Crop Yield Forecasting Using Artificial Neural Networks: A Comparison between Spatial and Temporal Models

Author:

Guo William W.1,Xue Heru2

Affiliation:

1. School of Engineering and Technology, Central Queensland University, Rockhampton, QLD 4702, Australia

2. College of Computer & Information Engineering, Inner Mongolia Agricultural University, Hohhot, Inner Mongolia 010018, China

Abstract

Our recent study using historic data of wheat yield and associated plantation area, rainfall, and temperature has shown that incorporating statistics and artificial neural networks can produce highly satisfactory forecasting of wheat yield. However, no comparison has been made between the outcomes from the spatial neural network model and commonly used temporal neural network models in crop forecasting. This paper presents the latest research outcomes from using both the spatial and temporal neural network models in crop forecasting. Our simulation shows that the spatial NN model is able to predict the wheat yield with respect to a given plantation area with a high accuracy compared with the temporal NARNN and NARXNN models. However, the high accuracy of the spatial NN model in crop yield forecasting is limited to the forecasting of crop yield only within normal ranges. Users must be cautious when using either NARNN or NARXNN for crop yield forecasting due to their inconsistency between the results of training and forecasting.

Publisher

Hindawi Limited

Subject

General Engineering,General Mathematics

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