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Crop Growth Prediction Model at Vegetative Phase to Support the Precision Agriculture Application in Plant Factory

机译:营养阶段作物生长预测模型支持植物厂精密农业应用

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Plant factory is an extensive cultivation that produce vegetable under a controllable environment. The concept of Precision Agriculture has been introduced to enhance the plant factory production by monitoring of crop growth intensively. Crop growth can be estimated using a mathematical model to determine the state of the plant during the growth period. However, the application of a crop growth model in plant factory has several challenges because every plant has a specific model to be observed. The objective of this study was to construct a crop growth prediction model for vegetative development phase. The activity covers the development of mathematical model and model validation using Chili (Capsicum frutescens) as a preliminary experiment. Four samples (S1, S2, S3, S4) of Chili with age of five weeks after planting were used and measured daily for 30 days to get the actual height (cm). Three crop height observation data set (S1, S1, S3), were used to develop a mathematical model and the rest dataset was for model validation and evaluation. Linear and polynomial model were applied to obtain the appropriate prediction. The model was validated and evaluated using the Root Mean Squared Error (RMSE) and Mean Absolute Percentage Error (MAPE). As a result, Determination coefficient (R~2) of the Linear model was 0.9667, and the RMSE was 2.16; The Polynomial model shows R~2 0.98755, and RMSE RMSE 1.68. The result of the model that is suitable for the Chili crop during the vegetative phase is the polynomial model with error rate of 1,68%.
机译:厂房是一种广泛的种植,在可控环境下生产蔬菜。已经引入了精密农业的概念,以通过集中监测作物增长来增强植物厂生产。可以使用数学模型估计作物生长以在生长期期间确定植物的状态。然而,植物工厂中作物生长模型的应用有几个挑战,因为每个植物都有一个要观察到的特定模型。本研究的目的是为植物发育阶段构建作物生长预测模型。该活动涵盖了使用辣椒(Capsicum Frutescens)作为初步实验的数学模型和模型验证的发展。使用嗜酸剂的四个样品(S1,S2,S3,S4),使用植入后五周的龄,每天测量30天以获得实际高度(cm)。三个作物高度观察数据集(S1,S1,S3)用于开发数学模型,其余数据集是用于模型验证和评估。应用线性和多项式模型以获得适当的预测。使用根均方平方误差(RMSE)验证和评估模型,并表示绝对百分比误差(MAPE)。结果,线性模型的确定系数(R〜2)为0.9667,RMSE为2.16;多项式模型显示R〜2 0.98755,RMSE RMSE 1.68。适用于营养阶段期间辣椒作物的模型的结果是多项式模型,误差率为1,68%。

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