Characterizing and Modeling the Impact of Wireless Signal Strength on Smartphone Battery Drain Ning Ding Xiaomeng Chen Abhinav Pathak Y. Charlie Hu 1 Daniel.

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Presentation transcript:

Characterizing and Modeling the Impact of Wireless Signal Strength on Smartphone Battery Drain Ning Ding Xiaomeng Chen Abhinav Pathak Y. Charlie Hu 1 Daniel Wagner Andrew Rice

Mobile Networks Connect the World 2

Signal Strength Affects User Experience 3 Ideally Reality…

Complaints about Poor Signal 4

Key Questions about the Impact of Signal Strength How often are users experiencing poor signal? How much is the impact on battery drain? How do we model the extra energy drain? 5

Key Questions about the Impact of Signal Strength How often are users experiencing poor signal? How much is the impact on battery drain? How do we model the extra energy drain? 6

Signal Strength Trace Collection 7 You transfer 3.7MB per day with WiFi, and 1.5MB per day with 3G Your phone changes network cell 213 times per day 62% of your phone calls are less than 30s Your average charging time is 42min If the user permits, the app will upload anonymous signal strength and location data If the user permits, the app will upload anonymous signal strength and location data

Data Contributors 8 Traces (> 1 month) from 3785 users, 145 countries, 896 mobile operators Contributors: ■ 1-10 ■ ■

Distribution of Wireless Technologies sampled devices WiFi 40% HSPA 42% UMTS 8% None 8% EDGE 2%

Distribution of Wireless Technologies 10 WiFi and 3G (HSPA, UMTS) are the dominant wireless technologies

3G Signal Strength Distribution 11 Full bar ≥ -89dBm Empty bar ≤ -109dBm On average users saw poor 3G signal 47% of the time Poor signal ≤ -91.7dBm [defined by Ofcom]

Data Transferred under 3G 12 43% of 3G data are transferred at poor signal

WiFi Signal Strength Distribution 13 Full bar ≥ -55dBm Empty bar ≤ -100dBm Poor signal ≤ -80dBm On average users saw poor WiFi signal 23% of the time

Data Transferred under WiFi 14 21% of WiFi data are transferred at poor signal

Possible Reasons for Signal Strength Variations 15 A user with good 3G signal

16 A user with medium 3G signal A user with poor 3G signal Possible Reasons for Signal Strength Variations

Summary of Signal Strength Distribution Users spend significant amount of time in poor signal strength – 47% of time in 3G – 23% of time in WiFi A large fraction of data are transferred under poor signal strength – 43% of data in 3G – 21% of data in WiFi 17

Key Questions about the Impact of Signal Strength How often are users experiencing poor signal? How much is the impact on battery drain? How do we model the extra energy drain? 18

Smartphones Used in Experiments 19 HTC Nexus One b/g T-Mobile 3G Motorola Atrix 4G b/g AT&T 3G Sony Xperia S b/g AT&T 3G Results shown are for Nexus One phone

WiFi Experiment Setup 20 Laptop1: monitor mode, captures all MAC frames Phone: performs 100KB socket downloading Local server: runs socket server, emulates RTT using tc Control signal strength by adjusting the distance Laptop2: monitor mode, captures all MAC frames Wireless router: connects to server with 100Mbps LAN Powermeter

WiFi Experiment Results 21 Flow time and energy for 100KB download with 30ms server RTT -90dBm: 13x longer flow time, 8x more energy, compared to -50dBm

WiFi Energy Breakdown Methodology 22 Power profile from powermeter Packet traces from laptops A snapshot of synchronized power profile and packet trace Packet send Packet recv

WiFi Energy Breakdown 23 Energy breakdown

WiFi Energy Breakdown Analysis 24 Retransmission rate Data rate Leads to higher Rx energy Leads to higher reRx and idle energy

3G Experiment Setup 25 Local server: runs socket server, emulates RTT using tc, run TCPDump to capture packets Phone: performs 100KB socket downloading, run TCPDump to capture packets Control signal strength by changing location of the phone Powermeter

3G Experiment Results 26 Flow time and energy for 100KB download with 30ms server RTT -105dBm: 52% more energy, compared to -85dBm

3G Energy Breakdown Methodology 27 T-Mobile 3G state machine

3G Energy Breakdown 28 Energy breakdown -105dBm: 184% more energy on Transfer, 76% more energy on Tail1, compared to -85dBm

Key Questions about the Impact of Signal Strength How often are users experiencing poor signal? How much is the impact on battery drain? How do we model the extra energy drain? 29

Smartphone Energy Study Requires Power Models 30 Powermeter Not convenient to use Cannot do energy accounting Not convenient to use Cannot do energy accounting Smartphone Power Output

Train Power Models 31 Triggers Power Model Correlation between the triggers and energy consumption

Use Power Models 32 Power Model Triggers Predicted power Eliminates the need for powermeter Enables energy accounting Eliminates the need for powermeter Enables energy accounting

Three Generations of Smartphone Network Power Models 33 Power ModelTrigger Network states Subroutine- level energy accounting Overhead Low High Utilization- based Packet-driven Bytes sent/received System-call driven Packets System calls Incorporate the impact of signal strength

Refine WiFi Packet-driven Power Model 34 WiFi power state machine under good signal strength WiFi power state machine under good signal strength Refine the model by deriving state machine parameters under different WiFi signal strength

Refine 3G Packet-driven Power Model 35 3G power state machine under good signal strength 3G power state machine under good signal strength Refine the model by deriving state machine parameters under different 3G signal strength

Refine System-call-driven Power Models Incorporate impact of signal strength on – State machine parameters – Effective transfer rate Details are in the paper 36

Evaluation of New System-call-driven Power Models 37 Model accuracy under WiFi poor signal (below -80dbm) 61.0% 5.4% 52.1% 7.2% Model accuracy under 3G poor signal (below -95dbm)

Conclusion The first large scale measurement study of WiFi and 3G signal strength – Time under poor signal: 47% for 3G, 23% for WiFi – Data under poor signal: 43% for 3G, 21% for WiFi Controlled experiments to quantify the energy impact of signal strength – WiFi: 8x more energy under poor signal (-90dBm) – 3G: 52% more energy under poor signal (-105dBm) Refined power models that improve the accuracy under poor signal strength – WiFi: reduce error rate from up to 61.0% to up to 5.4% – 3G: reduce error rate decreases from up to 52.1% to up to 7.2% 38