5: Capacity of Wireless Channels Fundamentals of Wireless Communication, Tse&Viswanath 1 5. Capacity of Wireless Channels.

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5: Capacity of Wireless Channels Fundamentals of Wireless Communication, Tse&Viswanath 1 5. Capacity of Wireless Channels

5: Capacity of Wireless Channels Fundamentals of Wireless Communication, Tse&Viswanath 2 Information Theory So far we have only looked at specific communication schemes. Information theory provides a fundamental limit to (coded) performance. It succinctly identifies the impact of channel resources on performance as well as suggests new and cool ways to communicate over the wireless channel. It provides the basis for the modern development of wireless communication.

5: Capacity of Wireless Channels Fundamentals of Wireless Communication, Tse&Viswanath 3 Historical Perspective Wireless communication has been around since 1900’s. Ingenious but somewhat adhoc design techniques Claude Shannon Gugliemo Marconi Information theory says every channel has a capacity. Many recent advances based on understanding wireless channel capacity. New points of views arise

5: Capacity of Wireless Channels Fundamentals of Wireless Communication, Tse&Viswanath 4 Multipath Fading: A Modern View Classical view: fading channels are unreliable Modern view: multipath fading can be exploited to increase spectral efficiency. 16dB

5: Capacity of Wireless Channels Fundamentals of Wireless Communication, Tse&Viswanath 5 Capacity of AWGN Channel Capacity of AWGN channel If average transmit power constraint is watts and noise psd is watts/Hz,

5: Capacity of Wireless Channels Fundamentals of Wireless Communication, Tse&Viswanath 6 Power and Bandwidth Limited Regimes Bandwidth limited regime capacity logarithmic in power, approximately linear in bandwidth. Power limited regime capacity linear in power, insensitive to bandwidth.

5: Capacity of Wireless Channels Fundamentals of Wireless Communication, Tse&Viswanath 7

5: Capacity of Wireless Channels Fundamentals of Wireless Communication, Tse&Viswanath 8 Frequency-selective Channel 's are time-invariant. OFDM converts it into a parallel channel: where is the waterfilling allocation: with chosen to meet the power constraint. Can be achieved with separate coding for each sub-carrier.

5: Capacity of Wireless Channels Fundamentals of Wireless Communication, Tse&Viswanath 9 Waterfilling in Frequency Domain

5: Capacity of Wireless Channels Fundamentals of Wireless Communication, Tse&Viswanath 10 Fading Channels Different notions of capacity, depending on scenarios: Slow fading channel: outage capacity Fast fading channel: “ergodic” capacity under infinitely deep time interleaving Capacity also depends on whether channel knowledge is known at the transmitter and/or receiver.

5: Capacity of Wireless Channels Fundamentals of Wireless Communication, Tse&Viswanath 11 Slow Fading Channel h random. There is no definite capacity. Outage probability:  outage capacity:

5: Capacity of Wireless Channels Fundamentals of Wireless Communication, Tse&Viswanath 12 Outage for Rayleigh Channel Pdf of log(1+|h| 2 SNR)Outage cap. as fraction of AWGN cap.

5: Capacity of Wireless Channels Fundamentals of Wireless Communication, Tse&Viswanath 13 Receive Diversity Diversity plus power gain.

5: Capacity of Wireless Channels Fundamentals of Wireless Communication, Tse&Viswanath 14 Time Diversity (I) Coding done over L coherence blocks, each of many symbols. This is a parallel channel. If transmitter knows the channel, can do waterfilling. Can achieve:

5: Capacity of Wireless Channels Fundamentals of Wireless Communication, Tse&Viswanath 15 Time Diversity (II) Without channel knowledge, Rate allocation cannot be done. Coding across sub-channels becomes now necessary.

5: Capacity of Wireless Channels Fundamentals of Wireless Communication, Tse&Viswanath 16 Fast Fading Channel Channel with L -fold time diversity: As Fast fading channel has a definite capacity: Tolerable delay >> coherence time.

5: Capacity of Wireless Channels Fundamentals of Wireless Communication, Tse&Viswanath 17 Capacity with Full CSI Suppose now transmitter has full channel knowledge. What is the capacity of the channel?

5: Capacity of Wireless Channels Fundamentals of Wireless Communication, Tse&Viswanath 18 Fading Channel with Full CSI This is a parallel channel, with a sub-channel for each fading state. is the waterfilling power allocation as a function of the fading state, and is chosen to satisfy the average power constraint. where Can be achieved with separate coding for each fading state.

5: Capacity of Wireless Channels Fundamentals of Wireless Communication, Tse&Viswanath 19 Transmit More when Channel is Good

5: Capacity of Wireless Channels Fundamentals of Wireless Communication, Tse&Viswanath 20 Performance At high SNR, waterfilling does not provide any gain. But transmitter knowledge allows rate adaptation and simplifies coding.

5: Capacity of Wireless Channels Fundamentals of Wireless Communication, Tse&Viswanath 21 Performance: Low SNR Waterfilling povides a significant power gain at low SNR.

5: Capacity of Wireless Channels Fundamentals of Wireless Communication, Tse&Viswanath 22 Waterfilling vs Channel Inversion Waterfilling and rate adaptation maximize long-term throughput but incur significant delay. Channel inversion (“perfect” power control in CDMA jargon) is power-inefficient but maintains the same data rate at all channel states. Channel inversion achieves a delay-limited capacity.

5: Capacity of Wireless Channels Fundamentals of Wireless Communication, Tse&Viswanath 23 Summary A slow fading channel is a source of unreliability: very poor outage capacity. Diversity is needed. A fast fading channel with only receiver CSI has a capacity close to that of the AWGN channel. Delay is long compared to channel coherence time. A fast fading channel with full CSI can have a capacity greater than that of the AWGN channel: fading now provides more opportunities for performance boost. The idea of opportunistic communication is even more powerful in multiuser situations, as we will see.