An Assessment of Crop-Specific Land Cover Predictions Using High-Order Markov Chains and Deep Neural Networks

L. Sartore, C. Boryan, Andrew Dau, P. Willis
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引用次数: 2

Abstract

High-Order Markov Chains (HOMC) are conventional models, based on transition probabilities, that are used by the United States Department of Agriculture (USDA) National Agricultural Statistics Service (NASS) to study crop-rotation patterns over time. However, HOMCs routinely suffer from sparsity and identifiability issues because the categorical data are represented as indicator (or dummy) variables. In fact, the dimension of the parametric space increases exponentially with the order of HOMCs required for analysis. While parsimonious representations reduce the number of parameters, as has been shown in the literature, they often result in less accurate predictions. Most parsimonious models are trained on big data structures, which can be compressed and efficiently processed using alternative algorithms. Consequently, a thorough evaluation and comparison of the prediction results obtain using a new HOMC algorithm and different types of Deep Neural Networks (DNN) across a range of agricultural conditions is warranted to determine which model is most appropriate for operational crop specific land cover prediction of United States (US) agriculture. In this paper, six neural network models are applied to crop rotation data between 2011 and 2021 from six agriculturally intensive counties, which reflect the range of major crops grown and a variety of crop rotation patterns in the Midwest and southern US. The six counties include: Renville, North Dakota; Perkins, Nebraska; Hale, Texas; Livingston, Illinois; McLean, Illinois; and Shelby, Ohio. Results show the DNN models achieve higher overall prediction accuracy for all counties in 2021. The proposed DNN models allow for the ingestion of long time series data, and robustly achieve higher accuracy values than a new HOMC algorithm considered for predicting crop specific land cover in the US.
基于高阶马尔可夫链和深度神经网络的作物特定土地覆盖预测评估
高阶马尔可夫链(HOMC)是基于过渡概率的传统模型,被美国农业部(USDA)国家农业统计局(NASS)用于研究一段时间内的作物轮作模式。然而,homc通常存在稀疏性和可识别性问题,因为分类数据被表示为指标(或虚拟)变量。事实上,参数空间的维数随着分析所需homc的阶数呈指数增长。正如文献中所显示的那样,虽然简约的表示减少了参数的数量,但它们往往导致不太准确的预测。大多数简约模型都是在大数据结构上训练的,这些大数据结构可以使用替代算法进行压缩和有效处理。因此,有必要对使用新的HOMC算法和不同类型的深度神经网络(DNN)在一系列农业条件下获得的预测结果进行全面的评估和比较,以确定哪种模型最适合美国农业的操作性作物特定土地覆盖预测。本文将6个神经网络模型应用于美国中西部和南部6个农业集约化县2011 - 2021年的作物轮作数据,这些数据反映了美国中西部和南部主要作物的种植范围和多种作物轮作模式。这六个县包括:北达科他州的伦维尔;帕金斯,内布拉斯加州;黑尔,德州;利文斯顿,伊利诺斯州;麦克莱恩,伊利诺斯州;以及俄亥俄州的谢尔比。结果表明,DNN模型在2021年对所有县的整体预测精度更高。所提出的深度神经网络模型允许摄取长时间序列数据,并且比用于预测美国作物特定土地覆盖的新HOMC算法具有更高的精度值。
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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