Aitkenhead M J, Aalders I H
Department of Plant and Soil Science, University of Aberdeen, St. Machar Drive, Aberdeen AB24 3UU, Scotland, UK.
J Environ Manage. 2009 Jan;90(1):236-50. doi: 10.1016/j.jenvman.2007.09.010. Epub 2008 Feb 20.
Modelling land cover change from existing land cover maps is a vital requirement for anyone wishing to understand how the landscape may change in the future. In order to test any land cover change model, existing data must be used. However, often it is not known which data should be applied to the problem, or whether relationships exist within and between complex datasets. Here we have developed and tested a model that applied evolutionary processes to Bayesian networks. The model was developed and tested on a dataset containing land cover information and environmental data, in order to show that decisions about which datasets should be used could be made automatically. Bayesian networks are amenable to evolutionary methods as they can be easily described using a binary string to which crossover and mutation operations can be applied. The method, developed to allow comparison with standard Bayesian network development software, was proved capable of carrying out a rapid and effective search of the space of possible networks in order to find an optimal or near-optimal solution for the selection of datasets that have causal links with one another. Comparison of land cover mapping in the North-East of Scotland was made with a commercial Bayesian software package, with the evolutionary method being shown to provide greater flexibility in its ability to adapt to incorporate/utilise available evidence/knowledge and develop effective and accurate network structures, at the cost of requiring additional computer programming skills. The dataset used to develop the models included GIS-based data taken from the Land Cover for Scotland 1988 (LCS88), Land Capability for Forestry (LCF), Land Capability for Agriculture (LCA), the soil map of Scotland and additional climatic variables.
从现有的土地覆盖图建模土地覆盖变化,对于任何希望了解景观在未来可能如何变化的人来说都是一项至关重要的要求。为了测试任何土地覆盖变化模型,必须使用现有数据。然而,通常不知道应该将哪些数据应用于该问题,也不知道复杂数据集内部和之间是否存在关系。在这里,我们开发并测试了一个将进化过程应用于贝叶斯网络的模型。该模型是在一个包含土地覆盖信息和环境数据的数据集上开发和测试的,以表明可以自动做出关于应使用哪些数据集的决策。贝叶斯网络适合采用进化方法,因为它们可以很容易地用二进制字符串来描述,交叉和变异操作可以应用于该字符串。为了便于与标准贝叶斯网络开发软件进行比较而开发的该方法,被证明能够对可能的网络空间进行快速有效的搜索,以便找到一个最优或接近最优的解决方案,用于选择彼此具有因果联系的数据集。将苏格兰东北部的土地覆盖制图与一个商业贝叶斯软件包进行了比较,结果表明进化方法在适应纳入/利用现有证据/知识以及开发有效和准确的网络结构方面具有更大的灵活性,代价是需要额外的计算机编程技能。用于开发模型的数据集包括基于GIS的数据,这些数据取自1988年苏格兰土地覆盖(LCS88)、林业土地能力(LCF)、农业土地能力(LCA)、苏格兰土壤图以及其他气候变量。