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The purpose of this evaluation was to measure and understand the extent of degradation to the system along with the identification of the failure modes in this hot-dry climatic condition.This 4000 module bipolar system was originally installed with a …Furthermore, Zn O is a potential material for transparent conducting oxide material competing with indium tin oxide (ITO), graphene, and carbon nanotube film.
based on his/her original work can restrict access for up to two years.
This collection includes most of the ASU Theses and Dissertations from 2011 to present.
ABSTRACT As the use of photovoltaic (PV) modules in large power plants continues to increase globally, more studies on degradation, reliability, failure modes, and mechanisms of field aged modules are needed to predict module life expectancy based on accelerated lifetime testing of PV modules.
In this work, a 26 year old PV power plant in Phoenix, Arizona has been evaluated for performance, reliability, and durability.
Long in Phoenix, Arizona (a hot-dry field condition).
The task for Arizona State University Photovoltaic Reliability Laboratory (ASU-PRL) graduate students was to evaluate the power plant through visual inspection, electrical performance, and infrared thermography.
This is not to say that process planners do not consider tolerances; they are …
Shock loading is a complex phenomenon that can lead to failure mechanisms such as strain localization, void nucleation and growth, and eventually spall fracture.
High-dimensional non-linear pattern classification methods have been applied to structural magnetic resonance images (MRI’s) and used to discriminate between clinical groups in Alzheimers progression.
Using Fluorodeoxyglucose (FDG) positron emission tomography (PET) as the pre- ferred imaging modality, this thesis develops two independent machine learning based patch analysis methods and uses them to perform six binary classification …