J-DSP Editor Use of Java-DSP to Demonstrate Power Amplifier Linearization Techniques Presenter Robert Santucci PI: Dr. Andreas Spanias.

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Presentation transcript:

J-DSP Editor Use of Java-DSP to Demonstrate Power Amplifier Linearization Techniques Presenter Robert Santucci PI: Dr. Andreas Spanias 1

J-DSP Editor Overview Objectives Introduce the Problem Design Tradeoffs New Java-DSP Predistortion Modules – PA Linearized by Gain-based LUT – PA Linearized by Neural Networks Conclusions 2

J-DSP Editor Objective Use Java-DSP to construct a set of tutorials illustrating design tradeoffs between the communications, DSP, and RF domain when designing a wireless transmitter Familiarize students with the metrics used to quantify performance in a wireless transmitter Allow students to experiment with design choices and assess their impact on performance. 3

J-DSP Editor Wireless Signals Modern Smartphones, YouTube, Web Browsing – Demand higher data rate than old voice service Bandwidth is expensive and fixed – Need to modulate both amplitude and phase to make most efficient use of spectrum Symbols are generally transmitted at a faster rate Fast symbol Tx in an uncontrolled results in unpredictable multipath – Solution: Transmit many bits in parallel very slowly using adjacent frequencies. -- OFDM 4

J-DSP Editor Is OFDM the answer? For mitigating multipath? Yes, it can work well. What does the signal look like in time and frequency? – Build a schematic in JDSP. – Select OFDM 4x OSR as input signal – Here we can see that the average power transmitted changes rapidly 5

J-DSP Editor OFDM Java-DSP Demo 6

J-DSP Editor PA Ramifications Large variation in signal amplitude against time Peak-to-Average Power Ratio (PAR) To avoid distorting the signal, amplifier must be linear across the entire dynamic range. A fundamental tradeoff exists between amplifier efficiency and linear range exists. – Want to drive the amplifier to its peak output power to get maximum efficiency – When the amplifier is near peak output power output compresses and produces distortion just like in your car 7

J-DSP Editor Amplifier Compression Amplifier becomes a non-constant multiplier, convolves with the signal to be transmitted causing distortion. This compression, or clipping, is discussed in our previous work [1]. We’d like to develop a technique to operate the amplifier deep into this compressed region to boost overall transmitter efficiency. 8

J-DSP Editor Clipping Demo 9 Alter input signal level or clipping level to see change in fundamental and harmonic energy. Note: Fundamental gain decreases with input Can also demonstrate coherent sampling

J-DSP Editor Java-DSP Clipping 10

J-DSP Editor Performance Metrics Adjacent Channel Power Ratio (ACPR) – Ratio of the amount of power leaked into adjacent bands compared to power in the intended band Error Vector Magnitude (EVM) – Ratio of the power between the error power away from the intended signal and the intended signal power within the band. 11

J-DSP Editor Gain-Based LUT Split the gain curve into regions and correct each region’s gain via an adaptive algorithm [1] LMS: 12 [1] Cavers, J.K., "A linearizing predistorter with fast adaptation," Vehicular Technology Conference, 1990 IEEE 40th, vol., no., pp.41-47, 6-9 May 1990.

J-DSP Editor PD by LUT Demo 13

J-DSP Editor PD by LUT Schematic 14

J-DSP Editor Predistorter Block 15

J-DSP Editor Predistorter Block 16 Magnitude of Gain Factor in each LUT bin Histogram of points within each LUT bin Nominal Power Amplifier Gain in Each bin PA Gain Nominal (Blue) Linearizer Gain (Magenta) Net System Gain (Black) at the center of each bin.

J-DSP Editor Predistorter Block 17 Nominal PA Gain (Blue) Predistorter Gain (Magenta) Linearized PD+PA Gain (Black) Nominal PA Magnitude (Blue) Predistorter Magnitude (Magenta) Linearized PD+PA Gain (Black) ACPR Nominal (Blue) ACPR with Predistortion (Magenta) EVM Nominal (Blue) EVM with Predistortion (Magenta)

J-DSP Editor LUT Weaknesses No inherent ability to compensate for non-linear distortion. Rather you are splitting the output into regions of “nearly linear” data and correct the gain for each region. When power amplifier has memory, you can train an FIR for each bin, but the number of parameters gets very large. Can we build a system that inherently can compensate non-linear behavior? 18

J-DSP Editor Neural Network PD Neural networks are interconnection of multiple neurons. Each neuron takes a weighted sum of inputs and passes it through a non-linear activation function. Each red arrow is weight to be trained using Levenberg-Marquardt back propagation Want to train the neural network to estimate the inverse function of the PA except for desired gain [2]. Training input data: PA output/Gain; Training target data: PA input 19 [2] Mkadem, Farouk; Ayed, Morsi B.; Boumaiza, Slim; Wood, John; Aaen, Peter; "Behavioral modeling and digital predistortion of Power Amplifiers with memory using Two Hidden Layers Artificial Neural Networks," Microwave Symposium Digest (MTT), 2010 IEEE MTT-S International, pp , May 2010.

J-DSP Editor Neural Network PD Demo 20

J-DSP Editor Neural Net TB Demo 21

J-DSP Editor Neural Net Demo 22 Nominal PA Gain (Blue) Predistorter Gain (Magenta) Linearized PD+PA Gain (Black) Nominal PA Magnitude (Blue) Predistorter Magnitude (Magenta) Linearized PD+PA Gain (Black) ACPR Nominal (Blue) ACPR with Predistortion (Magenta) EVM Nominal (Blue) EVM with Predistortion (Magenta)

J-DSP Editor Conclusions Java-DSP can be used to familiarize students with advanced concepts and design tradeoffs involved in transceiver design The modules provided allow students to experiment with the affects of parameter values without having to implement the significantly complex design underneath the simulator. 23

J-DSP Editor References Conference papers – [1] Santucci, R; Gupta, T.; Shah, M.; Spanias, A., “Advanced functions of Java-DSP for use in electrical and computer engineering courses,” ASEE 2010, Louisville, KY, – Santucci, R; Spanias, A., “Use of Java-DSP to Demonstrate Power Amplifier Linearization Techniques,” ASEE 2010, Vancouver, BC, – Santucci, R.; Spanias, A., “A block adaptive predistortion algorithm for transceivers with long transmit-receive latency,” th International Symposium on Communications, Control and Signal Processing (ISCCSP), 3-5 March – Santucci, R.; Spanias, A., “Block Adaptive and Neural Network Based Digital Predistortion and Power Amplifier Performance,” 2011 IASTED Signal Processing, Pattern Recognition, and Applications Conference, Innsbruck, Austria,

J-DSP Editor Acknowledgements National Science Foundation – Grant SenSIP Center School of ECEE Arizona State University 25

J-DSP Editor Contact 26 Address all Communications to: Andreas Spanias SenSIP, School of ECEE Rm GWC 440, Box 5706 Arizona State University Tempe AZ (480)