Integrated learning photovoltaic power generation prediction method for building integrated energy management
The invention discloses an integrated learning photovoltaic power generation prediction method for building integrated energy management, which is a Stacking integrated learning method based on an XGBoost element learner, and comprises the following specific implementation steps: obtaining various c...
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Format | Patent |
Language | Chinese English |
Published |
18.08.2023
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Abstract | The invention discloses an integrated learning photovoltaic power generation prediction method for building integrated energy management, which is a Stacking integrated learning method based on an XGBoost element learner, and comprises the following specific implementation steps: obtaining various characteristic variables of building photovoltaic power generation as a data set of a model, preprocessing the data set, and dividing the data set; lSTM and LSSVM are adopted as base learners of ensemble learning, a K-fold cross-check method is used, model training is carried out, a prediction result is obtained, meanwhile, prediction is carried out on a test set, and after prediction values are averaged, a new test set is obtained; the K-Fold verification set prediction results of the LSTM and the LSSVM are used as a training set of a meta-learner XGBoost, model training is carried out again, and a final prediction result is obtained on a new test set; and the prediction accuracy is evaluated through RMSE, and the |
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AbstractList | The invention discloses an integrated learning photovoltaic power generation prediction method for building integrated energy management, which is a Stacking integrated learning method based on an XGBoost element learner, and comprises the following specific implementation steps: obtaining various characteristic variables of building photovoltaic power generation as a data set of a model, preprocessing the data set, and dividing the data set; lSTM and LSSVM are adopted as base learners of ensemble learning, a K-fold cross-check method is used, model training is carried out, a prediction result is obtained, meanwhile, prediction is carried out on a test set, and after prediction values are averaged, a new test set is obtained; the K-Fold verification set prediction results of the LSTM and the LSSVM are used as a training set of a meta-learner XGBoost, model training is carried out again, and a final prediction result is obtained on a new test set; and the prediction accuracy is evaluated through RMSE, and the |
Author | ZHU XIAOMING XU HAOZE WU YAOYANG CHEN FUDONG |
Author_xml | – fullname: XU HAOZE – fullname: CHEN FUDONG – fullname: ZHU XIAOMING – fullname: WU YAOYANG |
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DocumentTitleAlternate | 一种面向楼宇综合能源管理的集成学习光伏发电预测方法 |
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Snippet | The invention discloses an integrated learning photovoltaic power generation prediction method for building integrated energy management, which is a Stacking... |
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SubjectTerms | CALCULATING COMPUTER SYSTEMS BASED ON SPECIFIC COMPUTATIONAL MODELS COMPUTING COUNTING DATA PROCESSING SYSTEMS OR METHODS, SPECIALLY ADAPTED FORADMINISTRATIVE, COMMERCIAL, FINANCIAL, MANAGERIAL, SUPERVISORYOR FORECASTING PURPOSES ELECTRIC DIGITAL DATA PROCESSING PHYSICS SYSTEMS OR METHODS SPECIALLY ADAPTED FOR ADMINISTRATIVE,COMMERCIAL, FINANCIAL, MANAGERIAL, SUPERVISORY OR FORECASTINGPURPOSES, NOT OTHERWISE PROVIDED FOR |
Title | Integrated learning photovoltaic power generation prediction method for building integrated energy management |
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