An Artificial Neural Network for Predicting Groundnut Yield Using Climatic Data

Hirushan Sajindra, Thilina Abekoon, Eranga M. Wimalasiri, Darshan Mehta, Upaka Rathnayake
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Abstract

Groundnut, being a widely consumed oily seed with significant health benefits and appealing sensory profiles, is extensively cultivated in tropical regions worldwide. However, the yield is substantially impacted by the changing climate. Therefore, predicting stressed groundnut yield based on climatic factors is desirable. This research focuses on predicting groundnut yield based on several combinations of climatic factors using artificial neural networks and three training algorithms. The Levenberg–Marquardt, Bayesian Regularization, and Scaled Conjugate Gradient algorithms were evaluated for their performance using climatic factors such as minimum temperature, maximum temperature, and rainfall in different regions of Sri Lanka, considering the seasonal variations in groundnut yield. A three-layer neural network was employed, comprising a hidden layer. The hidden layer consisted of 10 neurons, and the log sigmoid functions were used as the activation function. The performance of these configurations was evaluated based on the mean squared error and Pearson correlation. Notable improvements were observed when using the Levenberg–Marquardt algorithm as the training algorithm and applying the natural logarithm transformation to the yield values. These improvements were evident through the higher Pearson correlation values for training (0.84), validation (1.00) and testing (1.00), and a lower mean squared error (2.2859 × 10−21) value. Due to the limited data, K-Fold cross-validation was utilized for optimization, with a K value of 5 utilized for the process. The application of the natural logarithm transformation to the yield values resulted in a lower mean squared error (0.3724) value. The results revealed that the Levenberg–Marquardt training algorithm performs better in capturing the relationships between the climatic factors and groundnut yield. This research provides valuable insights into the utilization of climatic factors for predicting groundnut yield, highlighting the effectiveness of the training algorithms and emphasizing the importance of carefully selecting and expanding the climatic factors in the modeling equation.
利用气候数据预测花生产量的人工神经网络
花生是一种广泛食用的油性种子,具有显著的健康益处和吸引人的感官特征,在世界各地的热带地区被广泛种植。然而,产量受到气候变化的严重影响。因此,基于气候因素预测逆境花生产量是可取的。本研究利用人工神经网络和三种训练算法对几种气候因子组合进行花生产量预测。考虑到花生产量的季节变化,利用斯里兰卡不同地区的最低温度、最高温度和降雨量等气候因素,对Levenberg-Marquardt、Bayesian正则化和缩放共轭梯度算法的性能进行了评估。采用三层神经网络,其中包含一个隐藏层。隐藏层由10个神经元组成,使用log s型函数作为激活函数。根据均方误差和Pearson相关性对这些配置的性能进行评估。当使用Levenberg-Marquardt算法作为训练算法并对产量值进行自然对数变换时,可以观察到显著的改进。这些改进通过训练(0.84)、验证(1.00)和测试(1.00)的较高Pearson相关值以及较低的均方误差(2.2859 × 10−21)值可以明显看出。由于数据有限,采用K- fold交叉验证进行优化,该工艺的K值为5。对产量值应用自然对数变换得到较低的均方误差(0.3724)值。结果表明,Levenberg-Marquardt训练算法在捕获气候因子与花生产量之间的关系方面表现较好。本研究为利用气候因子预测花生产量提供了有价值的见解,突出了训练算法的有效性,并强调了在建模方程中仔细选择和扩展气候因子的重要性。
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CiteScore
4.70
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