<?xml version="1.0" encoding="utf-8" standalone="yes"?><rss version="2.0" xmlns:atom="http://www.w3.org/2005/Atom"><channel><title>DOE | Hao Yan</title><link>https://hyan46.github.io/tag/doe/</link><atom:link href="https://hyan46.github.io/tag/doe/index.xml" rel="self" type="application/rss+xml"/><description>DOE</description><generator>Wowchemy (https://wowchemy.com)</generator><language>en-US</language><copyright>© 2026 Hao Yan</copyright><lastBuildDate>Sun, 01 Oct 2023 00:00:00 +0000</lastBuildDate><image><url>https://hyan46.github.io/media/icon_hudffdcafa99c609c7e4dfde01dba38f93_35970_512x512_fill_lanczos_center_3.png</url><title>DOE</title><link>https://hyan46.github.io/tag/doe/</link></image><item><title>DOE / Nuclear, Bayesian Optimization for Automatic Reactor Design Optimization</title><link>https://hyan46.github.io/project/bayesian-opt-reactor-design/</link><pubDate>Sun, 01 Oct 2023 00:00:00 +0000</pubDate><guid>https://hyan46.github.io/project/bayesian-opt-reactor-design/</guid><description>&lt;h2 id="overall-information">Overall Information&lt;/h2>
&lt;p>PI (10/2023&amp;ndash;09/2026): Bayesian optimization for automatic reactor design optimization. Total \$1M (my effort 40%). Team: Andi Wang.&lt;/p></description></item><item><title>DOE SETO, Photovoltaic Plant Predictive Maintenance Optimization under Uncertainties Using Probabilistic Information Fusion</title><link>https://hyan46.github.io/project/ai-solar/</link><pubDate>Wed, 01 Jul 2020 00:00:00 +0000</pubDate><guid>https://hyan46.github.io/project/ai-solar/</guid><description>&lt;h2 id="overall-information">Overall Information&lt;/h2>
&lt;p>This project uses artificial intelligence and machine learning methods to develop algorithms that will optimize operation and maintenance of photovoltaic (PV) power plants by detecting and classifying anomalies, predicting failures, and scheduling maintenance activities. Predictive maintenance is important to maintain the long-term financial performance of solar PV plants and reduce downtime. Real-time monitoring data such as power output, temperature, and weather information can be used to identify the common fault class patterns using a hierarchical generative model and probabilistic information fusion framework in the sensor level and system level. This project will use the power plant operated at Arizona State University and Arizona Public Service as the case study to demonstrate the proposed technology for predictive maintenance.&lt;/p></description></item></channel></rss>