Reducing deep learning network structure through variable reduction methods in crop modeling

IF 8.2 Q1 AGRICULTURE, MULTIDISCIPLINARY Artificial Intelligence in Agriculture Pub Date : 2021-01-01 DOI:10.1016/j.aiia.2021.09.001
Babak Saravi , A. Pouyan Nejadhashemi , Prakash Jha , Bo Tang
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引用次数: 4

Abstract

Crop models are widely used to predict plant growth, water input requirements, and yield. However, existing models are very complex and require hundreds of variables to perform accurately. Due to these shortcomings, large-scale applications of crop models are limited. In order to address these limitations, reliable crop models were developed using a deep neural network (DNN) – a new approach for predicting crop yields. In addition, the number of required input variables was reduced using three common variable selection techniques: namely Bayesian variable selection, Spearman's rank correlation, and Principal Component Analysis Feature Extraction. The reduced-variable DNN models were capable of estimating future crop yields for 10,000,000 different weather and irrigation scenarios while maintaining comparable accuracy levels to the original model that used all input variables. To establish clear superiority of the methodology, the results were also compared with a very recent feature selection algorithm called min-redundancy max-relevance (mRMR). The results of this study showed that the Bayesian variable selection was the best method for achieving the aforementioned goals. Specifically, the final Bayesian-based DNN model with a structure of 10 neurons in 5 layers performed very similarly (78.6% accuracy) to the original DNN crop model with 400 neurons in 10 layers, even though the size of the neural network was reduced by 80-fold. This effort can help promote sustainable agricultural intensifications through the large-scale application of crop models.

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作物建模中通过变量约简方法简化深度学习网络结构
作物模型被广泛用于预测植物生长、水分投入需求和产量。然而,现有的模型非常复杂,需要数百个变量才能准确执行。由于这些缺点,作物模型的大规模应用受到限制。为了解决这些限制,使用深度神经网络(DNN)开发了可靠的作物模型-一种预测作物产量的新方法。此外,使用三种常用的变量选择技术,即贝叶斯变量选择、Spearman秩相关和主成分分析特征提取,减少了所需输入变量的数量。减少变量的深度神经网络模型能够估计10,000,000种不同天气和灌溉情景下的未来作物产量,同时保持与使用所有输入变量的原始模型相当的精度水平。为了确定该方法的明显优越性,还将结果与最近的一种称为最小冗余最大相关性(mRMR)的特征选择算法进行了比较。本研究结果表明,贝叶斯变量选择是实现上述目标的最佳方法。具体来说,最终的基于贝叶斯的DNN模型具有5层10个神经元的结构,与原始的10层400个神经元的DNN作物模型非常相似(78.6%的准确率),尽管神经网络的大小减少了80倍。这一努力可以通过大规模应用作物模型,帮助促进可持续农业集约化。
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来源期刊
Artificial Intelligence in Agriculture
Artificial Intelligence in Agriculture Engineering-Engineering (miscellaneous)
CiteScore
21.60
自引率
0.00%
发文量
18
审稿时长
12 weeks
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