小兴安岭主要树种的气候空间矩阵生长模型以及森林动态变化对不同代表性浓度路径情景的响应

IF 2.7 3区 农林科学 Q2 ECOLOGY Frontiers in Forests and Global Change Pub Date : 2023-12-21 DOI:10.3389/ffgc.2023.1309189
Qi Sheng, Zhaogang Liu, Lingbo Dong
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引用次数: 0

摘要

由于森林对温度、降水和二氧化碳的敏感性,气候变化会影响森林分布、物种组成、结构和产量。因此,为了针对气候变化做出森林管理决策,探索森林的生长、死亡和更新对未来气候的响应至关重要。我们利用第七次(2010 年)和第八次(2015 年)中国国家森林资源清查期间在黑龙江省采集的 786 块林地数据,建立了固定参数过渡矩阵模型(FM)、气候敏感矩阵生长模型(CM)和气候空间矩阵生长模型(SCM),并利用相同数据比较了 CM、SCM 和 FM 的长期预测性能。通过十倍交叉验证和长期预测性能分析对模型进行了比较。交叉验证结果表明,在短期预测(5 年)方面,三个模型之间的显著差异较小,FM 的性能略优于 CM 和 SCM。相比之下,在长期预测(85 年)方面,在三种不同的 RCPs 下,SCM 的表现优于 FM 和 CM,而在三种代表性浓度路径(RCPs)(即 RCP2.6、RCP8.5、RCP8.5)下,SCM 和 CM 的表现优于 FM 和 CM、由于考虑了可能显著影响森林动态的气候因素,同时林分空间结构的变化也会影响林木对气候的敏感性,尤其是在长期预测区间,因此本文的结果可能为气候变化下优化森林经营策略提供理论依据。
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A climate-spatial matrix growth model for major tree species in Lesser Khingan Mountains and responses of forest dynamics change to different representative concentration path scenarios
Climate change affects forest distribution, species composition, structure, and yield due to the sensitivity of forests to temperature, precipitation, and CO2. Therefore, for forest management decisions regarding climate change, it is crucial to explore the response of forest growth, mortality, and recruitment to future climate. We aimed to establish tree species’ responses by introducing variables such as climate, stand spatial structure parameters, and diversity indices.We produced fixed parameter transition matrix model (FM), climate-sensitive matrix growth model (CM) and climate-spatial matrix growth model (SCM) using data from 786 plots collected during the 7th (2010), and 8th (2015), Chinese National Forest Inventories in Heilongjiang Province, and long-term predictive performance of CM, SCM, and FM were compared using same data. The models were compared using tenfold cross-validation and long-term predictive performance analysis. To predict the response of major tree species in the Lesser Khingan Mountains to three future climate change scenarios (RCP2.6, RCP4.5, RCP8.5).The cross-validation results show small significant differences among the three models for short-term prediction (5 years), with the FM performing slightly better than the CM and the SCM. In contrast, for long-term projections (85 years), SCM outperformed FM and CM under three different RCPs, and SCM and CM under three representative concentration paths (RCPs), i.e., RCP2.6, RCP4.5, and RCP8.5, suggesting that rather different dynamics are more reliable, since climatic factors are taken into account which may significantly affect forest dynamics, while changes in stand spatial structure also affect the sensitivity of trees to climate, especially in long-term prediction interval, the results of this paper may provide a theoretical basis for optimizing forest management strategies under climate change.
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来源期刊
CiteScore
4.50
自引率
6.20%
发文量
256
审稿时长
12 weeks
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