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A novel approach for efficient crop yield prediction

机译:一种高效作物产量预测的新方法

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摘要

Crop yield prediction is one of the challenging task in agricultural domain. Extensive research in agricultural domain has been carried out to predict better crop yield using the machine learning algorithm Artificial Neural Network (ANN) and statistical model Multiple Linear Regression (MLR). This article examines the intrinsic relationship between MLR and ANN. A hybrid MLR-ANN model has been proposed in this research work for efficient crop yield prediction. The proposed hybrid model is modeled to analyze the prediction accuracy when MLR intercept and coefficients were applied to initialize the ANN's input layer weights and bias. Feed Forward Artificial Neural Network with Back Propagation training algorithm was used for predicting accurate paddy crop yield. In conventional ANN model, the weights and bias of input and hidden layer are initilized randomly. This hybrid MLR-ANN model, instead of random weights and bias initialization, the input layer weights and bias are initialized by using MLR's coefficients and bias. The hybrid model prediction accuracy is compared with ANN, MLR, Support Vector Regression (SVR), k-Nearest Neighbour (KNN) and Random Forest (RF) models by using performance metrics. The computational time for both hybrid MLR-ANN and conventional ANN was calculated. The results show that the proposed hybrid MLR-ANN model gives better accuracy than the conventional models.
机译:作物产量预测是农业领域的具有挑战性的任务之一。已经进行了在农业结构域的广泛研究,以预测使用机器学习算法人工神经网络(ANN)和统计模型多元线性回归(MLR)的更好的作物产量。本文介绍了MLR和ANN之间的内在关系。本研究工作中提出了一种混合MLR-ANN模型,以实现有效的作物产量预测。建议的混合模型模型以分析预测准确性,当应用MLR截距和系数以初始化ANN的输入层权重和偏置时。具有后传播训练算法的馈送前进人工神经网络用于预测精确的稻田产量。在传统的ANN模型中,输入和隐藏层的权重和偏置随机启动。该混合MLR-ANN模型代替随机权重和偏置初始化,通过使用MLR的系数和偏置来初始化输入层权重和偏置。通过使用性能指标将混合模型预测精度与ANN,MLR,支持向量回归(SVR),K最近邻(kNN)和随机林(RF)模型进行比较。计算杂种MLR-ANN和常规ANN的计算时间。结果表明,所提出的混合MLR-ANN模型比传统模型提供更好的精度。

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