国产成人无码专区,国产精品亚洲产品一区二区三区,色综合天天综合婷婷伊人,久久久不卡国产精品一区二区

NEWS&EVENTS
News

Our faculty research achievements were awarded the best paper of IEEE Transactions on Power Systems


Recently, IEEE Power and Energy Society (Institute of Electrical and Electronics Engineers Power and Energy Society, IEEE PES ) has released its best papers for 2022. The paper "Data-Driven Optimal Power Flow: A Physics-Informed Machine Learning Approach " published by Postdoctoral researcher Lei Xingyu (first author), Professor Yang Zhifang (corresponding author) and Professor Yu Juan, etc., Department of Power Systems and Automation A Physics-Informed Machine Learning Approach, co-authored by Assistant Professor Junbo Zhao and others from the University of Connecticut, was awarded the best paper.

IEEE Transactions on Power Systems is the leading academic journal in the field of power system analysis and has important industry influence. The selection of the best papers includes all the papers published in IEEE Transactions on Power Systems in the past three years (a total of more than 1,400 papers), and a total of five papers were selected, with an acceptance rate of less than 4 percent.

 

 

Aiming at the problem that the existing data-driven optimal power flow calculation method has low applicability due to the difficulty of hyperparameter debugging and coordination, this paper proposes a physical information-guided data-driven optimal power flow calculation method by using a machine learning tool with simple structure and few tuning parameters. Firstly, a data-driven learning framework based on the physical characteristics of the optimal power flow is constructed, and the optimal power flow problem is divided into three stages of learning, which simplifies the learning difficulty of the optimal power flow problem and improves the calculation accuracy of the data-driven optimal power flow. On this basis, this paper proposes a pre-classification strategy for optimal power flow samples based on critical domain segmentation, which simplifies the complex mapping relationship between input and output of optimal power flow by pre-classifying samples with the same or similar constraints.

 

Since its official publication in 2021, the paper has been cited 37 times in Web of Science, 66 times in Google Scholar, and is a Popular paper in IEEE Transactions on Power Systems.

 

Link to the original paper

Data-Driven Optimal Power Flow: A Physics-Informed Machine Learning Approach

https://ieeexplore.ieee.org/abstract/document/9115822

 

Links to the original story:

https://cmte.ieee.org/tpwrs/tpwrs-best-papers/

 

 

 

 

主站蜘蛛池模板: 故城县| 边坝县| 仁寿县| 同心县| 合山市| 甘德县| 房产| 通化县| 岐山县| 永新县| 龙陵县| 岗巴县| 高要市| 哈巴河县| 莱芜市| 来安县| 文安县| 安达市| 繁昌县| 清涧县| 利津县| 苏尼特右旗| 客服| 靖边县| 大英县| 灵璧县| 闽侯县| 丹阳市| 南靖县| 平阴县| 色达县| 新田县| 承德市| 临邑县| 吉木萨尔县| 安义县| 长岭县| 抚州市| 名山县| 桓仁| 常宁市|