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Evaluation of Citrus Gummosis disease dynamics and predictions with weather and inversion based leaf optical model

机译:评价柑橘胶质疾病动力学与天气和反演叶光学模型的预测

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One of the major threats for crops around the world due to pest and diseases, which can impact the health, economy, environment, and society at large. In general, several issues related to crop yield improvement arises due to insufficient and inadequate knowledge. Therefore, there is a need to develop viable models that incorporate various weather-soil-plant factors, which can give better understanding of the crop and enable timely interventions for yield improvement. To overcome Citrus Gummosis disease related issues and increase the Citrus productivity, seven different datasets Temperature (T), Humidity (Rh), Rainfall (R), Soil Moisture (SM), Soil Temperature (ST), Leaf Area Index (LAI) and Chlorophyll (Cab) were used. Considering various plant, soil and environmental factors, the Citrus Gummosis prediction model has been developed with the multi-source datasets from June 2014 to November 2016 using Support vector regression (SVR) and multilinear regression (MLR). The research is carried out for healthy (5-10 Yrs. and 11-15 Yrs.) and unhealthy (5-10 Yrs. and 11-15 Yrs.) age group of plants. Inverse PROSAIL model has been simulated for retrieving citrus Cm, and LAI values. These values were validated with the actual field data. Both the weather and soils based disease prediction models has been developed and validated with MLR and SVR. Further, the influence of Gummosis disease on plant parameters was also studies with the new contribution of Biophysical variables (LAI and Cab) based statistical prediction model. The SVR model gave fairly good performance as compared to MLR. In addition to the separate models a the combined scenario approach (Integrated Gummosis Disease Forecast Model: IGDFM) is designed to understand the interconnectivity of the parametric conditions (weather-soil- plant parameters) with disease physiology with respect to different age group of the plants. The RMSE of proposed approach for higher age group plants (i.e. 11-15 years) in the combined scenario was 0.9061 and 0.8518 for SVR and MLR methods, respectively. It is envisaged that this study could enable farmers to recognize and predict the timing and severity of the Gummosis disease in Citrus and thereby achieve yield improvement.
机译:由于害虫和疾病,世界各地农作物的主要威胁之一,这可能会影响健康,经济,环境和社会。通常,由于知识不足和知识不足,产生了与作物产量改善有关的几个问题。因此,需要开发具有各种天气 - 土壤植物因素的可行模型,这可以更好地了解作物,并能够及时干预屈服改善。为了克服柑橘胶质疾病相关问题并提高柑橘生产率,七种不同的数据集温度(T),湿度(RH),降雨(R),土壤水分(SM),土壤温度(ST),叶面积指数(LAI)和使用叶绿素(驾驶室)。考虑到各种植物,土壤和环境因素,柑橘胶质胶质预测模型已经使用来自2014年6月至2016年11月的多源数据集使用支持向量回归(SVR)和多线性回归(MLR)。该研究是为健康(5-10岁和11-15岁)进行的。和不健康(5-10 yrs和11-15岁)。已经模拟了逆肺尾模型,用于检索柑橘类CM和LAI值。使用实际现场数据验证这些值。基于天气和土壤的疾病预测模型已经开发并验证了MLR和SVR。此外,凝胶疾病对植物参数的影响也是基于生物物理变量(LAI和驾驶室)的统计预测模型的新贡献。与MLR相比,SVR模型的性能相当好。除了单独的模型之外,综合情景方法(集成胶质型疾病预测模型:IGDFM)旨在了解参数条件(天气 - 土壤植物参数)与疾病生理学的互连性与植物的不同年龄组。对于SVR和MLR方法,综合情景中较高年龄组植物(即11-15岁)的提出方法的RMSE分别为0.9061和0.8518。设想,该研究可以使农民能够识别和预测柑橘中脾病疾病的时间和严重程度,从而实现产量改善。

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