OPTIMASI KINERJA LINEAR REGRESSION, RANDOM FOREST REGRESSION DAN MULTILAYER PERCEPTRON PADA PREDIKSI HASIL PANEN

E. Fitri, Siti Nurhasanah Nugraha
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Abstract

Rice yield prediction is a significant challenge in the context of climate uncertainty and farmland variation. Erratic weather factors, along with land differences, make this prediction more complex. This research aims to address these issues using a machine learning approach. The method used involves three machine learning models namely Linear regression, Random Forest Regression, and ANN with MultiLayer Perceptron algorithm as well as the evaluation matrix RMSE (Root Mean Squared Error), MAE (Mean Absolute Error) and MAPE (Mean Absolute Percentage Error). This research focuses on testing the accuracy of the three models in the face of uncertain seasonal conditions and variations in agricultural land. The results showed that the MultiLayer Perceptron prediction model gave the best results with an error value of 0.094. The random forest regression method ranks second with an error value of 0.510, followed by Linear regression with an error value of 0.281. The importance of outlier testing in the model development process can be seen from the significant improvement in the performance of the MultiLayer Perceptron model. This research contributes to the development of a more reliable and dependable rice yield prediction system, especially in the midst of uncertain climatic conditions. Machine learning models, particularly MultiLayer Perceptron, can be an effective solution to increase agricultural productivity and reduce risks associated with weather changes and land variations.
优化线性回归、随机森林回归和多层感知器在全景预测中的应用
在气候不确定和农田差异的背景下,水稻产量预测是一项重大挑战。反复无常的天气因素和土地差异使预测变得更加复杂。本研究旨在利用机器学习方法解决这些问题。所使用的方法涉及三种机器学习模型,即线性回归、随机森林回归和采用多层感知器算法的 ANN,以及评估矩阵 RMSE(均方根误差)、MAE(平均绝对误差)和 MAPE(平均绝对百分比误差)。这项研究的重点是测试这三种模型在面对不确定的季节条件和农业用地变化时的准确性。结果显示,多层感知器预测模型的结果最好,误差值为 0.094。随机森林回归法排名第二,误差值为 0.510,其次是线性回归法,误差值为 0.281。从多层感知器模型性能的显著提高可以看出离群值测试在模型开发过程中的重要性。这项研究有助于开发更可靠的水稻产量预测系统,尤其是在气候条件不确定的情况下。机器学习模型,尤其是多层感知器,可以成为提高农业生产率、降低与天气变化和土地变化相关的风险的有效解决方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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