Olofintuyi Sunday Samuel, Olajubu Emmanuel Ajayi, Olanike Deji
Department of Computer Science, Achievers University, Owo, Nigeria.
Department of Computer Sciences and Engineering, Obafemi Awolowo University, Ile-Ife, Nigeria.
Heliyon. 2023 Apr 5;9(4):e15245. doi: 10.1016/j.heliyon.2023.e15245. eCollection 2023 Apr.
One important aspect of agriculture is crop yield prediction. This aspect allows decision-makers and farmers to make adequate planning and policies. Before now, various statistical models have been used for crop yield prediction but this approach experienced some hiccups such as time wastage, inaccurate prediction, and difficulties in model usage. Recently, a new trend of deep learning and machine learning are now adopted for crop yield prediction. Deep learning can extract patterns from a large volume of the dataset, thus, they are suitable for prediction. The research work aims to propose an efficient deep-learning technique in the field of cocoa yield prediction. This research presents a deep learning approach for cocoa yield prediction using a Convolutional Neural Network and Recurrent Neural Network (CNN-RNN) with Long Short Term Memory (LSTM). The ensemble approach was adopted because of the nature of the dataset used. Two different sets of the dataset were used, namely; the climatic dataset and the cocoa yield dataset. CNN-RNN with LSTM has some salient features, where CNN was used to handle the climatic dataset, and RNN was employed to handle the cocoa yield prediction in southwest Nigeria. Two major problems generated by the CNN-RNN model are vanishing and exploding gradients and this was handled by LSTM. The proposed model was benchmarked with other machine learning algorithms based on Mean Absolute Error (MAE), Mean Square Error (MSE), Root Mean Square Error (RMSE), and Mean Absolute Percentage Error (MAPE). CNN-RNN with LSTM gave the least mean of absolute error as compared to the other machine learning algorithms which shows the efficiency of the model.
农业的一个重要方面是作物产量预测。这一方面使决策者和农民能够进行充分的规划并制定政策。在此之前,各种统计模型已被用于作物产量预测,但这种方法存在一些问题,如浪费时间、预测不准确以及模型使用困难。最近,深度学习和机器学习的新趋势现在被用于作物产量预测。深度学习可以从大量数据集中提取模式,因此,它们适用于预测。这项研究工作旨在提出一种在可可产量预测领域高效的深度学习技术。本研究提出了一种使用卷积神经网络和循环神经网络(CNN - RNN)以及长短期记忆(LSTM)的可可产量预测深度学习方法。由于所使用数据集的性质,采用了集成方法。使用了两组不同的数据集,即气候数据集和可可产量数据集。带有LSTM的CNN - RNN有一些显著特征,其中CNN用于处理气候数据集,RNN用于处理尼日利亚西南部的可可产量预测。CNN - RNN模型产生的两个主要问题是梯度消失和梯度爆炸,而这由LSTM处理。所提出的模型与其他机器学习算法基于平均绝对误差(MAE)、均方误差(MSE)、均方根误差(RMSE)和平均绝对百分比误差(MAPE)进行了基准测试。与其他机器学习算法相比,带有LSTM的CNN - RNN给出的平均绝对误差最小,这表明了该模型的有效性。