dor_id: 45855

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351.#.#.6: https://jart.icat.unam.mx/index.php/jart

351.#.#.b: Journal of Applied Research and Technology

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856.4.0.u: https://jart.icat.unam.mx/index.php/jart/article/view/41/40

100.1.#.a: Neelamegam, Premalatha; Amirtham, Valan Arasu

524.#.#.a: Neelamegam, Premalatha, et al. (2016). Prediction of solar radiation for solar systems by using ANN models with different back propagation algorithms. Journal of Applied Research and Technology; Vol. 14 Núm. 3. Recuperado de https://repositorio.unam.mx/contenidos/45855

245.1.0.a: Prediction of solar radiation for solar systems by using ANN models with different back propagation algorithms

502.#.#.c: Universidad Nacional Autónoma de México

561.1.#.a: Instituto de Ciencias Aplicadas y Tecnología, UNAM

264.#.0.c: 2016

264.#.1.c: 2016-06-01

653.#.#.a: Global solar radiation; Artificial neural network; Back propagation algorithm

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041.#.7.h: eng

520.3.#.a: Global solar radiation (GSR) is an essential parameter for the design and operation of solar energy systems. Long-standing records of global solar radiation data are not available in many places because of the cost and maintenance of the measuring instruments. The major objective of this work is to develop an ANN model for accurately predicting solar radiation. Two ANN models with four different algorithms are considered in the present study. Meteorological data collected for the last 10 years from five different locations across India have been used to train the models. The best ANN algorithm and model are identified based on minimum mean absolute error (MAE) and root mean square error (RMSE) and maximum linear correlation coefficient (R). Further, the present study confirms that prediction accuracy of the ANN model depends on the complete set of data being used for training the network for the intended application. The developed ANN model has a low mean absolute percentage error (MAPE) which ascertains the accuracy and suitability of the model to predict the monthly average global radiation so as to design or evaluate solar energy installations, where the meteorological data measuring facilities are not in place in India.

773.1.#.t: Journal of Applied Research and Technology; Vol. 14 Núm. 3

773.1.#.o: https://jart.icat.unam.mx/index.php/jart

022.#.#.a: ISSN electrónico: 2448-6736; ISSN: 1665-6423

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264.#.1.b: Instituto de Ciencias Aplicadas y Tecnología, UNAM

doi: https://doi.org/10.1016/j.jart.2016.05.001

harvesting_date: 2023-11-08 13:10:00.0

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Artículo

Prediction of solar radiation for solar systems by using ANN models with different back propagation algorithms

Neelamegam, Premalatha; Amirtham, Valan Arasu

Instituto de Ciencias Aplicadas y Tecnología, UNAM, publicado en Journal of Applied Research and Technology, y cosechado de Revistas UNAM

Licencia de uso

Procedencia del contenido

Cita

Neelamegam, Premalatha, et al. (2016). Prediction of solar radiation for solar systems by using ANN models with different back propagation algorithms. Journal of Applied Research and Technology; Vol. 14 Núm. 3. Recuperado de https://repositorio.unam.mx/contenidos/45855

Descripción del recurso

Autor(es)
Neelamegam, Premalatha; Amirtham, Valan Arasu
Tipo
Artículo de Investigación
Área del conocimiento
Ingenierías
Título
Prediction of solar radiation for solar systems by using ANN models with different back propagation algorithms
Fecha
2016-06-01
Resumen
Global solar radiation (GSR) is an essential parameter for the design and operation of solar energy systems. Long-standing records of global solar radiation data are not available in many places because of the cost and maintenance of the measuring instruments. The major objective of this work is to develop an ANN model for accurately predicting solar radiation. Two ANN models with four different algorithms are considered in the present study. Meteorological data collected for the last 10 years from five different locations across India have been used to train the models. The best ANN algorithm and model are identified based on minimum mean absolute error (MAE) and root mean square error (RMSE) and maximum linear correlation coefficient (R). Further, the present study confirms that prediction accuracy of the ANN model depends on the complete set of data being used for training the network for the intended application. The developed ANN model has a low mean absolute percentage error (MAPE) which ascertains the accuracy and suitability of the model to predict the monthly average global radiation so as to design or evaluate solar energy installations, where the meteorological data measuring facilities are not in place in India.
Tema
Global solar radiation; Artificial neural network; Back propagation algorithm
Idioma
eng
ISSN
ISSN electrónico: 2448-6736; ISSN: 1665-6423

Enlaces