Comparative Study on KNN and SVM Based Weather Classification Models for Day Ahead Short Term Solar PV Power Forecasting

Accurate solar photovoltaic (PV) power forecasting is an essential tool for mitigating the negative effects caused by the uncertainty of PV output power in systems with high penetration levels of solar PV generation. Weather classification based modeling is an effective way to increase the accuracy...

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Main Authors: Fei Wang, Zhao Zhen, Bo Wang, Zengqiang Mi
Format: Article
Language:English
Published: MDPI AG 2017-12-01
Series:Applied Sciences
Subjects:
SVM
KNN
Online Access:https://www.mdpi.com/2076-3417/8/1/28
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spelling doaj-e50a202244094d3f8f5939a632ab92cf2020-11-24T21:15:19ZengMDPI AGApplied Sciences2076-34172017-12-01812810.3390/app8010028app8010028Comparative Study on KNN and SVM Based Weather Classification Models for Day Ahead Short Term Solar PV Power ForecastingFei Wang0Zhao Zhen1Bo Wang2Zengqiang Mi3State Key Laboratory of Alternate Electrical Power System with Renewable Energy Sources (North China Electric Power University), Baoding 071003, ChinaState Key Laboratory of Alternate Electrical Power System with Renewable Energy Sources (North China Electric Power University), Baoding 071003, ChinaState Key Laboratory of Operation and Control of Renewable Energy & Storage Systems, China Electric Power Research Institute, Beijing 100192, ChinaState Key Laboratory of Alternate Electrical Power System with Renewable Energy Sources (North China Electric Power University), Baoding 071003, ChinaAccurate solar photovoltaic (PV) power forecasting is an essential tool for mitigating the negative effects caused by the uncertainty of PV output power in systems with high penetration levels of solar PV generation. Weather classification based modeling is an effective way to increase the accuracy of day-ahead short-term (DAST) solar PV power forecasting because PV output power is strongly dependent on the specific weather conditions in a given time period. However, the accuracy of daily weather classification relies on both the applied classifiers and the training data. This paper aims to reveal how these two factors impact the classification performance and to delineate the relation between classification accuracy and sample dataset scale. Two commonly used classification methods, K-nearest neighbors (KNN) and support vector machines (SVM) are applied to classify the daily local weather types for DAST solar PV power forecasting using the operation data from a grid-connected PV plant in Hohhot, Inner Mongolia, China. We assessed the performance of SVM and KNN approaches, and then investigated the influences of sample scale, the number of categories, and the data distribution in different categories on the daily weather classification results. The simulation results illustrate that SVM performs well with small sample scale, while KNN is more sensitive to the length of the training dataset and can achieve higher accuracy than SVM with sufficient samples.https://www.mdpi.com/2076-3417/8/1/28solar PV power forecastingweather classificationsample scaleSVMKNN
collection DOAJ
language English
format Article
sources DOAJ
author Fei Wang
Zhao Zhen
Bo Wang
Zengqiang Mi
spellingShingle Fei Wang
Zhao Zhen
Bo Wang
Zengqiang Mi
Comparative Study on KNN and SVM Based Weather Classification Models for Day Ahead Short Term Solar PV Power Forecasting
Applied Sciences
solar PV power forecasting
weather classification
sample scale
SVM
KNN
author_facet Fei Wang
Zhao Zhen
Bo Wang
Zengqiang Mi
author_sort Fei Wang
title Comparative Study on KNN and SVM Based Weather Classification Models for Day Ahead Short Term Solar PV Power Forecasting
title_short Comparative Study on KNN and SVM Based Weather Classification Models for Day Ahead Short Term Solar PV Power Forecasting
title_full Comparative Study on KNN and SVM Based Weather Classification Models for Day Ahead Short Term Solar PV Power Forecasting
title_fullStr Comparative Study on KNN and SVM Based Weather Classification Models for Day Ahead Short Term Solar PV Power Forecasting
title_full_unstemmed Comparative Study on KNN and SVM Based Weather Classification Models for Day Ahead Short Term Solar PV Power Forecasting
title_sort comparative study on knn and svm based weather classification models for day ahead short term solar pv power forecasting
publisher MDPI AG
series Applied Sciences
issn 2076-3417
publishDate 2017-12-01
description Accurate solar photovoltaic (PV) power forecasting is an essential tool for mitigating the negative effects caused by the uncertainty of PV output power in systems with high penetration levels of solar PV generation. Weather classification based modeling is an effective way to increase the accuracy of day-ahead short-term (DAST) solar PV power forecasting because PV output power is strongly dependent on the specific weather conditions in a given time period. However, the accuracy of daily weather classification relies on both the applied classifiers and the training data. This paper aims to reveal how these two factors impact the classification performance and to delineate the relation between classification accuracy and sample dataset scale. Two commonly used classification methods, K-nearest neighbors (KNN) and support vector machines (SVM) are applied to classify the daily local weather types for DAST solar PV power forecasting using the operation data from a grid-connected PV plant in Hohhot, Inner Mongolia, China. We assessed the performance of SVM and KNN approaches, and then investigated the influences of sample scale, the number of categories, and the data distribution in different categories on the daily weather classification results. The simulation results illustrate that SVM performs well with small sample scale, while KNN is more sensitive to the length of the training dataset and can achieve higher accuracy than SVM with sufficient samples.
topic solar PV power forecasting
weather classification
sample scale
SVM
KNN
url https://www.mdpi.com/2076-3417/8/1/28
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AT zhaozhen comparativestudyonknnandsvmbasedweatherclassificationmodelsfordayaheadshorttermsolarpvpowerforecasting
AT bowang comparativestudyonknnandsvmbasedweatherclassificationmodelsfordayaheadshorttermsolarpvpowerforecasting
AT zengqiangmi comparativestudyonknnandsvmbasedweatherclassificationmodelsfordayaheadshorttermsolarpvpowerforecasting
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