A Random Forest Approach for Predicting the Microwave Drying Process of Amaranth Seeds

S. Bravo, Ángel H. Moreno
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引用次数: 2

Abstract

In this work, a model has been developed for the prediction of the fundamental variables of the microwave drying process of amaranth seeds, using the initial mass of seeds and the temperature of the process as input data. The model was developed by using the RandomForestRegressor classifier, which is found in the module sklearn.ensemble of the Python programming language. For the training and prediction of the model, the data of the measurements made of the drying time and energy consumption in the drying experiments carried out at three temperatures (35, 45, 55 ° C) in a domestic microwave oven were used, as well as the germination rate of the amaranth seeds obtained in the germination tests. The predictions made by the model have a precision of 99.6% for the drying time, 98.5% for energy consumption and 92.2% for the germination rate of the seeds.
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用随机森林方法预测苋菜种子微波干燥过程
本文以微波干燥过程中的种子初始质量和温度为输入数据,建立了一种预测苋菜种子微波干燥过程基本变量的模型。该模型是使用在模块sklearn中找到的RandomForestRegressor分类器开发的。Python编程语言的集成。为了对模型进行训练和预测,使用了在家用微波炉中进行的3种温度(35℃、45℃、55℃)下的干燥时间和能量消耗的测量数据,以及在萌发试验中获得的苋菜种子的发芽率。该模型对干燥时间的预测精度为99.6%,能量消耗的预测精度为98.5%,种子发芽率的预测精度为92.2%。
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