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An incorporative statistic and neural approach for crop yield modelling and forecasting

机译:一种用于作物产量建模和预测的综合统计和神经方法

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摘要

An incorporative framework is proposed in this study for crop yield modelling and forecasting. It is a complementary approach to traditional time series analysis on modelling and forecasting by treating crop yield and associated factors as a non-temporal collection. Statistics are used to identify the highly related factor(s) among many associates to crop yield and then play a key role in data cleaning and a supporting role in data expansion, if necessary, for neural network training and testing. Wheat yield and associated plantation area, rainfall and temperature in Queensland of Australia over 100 years are used to test this incorporative approach. The results show that well-trained multilayer perceptron models can simulate the wheat production through given plantation areas with a mean absolute error (MAE) of ~2%, whereas the third-order polynomial correlation returns an MAE of ~20%. However, statistical analysis plays a key role in identifying the most related factor, detecting outliers, determining the general trend of wheat yield with respect to plantation area and supporting data expansion for neural network training and testing. The combination of these two methods provides both meaningful qualitative and accurate quantitative data analysis and forecasting. This incorporative approach can also be useful in data modelling and forecasting in other applications due to its generic nature.
机译:在这项研究中提出了一个用于作物产量建模和预测的整合框架。通过将作物产量和相关因素视为非时间集合,它是对建模和预测的传统时间序列分析的补充方法。统计数据用于识别与农作物产量相关的许多因素中的高度相关的因素,然后在数据清理中起关键作用,并在必要时在数据扩展中起到支持作用,以进行神经网络训练和测试。使用澳大利亚昆士兰州100多年来的小麦产量以及相关的种植面积,降雨量和温度来测试这种整合方法。结果表明,训练有素的多层感知器模型可以模拟给定人工林中小麦的生产,平均绝对误差(MAE)为〜2%,而三阶多项式相关返回的MAE为〜20%。但是,统计分析在确定最相关的因素,检测异常值,确定种植面积方面小麦产量的总体趋势以及支持数据扩展以进行神经网络训练和测试方面发挥着关键作用。这两种方法的结合提供了有意义的定性和准确的定量数据分析和预测。由于其通用性,这种整合方法在其他应用程序的数据建模和预测中也很有用。

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