基于时间序列的层叠Lstm水稻产量预测模型在泰米尔纳德邦Cauvery三角洲地区的应用

M. Geetha, R. Suganthe, S Roselin Nivetha, R. Anju, R. Anuradha, J. Haripriya
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引用次数: 2

摘要

泰米尔纳德邦的Cauvery三角洲地区被称为“Nerkazhanchiyam”(水稻之乡),因为它有潜力生产大量的水稻,可以满足该邦的需求。该地区包括Thanjavur、Tiruvarur、Nagapattinam、Trichy和Cuddalore等地区。这些地区的水稻产量约占该邦总产量的53%。在高韦里三角洲地区增加水稻产量,总体上可以满足国家对水稻的需求。这也将对农民和国家的经济产生重大影响。提前预测作物产量可以帮助农民提高生产力。这就需要设计一种精确的作物产量预测模型。农业作物生产主要由各种因素决定,这些因素可分为三类:技术(农业技术、管理决策等)、生物(疾病、昆虫、害虫等)和环境(气候变化等)。在这些因素中,环境因素对决策者如何建立精确的预测模型提出了很大的挑战。因此,建议建立一种适合高韦里三角洲地区的水稻产量预测模型,考虑环境因素和供给养分。该预测模型利用一种流行的深度学习算法——长短期记忆(LSTM)算法对水稻产量进行预测。LSTM以使用时间序列数据进行更好的预测而闻名。利用训练损失和验证损失来衡量所提出的预测模型的性能。
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A Time-Series Based Yield Forecasting Model Using Stacked Lstm To Predict The Yield Of Paddy In Cauvery Delta Zone In Tamilnadu
Cauvery delta zone in Tamilnadu is called as “Nerkazhanchiyam” (the land of Paddy) of the state, as it has the potential to produce paddy in huge quantity that can be suffice the need of the state. This zone includes the districts such as Thanjavur, Tiruvarur, Nagapattinam, Trichy and Cuddalore. These districts account for about 53% of production of paddy in the state. Increasing the production of paddy in Cauvery Delta Zone would satisfy the requirement of rice in the state on the whole. This will also have a substantial influence on both the farmer's and the nation's economy. Forecasting the production of crops beforehand could assist the farmers in improving their productivity. This necessitates the design of a precise crop yield prediction model. Crop production in agriculture is primarily determined by a variety of factors that falls under three categories: technological (agricultural techniques, managerial decisions, etc.), biological (diseases, insects, pests, etc.), and environmental (climate change, etc.). Among these factors environmental factors pose a great challenge to the decision makers in developing a precise prediction model. Hence, it is proposed to develop a suitable yield prediction model to predict the yield of paddy in Cauvery delta region considering the environmental factors along with the supplied nutrients. The proposed prediction model makes use of Long Short Term Memory (LSTM) algorithm which is a popular deep learning algorithm, to forecast the yield of paddy. LSTM is well known for its better prediction using time series data. Performance of the proposed prediction model is measured using the training loss and validation loss.
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