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Please use this identifier to cite or link to this item: http://arks.princeton.edu/ark:/88435/dsp01rr171x348
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dc.contributor.advisorVerma, Naveenen_US
dc.contributor.authorLee, Kyong Hoen_US
dc.contributor.otherElectrical Engineering Departmenten_US
dc.date.accessioned2013-12-06T14:16:12Z-
dc.date.available2013-12-06T14:16:12Z-
dc.date.issued2013en_US
dc.identifier.urihttp://arks.princeton.edu/ark:/88435/dsp01rr171x348-
dc.description.abstractLow-power sensing technologies have emerged for acquiring physiologically-indicative patient signals. However, to achieve high clinical value, it is critical to analyze the signals to extract specific medical information. Given the complexities of the underlying processes, high-order signal models are required for accurate signal analysis. Machine-learning offers distinct advantages, but the computations are not well supported by traditional DSP platforms; high-order models lead to energy and memory intensive computations. This thesis investigates these challenges from the levels of kernel functions, microprocessor architectures, and algorithms. To enable low-energy computations, a reformulation of a polynomial support-vector machine (SVM) kernel function is proposed that can substantially reduce the real-time computations involved. Using ECG-based arrhythmia-detection and EEG-based seizure-detection applications with clinical patient data, it is shown that the polynomial models yield performance accuracy comparable to the most powerful available transformation (i.e., the radial-basis function), and yet the proposed formulation reduces energy by over 2500x and 9.3 - 198x (depending on the patient), respectively. Next, an accelerator-based biomedical processor is proposed. It employs a low-power SVM accelerator realizing various kernel functions and reformulations, spanning design points within an accuracy-versus-energy and -memory trade-off space. An active-learning accelerator enables patient-specific model customization while minimizing the modeling effort from human experts. The prototype is implemented in 130nm CMOS. Medical applications for EEG-based seizure detection and ECG-based cardiac-arrhythmia detection are demonstrated using clinical data which reduce energy by 62.4x (273&mu;J) and 144.7x (124&mu;J), respectively, compared to a CPU-alone implementation. A patient-adaptive cardiac-arrhythmia detector is also demonstrated which reduces the training data required by a factor of 20x. While the first IC focuses on discriminative models, a second microprocessor supports a wide range of machine-learning frameworks. It employs accelerators based on kernels that can be combined in structured ways to realize various computations. Memory limitations are also addressed by an embedded compression/decompression accelerator, which reduces the memory footprint by 4x while imposing energy overhead <8%. The prototype IC is implemented in 130nm CMOS. Using six medical applications with real patient data, overall energy savings of 3.1 - 497x are demonstrated with the accelerator-based architecture.en_US
dc.language.isoenen_US
dc.publisherPrinceton, NJ : Princeton Universityen_US
dc.relation.isformatofThe Mudd Manuscript Library retains one bound copy of each dissertation. Search for these copies in the <a href=http://catalog.princeton.edu> library's main catalog </a>en_US
dc.subject.classificationElectrical engineeringen_US
dc.titleLow-power biomedical processors with embedded machine-learning accelerators for analytically-intractable physiological signalsen_US
dc.typeAcademic dissertations (Ph.D.)en_US
pu.projectgrantnumber690-2143en_US
Appears in Collections:Electrical Engineering

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