Decision Tree Ensemble Machine Learning for Rapid QSTS Simulations

被引:0
|
作者
Blakely, Logan [1 ]
Reno, Matthew J. [1 ]
Broderick, Robert J. [1 ]
机构
[1] Sandia Natl Labs, POB 5800, Albuquerque, NM 87185 USA
关键词
boosting; machine learning; power system simulation; supervised learning;
D O I
暂无
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
High-resolution, quasi-static time series (QSTS) simulations are essential for modeling modern distribution systems with high-penetration of distributed energy resources (DER) in order to accurately simulate the time-dependent aspects of the system. Presently, QSTS simulations are too computationally intensive for widespread industry adoption. This paper proposes to simulate a portion of the year with QSTS and to use decision tree machine learning methods, random forests and boosting ensembles, to predict the voltage regulator tap changes for the remainder of the year, accurately reproducing the results of the time-consuming, brute-force, yearlong QSTS simulation. This research uses decision tree ensemble machine learning, applied for the first time to QSTS simulations, to produce high-accuracy QSTS results, up to 4x times faster than traditional methods.
引用
收藏
页数:5
相关论文
共 50 条
  • [1] Machine Learning for Rapid QSTS Simulations using Neural Networks
    Reno, Matthew J.
    Broderick, Robert J.
    Blakely, Logan
    [J]. 2017 IEEE 44TH PHOTOVOLTAIC SPECIALIST CONFERENCE (PVSC), 2017, : 1573 - 1578
  • [2] Decision tree based ensemble machine learning approaches for landslide susceptibility mapping
    Arabameri, Alireza
    Chandra Pal, Subodh
    Rezaie, Fatemeh
    Chakrabortty, Rabin
    Saha, Asish
    Blaschke, Thomas
    Di Napoli, Mariano
    Ghorbanzadeh, Omid
    Thi Ngo, Phuong Thao
    [J]. GEOCARTO INTERNATIONAL, 2022, 37 (16) : 4594 - 4627
  • [3] Structural diversity for decision tree ensemble learning
    Tao Sun
    Zhi-Hua Zhou
    [J]. Frontiers of Computer Science, 2018, 12 : 560 - 570
  • [4] Structural diversity for decision tree ensemble learning
    Sun, Tao
    Zhou, Zhi-Hua
    [J]. FRONTIERS OF COMPUTER SCIENCE, 2018, 12 (03) : 560 - 570
  • [5] Decision Tree and Ensemble Learning Algorithms with Their Applications in Bioinformatics
    Che, Dongsheng
    Liu, Qi
    Rasheed, Khaled
    Tao, Xiuping
    [J]. SOFTWARE TOOLS AND ALGORITHMS FOR BIOLOGICAL SYSTEMS, 2011, 696 : 191 - 199
  • [6] Ensemble Learning with Decision Tree for Remote Sensing Classification
    Pal, Mahesh
    [J]. PROCEEDINGS OF WORLD ACADEMY OF SCIENCE, ENGINEERING AND TECHNOLOGY, VOL 26, PARTS 1 AND 2, DECEMBER 2007, 2007, 26 : 735 - 737
  • [7] Interpreting tree ensemble machine learning models with endoR
    Ruaud, Albane
    Pfister, Niklas
    Ley, Ruth E.
    Youngblut, Nicholas D.
    [J]. PLOS COMPUTATIONAL BIOLOGY, 2022, 18 (12)
  • [8] Stock Market Decision Support Modeling with Tree-Based Adaboost Ensemble Machine Learning Models
    Ampomah, Ernest Kwame
    Qin, Zhiguang
    Nyame, Gabriel
    Botchey, Francis Effirm
    [J]. INFORMATICA-AN INTERNATIONAL JOURNAL OF COMPUTING AND INFORMATICS, 2020, 44 (04): : 477 - 490
  • [9] An ensemble learning model based on differentially private decision tree
    Niu, Xufeng
    Ma, Wenping
    [J]. COMPLEX & INTELLIGENT SYSTEMS, 2023, 9 (05) : 5267 - 5280
  • [10] An ensemble learning model based on differentially private decision tree
    Xufeng Niu
    Wenping Ma
    [J]. Complex & Intelligent Systems, 2023, 9 : 5267 - 5280