Four-parameter beta mixed models with survey and sentinel 2A satellite data for predicting paddy productivity

IF 6.3 Q1 AGRICULTURAL ENGINEERING Smart agricultural technology Pub Date : 2024-08-09 DOI:10.1016/j.atech.2024.100525
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Abstract

Ensuring food security, fostering agricultural sustainability, and driving economic development. However, existing prediction models often overlook the unique characteristics of paddy productivity distribution, which varies between areas, skewed, and bounded within a certain minimum and maximum range, following a four-parameter beta distribution. Consequently, these models yield less accurate and potentially misleading predictions. Additionally, most approaches fail to capture the complex interrelationships among variables that often occur when we incorporate satellite data alongside survey data that has been recognized as a key approach for improving prediction accuracy and optimizing farming practices. To address these shortcomings, this study introduces a four-parameter beta Generalized Linear Mixed Model (GLMM) augmented within a four-parameter beta Generalized Mixed Effect Tree (GMET). The four-parameter beta GMET, an extension of the four-parameter beta GLMM model integrated with a regression tree, offers enhanced flexibility in modeling complex relationships. Application of this methodology to an empirical study in Central Kalimantan and Karawang reveals notable improvements over previous methods, as evidenced by substantially lower AIC and RRMSE values. Notably, the analysis identifies lagged values of band 4, band 8, and NDVI from Sentinel-2A satellite data as significant predictors of paddy productivity, overriding the importance of farmer survey variables. This underscores the potential of satellite data to be utilized in paddy productivity predictions, offering a more efficient and cost-effective alternative to farmer survey-based methods. By enhancing satellite technology, future efforts in paddy productivity prediction can achieve higher efficiency and accuracy, contributing to informed decision-making in agricultural management.

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利用调查和定点 2A 卫星数据的四参数贝塔混合模型预测水稻生产力
确保粮食安全,促进农业可持续发展,推动经济发展。然而,现有的预测模型往往忽视了水稻生产力分布的独特性,即不同地区的生产力分布各不相同,呈倾斜状,并在一定的最小值和最大值范围内,遵循四参数贝塔分布。因此,这些模型得出的预测结果不够准确,并可能产生误导。此外,大多数方法都无法捕捉变量之间复杂的相互关系,而当我们将卫星数据与调查数据结合起来时,往往会出现这种情况。为了弥补这些不足,本研究引入了四参数贝塔广义线性混合模型(GLMM),并在四参数贝塔广义混合效应树(GMET)中进行了增强。四参数贝塔广义混合效应树是四参数贝塔 GLMM 模型的延伸,与回归树相结合,为复杂关系建模提供了更大的灵活性。在中加里曼丹和卡拉旺的一项实证研究中应用该方法后发现,与以前的方法相比,该方法有了显著的改进,AIC 和 RRMSE 值大大降低就是证明。值得注意的是,分析发现,来自 Sentinel-2A 卫星数据的波段 4、波段 8 和 NDVI 的滞后值是预测水稻生产力的重要指标,其重要性超过了农民调查变量。这凸显了卫星数据在预测水稻生产力方面的潜力,为基于农民调查的方法提供了更高效、更具成本效益的替代方法。通过加强卫星技术,未来的水稻生产力预测工作可以实现更高的效率和准确性,有助于农业管理方面的知情决策。
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