Computer Science

Cloud Coverage Prediction to Improve Solar Power Management

Cloud movement prediction is a difficult problem that has been studied for many years. As humans, we can easily identify where the clouds are and maybe predict their movement within a couple of minutes; however, we are unable to predict beyond a short period of time as cloud size, altitude, wind velocity, and other weather conditions contribute to it being a very complicated task. But this research is important because cloud prediction gives advance notice to grid managers of coming solar energy shortage or spikes, allowing the system to prepare and buy energy from other sources as needed. In this paper, we continue the work of many researchers over the last decade, finding new ways to process the images and creating new neural networks to handle predictions.

Next Gen Avionics

The Next Gen Avionics SURP focused on getting System Board II, Cal Poly CubeSat Lab’s next generation avionics board, up to speed. The topics focused on during this project were systems engineering, computer science, and electrical engineering.

AI/ML for Computer Forensics

Child trafficking is an important and devastating issue in several countries around the world, especially in the United Kingdom. Child predators often take pictures of their abuse victims, and many of these victims are groomed and abused while in their school uniforms. The Global Emancipation Network, also known as GEN, has taken the initiative to fight this issue by developing software that can identify school uniforms in images, classify the UK schools to which the uniforms belong to, and aid forensic examiners in investigations.

IoT Security – System Modeling and Security Study

This project aimed to build a system model of a smart-home application integrated with various Internet-of-Things (IoT) devices, as well as provide system and software security analysis to determine the possibility of device vulnerabilities and potential cyber attacks.

Learning to Denoise Low-Dose CT Scans

This SURP project explores the use of deep learning to denoise raw CT image data acquired at low-radiation dose. The goal is to recover clean CT images from noisy data that are comparable to CT scans imaged at full-radiation dose.

Shark Spotting with Drones

Shark Spotting with Drones is a research project sponsored by the California Polytechnic State University, San Luis Obispo College of Engineering. Our project focuses on implementing a trained neural network to recognize and learn about sharks and other marine life in an effort to make the ocean safer for everyone.

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