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Artificial neural network to estimate the paddy yield prediction using remote sensing, weather and non weather variable in Ampara district, Sri Lanka

机译:人工神经网络估算使用Ampara区的遥感,天气和非天气变量,Sri Lanka估算水稻产量预测

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In Sri Lanka, seasonal paddy area mapping and rice prediction is based on the traditional methods with poor technologies. Ampara district has been chosen as the study area because its contribution is considered as the second highest paddy yield to the Sri Lankan rice harvest. This study focuses on developing models for precise mapping paddy and predicting the harvest of rice in the Ampara district. It helps the government and persons of authority to take decisions about how to manage the economy based on the rice quantity. Research includes the imageries of satellites sentinel-1 and sentinel-2 the period from April to September 2019. The two classification methods, Divisional Secretory Division (DSD) and maximum likelihood classification were used to identify the real paddy area. The accuracy rates of these classifications were 0.92 and 0.86 respectively. Artificial Neural Network (ANN) model was used to predict paddy rice harvest using sentinel 2 features extracts and round truth data. Mean square error of the model is 0.106 and mean absolute error is 0.245. Increasing the remote sensing imagery directly affects to enhance accuracy. Increasing the number of sample classes and number of classes in various types will raise-up higher accuracy than in here.
机译:在斯里兰卡,季节性稻田测绘和水稻预测基于具有较差技术的传统方法。 Ampara区已被选为学习领域,因为其贡献被认为是斯里兰卡米收获的第二次最高水稻产量。本研究侧重于开发精确映射稻谷的模型,并预测阿巴拉区的收获。它有助于政府和权力人员判决如何根据稻米数量管理经济。研究包括Satellites Sentinel-1和Sentinel-2从4月到2019年9月的象牙。两种分类方法,分区分泌师(DSD)和最大似然分类用于识别真正的稻田。这些分类的精度分别为0.92和0.86。人工神经网络(ANN)模型用于使用Sentinel 2采用提取物和圆形真实性数据来预测水稻收获。模型的均方误差为0.106,而是平均误差为0.245。增加遥感图像直接影响以提高准确性。增加各种类型的样本类数量和类别的数量将提高比此处更高的准确性。

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