observatory system. Furthermore, the proposed architecture has the capability of storing incoming raw data to perform offline analysis on largely stored dumps, when required. Finally, a detailed analysis of remotely sensed earth observatory Big Data for land and sea area are provided using Hadoop. In addition, various algorithms are proposed for each level of RSDU, DPU, and DADU to detect land as well as sea area to elaborate the working of an architecture. INTRODUCTION RECENTLY, a great deal of interest in the field of Big Data and its analysis has risen, mainly driven from extensive number of research challenges strappingly related to bonafide applications, such as modeling, processing, querying, mining, and distributing
  • 2. Do Your Projects With Domain Experts… Copyright © 2015 LeMeniz Infotech. All rights reserved LeMeniz Infotech 36, 100 Feet Road, Natesan Nagar, Near Indira Gandhi Statue, Pondicherry-605 005. Call: 0413-4205444, +91 9566355386, 99625 88976. Web : www.lemenizinfotech.com / www.ieeemaster.com Mail : projects@lemenizinfotech.com large-scale repositories. The term “Big Data” classifies specific kinds of data sets comprising formless data, which dwell in data layer of technical computing applications and theWeb. The data stored in the underlying layer of all these technical computing application scenarios have some precise individualities in common, such as 1) largescale data, which refers to the size and the data warehouse; 2) scalability issues, which refer to the application’s likely to be running on large scale (e.g., Big Data); 3) sustain extraction transformation loading (ETL) method from low, raw data to well thought-out data up to certain extent; and 4) development of uncomplicated interpretable analytical over Big Data warehouses with a view to deliver an intelligent and momentous knowledge for them . Big Data are usually generated by online transaction, video/audio, email, number of clicks, logs, posts, social network data, scientific data, remote access sensory data, mobile phones, and their applications . These data are accumulated in databases that grow extraordinarily and become complicated to confine, form, store, manage, share, process, analyze, and visualize via typical database software tools. EXISTING SYSTEM In Existing System the data collected from remote areas are not in a format ready for analysis. Therefore, the second step refers us to data extraction, which drags out the useful information from the underlying sources and delivers it in a structured formation suitable for analysis. For instance, the data set is reduced to single-class label to facilitate analysis, even though the first thing that we used to think about Big Data as always describing the fact. DisADVANTAGE OF Existing SYSTEM  Sometimes we have to deal with erroneous data too, or some of the data might be imprecise. PROPOSED SYSTEM In Proposed System the architecture for real-time Big Data analysis for remote sensing application. The proposed architecture efficiently processed and analyzed real- time and offline remote sensing Big Data for decision-making. The proposed architecture is composed of three major units, such as 1) RSDU; 2) DPU; and 3) DADU. These units
  • 3. Do Your Projects With Domain Experts… Copyright © 2015 LeMeniz Infotech. All rights reserved LeMeniz Infotech 36, 100 Feet Road, Natesan Nagar, Near Indira Gandhi Statue, Pondicherry-605 005. Call: 0413-4205444, +91 9566355386, 99625 88976. Web : www.lemenizinfotech.com / www.ieeemaster.com Mail : projects@lemenizinfotech.com implement algorithms for each level of the architecture depending on the required analysis. The architecture of real-time Big is generic (application independent) that is used for any type of remote sensing Big Data analysis. ADVANTAGE OF PROPOSED SYSTEM  Capabilities of filtering, dividing, and parallel processing of only useful information are performed by discarding all other extra data.  These processes make a better choice for real-time remote sensing Big Data analysis.  The algorithms proposed in this paper for each unit and subunits are used to analyze remote sensing data sets, which helps in better understanding of land and sea area. ARCHITECTURE:
  • 4. Do Your Projects With Domain Experts… Copyright © 2015 LeMeniz Infotech. All rights reserved LeMeniz Infotech 36, 100 Feet Road, Natesan Nagar, Near Indira Gandhi Statue, Pondicherry-605 005. Call: 0413-4205444, +91 9566355386, 99625 88976. Web : www.lemenizinfotech.com / www.ieeemaster.com Mail : projects@lemenizinfotech.com HRDWARE REQUIREMENTS:  System : Pentium IV 2.4 GHz.  Hard Disk : 40 GB.  Floppy Drive : 44 Mb.  Monitor : 15 VGA Colour. SOFTWARE REQUIREMENTS:  Operating system : Windows 7.  Coding Language : Java 1.7 ,Hadoop 0.8.1  Database : MySql 5  IDE : Eclipse