1 / 12

EE359 – Lecture 13 Outline

EE359 – Lecture 13 Outline. Annoucements Midterm announcements No HW this week (study for MT; HW due next week) Midterm r eview Introduction to adaptive modulation Variable-rate variable-power MQAM O ptimal power and rate adaptation Finite constellation s ets. Midterm Announcements.

asha
Download Presentation

EE359 – Lecture 13 Outline

An Image/Link below is provided (as is) to download presentation Download Policy: Content on the Website is provided to you AS IS for your information and personal use and may not be sold / licensed / shared on other websites without getting consent from its author. Content is provided to you AS IS for your information and personal use only. Download presentation by click this link. While downloading, if for some reason you are not able to download a presentation, the publisher may have deleted the file from their server. During download, if you can't get a presentation, the file might be deleted by the publisher.

E N D

Presentation Transcript


  1. EE359 – Lecture 13 Outline • Annoucements • Midterm announcements • No HW this week (study for MT; HW due next week) • Midterm review • Introduction to adaptive modulation • Variable-rate variable-power MQAM • Optimal power and rate adaptation • Finite constellation sets

  2. Midterm Announcements • Midterm Thur Nov. 7, 6-8pm, Thornton 110 • Open book/notes (bring textbook/calculators) • Covers Chapters 1-7 • No computers • Short review today • OHs this week: • Andrea: Tuesday 5-6pm and Wednesday 6-7pm • Mainak: Mainak’s: Tues 6-7 pm, Packard 364, Wed 7-8pm Packard 106, Thurs 1:30-2:30 pm, Packard 106 • No HW this week (new HW posted Thurs) • Midterms from past 3 MTs posted, 10 pts for taking one and solns to all exams

  3. Review of Last Lecture • Maximal Ratio Combining • MGF Approach for Performance of MRC • Transmit diversity • With channel knowledge, similar to receiver diversity, same array/diversity gain • Without channel knowledge, can obtain diversity gain through Alamouti scheme over 2 consecutive symbols

  4. Adaptive Modulation • Change modulation relative to fading • Parameters to adapt: • Constellation size • Transmit power • Instantaneous BER • Symbol time • Coding rate/scheme • Optimization criterion: • Maximize throughput • Minimize average power • Minimize average BER Only 1-2 degrees of freedom needed for good performance

  5. One of the M(g) Points log2 M(g) Bits To Channel M(g)-QAM Modulator Power: P(g) Point Selector Uncoded Data Bits Delay g(t) g(t) 16-QAM 4-QAM BSPK Variable-Rate Variable-Power MQAM Goal: Optimize P(g) and M(g) to maximize R=Elog[M(g)]

  6. Optimization Formulation • Adaptive MQAM: Rate for fixed BER • Rate and Power Optimization Same maximization as for capacity, except for K=-1.5/ln(5BER).

  7. gk g Optimal Adaptive Scheme • Power Adaptation • Spectral Efficiency g Equals capacity with effective power loss K=-1.5/ln(5BER).

  8. K2 K1 K=-1.5/ln(5BER) Spectral Efficiency Can reduce gap by superimposing a trellis code

  9. Constellation Restriction • Restrict MD(g) to {M0=0,…,MN}. • Let M(g)=g/gK*, where gK* is later optimized. • Set MD(g) to maxj Mj: Mj M(g). • Region boundaries are gj=MjgK*, j=0,…,N • Power control maintains target BER M3 M(g)=g/gK* MD(g) M3 M2 M2 M1 M1 Outage 0 g0 g1=M1gK* g2 g3 g

  10. Power Adaptation and Average Rate • Power adaptation: • Fixed BER within each region • Es/N0=(Mj-1)/K • Channel inversion within a region • Requires power increase when increasing M(g) • Average Rate

  11. Efficiency in Rayleigh Fading Spectral Efficiency (bps/Hz) Average SNR (dB)

  12. Main Points • Adaptive modulation leverages fast fading to improve performance (throughput, BER, etc.) • Adaptive MQAM uses capacity-achieving power and rate adaptation, with power penalty K. • Comes within 5-6 dB of capacity • Discretizing the constellation size results in negligible performance loss.

More Related