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Description
Micro-Electro Mechanical System (MEMS) is the micro-scale technology applying on various fields. Traditional testing strategy of MEMS requires physical stimulus, which leads to high cost specified equipment. Also there are a large number of wafer-level measurements for MEMS. A method of estimation calibration coefficient only by electrical stimulus based wafer

Micro-Electro Mechanical System (MEMS) is the micro-scale technology applying on various fields. Traditional testing strategy of MEMS requires physical stimulus, which leads to high cost specified equipment. Also there are a large number of wafer-level measurements for MEMS. A method of estimation calibration coefficient only by electrical stimulus based wafer level measurements is included in the thesis. Moreover, a statistical technique is introduced that can reduce the number of wafer level measurements, meanwhile obtaining an accurate estimate of unmeasured parameters. To improve estimation accuracy, outlier analysis is the effective technique and merged in the test flow. Besides, an algorithm for optimizing test set is included, also providing numerical estimated prediction error.
ContributorsDeng, Lingfei (Author) / Ozev, Sule (Thesis advisor) / Yu, Hongyu (Committee member) / Christen, Jennifer Blain (Committee member) / Arizona State University (Publisher)
Created2012
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Description
Coarse Grain Reconfigurable Arrays (CGRAs) are promising accelerators capable of

achieving high performance at low power consumption. While CGRAs can efficiently

accelerate loop kernels, accelerating loops with control flow (loops with if-then-else

structures) is quite challenging. Techniques that handle control flow execution in

CGRAs generally use predication. Such techniques execute both branches of an

if-then-else

Coarse Grain Reconfigurable Arrays (CGRAs) are promising accelerators capable of

achieving high performance at low power consumption. While CGRAs can efficiently

accelerate loop kernels, accelerating loops with control flow (loops with if-then-else

structures) is quite challenging. Techniques that handle control flow execution in

CGRAs generally use predication. Such techniques execute both branches of an

if-then-else structure and select outcome of either branch to commit based on the

result of the conditional. This results in poor utilization of CGRA s computational

resources. Dual-issue scheme which is the state of the art technique for control flow

fetches instructions from both paths of the branch and selects one to execute at

runtime based on the result of the conditional. This technique has an overhead in

instruction fetch bandwidth. In this thesis, to improve performance of control flow

execution in CGRAs, I propose a solution in which the result of the conditional

expression that decides the branch outcome is communicated to the instruction fetch

unit to selectively issue instructions from the path taken by the branch at run time.

Experimental results show that my solution can achieve 34.6% better performance

and 52.1% improvement in energy efficiency on an average compared to state of the

art dual issue scheme without imposing any overhead in instruction fetch bandwidth.
ContributorsRajendran Radhika, Shri Hari (Author) / Shrivastava, Aviral (Thesis advisor) / Christen, Jennifer Blain (Committee member) / Cao, Yu (Committee member) / Arizona State University (Publisher)
Created2014
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Description
Micro Electro Mechanical Systems (MEMS) based accelerometers are one of the most commonly used sensors out there. They are used in devices such as, airbags, smartphones, airplanes, and many more. Although they are very accurate, they degrade with time or get offset due to some damage. To fix this, they

Micro Electro Mechanical Systems (MEMS) based accelerometers are one of the most commonly used sensors out there. They are used in devices such as, airbags, smartphones, airplanes, and many more. Although they are very accurate, they degrade with time or get offset due to some damage. To fix this, they must be calibrated again using physical calibration technique, which is an expensive process to conduct. However, these sensors can also be calibrated infield by applying an on-chip electrical stimulus to the sensor. Electrical stimulus-based calibration could bring the cost of testing and calibration significantly down as compared to factory testing. In this thesis, simulations are presented to formulate a statistical prediction model based on an electrical stimulus. Results from two different approaches of electrical calibration have been discussed. A prediction model with a root mean square error of 1% has been presented in this work. Experiments were conducted on commercially available accelerometers to test the techniques used for simulations.
ContributorsBassi, Ishaan (Author) / Ozev, Sule (Thesis advisor) / Christen, Jennifer Blain (Committee member) / Vasileska, Dragica (Committee member) / Arizona State University (Publisher)
Created2020
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Description
The manufacturing process for electronic systems involves many players, from chip/board design and fabrication to firmware design and installation.

In today's global supply chain, any of these steps are prone to interference from rogue players, creating a security risk.

Manufactured devices need to be verified to perform only their intended

The manufacturing process for electronic systems involves many players, from chip/board design and fabrication to firmware design and installation.

In today's global supply chain, any of these steps are prone to interference from rogue players, creating a security risk.

Manufactured devices need to be verified to perform only their intended operations since it is not economically feasible to control the supply chain and use only trusted facilities.

It is becoming increasingly necessary to trust but verify the received devices both at production and in the field.

Unauthorized hardware or firmware modifications, known as Trojans,

can steal information, drain the battery, or damage battery-driven embedded systems and lightweight Internet of Things (IoT) devices.

Since Trojans may be triggered in the field at an unknown instance,

it is essential to detect their presence at run-time.

However, it isn't easy to run sophisticated detection algorithms on these devices

due to limited computational power and energy, and in some cases, lack of accessibility.

Since finding a trusted sample is infeasible in general, the proposed technique is based on self-referencing to remove any effect of environmental or device-to-device variations in the frequency domain.

In particular, the self-referencing is achieved by exploiting the band-limited nature of Trojan activity using signal detection theory.

When the device enters the test mode, a predefined test application is run on the device

repetitively for a known period. The periodicity ensures that the spectral electromagnetic power of the test application concentrates at known frequencies, leaving the remaining frequencies within the operating bandwidth at the noise level. Any deviations from the noise level for these unoccupied frequency locations indicate the presence of unknown (unauthorized) activity. Hence, the malicious activity can differentiate without using a golden reference or any knowledge of the Trojan activity attributes.

The proposed technique's effectiveness is demonstrated through experiments with collecting and processing side-channel signals, such as involuntarily electromagnetic emissions and power consumption, of a wearable electronics prototype and commercial system-on-chip under a variety of practical scenarios.
ContributorsKarabacak, Fatih (Author) / Ozev, Sule (Thesis advisor) / Ogras, Umit Y. (Thesis advisor) / Christen, Jennifer Blain (Committee member) / Kitchen, Jennifer (Committee member) / Arizona State University (Publisher)
Created2020