Пожалуйста, используйте этот идентификатор, чтобы цитировать или ссылаться на этот ресурс: http://elar.urfu.ru/handle/10995/101382
Название: Industry experience of developing day-ahead photovoltaic plant forecasting system based on machine learning
Авторы: Khalyasmaa, A. I.
Eroshenko, S. A.
Tashchilin, V. A.
Ramachandran, H.
Chakravarthi, T. P.
Butusov, D. N.
Дата публикации: 2020
Издатель: MDPI AG
Библиографическое описание: Industry experience of developing day-ahead photovoltaic plant forecasting system based on machine learning / A. I. Khalyasmaa, S. A. Eroshenko, V. A. Tashchilin, et al. — DOI 10.3390/rs12203420 // Remote Sensing. — 2020. — Vol. 12. — Iss. 20. — P. 1-21. — 3420.
Аннотация: This article highlights the industry experience of the development and practical implementation of a short-term photovoltaic forecasting system based on machine learning methods for a real industry-scale photovoltaic power plant implemented in a Russian power system using remote data acquisition. One of the goals of the study is to improve photovoltaic power plants generation forecasting accuracy based on open-source meteorological data, which is provided in regular weather forecasts. In order to improve the robustness of the system in terms of the forecasting accuracy, we apply newly derived feature introduction, a factor obtained as a result of feature engineering procedure, characterizing the relationship between photovoltaic power plant energy production and solar irradiation on a horizontal surface, thus taking into account the impacts of atmospheric and electrical nature. The article scrutinizes the application of different machine learning algorithms, including Random Forest regressor, Gradient Boosting Regressor, Linear Regression and Decision Trees regression, to the remotely obtained data. As a result of the application of the aforementioned approaches together with hyperparameters, tuning and pipelining of the algorithms, the optimal structure, parameters and the application sphere of different regressors were identified for various testing samples. The mathematical model developed within the framework of the study gave us the opportunity to provide robust photovoltaic energy forecasting results with mean accuracy over 92% for mostly-sunny sample days and over 83% for mostly cloudy days with different types of precipitation. © 2020 by the authors. Licensee MDPI, Basel, Switzerland.
Ключевые слова: FEATURE ENGINEERING
FORECASTING
GRAPHICAL USER INTERFACE SOFTWARE
MACHINE LEARNING
PHOTOVOLTAIC POWER PLANT
ADAPTIVE BOOSTING
DATA ACQUISITION
DECISION TREES
ELECTRIC POWER PLANTS
MACHINE LEARNING
METEOROLOGY
PHOTOVOLTAIC CELLS
PROFESSIONAL ASPECTS
SOLAR POWER GENERATION
SOLAR POWER PLANTS
STRUCTURAL OPTIMIZATION
FEATURE ENGINEERINGS
FORECASTING ACCURACY
HORIZONTAL SURFACES
INDUSTRY EXPERIENCE
METEOROLOGICAL DATA
PHOTOVOLTAIC ENERGY
PHOTOVOLTAIC POWER PLANT
REMOTE DATA ACQUISITION
WEATHER FORECASTING
URI: http://elar.urfu.ru/handle/10995/101382
Условия доступа: info:eu-repo/semantics/openAccess
Идентификатор SCOPUS: 85092891728
Идентификатор WOS: 000585525400001
Идентификатор PURE: 7005acea-fac9-4ab2-8095-1d329798c649
14159013
ISSN: 20724292
DOI: 10.3390/rs12203420
Располагается в коллекциях:Научные публикации ученых УрФУ, проиндексированные в SCOPUS и WoS CC

Файлы этого ресурса:
Файл Описание РазмерФормат 
2-s2.0-85092891728.pdf4,62 MBAdobe PDFПросмотреть/Открыть


Все ресурсы в архиве электронных ресурсов защищены авторским правом, все права сохранены.