Sensor Networks (Field Servers and MeBroker) Takuji Kiura Masayuki Hirafuji Aatsushi Yamakawa Seishi Ninomiya National Agricultural Research Center.

Slides:



Advertisements
Similar presentations
CIDOC 2000 Using GEM Metadata to Access Education Resources Nancy Virgil Morgan Coordinator
Advertisements

UNIVERGE SV8100 Communications Server
National Agriculture and Food Research Organization National Agricultural Research Center Data Mining and GRID Research TeamTakuji Kiura, Atsushi Yamakawa,
Field monitoring and BIX standardization Takaharu Kameoka Laboratory of Bioinformation & Food Engineering Faculty of Bioresources, Mie University, JAPAN.
Field Server Agent for Data Collection National Agricultural Research Center NARO, JAPAN Installed in Hawaii, Kona, in UCC Corp. (2002/12 )
1 Ontolog OOR Use Case Review Todd Schneider 1 April 2010 (v 1.2)
Putting the Pieces Together Grace Agnew Slide User Description Rights Holder Authentication Rights Video Object Permission Administration.
Hooking up a meta-network with VOEvent Robert White Stuart Evans W. Thomas Vestrand James Wren Przemyk Wozniak Los Alamos National Laboratory Alasdair.
National Partnership for Advanced Computational Infrastructure San Diego Supercomputer Center Data Grids for Collection Federation Reagan W. Moore University.
OGF-23 iRODS Metadata Grid File System Reagan Moore San Diego Supercomputer Center.
David Martin for DAML-S Coalition 05/08/2003 OWL-S: Bringing Services to the Semantic Web David Martin SRI International
©2006 University of Southampton IT Innovation Centre and other members of the SIMDAT consortium A SIMDAT Perspective on Grid Standards and Specifications.
Technology for a new Meteorological Monitoring Strategy By: David FARHI – Envitech Ltd.
User Interface Localizer: A system for making decision support software “world-compatible” Matthew Laurenson and Seishi Ninomiya National Agricultural.
Field Server Development and Applications in Taiwan Ye-Nu Wan Agricultural Automation Center National Chung Hsing University, Taiwan.
Sensor Asia Development Progress HONDA Kiyoshi Asian Institute of Technology / Mie University Aadit Shrestha, Rassarin Ch., NGUYEN Duy Hung Asian Institute.
Haystack: Per-User Information Environment 1999 Conference on Information and Knowledge Management Eytan Adar et al Presented by Xiao Hu CS491CXZ.
SelfCon Foil no 1 Dynamic component systems 1. SelfCon Foil no 2 Pre-structured systems vs. dynamic component systems Pre-structured – emphasis on content.
ZXM10 EISU Training.
Hosted Revolution Ltd Hosted Exchange October 2009 V2.01.
1 UIM with DAML-S Service Description Team Members: Jean-Yves Ouellet Kevin Lam Yun Xu.
1 Enabling OpenVMS for Data & Application Integration 30, 2005 *John Apps – HP Strategic Planning and Architecture *Mark Peterson.
/11 7th Agricultural Ontology Service Bangalore, India 1 Implementation of Semantic Network Dictionary System for Global Observation.
Finding That Elusive Pot of Gold or Networking Your Shelter Rebecca Peltzer & Jennifer Bradley, Polk County – Air Quality Steve Drevik, Agilaire.
What is a Wireless Sensor Network (WSN)? An autonomous, ad hoc system consisting of a collective of networked sensor nodes designed to intercommunicate.
Greenhouse Monitoring using Wireless Sensor Networks (GWSN) Sponsored by INNOVA Rongo Rongo.
A tool to dynamically merge corresponding weather data to crop data Xinwen Yu, Seishi Ninomiya, Atsushi Yamakawa National Agriculture Research Center,
Wireless Sensor Networks for Habitat Monitoring Jennifer Yick Network Seminar October 10, 2003.
Firewalls and VPNS Team 9 Keith Elliot David Snyder Matthew While.
APAN Natural Resource Area 1 17時14分 17時14分 Agriculture WG and e-Culture APAN Xian August 31, 2007 Masayuki Hirafuji.
1 Mitsubishi Electric Co. Mitsubishi Embedded Systems Note: In this presentation we use ZigBee word both for IEEE MAC/PHY applications and whole.
Dr. Sarawut NINSAWAT GEO Grid Research Group/ITRI/AIST GEO Grid Research Group/ITRI/AIST Development of OGC Framework for Estimating Near Real-time Air.
Low-cost Field Server NARO National Agriculture and Food Research Organization Masayuki HIRAFUJI Haoming Hu.
High-End Field Server M. Hirafuji S. Ninomiya (National Agricultural Research Center) M. Wada (Panasonic) H. Shimamura (elab experience)
The Field Server (the Sensor Net) Application to Information, Environmental Education, and International Communication with e-Culture Scheme.
BiodiversityWorld GRID Workshop NeSC, Edinburgh – 30 June and 1 July 2005 Metadata Agents and Semantic Mediation Mikhaila Burgess Cardiff University.
Section 12.3 Gathering Weather Data
1 T.C. TURKISH STATE METEOROLOGİCAL SERVICE DEPARTMENT OF RESEARCH AND INFORMATION TECHNOLOGIES METEOROLOGICAL DATA MANAGEMENT Mustafa Sert October 2011.
KT's IPv6 status and trial service Future Technology Lab Dongjin Kwak, Jaehwa Lee Meeting 2008 at NZ.
Real-time monitoring of soil information in agricultural fields in Asia using Fieldserver Masaru Mizoguchi 1* Shoichi Mitsuishi 1 Tetsu Ito 1 Kazuo Oki.
Linked-data and the Internet of Things Payam Barnaghi Centre for Communication Systems Research University of Surrey March 2012.
Wireless Sensor Networks for Habitat Monitoring Intel Research Lab EECS UC at Berkeley College of the Atlantic.
GEM Portal and SERVOGrid for Earthquake Science PTLIU Laboratory for Community Grids Geoffrey Fox, Marlon Pierce Computer Science, Informatics, Physics.
TAKE – A Derivation Rule Compiler for Java Jens Dietrich, Massey University Jochen Hiller, TopLogic Bastian Schenke, BTU Cottbus.
0 © 2003 Cisco Systems, Inc. All rights reserved. Session Number Presentation_ID The Web of Meaning: The Business Value of the Semantic Web William Ruh.
©Ferenc Vajda 1 Semantic Grid Ferenc Vajda Computer and Automation Research Institute Hungarian Academy of Sciences.
Overview Web Session 3 Matakuliah: Web Database Tahun: 2008.
Jian Gui WANG New Implementation of Agriculture Models APAN19---Jan New Implementations of Agriculture Models Using Mediate Architecture.
IODE Ocean Data Portal - ODP  The objective of the IODE Ocean Data Portal (ODP) is to facilitate and promote the exchange and dissemination of marine.
--- Global Warming Front Monitoring System
Scalable Hybrid Keyword Search on Distributed Database Jungkee Kim Florida State University Community Grids Laboratory, Indiana University Workshop on.
Advanced Sensors for Field Server
ProActive Infrastructure Eric Brewer, David Culler, Anthony Joseph, Randy Katz Computer Science Division U.C. Berkeley ninja.cs.berkeley.edu Active Networks.
Development of Distributed MetBroker toward Information Grid Jedsada Phengsuwan, Sornthep Vannarat, Piyawut Srichaikul Computer Technology Research and.
Working with XML. Markup Languages Text-based languages based on SGML Text-based languages based on SGML SGML = Standard Generalized Markup Language SGML.
Semantic Web COMS 6135 Class Presentation Jian Pan Department of Computer Science Columbia University Web Enhanced Information Management.
© 2005 The Horticulture and Food Research Institute of New Zealand Ltd The agmodel project: Live linking between natural resource models and weather databases,
Week-6 (Lecture-1) Publishing and Browsing the Web: Publishing: 1. upload the following items on the web Google documents Spreadsheets Presentations drawings.
ACGT Architecture and Grid Infrastructure Juliusz Pukacki ‏ EGEE Conference Budapest, 4 October 2007.
1 EcoGrid and Lake Metabolism –Prototype International Lake Observatory –Coral Reef Sensing –Meeting on September 2004 (plan global lake observatory.
The Internet Industry Week Two.
Jeffery S. Horsburgh Utah State University
Lecture 8 Database Implementation
ICT Communications Lesson 1: Using the Internet and the World Wide Web
Building great Metro style apps for mobile broadband devices
An Architecture for Policy-based C2 Decision Support Systems
Automated Irrigation Control System
Development of Information Grid
Introducing MagicInfo 6
Villas, appartments, residence
Presentation transcript:

Sensor Networks (Field Servers and MeBroker) Takuji Kiura Masayuki Hirafuji Aatsushi Yamakawa Seishi Ninomiya National Agricultural Research Center

Field Server

UC Berkley, Smart Dust artDust / TIN-AMEDES Sensor Network Nodes MICA DOT

Sensor Network Nodes NEC Hitachi Mitsubishi Intel NASA

Field Server II (NARC) Case Acryl resin Core Field Server-Engine or PICNIC Sensors Temperature, Humidity, PPFD Soil moisture, Leaf-wetness UV, IR CO 2 Camera, Microscope Data-collection and AI Fieldserver-Agent Networking Wi-Fi AP, Fieldserver-Gateway GRID MetBroker

Multi-functional Airflow in Field Server 1.Cooling 2.Accurate Measurement Assmann's aspiration psychrometer Air-temperature Humidity 3.Sampling Gas (CO 2, NOx, SOx) Insects Microbes Virus Dusts Filter or Sampler

Accuracy

WDS & Wi-Fi Hotspot Hotspot Repeating by WDS (Wireless Distributed System) Cable Conventional Field Servers (Access-point, Continuously work) Solar-energy Driven Field Servers (Client connection, Intermittent work)

Full-Wireless Field Servers Intermittent Drive

Trial Sites of Field Servers

Field Server Model (by NECTEC) 8 channels Store to Compact Flash (up to 1GB) Time interval from 10 sec. to 24 hr. Easy, Cheap Battery backup

Field server-Agent for Data-Collection and Control XML rule-base Rule-base editor on Web Open DB Web

PC-Cluster Field server-Agent Web crawler & controller The Internet Web Server Cellar Cable ADSL VPN router Global IP Private IP FSG Firewall Private network of Field servers VPN:Field Server Gateway

Options for Field Servers Large Solar Panel Multi stack small solar Panel Insect counter Thermal Camera

Field Servers and MetBroker

Applications for MetBroker Rice growth model

MetBlastam Rice Blast Prediction Model Using MetBroker Infective condition

Field Servers linked to MetBroker DB DB DB DB FieldServerDB MetBroker DB DB DB DB FieldServerDB MetBroker DB DB DB DB FieldServerDB MetBroker WDB DB DB MetBroker Weather DB Field Server DB Client APP Weather DB Station Conf. XML Weather Data XML Field Server Data Archive

Demo for Spacial Access of MetBroker Field Servers

Field Server Data Different Type of Sensors, Time Resolution –Described in XML files (w/o standard) Semantic Problems –Sensors are added or removed –Time resolution may be changed. Small data size (1KB~10MB) for each.

MetBroker Adding new databases –writing new DB wrappers –Restarting MetBroker Adding new observation Items –Data Modeling for each item –Writing new data object for each item

System Overview (New MetBroker) Broker Decision-Making Support Services Operational Products Operational Products Simulation Models Simulation Models Detailed Digital Forecast Detailed Digital Forecast Inference Engine DB Wrapper Item Definition OWL Station metadata RDF Metadata database Meteorological databases DB Wrapper 2. Request 3. Request metadata 4. Request data 1. Register

Roles of the RDF/OWL files Description about all the weather stations included in a particular database RDFStation metadata Local vocabulary that is used in each database OWLItem definition All standard weather items Vocabulary to describe weather stations OWLBasic vocabulary ContentFile type Name

New MetBroker Adding new databases –writing Item Definition & Station Metadata Adding new observation Items –Adding new basic vocabraly

Field Servers linked to New MetBroker New MetBroker can integrate Field Server data with other weather database. New MetBroker can integrate other point data (data from other passive sensor networks). RDF/OWL technologies are useful for data integration in a specific and small problem domain i.e. meteorological data integration.

Storage/Application Web Server (Native XML-DB) Field server-Agents Web crawler Remote Controller The Internet Local network of Field servers Agricultural Sensor Grid Data Grid + Sensor Net + Active Database Agent Box Agent Server Rule-base Editor Meta-rule Agent GRID File System (Gfarm?) Metadata Service Ontology registry Local Agent, Storage and MetBroker ToDo Rule-base xml to RDF, OWL converter Separation Metadata service, Ontology registry, and MetBroker OGSA compliant Support XML-DB Data cashing Rule-based data pushing Rule-based data file creation and execution of existing programs etc.

Earth Observation Data Fusion Project (Japan, ) 1.Data Service –Huge Database, Active Database 2.Ontology Registry –Seamless access to an application related data 3.Data Collection 4.Application

Field Servers at Tsukuba Style Festa Field Server WDS connection Wi-Fi HotSpot

Field Servers at Tsukuba Style Festa

Field Servers at Tsukuba Style Festa by Tsukuba University

Field Servers at Tsukuba Style Festa by Panasonic