Machine learning as a surrogate model for EnergyPLAN: Speeding up energy system optimization at the country level

被引:5
|
作者
Prina, Matteo Giacomo [1 ]
Dallapiccola, Mattia [1 ]
Moser, David [1 ]
Sparber, Wolfram [1 ]
机构
[1] Inst Renewable Energy, EURAC Res, Viale Druso 1, I-39100 Bolzano, Italy
基金
欧盟地平线“2020”;
关键词
Energy system modelling; Energy scenarios; Energy planning; Machine learning; MULTIOBJECTIVE GENETIC ALGORITHM; DESIGN; SOFTWARE;
D O I
10.1016/j.energy.2024.132735
中图分类号
O414.1 [热力学];
学科分类号
摘要
In the field of energy system modelling, increasing complexity and optimization analysis are essential for understanding the most effective decarbonization options. However, the growing need for intricate models leads to increased computational time, which can hinder progress in research and policy-making. This study aims to address this issue by integrating machine learning algorithms with EnergyPLAN and EPLANopt, a coupling of EnergyPLAN software and a multi-objective evolutionary algorithm, to expedite the optimization process while maintaining accuracy. By saving computational time, we can increase the number of evaluations, thereby enabling deeper exploration of uncertainty in energy system modelling. Although machine learning models have been widely employed as surrogate models to accelerate optimization problems, their application in energy system modeling at the national scale, while preserving high temporal resolution and extensive sector-coupling, remains scarce. Several machine learning models were evaluated, and an artificial neural network was selected as the most effective surrogate model. The findings demonstrate that incorporating this surrogate model within the optimization process reduces computational time by 64 % compared to the conventional EPLANopt approach, while maintaining an accuracy level close to that obtained by running EPLANopt without the surrogate model.
引用
收藏
页数:12
相关论文
共 50 条
  • [41] A Machine Learning System that Detects Abnormal Level of Inventory
    Ozcan, Anil
    Mert, Buse
    Yuceoglu, Birol
    INTELLIGENT AND FUZZY SYSTEMS, VOL 3, INFUS 2024, 2024, 1090 : 78 - 84
  • [42] A framework for energy optimization of distillation process using machine learning-based predictive model
    Park, Hyundo
    Kwon, Hyukwon
    Cho, Hyungtae
    Kim, Junghwan
    ENERGY SCIENCE & ENGINEERING, 2022, 10 (06) : 1913 - 1924
  • [43] Application of Machine Learning in Thermodynamic System Modeling and Optimization
    Wang, Li
    Liu, Chang
    Huo, Ran
    Lu, Xin
    Yang, Yue
    INTERNATIONAL JOURNAL OF HEAT AND TECHNOLOGY, 2024, 42 (05) : 1613 - 1621
  • [44] Supervised parameter optimization of a modular machine learning system
    Link, M
    Ishitobi, M
    MULTIPLE APPROACHES TO INTELLIGENT SYSTEMS, PROCEEDINGS, 1999, 1611 : 632 - 641
  • [45] A machine learning and distributionally robust optimization framework for strategic energy planning under uncertainty
    Guevara, Esnil
    Babonneau, Frederic
    Homem-de-Mello, Tito
    Moret, Stefano
    APPLIED ENERGY, 2020, 271
  • [46] Energy Model Machine (EMM) Instant Building Energy Prediction using Machine Learning
    Asl, Mohammad Rahmani
    Das, Subhajit
    Tsai, Barry
    Molloy, Ian
    Hauck, Anthony
    ECAADE 2017: SHARING OF COMPUTABLE KNOWLEDGE! (SHOCK!), VOL 2, 2017, : 277 - 286
  • [47] A machine learning approach for country-level deployment of greenhouse gas removal technologies
    Asibor, Jude O.
    Clough, Peter T.
    Nabavi, Seyed Ali
    Manovic, Vasilije
    INTERNATIONAL JOURNAL OF GREENHOUSE GAS CONTROL, 2023, 130
  • [48] Modular surrogate modeling-based optimization framework for thermohydraulic systems assisted by machine learning
    Fu, Rong-Huan
    Zhao, Tian
    Yuan, Meng-Di
    Du, Yan-Jun
    ENERGY, 2025, 323
  • [49] Dynamic GPU Energy Optimization for Machine Learning Training Workloads
    Wang, Farui
    Zhang, Weizhe
    Lai, Shichao
    Hao, Meng
    Wang, Zheng
    IEEE TRANSACTIONS ON PARALLEL AND DISTRIBUTED SYSTEMS, 2022, 33 (11) : 2943 - 2954
  • [50] Machine Learning-Based Energy Optimization for Parallel Program Execution on Multicore Chips
    Otoom, Mwaffaq
    Trancoso, Pedro
    Alzubaidi, Mohammad A.
    Almasaeid, Hisham
    ARABIAN JOURNAL FOR SCIENCE AND ENGINEERING, 2018, 43 (12) : 7343 - 7358