信念网络在未来农作物生产中的应用

Yiqun Gu, D. Peiris, John W. Crawford, J. W. NcNicol, B. Marshall, R. A. Jefferies
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引用次数: 24

摘要

在开发专家系统时,贝叶斯信念网络被证明是建模和操纵不确定性的自然而有效的知识表示工具。它们为概率推理提供了依据,用以计算获得新证据时概率信念的变化。然而,它们在实际问题领域的应用受到构建这种信念网络所面临的困难的阻碍,特别是在既没有足够的数据也没有人类专业知识的领域。在本文中,我们证明了这个问题可以通过利用现有数学模型的知识来规避。应用信念网络来评估气候变化对马铃薯生产的影响是一个例子。我们展示了未来气候变化的不确定性、当前天气的可变性和马铃薯发展的知识如何在一个信念网络中结合起来,这为农业政策制定者提供了帮助。该模型使用合成天气情景进行了测试。并与传统数学模型的计算结果进行了比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An application of belief networks to future crop production
Bayesian belief networks are shown to be natural and efficient knowledge representation tools for modelling and manipulating uncertainties in developing expert systems. They provide a basis for probabilistic inference, to calculate the changes in probabilistic belief as new evidence is obtained. However, their use in real problem domains is hampered by the difficulties facing the construction of such belief networks, particularly in domains where neither sufficient data nor human expertise is available. In this paper, we show that this problem can be circumvented by exploiting knowledge from existing mathematical models. An application of belief networks to assess the impact of climate change on potato production is used as an illustration. We show how the uncertainty of future climate change, variability of current weather and the knowledge about potato development can be combined in a belief network, which provides an aid for policy makers in agriculture. The model is tested using synthetic weather scenarios. The results are compared with those obtained from a conventional mathematical model.<>
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