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SwitchR: Reducing System Power Consumption in a Multi-Client Multi-Radio Environment Yuvraj Agarwal (University of California, San Diego) Trevor Pering, Roy Want (Intel Research), Rajesh Gupta (UC San Diego)
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Wearable and Mobile Devices: Increasing Functionality –Faster processors, more memory Applications are increasingly communication intensive –Streaming video, VoIP, Downloading files Multiple wireless radios often integrated on single device –(Bluetooth for PANs, WiFi for high-bandwidth data access) Wearable/Mobile Computers Power Consumption is very important! –Limited by battery lifetime –Communication over WiFi reduces battery lifetime even further…. In some cases up to 50% of total energy drain! 2
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Reducing the energy for communication Opportunity: Availability of multiple radio interfaces … –Can all be used for data transfer –Different characteristics : bandwidth, range, power consumption Typically function as isolated systems, –Can we coordinate usage to provide a unified network connection ? Seamlessly switch between radios –Primary Goal: Save energy 3 + X
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Radio Characteristics 4 Higher throughput radios have a lower energy/bit value … have a higher idle power consumption …and they have different range characteristics
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Multi-Radio Switching CoolSpots [Mobisys ‘06]: –Multi-Radio switching for a single-client scenario –Specialized access point (Bluetooth + WiFi) –Switching decisions – Local to client SwitchR: –Leverage existing WiFi APs : Incrementally deployable –Considers traffic imposed by other devices in a multi-client scenario –Switching decision – global since it affect other clients –Evaluate energy savings on a distributed testbed 5 Problem Statement: Reduce energy consumption by choosing appropriate radio interface, while taking into consideration other clients.
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SwitchR Architecture 6 Bluetooth Link WiFi Link Ethernet Link Wi-Fi AP (WFAP) Infrastructure Network Wi-Fi Zone MD1 MD3 MD4 MD2 BTG (Bluetooth Gateway) MD = Mobile Devices Switching Mechanism: Network Level Reconfigurations ARPs and Routing updates Switching Policy: Hybrid Approach Application requirements at nodes (local) Channel quality and bandwidth (global)
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Multi-Client Switching Policy Hybrid approach to make switching decisions –Local knowledge (node level) –Global (channel utilization by other nodes) Switching up (Bluetooth WiFi) –ICMP response time and radio RSSI values –Capture application needs and channel characteristics Switching-down (WiFi Bluetooth) –Measure application bandwidth requirements –Periodically query BTG for residual capacity –Measure channel/link quality (local) 7
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Evaluation: Testbed 8 Bluetooth (Always Connected) WiFi (Dynamically Switched) Static Wired Connection Wi-Fi AP Infrastructure Network Wi-Fi Zone MD1 MD3 MD4 MD2 BTG (Bluetooth Gateway) Mobile Device (MD) Stargate2 research platform WiFi + Bluetooth + Integrating power and data monitoring Benchmark applications are striped across devices Stargate2 node
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Evaluation: Benchmarks 9 Baselines: Idle: connected, but no data transfer Transfer: bulk TCP data transfer Web: Combination of idle and data transfer Idle: “think time” Small transfer: basic web-pages Bulk transfer: documents or media Streaming: Media: 128k, 156k and g711 VoIP codec Various QoS requirements
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Evaluation: Switching Policies Baselines policies –“Wifi-CAM” (Awake Mode) –“Wifi-PSM” (Power Save Mode) Single-Client based “cap-dynamic” switching policy SwitchR: “multi-client” switching policy –Combines both local (per client) and global knowledge 10
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Results: Baselines 11 Switching policies perform better that WiFi policies for “idle” benchmark, similar for “transfer”
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Results: 12 multi-client policy saves up to 62% over single-client cap-dynamic policy VoIP and streaming benchmarks benefit most since streams can use BT channel
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Summary SwitchR: Multi-radio switching architecture –Incrementally deployable –Energy Savings (72% over WiFi-PSM) –Can increase battery lifetime substantially 13
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14 Thank You! Website : http://mesl.ucsd.edu/yuvrajhttp://mesl.ucsd.edu/yuvraj Email : yuvraj@cs.ucsd.eduyuvraj@cs.ucsd.edu
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Results: VoIP traffic 15 Although, bandwidth requirements less than bluetooth channel capacity Web benchmark causes VoIP streams to switch to WiFi multi-client policy saves upto 65% over cap-dynamic, allows VoIP streams to switch back
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