Feature Selection and ANN Solar Power Prediction
A novel method of solar power forecasting for individuals and small businesses is developed in this paper based on machine learning, image processing, and acoustic classification techniques. Increases in the production of solar power at the consumer level require automated forecasting systems to min...
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2017-01-01
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Series: | Journal of Renewable Energy |
Online Access: | http://dx.doi.org/10.1155/2017/2437387 |
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doaj-91ca0a4e29134882a632f273760e34f32020-11-24T23:24:23ZengHindawi LimitedJournal of Renewable Energy2314-43862314-43942017-01-01201710.1155/2017/24373872437387Feature Selection and ANN Solar Power PredictionDaniel O’Leary0Joel Kubby1Department of Computer Science, City College of San Francisco (CCSF), Mailbox LB8, 50 Phelan Ave., San Francisco, CA 94112, USAJack Baskin School of Engineering, University of California, Santa Cruz, 1156 High Street, Mail Stop SOE2, Santa Cruz, CA 95064, USAA novel method of solar power forecasting for individuals and small businesses is developed in this paper based on machine learning, image processing, and acoustic classification techniques. Increases in the production of solar power at the consumer level require automated forecasting systems to minimize loss, cost, and environmental impact for homes and businesses that produce and consume power (prosumers). These new participants in the energy market, prosumers, require new artificial neural network (ANN) performance tuning techniques to create accurate ANN forecasts. Input masking, an ANN tuning technique developed for acoustic signal classification and image edge detection, is applied to prosumer solar data to improve prosumer forecast accuracy over traditional macrogrid ANN performance tuning techniques. ANN inputs tailor time-of-day masking based on error clustering in the time domain. Results show an improvement in prediction to target correlation, the R2 value, lowering inaccuracy of sample predictions by 14.4%, with corresponding drops in mean average error of 5.37% and root mean squared error of 6.83%.http://dx.doi.org/10.1155/2017/2437387 |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Daniel O’Leary Joel Kubby |
spellingShingle |
Daniel O’Leary Joel Kubby Feature Selection and ANN Solar Power Prediction Journal of Renewable Energy |
author_facet |
Daniel O’Leary Joel Kubby |
author_sort |
Daniel O’Leary |
title |
Feature Selection and ANN Solar Power Prediction |
title_short |
Feature Selection and ANN Solar Power Prediction |
title_full |
Feature Selection and ANN Solar Power Prediction |
title_fullStr |
Feature Selection and ANN Solar Power Prediction |
title_full_unstemmed |
Feature Selection and ANN Solar Power Prediction |
title_sort |
feature selection and ann solar power prediction |
publisher |
Hindawi Limited |
series |
Journal of Renewable Energy |
issn |
2314-4386 2314-4394 |
publishDate |
2017-01-01 |
description |
A novel method of solar power forecasting for individuals and small businesses is developed in this paper based on machine learning, image processing, and acoustic classification techniques. Increases in the production of solar power at the consumer level require automated forecasting systems to minimize loss, cost, and environmental impact for homes and businesses that produce and consume power (prosumers). These new participants in the energy market, prosumers, require new artificial neural network (ANN) performance tuning techniques to create accurate ANN forecasts. Input masking, an ANN tuning technique developed for acoustic signal classification and image edge detection, is applied to prosumer solar data to improve prosumer forecast accuracy over traditional macrogrid ANN performance tuning techniques. ANN inputs tailor time-of-day masking based on error clustering in the time domain. Results show an improvement in prediction to target correlation, the R2 value, lowering inaccuracy of sample predictions by 14.4%, with corresponding drops in mean average error of 5.37% and root mean squared error of 6.83%. |
url |
http://dx.doi.org/10.1155/2017/2437387 |
work_keys_str_mv |
AT danieloleary featureselectionandannsolarpowerprediction AT joelkubby featureselectionandannsolarpowerprediction |
_version_ |
1725560978201903104 |