Wireless Sensor Networks: A Survey Arslan Munir EEL 6935 1
33 Slides840.18 KB
Wireless Sensor Networks: A Survey Arslan Munir EEL 6935 1
Outline Introduction Wireless Sensor Networks Applications Factors Influencing Sensor Network Design Sensor Node Components Sensor Networks Communication Architecture Sensor Network Protocols Sensor Networks Operating Systems Sensor Networks Simulators Conclusion 2
Introduction sensor – A transducer – converts physical phenomenon e.g. heat, light, motion, vibration, and sound into electrical signals sensor node – basic unit in sensor network – contains on-board sensors, processor, memory, transceiver, and power supply sensor network – consists of a large number of sensor nodes – nodes deployed either inside or very close to the sensed phenomenon 3
Wireless Sensor Networks Applications Military Applications Monitoring friendly forces, equipment, and ammunition Battlefield surveillance Reconnaissance of opposing forces and terrain Targeting Battle damage assessment Nuclear, biological, and chemical attack detection 4
Wireless Sensor Networks Applications Environmental Applications Forest fire detection Bio-complexity mapping of environment Flood detection Precision Agriculture Air and water pollution 5
Wireless Sensor Networks Applications Health Applications Telemonitoring of human physiological data Tracking and monitoring doctors and patients inside a hospital Drug administration in hospitals 6
Wireless Sensor Networks Applications Home and Office Applications Home and office automation Smart environment 7
Wireless Sensor Networks Applications Automotive Applications Reduces wiring effects Measurements in chambers and rotating parts Remote technical inspections Conditions monitoring e.g. at a bearing 8
Wireless Sensor Networks Applications Automotive Applications 9
Wireless Sensor Networks Applications Other Commercial Applications Environmental control in office buildings (estimated energy savings 55 billion per year!) Interactive museums Detecting and monitoring car thefts Managing inventory control Vehicle tracking and detection 10
Underwater Acoustic Sensor Networks ref. Georgia Institute of Technology 11
Factors Influencing WSN Design Fault tolerance Scalability Production costs Hardware constraints Sensor network topology Environment Transmission media Power Consumption – Sensing – Communication – Data processing 12
Sensor Nodes Worldsens Inc. Sensor Node Crossbow Sensor Node 13
Sensor Node Components 14
Sensor Node Components Sensing Unit Processing Unit Transceiver Unit Power Unit Location Finding System (optional) Power Generator (optional) Mobilizer (optional) 15
WSN Communication Architecture 16
WSN Protocol Stack 17
A Few WSN Protocols Sensor management protocol – Provides software operations needed to perform administrative tasks e.g. moving sensor nodes, turning them on an off Sensor query and data dissemination protocol – Provides user applications with interfaces to issue queries and respond to queries – Sensor query and tasking language (SQTL) Directed diffusion Sensor MAC (S-MAC) IEEE 802.15.4 18
Data-Centric Routing Interest dissemination is performed to assign sensing tasks to sensor nodes – Sinks broadcast the interest – Sensor nodes broadcast an advertisement for available data Requires attribute-based naming – Users are more interested in querying the attribute of the phenomenon, rather than querying an individual node – E.g. the sensor nodes in the area where temperature is greater than 75 F 19
Data Aggregation in WSNs Data coming from multiple sensor nodes are aggregated if they are about the same attribute of the phenomenon when they reach the same routing node on the way back to the sink – Solves implosion and overlap problem – Energy efficient 20
WSN Operating Systems TinyOS Contiki MANTIS BTnut SOS Nano-RK 21
TinyOS Event-driven programming model instead of multithreading TinyOS and its programs written in nesC Main (includes Scheduler) Application (User Components) Actuating Communication Sensing Communication Hardware Abstractions 22
TinyOS Charactersitics Small memory footprint – non-preemptable FIFO task scheduling Power Efficient – Puts microcontroller to sleep – Puts radio to sleep Concurrency-Intensive Operations – Event-driven architecture – Efficient Interrupts and event handling No Real-time guarantees 23
MICA Sensor Mote 24
MICA Mote Specifications 4 MHz ATMEGA103L Microprocessor 128 KB of Flash Program Memory 4KB RAM 10 bit Analog to Digital Converter (ADC) 3 Hardware Timers Serial Peripheral Interface (SPI) bus External UART A coprocessor AT90LS2343 (to handle wireless reprogramming) DS2401 silicon serial number (provides unique ID to nodes) RF Monolithics TR1000 transceiver External 4Mbit Atmel AT45DB041B Serial Flash Chip (for persistent data storage) Maxim1678 DC-DC Converter (provides a constant 3.0 V supply) 25
Smart Dust Mote Specifications 4 MHz Atmel AVR 8535 Microprocessor 8 KB Instruction Flash Memory 512 Bytes RAM 512 Bytes EEPROM Total Stored Energy approx. 1 Joule TinyOS Operating System (OS) with 3500 bytes OS code space and 4500 bytes available code space 26
WSN Development Platforms Crossbow Dust Networks Sensoria Corporation Ember Corporation Worldsens 27
WSN Simulators NS-2 GloMoSim OPNET SensorSim J-Sim OMNeT Sidh SENS 28
WSN Emulators TOSSIM ATEMU Avrora EmStar 29
Conclusion WSNs possible today due to technological advancement in various domains Envisioned to become an essential part of our lives Design Constraints need to be satisfied for realization of sensor networks Tremendous research efforts being made in different layers of WSNs protocol stack 30
References I. F. Akyildiz, W. Su, Y. Sankarasubramaniam, and E. Cayirci, “Wireless Sensor Networks: A Survey”, Elsevier Computer Networks, volume 38, Issue 4, pp. 393-422, March 2002. Dr. Victor Leung, Lecture Slides on “Wireless Sensor Networks”, University of British Columbia, Canada D. Curren, “A Survey of Simulation in Sensor Networks” Wikipedia, [Available Online] http://en.wikipedia.org/wiki/Wireless Sensor Networ ks 31
References Dr. Chenyang Lu Slides on “Berkeley Motes and TinyOS”, Washington University in St. Louis, USA J. Hill and D. Culler, “A Wireless Embedded Sensor Architecture for System-Level Optimization”, Technical Report, U.C. Berkeley, 2001. X. Su, B.S. Prabhu, and R. Gadh, “RFID based General Wireless Sensor Interface”, Technical Report, UCLA, 2003. 32
Thank you! 33