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Artificial Neural Network Methodology for Modelling and Forecasting Maize Crop Yield

Author

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  • Singh, Rama Krishna
  • Prajneshu

Abstract

A particular type of “Artificial neural network (ANN)”, viz. Multilayered feedforward artificial neural network (MLFANN) has been described. To train such a network, two types of learning algorithms, namely Gradient descent algorithm (GDA) and Conjugate gradient descent algorithm (CGDA), have been discussed. The methodology has been illustrated by considering maize crop yield data as response variable and total human labour, farm power, fertilizer consumption, and pesticide consumption as predictors. The data have been taken from a recently concluded National Agricultural Technology Project of Division of Agricultural Economics, I.A.R.I., New Delhi. To train the neural network, relevant computer programs have been written in MATLAB software package using Neural network toolbox. It has been found that a three-layered MLFANN with (11,16) units in the two hidden layers performs best in terms of having minimum mean square errors (MSE) for training, validation, and test sets. Superiority of this MLFANN over multiple linear regression (MLR) analysis has also been demonstrated for the maize data considered in the study. It is hoped that, in future, research workers would start applying not only MLFANN but also some of the other more advanced ANN models, like ‘Radial basis function neural network’, and ‘Generalized regression neural network’ in their studies.

Suggested Citation

  • Singh, Rama Krishna & Prajneshu, 2008. "Artificial Neural Network Methodology for Modelling and Forecasting Maize Crop Yield," Agricultural Economics Research Review, Agricultural Economics Research Association (India), vol. 21(1).
  • Handle: RePEc:ags:aerrae:47354
    DOI: 10.22004/ag.econ.47354
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    Cited by:

    1. Daniel Hopp, 2022. "Benchmarking Econometric and Machine Learning Methodologies in Nowcasting," Papers 2205.03318, arXiv.org.
    2. Tlou Maggie Masenya, 2022. "Decolonization of Indigenous Knowledge Systems in South Africa: Impact of Policy and Protocols," International Journal of Knowledge Management (IJKM), IGI Global, vol. 18(1), pages 1-22, January.
    3. Daniel Hopp, 2021. "Economic Nowcasting with Long Short-Term Memory Artificial Neural Networks (LSTM)," Papers 2106.08901, arXiv.org.
    4. Patryk Hara & Magdalena Piekutowska & Gniewko Niedbała, 2021. "Selection of Independent Variables for Crop Yield Prediction Using Artificial Neural Network Models with Remote Sensing Data," Land, MDPI, vol. 10(6), pages 1-21, June.
    5. Daniel Hopp, 2022. "Performance of long short-term memory artificial neural networks in nowcasting during the COVID-19 crisis," Papers 2203.11872, arXiv.org.

    More about this item

    Keywords

    Crop Production/Industries;

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