Vehicular Grid Communications: the role of the Internet Infrastructure Wicon 2006 Boston, August 3, 2006 Presented by Mario Gerla UCLA CSD

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Presentation transcript:

Vehicular Grid Communications: the role of the Internet Infrastructure Wicon 2006 Boston, August 3, 2006 Presented by Mario Gerla UCLA CSD

Outline  Emerging urban vehicle applications  Routing in a highly mobile urban environment  A case for geo-routing  Geo Location Service  Extending Geo routing to the infrastructure  To use or not to use the infrastructure?  load balance  Conclusions

Urban Vehicle Grid Applications –Safe navigation –Content distribution (video, ads) –Vehicle as mobile sensor platform

Safe Driving Vehicle type: Cadillac XLR Curb weight: 3,547 lbs Speed: 65 mph Acceleration: - 5m/sec^2 Coefficient of friction:.65 Driver Attention: Yes Etc. Vehicle type: Cadillac XLR Curb weight: 3,547 lbs Speed: 45 mph Acceleration: - 20m/sec^2 Coefficient of friction:.65 Driver Attention: No Etc. Vehicle type: Cadillac XLR Curb weight: 3,547 lbs Speed: 75 mph Acceleration: + 20m/sec^2 Coefficient of friction:.65 Driver Attention: Yes Etc. Vehicle type: Cadillac XLR Curb weight: 3,547 lbs Speed: 75 mph Acceleration: + 10m/sec^2 Coefficient of friction:.65 Driver Attention: Yes Etc. Alert Status: None Alert Status: Passing Vehicle on left Alert Status: Inattentive Driver on Right Alert Status: None Alert Status: Slowing vehicle ahead Alert Status: Passing vehicle on left

Co-operative Download: Car Torrent Vehicle-Vehicle Communication Internet Exchanging Pieces of File Later

Digital Billboard: Ad Torrent Every Access Point (AP) disseminates Ads that are relevant to the proximity of the AP Passing cars pick up the Ads What is an Ad? –simple text message –trailer of nearby movies, –virtual tour of hotels etc Business owners in the vicinity subscribe to this digital billboard service for a fee.

Vehicular Sensor Network (VSN) (UCLA) Infostation Car-Car multi-hop 1. Fixed Infrastructure 2. Processing and storage 1. On-board “black box” 2. Processing and storage Car to Infostation

Vehicular Sensor Applications Environment –Traffic congestion monitoring –Urban pollution monitoring Civic and Homeland security –Forensic accident or crime site investigations –Terrorist tracking

Accident Scenario: storage and retrieval Designated Cars: –Continuously collect images - cars, license plates etc (store data locally) –Process the data and detect an event –Classify the event as Meta-data (Type, Option, Location, Vehicle ID) –Post it on “ distributed index ” (P2P network) Police search the index and retrieve data from “ witness ” cars Crash! Meta-data : Img, -. (10,10), V10 Meta-data : Img, Crash, (10,5), V12

How to set up the index and retrieve the data? “ Epidemic diffusion ” : –Mobile nodes periodically broadcast meta- data of events to their neighbors A mobile agent (the police) queries nodes and harvests {event + witness ID} Data dropped when stale and/or geographically irrelevant

Epidemic Diffusion + Harvesting

1) “periodically” Relay (Broadcast) its Event to Neighbors 2) Listen and store other’s relayed events into one’s storage Keep “relaying” its meta-data to neighbors

Epidemic Diffusion + Harvesting Meta-Data Req 1.Agent (Police) harvests Meta-Data from its neighbors 2.Nodes return all the meta-data they have collected so far Meta-Data Rep

Routing in the Vehicle Grid Mostly “proximity routing”; some long range routing also present Proactive routing (eg OLSR) –Does not scale to hundreds of 1,000’s On Demand routing (eg AODV) –AODV type flood search too costly Enter geo-routing –Most scalable (no state needed in routers) –GPS available; local coordinates used in blind areas (tunnels, parking lots, urban canyons) –Geo Location Service: distributed implementation

GLS (Geo Location Service) Equivalent to DNS to find geo addresses Maps vehicle ID (driver, VIN, license plate, etc) to the (more or less) current location A minimum of location history helps (say, location at T-1min and T- 2min) Distributed implementation For resilience, dual implementation: –In the urban Internet infrastructure –In the wireless Vehicle Grid (to survive Infrastructure collapse)

Infrastructure based GLS: Overlay Location Service (OLS) Vehicular ID hashed into overlay proxies (like Chord P2P overlay) Mapping: Vehicular ID location

Georouting through the infrastructure IPv6 addressing (xy coordinates in header extension) How to make the system resilient to failures/attacks? –If access points fail, use GLS implemented in grid

Grid vs Infrastructure routing The trade offs: grid short paths vs fast wires Baseline: Shortest path routing –Short connections should go grid –Packets to remote destinations on infrastructure Next step: Access Points and Overlay assist in the decision –Propagation of congestion info from Overlay to wireless using 3 hop beaconing (say) every second

Simulation Experiments Wired link Car AP

Traffic pattern Car to access point: – APT fraction of traffic ( APT = 50%, 75%, 90%) Car to Car: –1- APT Traffic fraction Source/destination pair distance –Say, 40% of pairs < 300 m away –30% < 1km –30% < 10 km Total # of sessions: 200 UDP sessions with variable offered rate

Four routing strategies Set #1: all C2C connections are grid routed Set #2: all C2C connections are routed to the nearest AP’s Set #3 - shortest geo-distance routing Set #4 - same as #3, but now use also the load info advertised by AP’s

Wireless grid vs infrastructure load split as a function of path length

Summary Transparent Geo routing across Infrastructure Grid Efficient Grid/Infrastructure load balancing –Simulation (Qualnet) –Analytic, multicommodity flow optimization Seamless switch from “Infrastructure assist” to “grid only” mode in case of disaster/attack The “role” of the Internet –Geo Location Service Support –Load balance –V-Grid Congestion control Future work: Authentication; security; DoS protection

The case for geo-address IP address exacts very high maintenance cost –vehicles switch rapidly across different radio media (WiFI, WiMAX, 3G, Satellite, etc), changing IP address each time –Conventional Mobile IP and DHCP do not scale well to velocity; must re-register each IP address change –May group vehicles in mobile IP subnets - problems with merge/split

Geo Addressing Geo address is less disruptive: –Independent of radio medium –More predictable (motion prediction) –GPS is getting cheaper; efficient interpolation in GPS-blind spots (tunnels, urban canyons)