Hybrid Deep Learning Implementation for Crop Yield Prediction

Halit Çetiner
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引用次数: 1

Abstract

Agriculture producers should be supported technologically in order to continue production in a way that meets the worldwide food supply and demand. Automatic realization of crop yield estimation calculation is a desired need of farmers. Automatic yield estimation also facilitates the work of agricultural producers with different goals such as imports and exports. To achieve the stated objectives, deep learning models have been developed that estimated yield using parameters such as the amount of water per hectare, the average amount of sunlight received by the hectare, the amount of fertilization per hectare, the number of pesticides used per hectare, and the area of cultivation. With the hybrid model created by combining the strengths of the LSTM and CNN models developed within the scope of this article, the success rate of data prediction has increased with fine adjustments. Success rates of 89.71 R2, 0.0035 MSE, 0.0248 RMSE, 0.0461 MAE, and 10.10 MAPE have been achieved with the Proposed hybrid model. This model is competitive with similar studies with the stated values.
作物产量预测的混合深度学习实现
应在技术上支持农业生产者,以便继续生产,以满足全世界的粮食供应和需求。农作物产量估算计算的自动化实现是农民的迫切需要。自动产量估算也方便了不同目标的农业生产者的工作,如进口和出口。为了实现既定目标,已经开发了深度学习模型,使用诸如每公顷水量、每公顷平均日照量、每公顷施肥量、每公顷使用的农药数量和种植面积等参数来估计产量。结合本文范围内开发的LSTM和CNN模型的优点创建的混合模型,经过精细调整,数据预测的成功率有所提高。该混合模型的成功率分别为89.71 R2、0.0035 MSE、0.0248 RMSE、0.0461 MAE和10.10 MAPE。该模型与具有陈述值的类似研究具有竞争力。
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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