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Dive into the research topics where Woradorn Wattanapanitch is active.

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Featured researches published by Woradorn Wattanapanitch.


IEEE Transactions on Biomedical Circuits and Systems | 2007

An Energy-Efficient Micropower Neural Recording Amplifier

Woradorn Wattanapanitch; Michale S. Fee; Rahul Sarpeshkar

This paper describes an ultralow-power neural recording amplifier. The amplifier appears to be the lowest power and most energy-efficient neural recording amplifier reported to date. We describe low-noise design techniques that help the neural amplifier achieve input-referred noise that is near the theoretical limit of any amplifier using a differential pair as an input stage. Since neural amplifiers must include differential input pairs in practice to allow robust rejection of common-mode and power supply noise, our design appears to be near the optimum allowed by theory. The bandwidth of the amplifier can be adjusted for recording either neural spikes or local field potentials (LFPs). When configured for recording neural spikes, the amplifier yielded a midband gain of 40.8 dB and a -3-dB bandwidth from 45 Hz to 5.32 kHz; the amplifiers input-referred noise was measured to be 3.06 muVrms while consuming 7.56 muW of power from a 2.8-V supply corresponding to a noise efficiency factor (NEF) of 2.67 with the theoretical limit being 2.02. When configured for recording LFPs, the amplifier achieved a midband gain of 40.9 dB and a -3-dB bandwidth from 392 mHz to 295 Hz; the input-referred noise was 1.66 muVrms while consuming 2.08 muW from a 2.8-V supply corresponding to an NEF of 3.21. The amplifier was fabricated in AMIs 0.5-mum CMOS process and occupies 0.16 mm2 of chip area. We obtained successful recordings of action potentials from the robust nucleus of the arcopallium (RA) of an anesthesized zebra finch brain with the amplifier. Our experimental measurements of the amplifiers performance including its noise were in good accord with theory and circuit simulations.


IEEE Transactions on Biomedical Circuits and Systems | 2011

A Low-Power 32-Channel Digitally Programmable Neural Recording Integrated Circuit

Woradorn Wattanapanitch; Rahul Sarpeshkar

We report the design of an ultra-low-power 32-channel neural-recording integrated circuit (chip) in a 0.18 μ m CMOS technology. The chip consists of eight neural recording modules where each module contains four neural amplifiers, an analog multiplexer, an A/D converter, and a serial programming interface. Each amplifier can be programmed to record either spikes or LFPs with a programmable gain from 49-66 dB. To minimize the total power consumption, an adaptive-biasing scheme is utilized to adjust each amplifiers input-referred noise to suit the background noise at the recording site. The amplifiers input-referred noise can be adjusted from 11.2 μVrms (total power of 5.4 μW) down to 5.4 μVrms (total power of 20 μW) in the spike-recording setting. The ADC in each recording module digitizes the a.c. signal input to each amplifier at 8-bit precision with a sampling rate of 31.25 kS/s per channel, with an average power consumption of 483 nW per channel, and, because of a.c. coupling, allows d.c. operation over a wide dynamic range. It achieves an ENOB of 7.65, resulting in a net efficiency of 77 fJ/State, making it one of the most energy-efficient designs for neural recording applications. The presented chip was successfully tested in an in vivo wireless recording experiment from a behaving primate with an average power dissipation per channel of 10.1 μ W. The neural amplifier and the ADC occupy areas of 0.03 mm2 and 0.02 mm2 respectively, making our design simultaneously area efficient and power efficient, thus enabling scaling to high channel-count systems.


IEEE Transactions on Biomedical Circuits and Systems | 2008

Low-Power Circuits for Brain–Machine Interfaces

Rahul Sarpeshkar; Woradorn Wattanapanitch; Scott K. Arfin; Benjamin I. Rapoport; Soumyajit Mandal; Michael W. Baker; Michale S. Fee; Sam Musallam; Richard A. Andersen

This paper presents work on ultra-low-power circuits for brain–machine interfaces with applications for paralysis prosthetics, stroke, Parkinsons disease, epilepsy, prosthetics for the blind, and experimental neuroscience systems. The circuits include a micropower neural amplifier with adaptive power biasing for use in multi-electrode arrays; an analog linear decoding and learning architecture for data compression; low-power radio-frequency (RF) impedance-modulation circuits for data telemetry that minimize power consumption of implanted systems in the body; a wireless link for efficient power transfer; mixed-signal system integration for efficiency, robustness, and programmability; and circuits for wireless stimulation of neurons with power-conserving sleep modes and awake modes. Experimental results from chips that have stimulated and recorded from neurons in the zebra finch brain and results from RF power-link, RF data-link, electrode-recording and electrode-stimulating systems are presented. Simulations of analog learning circuits that have successfully decoded prerecorded neural signals from a monkey brain are also presented.


international symposium on circuits and systems | 2007

Low-Power Circuits for Brain-Machine Interfaces

Rahul Sarpeshkar; Woradorn Wattanapanitch; Benjamin I. Rapoport; Scott K. Arfin; Michael W. Baker; Soumyajit Mandal; Michale S. Fee; Sam Musallam; Richard A. Andersen

This paper presents work on ultra-low-power circuits for brain-machine interfaces with applications for paralysis prosthetics, prosthetics for the blind, and experimental neuroscience systems. The circuits include a micropower neural amplifier with adaptive power biasing for use in multi-electrode arrays; an analog linear decoding and learning architecture for data compression; radio-frequency (RF) impedance modulation for low-power data telemetry; a wireless link for efficient power transfer; mixed-signal system integration for efficiency, robustness, and programmability; and circuits for wireless stimulation of neurons. Experimental results from chips that have recorded from and stimulated neurons in the zebra-finch brain and from RF power-link systems are presented. Circuit simulations that have successfully processed prerecorded data from a monkey brain and from an RF data telemetry system are also presented.


PLOS ONE | 2012

Efficient Universal Computing Architectures for Decoding Neural Activity

Benjamin I. Rapoport; Lorenzo Turicchia; Woradorn Wattanapanitch; Thomas J. Davidson; Rahul Sarpeshkar

The ability to decode neural activity into meaningful control signals for prosthetic devices is critical to the development of clinically useful brain– machine interfaces (BMIs). Such systems require input from tens to hundreds of brain-implanted recording electrodes in order to deliver robust and accurate performance; in serving that primary function they should also minimize power dissipation in order to avoid damaging neural tissue; and they should transmit data wirelessly in order to minimize the risk of infection associated with chronic, transcutaneous implants. Electronic architectures for brain– machine interfaces must therefore minimize size and power consumption, while maximizing the ability to compress data to be transmitted over limited-bandwidth wireless channels. Here we present a system of extremely low computational complexity, designed for real-time decoding of neural signals, and suited for highly scalable implantable systems. Our programmable architecture is an explicit implementation of a universal computing machine emulating the dynamics of a network of integrate-and-fire neurons; it requires no arithmetic operations except for counting, and decodes neural signals using only computationally inexpensive logic operations. The simplicity of this architecture does not compromise its ability to compress raw neural data by factors greater than . We describe a set of decoding algorithms based on this computational architecture, one designed to operate within an implanted system, minimizing its power consumption and data transmission bandwidth; and a complementary set of algorithms for learning, programming the decoder, and postprocessing the decoded output, designed to operate in an external, nonimplanted unit. The implementation of the implantable portion is estimated to require fewer than 5000 operations per second. A proof-of-concept, 32-channel field-programmable gate array (FPGA) implementation of this portion is consequently energy efficient. We validate the performance of our overall system by decoding electrophysiologic data from a behaving rodent.


international conference of the ieee engineering in medicine and biology society | 2009

A biomimetic adaptive algorithm and low-power architecture for implantable neural decoders

Benjamin I. Rapoport; Woradorn Wattanapanitch; Hector L. Penagos; Sam Musallam; Richard A. Andersen; Rahul Sarpeshkar

Algorithmically and energetically efficient computational architectures that operate in real time are essential for clinically useful neural prosthetic devices. Such devices decode raw neural data to obtain direct control signals for external devices. They can also perform data compression and vastly reduce the bandwidth and consequently power expended in wireless transmission of raw data from implantable brain-machine interfaces. We describe a biomimetic algorithm and micropower analog circuit architecture for decoding neural cell ensemble signals. The decoding algorithm implements a continuous-time artificial neural network, using a bank of adaptive linear filters with kernels that emulate synaptic dynamics. The filters transform neural signal inputs into control-parameter outputs, and can be tuned automatically in an on-line learning process. We provide experimental validation of our system using neural data from thalamic head-direction cells in an awake behaving rat.


Archive | 2008

LOW-POWER ANALOG ARCHITECTURE FOR BRAIN-MACHINE INTERFACES

Benjamin I. Rapoport; Rahul Sarpeshkar; Woradorn Wattanapanitch; Soumyajit Mandal; Scott K. Arfin


Archive | 2008

MICROPOWER NEURAL AMPLIFIER WITH ADAPTIVE INPUT-REFERRED NOISE

Rahul Sarpeshkar; Benjamin I. Rapoport; Woradorn Wattanapanitch


Archive | 2008

Low-power analog-circuit architecture for decoding neural signals

Benjamin I. Rapoport; Rahul Sarpeshkar; Woradorn Wattanapanitch


Archive | 2017

Multi-electrode, Energy-Recycling, Resonant Stimulation Circuits and Architectures for Nerve Blocking

Rahul Sarpeshkar; Woradorn Wattanapanitch

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Rahul Sarpeshkar

Massachusetts Institute of Technology

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Benjamin I. Rapoport

Massachusetts Institute of Technology

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Richard A. Andersen

California Institute of Technology

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Michale S. Fee

McGovern Institute for Brain Research

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Scott K. Arfin

Massachusetts Institute of Technology

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Soumyajit Mandal

Case Western Reserve University

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Hector L. Penagos

Massachusetts Institute of Technology

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Michael W. Baker

Massachusetts Institute of Technology

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Lorenzo Turicchia

Massachusetts Institute of Technology

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