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Predicting future plantation forest development in response to policy initiatives: A case study of the Warren River Catchment in Western Australia

机译:以对政策举措的回应,预测未来的种植林发展 - 以西澳大利亚沃伦河流域为例

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The Warren River Catchment in the south-west of Western Australia exemplifies how inconsistent forestry investment policies can have adverse environmental effects especially related to dryland salinity. The catchment experienced a rapid expansion of plantation forest in the late 1990s due to tax benefits for forestry Managed Investment Schemes. This paper assesses the landscape effect of incentive based policies by measuring the land use and land cover (LULC) response in the catchment, and forecasts LULC change. The paper applies a spatial modelling procedure that integrates Markov transition probabilities, multilayer perceptron neural network and cellular automata to provide an accurate forecast of LULC change over 35 years from 1979 to 2014. In the first stage, geospatial analysis determines the spatial drivers of LULC conversions. Second, Markov transition probability matrices are estimated, and the multilayer perceptron was trained to determine a model for every transition based on spatial drivers. Finally, a cellular automata model was applied to forecast spatially explicit changes in LULC to 2025 under the current policy regime. The predictive power of the model was validated with Kappa statistics, and vis-a-visa null model. The simulation forecasts an increase in the agricultural areas by 2025 compared to 2014; whereas harvested native forest areas were predicted to decrease, contributing to a slight increase of the native forest areas. Despite government efforts to increase the areas of plantations, the model predicts a decrease in this land use due to a progressive reduction in tax incentives provided to Managed Investment Schemes. These results will assist decision-makers in improving policy, by working through the long-term implications of policy incentives for forestry in terms of broader landscape objectives related to salinity and conservation.
机译:西澳大利亚州西南部的沃伦河流域旨在林业投资政策的不利环境影响尤其与旱地盐度有关。由于林业管理投资计划的税收利益,该集水区在20世纪90年代后期经历了迅速扩张。本文评估了基于激励基于激励的政策的景观效应通过测量了集水区的土地利用和陆地覆盖(LULC)反应,并预测LULC变化。本文适用于广场建模程序,集成马尔可夫过渡概率,多层的感知性概率,多层的影响力自动机,从1979年至2014年提供35年超过35年的准确预测。在第一阶段,地理空间分析决定了LULC转换的空间驱动因素。其次,估计马尔可夫转换概率矩阵,并且训练多层的Perceptron以确定基于空间驱动程序的每一个转换的模型。最后,在当前政策制度下,应用了蜂窝自动机模型以预测LULC至2025的空间显式变化。模型的预测力量验证了kappa统计和Vis-a-visa null模型。仿真预测到2014年将增加2025年的农业领域;然而,预计收获的本土森林地区将减少,有助于略微增加本土森林地区。尽管政府努力增加了种植园地区,但该模型由于提供给管理投资计划提供的税收激励措施的逐步减少,因此该土地使用减少。这些结果将协助决策者在改进政策方面,通过在与盐度和保护相关的更广泛的景观目标方面,通过对林业的长期影响。

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